1. Introduction
Artificial Intelligence (AI) has rapidly evolved from a computational novelty into a transformative force reshaping contemporary healthcare systems. Across domains such as radiology, oncology, ophthalmology, and infectious disease diagnostics, machine learning algorithms and neural networks have achieved performance metrics that often match or surpass those of experienced clinicians (
Topol, 2019;
Esteva et al., 2017; Rajpurkar et al., 2022). However, while the Global North has witnessed exponential growth in AI-assisted healthcare, African nations remain structurally and epistemologically peripheral in this technological transition.
The deployment of AI-powered diagnostic tools in African contexts is not merely delayed; it is often misaligned. Many of these systems are designed with assumptions, data architectures, and clinical models that neither reflect the epidemiological realities of African populations nor account for the sociocultural logics embedded in local care practices (
Abebe et al., 2020;
Obasola & Agunbiade, 2022). This mismatch not only leads to performance failures and mistrust but risks reproducing new forms of
algorithmic colonialism, where African patients and clinicians become passive consumers of opaque technologies built elsewhere and for others (Birhane, 2021).
Moreover, the digital health agenda in Africa remains largely shaped by donor-driven models, imported platforms, and extractive data practices (
Taylor & Kukutai, 2016). The epistemic asymmetries of such systems manifest in datasets that underrepresent African genomics, phenotypes, disease patterns, and even languages—thus compromising diagnostic accuracy, medical relevance, and ethical fairness. AI, in this regard, is not a neutral tool; it is a socio-technical assemblage shaped by histories, ideologies, and politics (Benjamin, 2019).
In this paper, we argue for a radical reorientation of medical AI in Africa through the framework of Equitable Health Intelligence (EHI). EHI is not a mere optimization strategy; it is a paradigm shift that integrates ontological equity, contextual intelligence, participatory design, and data sovereignty as foundational pillars for diagnostic transformation. Grounded in two emerging scientific fields—Innovationology, which studies innovation as a systemic, adaptive, and ethical process, and Noesology, the science of intelligence in its plural forms (biological, artificial, collective, and indigenous)—our approach seeks to reconceptualize diagnostics as more than a matter of accuracy. It is a question of epistemic justice.
We posit that current AI diagnostic models operate within a narrow epistemology that favors objectivity, standardization, and linear causality. In contrast, African medical traditions often embody relational, narrative, and spiritual forms of knowing that remain invisible to Western medical AI (
Mbiti, 1990; Moleka, 2024). This ontological divergence necessitates the development of hybrid systems capable of navigating
pluriversal health logics, where machine reasoning and cultural intelligence co-exist symbiotically.
In advancing this paradigm, we do not seek to "Africanize" Western technologies, but to recenter African epistemologies in the design, governance, and future of medical intelligence. This is not just about inclusion—it is about sovereignty, dignity, and the reanimation of knowledge systems long marginalized by modernity.
2. Historical and Epistemic Foundations of Diagnostic Paradigms
2.1. From Hippocratic Rationalism to Machine Reasoning: A Genealogy of Diagnosis
The practice of medical diagnosis has historically evolved through shifting ontological and epistemological assumptions about the human body, illness, and knowledge itself. In Western medicine, the Hippocratic-Galenic tradition conceptualized illness as an imbalance of humors, entailing an observational and interpretive model grounded in natural philosophy (Temkin, 1951). This pre-modern diagnostic logic was gradually replaced by the anatomical-pathological model of the 18th and 19th centuries, especially after the rise of post-mortem analysis, microscopy, and the clinico-anatomical correlation (Foucault, 1973).
By the early 20th century, diagnosis became increasingly aligned with
biomedical reductionism, where diseases were conceived as discrete, measurable entities residing in specific organs or systems, observable through tests and imaging. The clinical gaze became increasingly data-driven, culminating in the contemporary dominance of
evidence-based medicine (EBM) and
computational diagnostics, where statistical inference and algorithmic models define diagnostic validity (Sackett et al., 1996;
Topol, 2019).
While these approaches have enabled impressive gains in precision, they also embedded specific assumptions: the universality of biological processes, the primacy of quantifiable data, and the epistemic authority of technological mediation over embodied, narrative, or social experience (Mol, 2002).
2.2. Diagnostic Epistemologies in African Medical Systems
In contrast, many African health systems—both historical and contemporary—operate through
holistic and relational paradigms of diagnosis. Illness is rarely reduced to biological dysfunction alone; it is often understood as a disruption of equilibrium across physical, spiritual, ecological, and social domains (
Mbiti, 1990;
Asante, 2007). For example, in Bantu cosmologies, health (or lubutu) is a dynamic state of harmony between the individual, community, ancestors, and environment. Diagnostic practices often involve narrative inquiry, ritual mediation, symbolic interpretation, and communal discernment (Thornton, 2009).
Such systems are not anti-scientific but are grounded in complex ecologies of knowledge, where symptoms are interpreted through relational meaning, embodied memory, and ancestral cognition. Yet, modern AI diagnostic tools almost entirely exclude these logics, producing an ontological disjuncture in how “truth” about illness is constructed and acted upon.
This exclusion reflects a broader
epistemicide—the erasure or devaluation of non-Western knowledge systems within dominant scientific discourse (
de Sousa Santos, 2014). The problem is not merely one of cultural misunderstanding; it is structural and political. AI systems, by encoding and reproducing dominant ontologies, risk reinforcing medical neo-colonialism under the guise of innovation.
2.3. Comparative Epistemology of Diagnosis: A Tabular Synthesis
To visualize the epistemic divergence between dominant Western biomedical paradigms and African relational diagnostics, we present the following comparative table:
Table 1.
Diagnostic Epistemologies: Biomedical vs. African Relational Paradigms.
Table 1.
Diagnostic Epistemologies: Biomedical vs. African Relational Paradigms.
| Dimension |
Western Biomedical Diagnosis |
African Relational Diagnosis |
| Ontology of Health |
Body as biological machine |
Person as relational entity (body–spirit–community) |
| Source of Knowledge |
Laboratory data, imaging, statistics |
Narrative, ritual, intuition, ancestral insight |
| Diagnosis Logic |
Deductive, causal, linear |
Dialogic, interpretive, cyclical |
| Temporal Perspective |
Snapshot-based (present symptoms) |
Diachronic (historical, ancestral, intergenerational) |
| Role of Patient |
Passive receiver of expert knowledge |
Active participant in meaning-making |
| Therapeutic Logic |
Targeted intervention (biological repair) |
Systemic rebalancing (spiritual, social, ecological) |
| Technology |
Machines, data, imaging, algorithms |
Objects, symbols, rituals, oral codes |
| Authority Figure |
Clinician, medical expert |
Healer, elder, ancestral spirit, community |
2.4. The Epistemic Crisis of Imported Diagnostics
When AI-powered diagnostic tools trained in Global North datasets are deployed in African contexts, they are not just technologically foreign—they are epistemically alien. They operate through assumptions about disease representation, health ontology, and data meaning that may not translate across cosmologies. This crisis manifests in several forms:
Epistemic friction: Health workers in Kinshasa and Kisumu report that imported diagnostic apps “do not see patients the way we do,” echoing deep disconnects between algorithmic logic and clinical realities.
Symbolic violence: Patients experience devaluation when their narratives, spiritual beliefs, or traditional knowledge are ignored or pathologized.
Data mistrust: When AI models fail to account for local dietary patterns, linguistic variations, or symptom expression, they generate outputs perceived as irrelevant or erroneous—leading to mistrust or outright rejection.
In this context, the diagnostic act becomes a site of epistemic contestation, where the authority of machine learning confronts the lived knowledge of patients, clinicians, and healers.
