Submitted:
22 August 2025
Posted:
25 August 2025
You are already at the latest version
Abstract
Keywords:
1. Introduction
- Modular purpose: Each agent targets one core task (e.g., file classification, anonymization, modality detection).
- Distinct inputs & outputs: Accepts defined inputs, performs processing, and produces deterministic outputs.
2. Literature Review
2.1. AI in Healthcare Systems
2.1.1. Insights from Academia
2.1.2. Industry Solutions
2.2. Agentic AI in Healthcare
2.2.1. Insights from Academia
2.2.2. Industry Solutions
3. Data
4. Workflow
5. Proposed Agentic Pipeline
5.1. Type Identification Agent
5.2. Feature Identification Agent
| Agent | Purpose and Functionality |
|---|---|
| Type identification agent | Detects data modality, structured (tabular) or unstructured (image) using Magika, so data-specific downstream workflows can be used. |
| Feature identification agent | Extracts the features from the data, columns for tabular and image modality for image data. |
| Feature enrichment agent | Enriches the feature by adding additional keywords based on user intent |
| Additional file integration agent | Adds more context to each feature based on the additional files uploaded by the user. |
| Input-output optimization agent | Based on the feature descriptions and user intent, finds the most optimal input-output feature set. |
| Modeling advisor agent | Based on feature description, input-output set, and user intent, recommends details of the appropriate machine learning model to use, a set of hyperparameters, preprocessing steps, etc. |
5.3. Feature Enrichment Agent
5.4. Additional File Integration Agent
5.5. Input–Output Optimization Agent
5.6. Modeling Advisory Agent
6. Implementation
7. Discussion
7.1. Limitations and Future Work
7.2. Ethical Considerations
References
- Rajpurkar, P.; Chen, E.; Banerjee, O.; Topol, E.J. AI in health and medicine. Nature medicine 2022, 28, 31–38.
- L.E.K. Consulting. Tapping Into New Potential: Realising the Value of Data in the Healthcare Sector. https://www.lek.com/insights/hea/eu/ei/tapping-new-potential-realising-value-data-healthcare-sector, 2023. Between 2020 and 2025, the total amount of global healthcare data is projected to increase from 2,300 to 10,800 exabytes, representing a CAGR of 36%.
- Schmetz, A.; Kampker, A. Inside Production Data Science: Exploring the Main Tasks of Data Scientists in Production Environments. AI 2024, 5, 873–886.
- Newswire. Medical Reports (newswire). https://www.newswire.com/news/ai-and-interoperability-trends-black-books-amia-membership-survey-22531347#:~:text=Interoperability%20remains%20a%20persistent%20challenge,sharing%20obstacles/, 2024. Medical reports from newswire about data challenges.
- Aggarwal, R.; Sounderajah, V.; Martin, G.; Ting, D.S.; Karthikesalingam, A.; King, D.; Ashrafian, H.; Darzi, A. Diagnostic accuracy of deep learning in medical imaging: A systematic review and meta-analysis. NPJ digital medicine 2021, 4, 65.
- Lund, S.; Manyika, J.; Segel, L.H.; Dua, A.; Rutherford, S.; Hancock, B.; Macon, B. The Future of Work in America: People and Places, Today and Tomorrow; McKinsey Global Institute, 2019.
- Centene. Centene Reports. https://www.globaldata.com/store/report/centene-corporation-enterprise-tech-analysis/, 2024. Centene corporation analysis of technology.
- U.S. Congress. Health Insurance Portability and Accountability Act of 1996 (HIPAA). https://www.hhs.gov/hipaa/for-professionals/privacy/laws-regulations/index.html, 2025.
- European Parliament and Council of the European Union. General Data Protection Regulation (GDPR). https://gdpr-info.eu/, 2016. Regulation (EU) 2016/679.
- Healthcare AI. Healthcare AI. https://www.salesforce.com/healthcare-life-sciences/healthcare-artificial-intelligence/healthcare-agentic-ai/#:~:text=Enter%20agentic%20artificial%20intelligence%20,outcomes%20and%20reduce%20healthcare%20costs, 2024. Accessed: 2025-07-17.
- Kocak B, M.I. AI agents in radiology: Toward autonomous and adaptive intelligence 2025.
- Acharya, D.B.; Kuppan, K.; Divya, B. Agentic ai: Autonomous intelligence for complex goals–a comprehensive survey. IEEe Access 2025.
- Agent AI. Benefits of Agent AI. https://www.wwt.com/blog/agentic-ai-strategic-value-and-high-impact-use-cases-for-healthcare-systems, 2025. Accessed: 2025-07-17.
- Moazemi, S.; Vahdati, S.; Li, J.; Kalkhoff, S.; Castano, L.J.; Dewitz, B.; Bibo, R.; Sabouniaghdam, P.; Tootooni, M.S.; Bundschuh, R.A.; et al. Artificial intelligence for clinical decision support for monitoring patients in cardiovascular ICUs: A systematic review. Frontiers in Medicine 2023, 10, 1109411.
