Submitted:
18 September 2025
Posted:
22 September 2025
You are already at the latest version
Abstract
Keywords:
1. Introduction

2. Materials and Methods
2.1. Dataset Source
2.2. Data Extraction and Pre-Processing

2.3. CNN Model Implementation
2.4. VGG16-Inspired CNN Architecture
- Accurately detect PPF in liver ultrasound images.
- Maintain computational efficiency for potential use in real-world clinical environments.
- Strike a balance between network depth and complexity to ensure good generalisability across diverse data.

2.5. Evaluation Metrics
2.6. Model Training
3. Results
Model Performance Evaluation
4. Discussion
Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
Abbreviations
| AI | Artificial Intelligence |
| CNN | Convolutional Neural Network |
| DL | Deep Learning |
| DNN | Deep Neural Network |
| PPF | Periportal Fibrosis |
| US | Ultrasound |
| IPS | Image Pattern Score |
| Grad-CAM | Gradient-weighted Class Activation Mapping |
| ROC | Receiver Operating Characteristic |
| AUC | Area Under the Curve |
| ReLU | Rectified Linear Unit |
| GPU | Graphics Processing Unit |
| TPU | Tensor Processing Unit |
| SVM | Support Vector Machine |
| DICOM | Digital Imaging and Communications in Medicine |
| CT | Computed Tomography |
| MRI | Magnetic Resonance Imaging |
| MRC | Medical Research Council |
| UVRI | Uganda Virus Research Institute |
| LSHTM | London School of Hygiene & Tropical Medicine |
| USMRC | Uganda Schistosomiasis Multidisciplinary Research Centre |
| GDPR | General Data Protection Regulation |
| PNG | Portable Network Graphics |
| API | Application Programming Interface |
| MDPI | Multidisciplinary Digital Publishing Institute |
| DOAJ | Directory of Open Access Journals |
| TLA | Three Letter Acronym |
| LD | Linear Dichroism |
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| Characteristic | No PPF (N = 100) | PPF (N = 100) |
|---|---|---|
| Sex | ||
| Female | 28 (28%) | 18 (18%) |
| Male | 72 (72%) | 82 (82%) |
| Age (years) | 29 (25, 37) | 30 (24, 39) |
| Left Liver Lobe Length (cm) | 6.90 (6.15, 7.60) | 8.15 (7.25, 9.20) |
| Right Liver Lobe Length (cm) | 9.90 (9.40, 10.30) | 10.40 (9.90, 11.40) |
| Inner-to-Inner Diameter of Branch 1 (mm) | 2.20 (1.80, 2.50) | 2.50 (1.85, 3.10) |
| Outer-to-Outer Diameter of Branch 1 (mm) | 4.30 (3.60, 5.10) | 6.50 (5.40, 7.90) |
| Inner-to-Inner Diameter of Branch 2 (mm) | 2.20 (1.80, 2.50) | 2.50 (2.20, 3.00) |
| Outer-to-Outer Diameter of Branch 2 (mm) | 4.00 (3.60, 4.85) | 6.95 (5.45, 8.10) |
| Image Pattern Score | ||
| 0 | 88 (88%) | 0 (0%) |
| 1 | 12 (12%) | 0 (0%) |
| 2 | 0 (0%) | 54 (54%) |
| 4 | 0 (0%) | 40 (40%) |
| 6 | 0 (0%) | 6 (6.0%) |
| Model | Accuracy | AUC | Precision | Sensitivity | Specificity | F1 score |
|---|---|---|---|---|---|---|
| Model 1 | 82 | 89 | 100 | 82 | 100 | 82 |
| Model 2 | 80 | 87 | 76 | 80 | 84 | 84 |
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