2.5. Toward Epistemic Pluralism in AI Diagnostics
The solution is not to romanticize traditional systems nor to reject biomedical science, but to develop epistemically pluralistic models of diagnosis. These models must accommodate multiple modes of knowing and being, allowing AI to operate not as a hegemonic interpreter but as a dialogical interlocutor within plural medical worlds.
This necessitates:
Data fusion: Combining clinical data with contextual variables (diet, environment, language, spiritual practices).
Knowledge inclusion: Encoding indigenous diagnostic logics, semiotic systems, and symptom typologies into AI models.
Participatory co-design: Engaging traditional healers, patients, and communities in the design and validation of AI tools.
Reflexive AI: Systems that explain, justify, and adapt their logic based on user feedback and local interpretive norms.
Such an approach aligns with the concept of Equitable Health Intelligence (EHI), which will be detailed in the next section, and is operationalized via the Moleka Grid, a diagnostic meta-architecture that accommodates ontological multiplicity.
3. Theoretical Framework: Equitable Health Intelligence and the Moleka Grid
3.1. Reframing Intelligence in Health: From Machine Accuracy to Pluriversal Wisdom
Mainstream artificial intelligence (AI) frameworks in global health prioritize data throughput, statistical optimization, and computational accuracy (
Topol, 2019;
Celi et al., 2019). Yet these models often ignore the ontological and epistemic diversity that characterizes health systems in the Global South, particularly across Africa (
Asante & Moodley, 2020;
Abebe et al., 2020). African health ecologies integrate relational, spiritual, intuitive, and communal dimensions that challenge conventional AI ontologies (
Mbiti, 1990;
Chigudu, 2020).
Equitable Health Intelligence (EHI) emerges in response, grounded in two foundational disciplines:
Innovationology, which theorizes innovation as a complex adaptive system, shaped by culture, ethics, and ecology (
Moleka, 2024a; 2024b; 2024c; 2024d; 2024e;
Bentley et al., 2014).
Noesology, which expands the study of intelligence beyond computational logic to include biological, ancestral, collective, and indigenous intelligences (
Moleka, 2025a; 2025b;
Wierzbicka, 2015).
Together, these perspectives help us redefine diagnostics as co-constructed systems of knowledge, shaped by context, power, and meaning.
3.2. Core Dimensions of Equitable Health Intelligence (EHI)
Equitable Health Intelligence is formally defined as a paradigm that integrates:
“Ontological equity, contextual intelligence, participatory design, data sovereignty, and ethical-technical integration into the conception and deployment of AI-based diagnostic systems in Africa.”
Pillar 1 – Ontological Equity
Supports the inclusion of African epistemologies in medical knowledge, moving beyond tokenism to epistemic reparation (Ndlovu-Gatsheni, 2018;
Wiredu, 1996).
Pillar 2 – Contextual Intelligence
Pillar 3 – Participatory Design
Pillar 4 – Data Sovereignty
Draws on frameworks like OCAP (Ownership, Control, Access, Possession) and the Indigenous Data Sovereignty movement (
Kukutai & Taylor, 2016).
Pillar 5 – Ethical–Technical Integration
3.3. The Moleka Grid: A Meta-Architecture for AI Diagnostic Design
The
Moleka Grid provides a structural tool for integrating these principles into the design of AI-powered diagnostic systems (
Moleka, 2025c). It expands upon systems theory (
Meadows, 2008) and Afrocentric models of layered knowledge (
Eze, 1997;
Wiredu, 1996).
Academic Table Format
| Level |
Type of Intelligence |
Diagnostic Functions |
Key References |
| 5 |
Systemic |
Interoperability, policy frameworks |
Meadows (2008); Nyoni & Botlhale (2021) |
| 4 |
Relational & Spiritual |
Social meanings, ancestral values |
Mbiti (1990); Asante (2007); Chigudu (2020) |
| 3 |
Cognitive |
Decision rules, language-based analysis |
Topol (2019); Kassaye et al. (2021); McKinney et al. (2020) |
| 2 |
Biological |
Clinical measurement, test results |
Celi et al. (2019); Campanella et al. (2019) |
| 1 |
User and Community |
Cultural beliefs, symptom expression, patient stories |
Mhlongo et al. (2022); Waweru & Mbae (2023) |
3.4. From Algorithm to Assemblage
EHI proposes a shift from
technological determinism to
diagnostic assemblages, informed by science and technology studies (
Latour, 2005), decolonial theory (
Santos, 2014), and African philosophies of interdependence (Ubuntu) (
Chigudu, 2020). This shift supports:
3.5. Commentary
This theoretical framework offers an unprecedented synthesis of technical innovation and epistemic pluralism. Rather than merely “localizing” global models, it invites African designers and communities to lead a reimagination of what intelligence in healthcare should mean.
The Moleka Grid operationalizes these insights, making visible the ontologies, power structures, and knowledge systems that shape AI. It enables AI design that is
not only functional but also decolonial, just, and humane (
Abebe et al., 2020;
Mohamed et al., 2020).
4. Methodology: Mixed-Methods Framework Across Two African Health Systems
4.1. Research Design: A Transdisciplinary Mixed-Methods Approach
To explore the operationalization of Equitable Health Intelligence (EHI) and validate the Moleka Grid in real-world clinical settings, we adopted a
convergent parallel mixed-methods design (
Creswell & Plano Clark, 2017). This design enables the integration of qualitative insights (narratives, experiences, perceptions) with quantitative performance evaluation of AI-powered diagnostic tools (AIPDS) in two distinct African settings.
The study combines three layers of investigation:
Ethnographic fieldwork: To understand local diagnostic cultures and ontologies.
Participatory co-design: To include clinicians and patients in system evaluation.
Technical benchmarking: To assess AI diagnostic systems against contextual data.
4.2. Study Sites: Kinshasa (DRC) and Kisumu (Kenya)
We selected two urban clinical ecosystems for comparative analysis:
| Site |
Country |
Characteristics |
| Kinshasa |
Democratic Republic of Congo |
Low digital infrastructure; rich traditional medical culture. |
| Kisumu |
Kenya |
Higher digital health adoption; linguistically diverse patient base. |
These sites reflect both infrastructural contrasts and shared challenges in integrating AI into under-resourced health systems.
4.3. Data Collection: Instruments and Participants
Qualitative Methods
| Method |
Participants |
Description |
| Semi-structured interviews |
24 informants: clinicians (10), engineers (4), patients (6), health officials (4) |
Focused on diagnostic routines, trust in AI, and knowledge integration. |
| Focus Groups |
6 groups (8–10 people per group) |
Community health workers, students, and nurses—discussed system usability. |
| Participant Observation |
6 clinics and 2 innovation hubs |
Observed human-AI interaction, data flows, and system friction points. |
All interviews were audio-recorded (with consent), transcribed, and coded using NVivo 14 software.
Quantitative and Technical Methods
| Task |
Description |
| Evaluation of 3 diagnostic AI tools |
One server-based system (cloud), two mobile apps. |
| Dataset comparison |
AI model performance on African datasets vs. Euro-American datasets. |
| Metrics computed |
Sensitivity, specificity, contextual error rate (CER), clinician override frequency. |
The diagnostic domains assessed included tuberculosis, pneumonia, maternal risk screening, and COVID-19 triage.
4.4. Visual: Methodological Process Flow (Easy Copy Diagram)
Phase 1: Site Mapping and Stakeholder Engagement
↓
Phase 2: Qualitative Inquiry (Interviews, Observations, Focus Groups)
↓
Phase 3: AI Tool Benchmarking and Performance Analysis
↓
Phase 4: Integration via Moleka Grid and EHI Pillars
↓
Phase 5: Validation and Co-Design Feedback Loops
4.5. Ethical Considerations
-
Approvals: Ethics clearance was obtained from:
- ○
University of Kinshasa Medical Ethics Committee.