- Elhaddad, M.; Hamam, S. AI-driven clinical decision support systems: An ongoing pursuit of potential. Cureus 2024, 16.
- Kumar, P.; Chauhan, S.; Awasthi, L.K. Artificial intelligence in healthcare: Review, ethics, trust challenges & future research directions. Engineering Applications of Artificial Intelligence 2023, 120, 105894.
- Goyal, A.; Parekh, N.; Yin Cheung, L.; Saha, K.; L Altice, F.; O’hanlon, R.; Ho Chun Man, R.; Fong, C.; Poellabauer, C.; Guarino, H.; et al. Predicting Opioid Use Outcomes in Minoritized Communities. In Proceedings of the Proceedings of the 14th ACM International Conference on Bioinformatics, Computational Biology, and Health Informatics, 2023, pp. 1–2.
- Goyal, A.; Ho Chun Man, R.; Lee, R.K.W.; Saha, K.; L. Altice, F.; Poellabauer, C.; Papakyriakopoulos, O.; Yin Cheung, L.; De Choudhury, M.; Allagh, K.; et al. Using Voice Data to Facilitate Depression Risk Assessment in Primary Health Care. In Proceedings of the Companion Publication of the 16th ACM Web Science Conference, New York, NY, USA, 2024; Websci Companion ’24, p. 17–18. [CrossRef]
- He, X.; Zhao, K.; Chu, X. AutoML: A survey of the state-of-the-art. Knowledge-based systems 2021, 212, 106622.
- Booster, P. Perpetual Booster. https://perpetual-ml.com/blog/how-perpetual-works/, 2022. Accessed: 2025-07-17.
- Abridge Solutions. Abridge Solutions. https://www.abridge.com/abridge-contextual-reasoning-engine/, 2024. Accessed: 2025-08-14.
- Verdigm Eprescribe. Verdigm Eprescribe. https://veradigm.com/eprescribe//, 2024. Accessed: 2025-08-14.
- Smart Profile. Smart Profile. https://www.softwareadvice.com/medical/smart-profile/, 2024. Accessed: 2025-08-14.
- Systems, E. Epic Systems (scribe). https://www.epic.com/software/ai-clinicians/, 2024. Accessed: 2025-07-17.
- Oracle Health. Oracle Health. https://www.oracle.com/health/clinical-suite/clinical-ai-agent/, 2024. Accessed: 2025-08-14.
- Huang, K. AI Agents in Healthcare. In Agentic AI: Theories and Practices; Springer, 2025; pp. 303–321.
- Schmidgall, S.; Ziaei, R.; Harris, C.; Reis, E.; Jopling, J.; Moor, M. AgentClinic: A multimodal agent benchmark to evaluate AI in simulated clinical environments. arXiv preprint arXiv:2405.07960 2024.
- Zhu, Y.; Ren, C.; Wang, Z.; Zheng, X.; Xie, S.; Feng, J.; Zhu, X.; Li, Z.; Ma, L.; Pan, C. Emerge: Enhancing multimodal electronic health records predictive modeling with retrieval-augmented generation. In Proceedings of the Proceedings of the 33rd ACM International Conference on Information and Knowledge Management, 2024, pp. 3549–3559.
- Asthana, S.; Mahindru, R.; Zhang, B.; Sanz, J. Adaptive PII Mitigation Framework for Large Language Models. arXiv preprint arXiv:2501.12465 2025.
- Neupane, S.; Mittal, S.; Rahimi, S. Towards a hipaa compliant agentic ai system in healthcare. arXiv preprint arXiv:2504.17669 2025.
- Shimgekar, S.R.; Vassef, S.; Goyal, A.; Kumar, N.; Saha, K. Agentic AI framework for End-to-End Medical Data Inference. arXiv preprint arXiv:2507.18115 2025.
- Kairo Health Website. YCombinator, 2024. Accessed: 2024-08-12.
- Mental Happy website. YCombinator, 2024. Accessed: 2024-08-12.
- Trapeze website. YCombinator, 2024. Accessed: 2024-08-12.
- Avelis Health. YCombinator, 2024. Accessed: 2024-08-12.
- Hofmann, S.; Hess, S.; Klein, C.; Lindena, G.; Radbruch, L.; Ostgathe, C. Patients in palliative care—Development of a predictive model for anxiety using routine data. PLOS ONE 2017, 12, 1–17. [CrossRef]
- Li, K.; Fathan, M.I.; Patel, K.; Zhang, T.; Zhong, C.; Bansal, A.; Rastogi, A.; Wang, J.S.; Wang, G. Colonoscopy polyp detection and classification: Dataset creation and comparative evaluations. Plos one 2021, 16, e0255809.
