Deep Learning for Automated Detection of Periportal Fibrosis in Ultrasound Imaging: Improving Diagnostic Accuracy in Schistosoma mansoni Infection
Mutebe, Alex, Ahmed, Bakhtiyar, Natukunda, Agnes, Webb, Emily, Abaasa, Andrew, Mpooya, Simon, Egesa, Moses, Kakande, Ayoub, Elliott, Alison M. and Danso, Samuel O (2025) Deep Learning for Automated Detection of Periportal Fibrosis in Ultrasound Imaging: Improving Diagnostic Accuracy in Schistosoma mansoni Infection. Applied Sciences, 16 (1). p. 87. ISSN 2076-3417
| Item Type: | Article |
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Abstract
This study investigates advanced deep learning methods to improve the detection of periportal fibrosis (PPF) in medical imaging. Schistosoma mansoni infection affects over 54 million individuals globally, predominantly in sub-Saharan Africa, with around 20 million experiencing chronic complications. PPF, present in up to 42% of these cases, is a leading outcome of chronic liver disease, significantly contributing to morbidity and mortality. Early and accurate detection is critical for timely intervention, yet conventional ultrasound diagnosis remains highly operator-dependent. We adapted and trained a convolutional neural network (CNN) using ultrasound images to automatically identify and classify PPF severity. The proposed approach achieved a diagnostic accuracy of 80%. Sensitivity and specificity reached 84% and 76%, respectively, demonstrating robust generalisability across varying image qualities and acquisition settings. These findings highlight the potential of deep learning to reduce diagnostic subjectivity and support scalable screening programmes. Future work will focus on validation with larger datasets and multi-class fibrosis grading to enhance clinical utility.
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| Additional Information: ** Article version: VoR ** From Crossref journal articles via Jisc Publications Router ** History: epub 21-12-2025; issued 21-12-2025. ** Licence for VoR version of this article starting on 21-12-2025: https://creativecommons.org/licenses/by/4.0/ |
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Identifiers
| Item ID: 19803 |
| Identification Number: 10.3390/app16010087 |
| ISSN: 2076-3417 |
| URI: https://sure.sunderland.ac.uk/id/eprint/19803 |
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| Date Deposited: 31 Jan 2026 15:31 |
| Last Modified: 31 Jan 2026 15:31 |
| Author: |
Alex Mutebe
|
| Author: |
Bakhtiyar Ahmed
|
| Author: | Agnes Natukunda |
| Author: | Emily Webb |
| Author: | Andrew Abaasa |
| Author: | Simon Mpooya |
| Author: | Moses Egesa |
| Author: | Ayoub Kakande |
| Author: | Alison M. Elliott |
| Author: | Samuel O Danso |
University Divisions
Faculty of Business and Technology > School of Computer Science and EngineeringSubjects
Sciences > Health SciencesComputing
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