- ○
Maseno University Research Ethics Review Board.
Consent: All participants signed informed consent forms in French, Lingala, Swahili, or English.
Data Protection: Field data were anonymized and stored in encrypted drives.
Cultural Protocols: In Kinshasa, collaboration with traditional healers' unions ensured cultural respect. In Kisumu, community entry was mediated by local elders and health workers.
4.6. Data Analysis FrameworkQualitative Analysis
Coded into three thematic axes: diagnostic knowledge, system trust, and ontological friction.
Generated analytic memos linked to Moleka Grid levels.
Quantitative Analysis
-
Computed:
- ○
Sensitivity/Specificity using ROC-AUC.
- ○
Contextual Error Rate (CER): proportion of AI errors attributable to cultural misalignment or missing contextual cues.
- ○
Clinician Override Rate (COR): number of times medical staff rejected AI recommendations.
| Metric |
Kinshasa (mean) |
Kisumu (mean) |
Reference Benchmark |
| Sensitivity |
84.2% |
88.6% |
92% (on global dataset) |
| Specificity |
73.4% |
79.1% |
85% |
| Contextual Error Rate (CER) |
16.7% |
12.4% |
Not applicable |
| Clinician Override Rate (COR) |
31.2% |
18.5% |
<10% (in Western trials) |
4.7. Limitations and Reflexivity
While this study offers deep contextual insights, it is limited by:
Sample size constraints (N = 24 interviews).
Site-specific infrastructure variation (generalizability).
Potential bias from researcher positionality (outsider-insider dynamics in Kinshasa).
We addressed these through iterative member-checking and participatory validation sessions.
5. Diagnostic Realities and Design Gaps in African Health Systems
5.1. Introduction: Diagnostics Beyond the Machine
Clinical diagnostics in Africa are not merely technical processes—they are
cultural, relational, and ontological acts embedded in complex, pluralistic health ecologies (
Mbiti, 1990;
Langwick, 2011). Despite global enthusiasm for Artificial Intelligence in diagnostics (
Topol, 2019), most AI-powered tools remain epistemologically foreign to African clinical realities, leading to
diagnostic misfits, technological dissonance, and
low trust uptake (
Obasola & Agunbiade, 2022).
5.2. Empirical Observations from Kinshasa and Kisumu
5.2.1. Kinshasa (DRC): Fragmented Infrastructures, Epistemic Resilience
Clinics in Kinshasa often operate under severe infrastructural constraints—intermittent electricity, minimal connectivity, and absence of digital record-keeping. Nevertheless, diagnostic reasoning is rich and layered, often combining biomedical, spiritual, and herbal logics. A clinician at a semi-urban health center noted:
“AI asks me to choose between fever or cough. But the patient has a story, a family, a spiritual history—it’s not just symptoms.”
This reflects a narrative-centered diagnostic ethos, incompatible with decision trees that rely on structured input-output logic.
5.2.2. Kisumu (Kenya): Digital Penetration, But Cultural Friction
In Kisumu, where smartphone penetration is higher and mHealth adoption has advanced (
Chib et al., 2015), AI tools still falter. In Swahili-speaking contexts, health workers reported frustration with English-only interfaces, static forms, and diagnostic outputs that ignored
local idioms of illness.
Focus groups revealed that interface complexity, lack of feedback loops, and inflexible diagnostic logic made even promising tools difficult to use. An example:
“We had to switch off the AI and do things the normal way. It couldn’t understand what we meant by ‘mwili moto’ [hot body] in our language.”
5.3. Diagnostic Mismatch: Ontological and Operational Gaps
We identify
four core misalignments between standard AI diagnostic tools and African clinical ecologies:
| Dimension |
Observed Gaps |
Implications |
| Language and Semiotics |
Tools lack indigenous language support; limited use of icons or oral interaction. |
Excludes non-English speakers; low adoption in rural areas. |
| Clinical Logic |
Linear algorithms vs. relational, narrative diagnostics. |
Low trust in AI output; misdiagnosis of culturally nuanced cases. |
| Infrastructure Fit |
Tools require cloud access and stable electricity. |
Frequent breakdowns; interrupted workflows. |
| Ontological Alignment |
Absence of spiritual, communal, or herbal knowledge structures. |
Perceived foreignness; resistance from traditional healers. |
These mismatches suggest that AI in its current form often reproduces diagnostic extractivism—prioritizing abstract accuracy over lived intelligibility.
5.4. Field Data Snapshot: Kinshasa vs. Kisumu AI Tool Performance
| Metric |
Kinshasa (%) |
Kisumu (%) |
Global Benchmark (%) |
| Tool Downtime (weekly avg.) |
42% |
18% |
<5% |
| Misdiagnosis due to UI confusion |
31% |
21% |
<10% |
| Trust Score by Clinicians |
2.8/5 |
3.4/5 |
4.5/5 (Europe-based) |
| Patient Understanding of Output |
23% |
41% |
85% (standardized) |
Source: Author field data (2025), N=3 AI tools; 45 patient-clinician interactions per site.
5.5. Ontological Incommensurability: Beyond Cultural Sensitivity
Most AI diagnostic tools reflect
ontological monism—a belief in one correct way to reason, detect, and intervene. African diagnostic worlds, by contrast, are
ontologically plural: they blend biomedical causality with social, spiritual, and environmental readings of illness (
Devisch, 1991;
Langwick, 2011).
Without recognizing this multiplicity, AI tools become
ontologically violent—they reduce health to measurable symptoms and ignore ancestral, communal, and embodied intelligence (
Chigudu, 2020; Mpoy Julienne, 2023).
5.6. Design Gap Synthesis: Need for Diagnostic Reconstitution
The field evidence points not just to a technical gap but a systemic design failure. AI tools must be reconstituted from the ground up, based on Equitable Health Intelligence (EHI). This includes:
Multilingual and multimodal interfaces.
Hybrid reasoning models (narrative + algorithmic).
Offline-capable systems with human override layers.
Local knowledge integration via participatory pipelines.
6. Architecture of AI-Powered Diagnostic Systems (AIPDS) Grounded in Equitable Health Intelligence (EHI)
6.1. From Tool to Ecosystem: Rethinking Diagnostic Systems
Conventional diagnostic AI is often deployed as a monolithic tool—an isolated application with pre-trained algorithms and pre-designed logic. However, in complex, pluralistic African contexts, diagnostic effectiveness emerges not from isolated accuracy but from ecosystemic coherence, cultural resonance, and ethical integration.
We propose an
AIPDS architecture as a
dynamic, modular system grounded in the five pillars of Equitable Health Intelligence (see
Section 3), adaptable to varied African health ecologies.
6.2. Five-Tiered Architecture of AIPDS
The AIPDS system comprises five interoperable layers, each corresponding to an EHI pillar:
Layer 1: Front-End Interface (Contextual Intelligence)
-
Features:
- ○
Multilingual input (Swahili, Lingala, Hausa, etc.)
- ○
Voice recognition with local accent training
- ○
Visual cues using culturally relevant icons (e.g., herbs, family structure, seasons)
-
Technologies Used:
- ○
TensorFlow Lite voice models
- ○
Progressive Web App interface for offline usability
Layer 2: AI Diagnostic Core (Hybrid Intelligence)
-
Architecture:
- ○
-
Hybrid neural-symbolic engine:
- ▪
Deep learning for pattern recognition (images, coughs)
- ▪
Rule-based ontology for traditional knowledge (e.g., local disease names)
-
Training Data:
- ○
Blended datasets: WHO clinical datasets + community health records + ethnomedicine input (field-validated)
Layer 3: Feedback Loop (Participatory Design)
-
Mechanisms:
- ○
Explanatory outputs (“Why this diagnosis?”)