- Bernal, J.; Sánchez, J.; Vilarino, F. Towards automatic polyp detection with a polyp appearance model. Pattern Recognition 2012, 45, 3166–3182.
- Mesejo, P.; Pizarro, D.; Abergel, A.; Rouquette, O.; Beorchia, S.; Poincloux, L.; Bartoli, A. Computer-aided classification of gastrointestinal lesions in regular colonoscopy. IEEE transactions on medical imaging 2016, 35, 2051–2063.
- Yang, L.; Sellergren, A.; Golden, D.; et al. MedGemma Technical Report. arXiv preprint arXiv:2507.05201 2025. Accessed: 2025-07-17.
- Xia, P.; Zhang, L.; Li, F. Learning similarity with cosine similarity ensemble. Information sciences 2015, 307, 39–52.
- Jiang, K.; Jin, G.; Zhang, Z.; Cui, R.; Zhao, Y. Incorporating external knowledge for text matching model. Computer Speech & Language 2024, 87, 101638.
- Hemmer, P.; Schemmer, M.; Riefle, L.; Rosellen, N.; Vössing, M.; Kühl, N. Factors that influence the adoption of human-AI collaboration in clinical decision-making. arXiv preprint arXiv:2204.09082 2022.
- Luo, Y.; Shi, L.; Li, Y.; Zhuang, A.; Gong, Y.; Liu, L.; Lin, C. From intention to implementation: Automating biomedical research via LLMs. Science China Information Sciences 2025, 68, 1–18.
- Urbanowicz, R.J.; Bandhey, H.; Keenan, B.T.; Maislin, G.; Hwang, S.; Mowery, D.L.; Lynch, S.M.; Mazzotti, D.R.; Han, F.; Li, Q.Y.; et al. Streamline: An automated machine learning pipeline for biomedicine applied to examine the utility of photography-based phenotypes for osa prediction across international sleep centers. arXiv preprint arXiv:2312.05461 2023.
- Das, P.; Ivkin, N.; Bansal, T.; Rouesnel, L.; Gautier, P.; Karnin, Z.; Dirac, L.; Ramakrishnan, L.; Perunicic, A.; Shcherbatyi, I.; et al. Amazon SageMaker Autopilot: A white box AutoML solution at scale. In Proceedings of the Proceedings of the fourth international workshop on data management for end-to-end machine learning, 2020, pp. 1–7.
- Google Cloud. Google Cloud Enhances Vertex AI Search for Healthcare with Multimodal AI. https://www.prnewswire.com/news-releases/google-cloud-enhances-vertex-ai-search-for-healthcare-with-multimodal-ai-302388639.html, 2023. Describes Vertex AI support for multimodal healthcare data and the need for manual preprocessing in some cases.
- Google Cloud. Vertex AI Generative AI Models Documentation. https://cloud.google.com/vertex-ai/generative-ai/docs/models, 2023. Outlines Vertex AI deployment and management tools and the requirement for custom pipelines in specialized healthcare applications.
- Amazon Web Services. Automate Feature Engineering Pipelines with Amazon SageMaker. https://aws.amazon.com/blogs/machine-learning/automate-feature-engineering-pipelines-with-amazon-sagemaker/, 2023. Describes SageMaker tools for data preparation and feature engineering, highlighting manual intervention for complex healthcare datasets.
- Dennstädt, F.; Hastings, J.; Putora, P.M.; Schmerder, M.; Cihoric, N. Implementing large language models in healthcare while balancing control, collaboration, costs and security. NPJ digital medicine 2025, 8, 143.
- Gisslander, K.; Mohammad, A.J.; Vaglio, A.; Little, M.A. Overcoming challenges in rare disease registry integration using the semantic web-a clinical research perspective. Orphanet Journal of Rare Diseases 2023, 18, 253.
- Yavari, S.; Furst, J. Mitigating Catastrophic Forgetting in the Incremental Learning of Medical Images. arXiv preprint arXiv:2504.20033 2025.
- Torkzadehmahani, R.; Nasirigerdeh, R.; Blumenthal, D.B.; Kacprowski, T.; List, M.; Matschinske, J.; Spaeth, J.; Wenke, N.K.; Baumbach, J. Privacy-preserving artificial intelligence techniques in biomedicine. Methods of information in medicine 2022, 61, e12–e27.
- Hasanzadeh, F.; Josephson, C.B.; Waters, G.; Adedinsewo, D.; Azizi, Z.; White, J.A. Bias recognition and mitigation strategies in artificial intelligence healthcare applications. NPJ Digital Medicine 2025, 8, 154.
- Mienye, I.D.; Obaido, G.; Jere, N.; Mienye, E.; Aruleba, K.; Emmanuel, I.D.; Ogbuokiri, B. A survey of explainable artificial intelligence in healthcare: Concepts, applications, and challenges. Informatics in Medicine Unlocked 2024, 51, 101587.


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