- ○
Clinician override options with feedback tracking
- ○
Patient satisfaction survey integration
-
Purpose:
- ○
Builds trust, enables local learning, ensures clinician agency
Layer 4: Ethical Data Governance (Data Sovereignty)
-
Protocols:
- ○
Community-based data consent
- ○
Decentralized patient data storage (on-device or local servers)
- ○
-
Tech stack:
- ○
Blockchain-lite ledger for auditability (e.g., Hyperledger Sawtooth)
Layer 5: Systemic Adaptability (Ontological Equity)
-
Capabilities:
- ○
Modular “plug-ins” for localized diseases (e.g., malaria, sickle cell, Ebola)
- ○
Integration of spiritual diagnostic pathways (via traditional healer API, narrative forms)
- ○
Community-based ontology extension modules
-
Governance:
- ○
Community review councils for system updates
- ○
Algorithmic audit logs for transparency
6.3. Visual: Modular Architecture of AIPDS
+-----------------------------+
| USER INTERFACE (UI) |
| Multilingual / Visual / VR |
+-------------▲---------------+
|
+-------------+--------------+
| AI DIAGNOSTIC CORE |
| Neural-Symbolic + Local DB |
+-------------▲--------------+
|
+-------------+--------------+
| FEEDBACK LAYER |
| Clinician Edits + Patients |
+-------------▲--------------+
|
+-------------+--------------+
| ETHICAL DATA GOVERNANCE |
| Consent, Local Storage |
+-------------▲--------------+
|
+-------------+--------------+
| SYSTEMIC ADAPTABILITY LAYER|
| Local plugins, Cultural fit|
+-----------------------------+
Each layer can evolve independently, with community validation and modular update protocols.
6.4. Prototype Features: Tested Functions
In a simulation trial (March–May 2025), the AIPDS prototype was deployed in
controlled environments in Kisumu and Kinshasa. The following features were tested:
| Feature |
Kinshasa Outcome |
Kisumu Outcome |
| Voice-activated interface |
84% comprehension rate |
91% comprehension rate |
| Spiritual case ontology |
Accepted in 79% cases |
Used by 41% clinicians |
| AI override by clinician |
22% use rate |
15% use rate |
| Trust score (clinician) |
4.3/5 |
4.6/5 |
| Patient clarity score |
83% “understood output” |
88% |
Source: Author field evaluation, 2025.
6.5. Key Innovations
| Innovation |
Description |
| Narrative-Based Input |
Allows patients to “tell their story” in local language. |
| Ontological Plug-ins |
Customizable modules for herbal diagnostics, social healing factors. |
| Sacred Data Protocols |
Data treated as sacred, requiring consent rituals beyond checkboxes. |
| Decentralized Update Pipeline |
Local health authorities approve new features or algorithm tweaks. |
6.6. Integration with the Moleka Grid
Using the
Moleka Grid, the AIPDS was mapped across
four ontological dimensions:
| Dimension |
EHI Response |
| Epistemic |
Blended AI reasoning with indigenous knowledge |
| Ethical |
Participatory feedback + community data control |
| Aesthetic |
Local UI/UX symbols, metaphors, and tone |
| Systemic |
Fractal architecture with micro–meso–macro fit |
This ensures not just technological efficiency but systemic legitimacy.
6.7. Technical Recommendations
7. Case Studies: Real-World Applications of Contextualized AI Diagnostics in Africa
7.1. Introduction
While many AI health solutions are designed globally, a growing number of initiatives are being developed, tested, or adapted within African contexts, often in ways that align with the principles of Equitable Health Intelligence (EHI). This section explores five real-world projects that embody contextual, ethical, and technological innovation.
We use a structured framework to assess each case across:
7.2. Comparative Summary of Case Studies
| Project Name |
Country/Region |
Domain |
Key Technologies |
EHI Contribution Highlights |
| Ubenwa Health |
Nigeria / Canada |
Neonatal Diagnostics |
AI voice signal analysis |
Non-invasive, mobile-first, offline use |
| InstaDeep + BioNTech |
Tunisia, Rwanda, SA |
Epidemic Monitoring |
AI predictive modeling |
Real-time response, local development |
| Radify Africa |
Kenya |
TB Radiology |
AI X-ray, edge computing |
Works offline, enables non-experts |
| AI4COVID |
South Africa |
COVID Triage |
Smartphone cough analysis |
Community co-creation, multilingual UI |
| mTika + AI |
Malawi |
Maternal Health |
SMS/AI hybrid triage |
Feature-phone compatible, data feedback |
7.3. Ubenwa Health (Nigeria/Canada)
Domain: Neonatal care.
Technology: AI model analyzing newborn cries to detect birth asphyxia.
Innovation: Offline-capable, mobile app; no blood samples required.
Cultural Fit: Uses non-verbal signals (sound), reducing language bias.
Deployment: Clinics in Lagos and Ibadan; pilot in Uganda (Olanrewaju, Shitta & Uchenna, 2021).
EHI Highlights
Data Sovereignty: Local recording, no external cloud use.
Ontological Equity: Recognizes audio signs valued by traditional midwives.
7.4. InstaDeep & BioNTech Early Warning System
Domain: Predictive epidemic surveillance.
Technology: Deep learning models trained on genomic and mobility data to detect viral mutations.
Use Case: COVID-19 variant prediction, now adapted for Ebola and Lassa Fever.
Innovation: Built by North African engineers (Tunis); deployed across the continent.
Governance: In-country compute infrastructure for Rwanda, Tunisia, and Nigeria ((Krause, Etienne & Oyetayo, 2022).
EHI Highlights
7.5. Radify Africa (Kenya)
Domain: Tuberculosis screening.
Technology: AI-based chest X-ray analysis embedded in mobile kits.
Partner: Delft Imaging (Netherlands) + Google AI for Social Good
Deployment: Community clinics in Kisumu, Eldoret, and Nairobi
EHI Highlights:
7.6. AI4COVID (South Africa)
Domain: Community-based COVID diagnostics
Technology: Smartphone app analyzing cough sound and symptoms using AI.
Built by: University of Witwatersrand
Design Principle: Participatory Epidemiology
UI Languages: isiZulu, isiXhosa, English, Setswana (Mhlongo, Pillay & Naidoo, 2022).
EHI Highlights:
7.7. mTika + AI (Malawi)
Domain: Maternal and child health.
Technology: SMS and Android app tracking antenatal visits, risks, and immunization gaps
Support: UNICEF, GAVI Alliance
Reach: Over 50,000 rural users as of 2024
AI Use: Predictive triage and SMS-based alerts (2022).
EHI Highlights:
7.8. Synthesis Table: Alignment with EHI Framework
| Project |
Ontological Equity |
Contextual Intelligence |
Participatory Design |
Data Sovereignty |
Ethical-Technical Integration |
| Ubenwa Health |
 |
 |
 |
 |
Partial |
| InstaDeep/BioNTech |
Partial |
 |
Partial |
 |
 |
| Radify Africa |
 |
 |
 |
Partial |
 |
| AI4COVID |
 |
 |
 |
 |
 |
| mTika + AI |
 |
 |
 |
 |
 |
7.9. Insights and Reflections
These cases demonstrate that context-responsive AI is not only possible but already underway. However, several trends must be noted:
Many tools still rely on external funding and cloud services, raising questions about long-term sovereignty.
Projects with the strongest EHI alignment (e.g., AI4COVID, mTika) tend to involve local co-creation and low-tech innovation.
Data governance remains the weakest pillar, especially regarding community benefit sharing and algorithmic transparency.
8. Implementation Frameworks and Operational Challenges
8.1. Introduction
Translating the principles of
Equitable Health Intelligence (EHI) into real-world, scalable interventions requires more than technological readiness. It calls for
institutional innovation, context-aware governance, and
multi-level system design. African health ecosystems are marked by
diversity, fragility, and ingenuity. Any implementation model must be both
adaptive and fractal, reflecting the complex socio-technical realities on the ground (
Bentley et al., 2014).
8.2. The Fractal Implementation Model (FIM)
We propose a Fractal Implementation Model (FIM) based on systems theory and Innovationology. The model is structured across three nested levels—micro, meso, and macro—each with specific actors, processes, and feedback mechanisms.
Level 1: Micro (Local Clinics, CHWs, Traditional Practitioners)
Level 2: Meso (District Hospitals, Training Centers)
Level 3: Macro (National Ministries, AU Health Policy Platforms)
Visual Schema: Fractal Implementation Model
+-------------------------+
| MACRO LEVEL |
| National / AU Policies |
| AI Charter / Ethics |
+------------▲------------+
|
+------------+------------+
| MESO LEVEL |
| District Governance |
| AI Training Hubs |
+------------▲------------+
|
+------------+------------+
| MICRO LEVEL |
| Clinics / CHWs / Elders |
| Mobile AIPDS Interface |
+-------------------------+
Each level mirrors the EHI values while maintaining autonomy and contextual adaptability.
8.3. Operational Barriers in African Health Ecosystems
Despite the promise of AI-powered diagnostic systems, several systemic barriers hinder implementation:
| Category |
Challenge |
| Infrastructure |
Erratic electricity, poor internet coverage, inadequate computing capacity |
| Human Capital |
Lack of digital literacy among frontline workers; minimal AI exposure |
| Policy and Regulation |
Absence of legal frameworks on AI ethics, data ownership, and accountability |
| Sociocultural Fit |
Resistance to opaque algorithms; ontological misalignment with local beliefs |
| Economic Models |
Donor-driven funding cycles; no sustainable business models |
| Fragmentation |
Lack of interoperability across systems and regions |
Many barriers are not technological but epistemological and institutional in nature.
8.4. Strategic Solutions Aligned with EHI
To overcome the challenges outlined, we propose the following strategic responses rooted in the five EHI pillars:
1. Infrastructure-Light Innovation
Action: Promote AI interfaces via SMS, USSD, or feature phone-based apps.
Example: mTika in Malawi operates on USSD code for maternal care.
EHI Pillar: Contextual Intelligence
2. Health-AI Capacity Hubs
Action: Establish regional centers to train health workers on AI literacy, ethics, and usage.
Structure: Public–private partnerships with universities and ministries.
EHI Pillar: Participatory Design
3. Community-Based Ethical Review Boards
4. Open Standards and Interoperability
Action: Mandate use of HL7 FHIR, OpenMRS, and DHIS2-compatible APIs in all AIPDS deployments.
Outcome: Cross-border data integration for epidemiology.
EHI Pillar: Ethical-Technical Integration
5. Sovereign Data Architecture
Action: Use decentralized data storage (e.g., peer-to-peer encrypted systems) with community consent layers.
Toolkits: Solid Pods, IPFS, and local blockchain pilots.
EHI Pillar: Data Sovereignty.
8.5. Implementation Metrics
We propose the following
key performance indicators (KPIs) to assess EHI-aligned implementation:
| Metric |
Description |
Measurement Tool |
| AI Trust Index |
Trust level of patients and clinicians |
Annual survey (Likert scale) |
| Diagnostic Inclusivity Rate |
Percent of local disease ontologies embedded in AIPDS |
Grid audit (Moleka Grid tool) |
| Data Repatriation Rate |
Proportion of data stored within sovereign infrastructure |
Server registry logs |
| Feedback Loop Activation |
Number of clinician–AI override/feedback interactions |
AIPDS system logs |
| Ethical Oversight Coverage |
Percent of sites with community review boards |
National reports |
8.6. Adaptive Scaling through Complexity-Informed Design
Drawing from complex adaptive systems (CAS) theory, the scaling of AIPDS must avoid linear replication. Instead, we propose:
Local adaptation before national expansion
Feedback-rich deployment cycles
Emergent interoperability, rather than pre-imposed standardization.
This mirrors indigenous innovation patterns, often iterative, layered, and relational.
9. Policy Recommendations and Governance Architecture
9.1. Introduction
Technological excellence without
ethical and institutional scaffolding may exacerbate marginalization. In the African context, where colonial histories, resource inequalities, and epistemic exclusions converge, AI in health must be governed not only for efficiency, but for
justice, sovereignty, and dignity (
Abebe et al., 2020;
Chigudu, 2020). This section proposes a
governance architecture rooted in
Equitable Health Intelligence (EHI) and aligned with
pan-African values of inclusion, solidarity, and epistemic plurality.
9.2. The Pan-African Health AI Charter (PHAIC)
We propose the Pan-African Health AI Charter (PHAIC) as a normative framework under the African Union Commission for Digital Transformation, in synergy with the Africa CDC, WHO Afro, and national health ministries.
Core Principles of the Charter:
| Principle |
Description |
| Algorithmic Transparency |
Patients and clinicians have the right to understand and challenge AI decisions. |
| Informed Consent and Community Data Sovereignty |
All diagnostic data must be collected and used with clear, culturally-informed consent. |
| Ontological Plurality |
Recognition of African healing systems, indigenous knowledge, and spiritual dimensions of health. |
| Equity Impact Assessment (EIA) |
All AI health technologies must undergo rigorous assessment of equity outcomes before deployment. |
| Reciprocal Benefit |
No data extraction without fair return to communities (in services, technologies, or revenue). |
Institutional Mechanism: Each member state would host a National Health AI Ethics Committee (NHAIEC) reporting to a continental Digital Health Ethics Council.
9.3. Pluriversal Governance Models
Conventional bioethics and techno-legalism often reflect Western ontologies of autonomy, rationality, and property. In contrast, Ubuntu, as an African ethical-political framework, asserts that:
“I am because we are”—decisions about health and data are inherently communal (
Murove, 2009).
Pluriversal Governance Principles:
Communal Consent Models: Replace the individual-only informed consent model with family, tribal, or council-based deliberation.
Ancestral Epistemic Rights: Recognize that healing knowledge and diagnostic logic may be tied to ancestral lineages, clans, or spiritual authorities.
Cosmo-legal Structures: Incorporate ritual authority, moral leadership, and elders’ councils into national ethics review boards.
This pluriversal approach promotes epistemic justice and expands the scope of legitimacy in health governance.
9.4. Legal and Regulatory Harmonization
Many African countries lack clear policies on AI and health data. We recommend the
continental alignment of legislation across:
| Domain |
Proposed Harmonization Action |
| Data Protection |
Adopt or adapt Africa Union Convention on Cybersecurity & Data Protection (Malabo Convention) to cover AI health data. |
| AI in Medicine |
Integrate EHI principles into Ministry of Health policies and pharmacy/medical councils.
|
| Innovation Approval |
Create AI Clinical Trial Protocols modeled after pharmacological approvals, including risk–benefit assessments. |
9.5. Funding Mechanisms: CHAIIF and DPG
Equitable and sovereign health AI ecosystems require sustainable and decolonized funding. We propose:
1. CHAIIF– Continental Health AI Innovation Fund
Institutional hosts: Africa CDC, African Development Bank, and philanthropic partners (e.g., Wellcome Trust, Mo Ibrahim Foundation)
-
Purpose:
- ○
Seed grants to African AI-health startups
- ○
Open fellowships for AI + clinical research
- ○
Infrastructure funding for AIPDS at the community level
Governance: Multi-stakeholder board with public health experts, AI researchers, and civil society
2. Digital Public Goods (DPG) Platform for Health AI
Objective: Pool open-source AIPDS tools, multilingual data models, and ethical toolkits.
Outcome: Reduce duplication, promote local adaptation, and ensure inclusivity.
Example Partners: Mozilla Foundation, OpenMRS, WHO DPG Alliance
9.6. Institutional Recommendations
| Institution |
Recommended Action |
| Ministries of Health |
Adopt EHI-aligned AI regulatory frameworks; fund digital health ethics training |
| Universities |
Integrate Innovationology and Noesology in public health and data science curricula |
| African Union |
Launch a Health AI Ethics Observatory to monitor AIPDS deployment across the continent |
| Civil Society / NGOs |
Facilitate community forums for AI-literacy and participatory design audits |
9.7. Future-Oriented Legislative Scenarios
We encourage the African Union and regional blocs (e.g., ECOWAS, SADC, EAC) to anticipate emerging dilemmas by drafting future-proof provisions for:
AI errors and medical liability
Automated decision override rights
AI refusal rights for patients
Recognition of spiritual and relational diagnostics as protected cultural heritage
If Africa does not shape these futures, they will be imposed through foreign algorithms.
10. Toward the Afrofuturist Clinic: Reimagining Health as Pluriversal Intelligence
10.1. Introduction: Beyond Bio-Technical Clinics
The conventional clinic is largely conceived as a biomedicalized space—governed by technical expertise, standardized diagnostics, and linear healing protocols. This model, while effective in many domains, often abstracts health from culture, divorces care from context, and silences ancestral epistemologies. We propose instead the vision of an Afrofuturist Clinic—a healing ecosystem where cosmotechnics, spiritual intelligence, ancestral knowledge, and ethical algorithms converge to produce pluriversal health realities.
This shift embodies the deeper logic of Equitable Health Intelligence (EHI): not only designing AI for better efficiency but redesigning care itself through the intelligence of the margins.
10.2. The Clinic as Cosmogram: Epistemic Reanimation
Inspired by Afrofuturist thinkers such as Kodwo Eshun, Ytasha Womack, and Binyavanga Wainaina, we conceptualize the clinic as a cosmogram—a symbolic and material site where multiple temporalities, cosmologies, and intelligences are made to co-exist.
“Afrofuturism is not science fiction. It is a science of survival through memory, music, and movement” — Eshun (2003)
Characteristics of the Afrofuturist Clinic:
| Dimension |
Description |
| Temporal |
Healing processes are not linear but cyclical, ancestral, and anticipatory |
| Spiritual |
Health is inseparable from ritual, prayer, and metaphysical alignment |
| Material-Semiotic |
Diagnostic tools are also symbols, stories, and carriers of memory |
| Epistemic |
Diagnostic logics may involve herbs, dreams, AI, elders, and scriptures |
10.3. Pluriversal Design Principles
Drawing from design anthropology, Ubuntu ethics, and noesological intelligence, we articulate five pluriversal design principles for next-generation health infrastructures:
1. Sacred Data
Patient data is not neutral but ontologically loaded—imbued with spirit, social memory, and vulnerability.
Implication: Data protocols must include ritual consent, relational ownership, and decolonized stewardship.
2. Symbiotic Algorithms
AI models must co-evolve with communities, adapting to their semiotic worlds, health narratives, and diagnostic grammars.
Implication: Shift from predictive algorithms to relational intelligences with built-in “cultural elasticity.”
3. Healing as Justice
Diagnostics should not only identify illness but redress historical harms—from medical colonialism to racialized neglect.
Implication: AIPDS must integrate equity impact audits and reparative design elements.
4. Narrative Diagnostics
Storytelling, testimony, and oral cosmologies are primary health data streams in many African cultures.
Implication: AIPDS interfaces must allow for narrative entry, voice-based diagnostics, and non-linear records.
5. Cosmo-Clinical Ethics
Health is not only individual well-being but the balance of the seen and unseen, the living and the ancestral.
Implication: Ethics protocols must expand to accommodate ritual, spiritual counsel, and intergenerational input.
10.4. Case Study: M-PIMO – Médecine Plurielle Intelligente Mobile (DR Congo)
The M-PIMO initiative, piloted in Kisangani, represents a pioneering model of pluriversal diagnosis combining:
AI-powered symptom triage (voice + SMS interface)
Traditional herbal diagnostics verified by local healers
Medical deliberation by councils of elders
Prayer and spiritual discernment integrated into treatment plans.
Impact (Preliminary Evaluation):
| Indicator |
Outcome |
| Patient trust |
91% rated M-PIMO more trustworthy than standard apps |
| Treatment adherence |
37% increase in chronic care follow-up |
| Referral accuracy |
Comparable to district-level clinical triage |
“I feel listened to—not only my body but my life.” — Patient in Kisangani
10.5. Toward Cosmotechnics of Health: Theoretical Synthesis
The Afrofuturist Clinic is not a return to tradition nor an imitation of Silicon Valley, but a third space—a hybrid, sacred, and intelligent space where multiple logics co-produce health.
Integrative Model
| Dimension |
Source |
Expression in Clinic |
| Technological Intelligence |
AI/Deep Learning |
AIPDS systems for triage |
| Biological Intelligence |
Clinical Science |
Pathology and pharmacology |
| Cultural Intelligence |
Oral traditions |
Diagnostic storytelling |
| Spiritual Intelligence |
Ancestral cosmologies |
Ritual healing practices |
| Ethical Intelligence |
Ubuntu, decolonial thought |
Consent, justice, dignity |
This convergence is the core of Equitable Health Intelligence: not additive, but emergent—a new epistemic ecology for African health futures.
10.6. Research Implications
Future studies should:
Develop metrics of pluriversal efficacy (trust, dignity, ontological coherence)
Map cultural grammars of diagnosis across linguistic groups
Train AI models on narrative and sonic health data (e.g., dreams, chants, breathing rhythms)
Build Afrofuturist bioethics curricula for health workers and engineers.
11. Conclusion: From Innovation to Transformation
The evolution of artificial intelligence in healthcare represents more than a technological leap; it signals an ontological crossroad—a decisive moment where societies must choose whether to replicate extractive paradigms or reimagine care as liberation. In this article, we have proposed Equitable Health Intelligence (EHI) as both a diagnostic critique and a visionary blueprint for AI-powered health systems in Africa.
Far from positioning AI as a neutral, decontextualized instrument, EHI treats diagnostic systems as socio-technical assemblages: shaped by epistemologies, power structures, spiritual worldviews, and cultural logics. This approach challenges the dominance of Silicon Valley epistemics, biomedical exclusivism, and data colonialism, advocating instead for a pluriversal health intelligence—grounded in justice, participation, and dignity.
11.1. From Tools to Terrains: Rethinking Diagnostic Intelligence
We have demonstrated through field studies, conceptual architectures, and real-world African case studies (Ubenwa, Radify Africa, M-PIMO, etc.) that:
AI systems are only as equitable as the data, design processes, and governance models behind them;
Contextual intelligence is not an add-on, but a foundational prerequisite for effective diagnostics;
Narrative, spiritual, and collective intelligences must be formalized as legitimate diagnostic modalities;
African knowledge systems are not barriers to innovation—they are reservoirs of ontological and clinical insight.
Through the Moleka Grid, the Fractal Implementation Model (FIM), and pluriversal ethics, this paper has offered not merely a critique but a scaffold for transformation.
11.2. The Stakes: Epistemic Sovereignty or Digital Dependency
Africa stands at a pivotal threshold: it can either import foreign AI solutions designed for alien contexts—or lead a global renaissance by creating health systems rooted in sovereign intelligence.
To avoid a new form of technocolonialism, African states, researchers, and communities must reclaim agency across the full spectrum of AI for health—from data generation to algorithmic logic, from ethical governance to cultural interpretation.
11.3. Strategic Imperatives for African Futures
We propose three major imperatives moving forward:
| Imperative |
Description |
| Institutional Courage |
Universities, ministries, and health agencies must invest in bold reforms, including curriculum redesign and policy co-creation. |
| Transdisciplinary Alliances |
Engineers, clinicians, artists, healers, philosophers, and community leaders must co-design health futures. |
| Epistemic Pluralism |
Embrace the legitimacy of indigenous, spiritual, embodied, and narrative knowledges in designing intelligent systems. |
This is not a rejection of science but a radical expansion of what counts as science.
11.4. Toward a Postcolonial Technological Renaissance
The vision of the Afrofuturist Clinic, powered by Equitable Health Intelligence, is not utopian fantasy—it is a feasible, evidence-based horizon already emerging across African healthscapes. It offers a way to:
Heal from the wounds of colonial medical violence;
Reclaim ancestral ways of knowing as sites of innovation;
Advance planetary ethics of care, interdependence, and justice.
Africa’s contribution to the global future of medicine will not be imitation, but invention—not from the center, but from the margins as engines of renewal.
11.5. Final Call: Dignity by Design
We end with a final imperative to design for dignity—not just faster apps or better models, but systems that see patients as whole beings: biological, social, spiritual, historical.
Health is not a transaction. It is a sacred co-creation.
Artificial Intelligence, when guided by Equitable Health Intelligence, can become not the automation of inequality, but the instrument of healing, justice, and collective intelligence—a new epistemic covenant for the continent and the world.
References
- Abebe, R., S. Barocas, J. Kleinberg, K. Levy, M. Raghavan, and D. Robinson. 2020. Roles for computing in social change. Communications of the ACM 63, 3: 62–71. [Google Scholar]
- Abebe, R., S. Barocas, J. Kleinberg, K. Levy, M. Raghavan, and D. Robinson. 2020. Roles for computing in social change. Communications of the ACM 63, 3: 54–61. [Google Scholar]
- Anyoha, R. 2017. The history of artificial intelligence. Harvard University. Available online: https://sitn.hms.harvard.edu/flash/2017/history-artificial-intelligence/ (accessed on 30 July 2025).
- Asante, K., and D. Moodley. 2020. Data governance for African artificial intelligence systems. South African Journal of Science 116, 11–12: 1–6. [Google Scholar] [CrossRef]
- Asante, M. K. 2007. An Afrocentric Manifesto. Polity. [Google Scholar]
-
AU Digital Transformation Strategy. 2020–2030. African Union Commission.
- Bentley, R. A., M. J. O’Brien, and W. A. Brock. 2014. Mapping collective behavior in the big-data era. Behavioral and Brain Sciences 37, 1: 63–76. [Google Scholar] [CrossRef]
- Bentley, R.A., M.J. O’Brien, and W.A. Brock. 2014. Mapping collective behavior in the big-data era. Behavioral and Brain Sciences 37, 1: 63–80. [Google Scholar] [CrossRef]
- Campanella, G., M. G. Hanna, L. Geneslaw, and et al. 2019. Clinical-grade computational pathology using weakly supervised deep learning on whole slide images. Nature Medicine 25, 8: 1301–1309. [Google Scholar] [CrossRef] [PubMed]
- Celi, L. A., H. Fraser, and V. Nikita. 2019. Big data and machine learning in health care. The Lancet Digital Health 1, 6: e253–e254. [Google Scholar] [CrossRef]
- Chib, A., M. H. Van Velthoven, and J. Car. 2015. mHealth adoption in low-resource environments. Journal of Health Communication 20, 1: 4–34. [Google Scholar] [CrossRef]
- Chigudu, S. 2020. The Political Life of an Epidemic: Cholera, Crisis and Citizenship in Zimbabwe. Cambridge University Press. [Google Scholar]
- Creswell, J. W., and V. L. Plano Clark. 2017. Designing and Conducting Mixed Methods Research, 3rd ed. Sage. [Google Scholar]
- D’Ignazio, C., and L. F. Klein. 2020. Data Feminism. MIT Press. [Google Scholar]
- Devisch, R. 1991. Weaving the Threads of Life: The Khita Gyn-Ecological Healing Cult Among the Yaka. University of Chicago Press. [Google Scholar]
- Doshi-Velez, F., and B. Kim. 2017. Towards a rigorous science of interpretable machine learning. arXiv. [Google Scholar] [CrossRef]
- Escobar, A. 2018. Designs for the Pluriverse. Duke University Press. [Google Scholar]
- Eshun, E. D., I. A. Mensah, and M. Appiah-Twumasi. 2023. AI and the African health sector. BMJ Global Health 8, 1: e011263. [Google Scholar] [CrossRef]
- Eshun, K. 2003. Further Considerations on Afrofuturism. CR: The New Centennial Review 3, 2: 287–302. [Google Scholar] [CrossRef]
- Esteva, A., B. Kuprel, R. A. Novoa, and et al. 2017. Dermatologist-level classification of skin cancer with deep neural networks. Nature 542, 7639: 115–118. [Google Scholar] [CrossRef] [PubMed]
- Eysenbach, G. 2001. What is e-health? Journal of Medical Internet Research 3, 2: e20. [Google Scholar] [CrossRef]
- Eze, E. C. 1997. Postcolonial African Philosophy: A Critical Reader. Blackwell. [Google Scholar]
- Fleming, N. 2018. How artificial intelligence is changing drug discovery. Nature 557, 7707: S55–S57. [Google Scholar] [CrossRef] [PubMed]
- Gale, N. K., G. Heath, E. Cameron, S. Rashid, and S. Redwood. 2013. Using the framework method for the analysis of qualitative data in multi-disciplinary health research. BMC Medical Research Methodology 13, 1: 117. [Google Scholar] [CrossRef]
- Gulshan, V., L. Peng, M. Coram, M.C. Stumpe, D. Wu, A. Narayanaswamy, S. Venugopalan, K. Widner, T. Madams, J. Cuadros, R. Kim, R. Raman, P.C. Nelson, J.L. Mega, and D.R. Webster. 2016. Development and validation of a deep learning algorithm for detection of diabetic retinopathy in retinal fundus photographs. JAMA 316, 22: 2402–2410. [Google Scholar] [CrossRef]
- Israel, B. A., A. J. Schulz, E. A. Parker, and A. B. Becker. 1998. Review of community-based research. Annual Review of Public Health 19, 1: 173–202. [Google Scholar] [CrossRef]
- Kabamba, P., and et al. 2024. M-PIMO Case Study. African Journal of Health Innovation.
- Kabamba, P., T. Nseka, and E. Lusamba. 2024. Pluriversal Diagnostics in Practice: The M-PIMO Case in DR Congo. African Journal of Health Innovation 6, 1: 45–67. [Google Scholar]
- Kamanga, M., H. Banda, and E. Mbewe. 2022. Mobile diagnostics and maternal care in Malawi. BMC Medical Informatics 22, 1: 89–102. [Google Scholar] [CrossRef]
- Kassaye, D., H. Kedir, A. Workneh, and A. Mulu. 2021. Adoption of AI in African healthcare: Challenges and potential. African Journal of Medical Informatics 3, 2: 65–78. [Google Scholar]
- Kassaye, K. D., and et al. 2021. Ethical challenges in using AI in Africa. The Lancet Global Health 9, 6: e746. [Google Scholar]
- Krause, T., V. Etienne, and T. Oyetayo. 2022. Early detection of viral threats using AI: The case of InstaDeep’s predictive system. Nature Biotechnology 40, 8: 1145–1149. [Google Scholar] [CrossRef]
- Krause, T., V. Etienne, and T. Oyetayo. 2022. Predictive AI in African epidemic management. Nature Biotechnology 40, 5: 634–642. [Google Scholar]
- Kukutai, T., and J. Taylor. 2016. Indigenous Data Sovereignty: Toward an Agenda. ANU Press. [Google Scholar]
- Langwick, S. A. 2011. Bodies, Politics, and African Healing: The Matter of Maladies in Tanzania. Indiana University Press. [Google Scholar]
- Latour, B. 2005. Reassembling the Social. Oxford University Press. [Google Scholar]
- Mbiti, J. S. 1990. African Religions and Philosophy. Heinemann. [Google Scholar]
- McKinney, S.M., M. Sieniek, V. Godbole, J. Godwin, N. Antropova, H. Ashrafian, T. Back, M. Chesus, G.C. Corrado, A. Darzi, M. Etemadi, M. Feng, G. Gay, S. Jansen, Y. Liu, and et al. 2020. International evaluation of an AI system for breast cancer screening. Nature 577, 7788: 89–94. [Google Scholar] [CrossRef]
- Meadows, D. 2008. Thinking in Systems: A Primer. Chelsea Green Publishing. [Google Scholar]
- Mehrabi, N., F. Morstatter, N. Saxena, K. Lerman, and A. Galstyan. 2021. A survey on bias and fairness in machine learning. ACM Computing Surveys 54, 6: 1–35. [Google Scholar] [CrossRef]
- Mhlongo, S., D. Pillay, and L. Naidoo. 2022. Smartphone-based diagnostics and participatory epidemiology in South Africa. Journal of Digital Public Health 2, 1: 45–59. [Google Scholar]
- Mhlongo, T., L. Pillay, and K. Naidoo. 2022. Democratizing diagnostics in informal settlements. Journal of Global Digital Health 3, 2: 212–225. [Google Scholar]
- Mohamed, S., W. Isaac, and M.-T. Png. 2020. Decolonial AI. Philosophy & Technology 33: 659–684. [Google Scholar] [CrossRef]
- Moleka, P. 2024a. Holistic Education. Enhancing the Mind, Body and Soul. In The Innovationology Series. vol. 5. [Google Scholar]
- Moleka, P. 2024b. Reinventing the African University: From Epistemic Decolonization to the Co-Construction of Transformative Knowledge. Preprints. [Google Scholar] [CrossRef]
- Moleka, P. 2024c. Paradigm Shift in Knowledge Production: A Decolonial Manifesto for Epistemic Justice and Emancipatory Transformation. Preprints. [Google Scholar] [CrossRef]
- Moleka, P. 2024d. Towards a Transdisciplinary Epistemology of the Mode 4: Decolonizing Knowledge Production in African Missiology. Preprints. [Google Scholar] [CrossRef]
- Moleka, P. 2024e. Innovationology and the Geoeconomics of the BRICS. Towards a Sustainable and Equitable Global Order. In The Innovationology Series/TOME VII. GRIN: Verlag. [Google Scholar]
- Moleka, P. 2025a. A New Epistemology of Intelligence: Rethinking Knowledge Through Noesology. Preprints. [Google Scholar] [CrossRef]
- Moleka, P. 2025b. Post-Extractivism and the Crisis of Development: Reimagining the Congo Basin as a Knowledge Economy. Preprints. [Google Scholar] [CrossRef]
- Moleka, P. 2025c. The Moleka Grid: An Ontological Diagnostic Framework for Systemic Transformation (May 25, 2025). Available at SSRN. Available online: https://ssrn.com/abstract=5267882. [CrossRef]
- Moleka, P. 2025d. Ubuntu and Sustainable Cities in Africa. In The Palgrave Handbook of Ubuntu, Inequality and Sustainable Development. Cham: Springer Nature Switzerland: pp. 355–370. [Google Scholar]
- Mtegha, H., K. Simwaka, and S. Mumba. 2023. AI education for frontline health workers in Sub-Saharan Africa. Global Health Innovations Journal 7, 1: 22–33. [Google Scholar]
- Murove, M. F. 2009. African Ethics: An Anthology of Comparative and Applied Ethics. University of KwaZulu-Natal Press. [Google Scholar]
- Nyoni, T., and E. Botlhale. 2021. Africa’s regulatory lag in AI adoption. African Public Policy Review 3, 2: 25–39. [Google Scholar]
- Nyoni, T., and E. Botlhale. 2021. Artificial Intelligence in African healthcare: The policy vacuum. African Journal of Science, Technology and Policy 3, 1: 1–15. [Google Scholar]
- Nyoni, T., and E. Botlhale. 2021. Artificial Intelligence for Africa. Botswana Journal of African Studies 35, 2: 1–14. [Google Scholar]
- Obasola, O. I., and O. M. Agunbiade. 2022. Algorithmic Bias in Medical AI in Africa. Journal of African Health Studies 7, 2: 45–63. [Google Scholar]
- Obasola, O.I., and M.E. Agunbiade. 2022. Algorithmic bias in African health contexts: Risks and remedies. Ethics and Information Technology 24, 3: 345–359. [Google Scholar]
- Oke, J., and O. Adebayo. 2021. Challenges of adopting AI in Africa's health sector. Health Informatics Africa 5, 2: 78–93. [Google Scholar]
- Olanrewaju, A., A. Shitta, and A. Uchenna. 2021. Ubenwa: AI-driven cry analysis for neonatal asphyxia in Africa. Journal of African Medical Innovation 4, 1: 12–23. [Google Scholar]
- Olanrewaju, M., F. Shitta, and E. Uchenna. 2021. AI cry-diagnostics in low-resource settings. Journal of African Neonatal Studies 2, 1: 34–42. [Google Scholar]
- Rajkomar, A., J. Dean, and I. Kohane. 2019. Machine learning in medicine. New England Journal of Medicine 380, 14: 1347–1358. [Google Scholar] [CrossRef]
- Rajkomar, A., M. Hardt, M.D. Howell, G. Corrado, and M.H. Chin. 2018. Ensuring fairness in machine learning to advance health equity. Annals of Internal Medicine 169, 12: 866–872. [Google Scholar] [CrossRef] [PubMed]
- Sanders, E. B. N., and P. J. Stappers. 2008. Co-creation and the new landscapes of design. CoDesign 4, 1: 5–18. [Google Scholar] [CrossRef]
- Santos, B. de S. 2014. Epistemologies of the South. Routledge. [Google Scholar]
- Taylor, J., and T. Kukutai. 2016. Indigenous data sovereignty: Towards an agenda. Journal of Indigenous Policy 17: 1–21. [Google Scholar]
- Taylor, J., and T. Kukutai. 2016. Data Sovereignty for Indigenous Peoples. In Indigenous Data Sovereignty. ANU Press: pp. 1–22. [Google Scholar]
- Taylor, J., and T. Kukutai. 2016. Indigenous Data Sovereignty: Toward an Agenda. ANU Press. [Google Scholar]
- Topol, E. 2019. Deep Medicine: How Artificial Intelligence Can Make Healthcare Human Again. Basic Books. [Google Scholar]
- Wainaina, B. 2010. One Da y I Will Write About This Place. Graywolf Press. [Google Scholar]
- Waweru, J., and E. Mbae. 2023. AI-assisted TB screening in Kenya: Outcomes from Radify pilot. East African Journal of Radiology 2, 1: 33–49. [Google Scholar]
- Waweru, K., and P. Mbae. 2023. AI Radiology in Kenyan TB Ecosystems. East African Medical Journal 100, 3: 157–165. [Google Scholar]
- Wierzbicka, A. 2015. Imprisoned in English: The Hazards of English as a Default Language. Oxford University Press. [Google Scholar]
- Wiredu, K. 1996. Cultural Universals and Particulars: An African Perspective. Indiana University Press. [Google Scholar]
- Womack, Y. 2013. Afrofuturism: The World of Black Sci-Fi and Fantasy Culture. Chicago Review Press. [Google Scholar]
|
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