AI-Driven Smartphone Solution for Digitizing Rapid Diagnostic Test Kits and Enhancing Accessibility for the Visually Impaired
Rapid diagnostic tests are crucial for timely disease detection and management, yet accurate interpretation of test results remains challenging. In this study, we propose a novel approach to enhance the accuracy and reliability of rapid diagnostic test result interpretation by integrating artificial...
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Zusammenfassung: | Rapid diagnostic tests are crucial for timely disease detection and
management, yet accurate interpretation of test results remains challenging. In
this study, we propose a novel approach to enhance the accuracy and reliability
of rapid diagnostic test result interpretation by integrating artificial
intelligence (AI) algorithms, including convolutional neural networks (CNN),
within a smartphone-based application. The app enables users to take pictures
of their test kits, which YOLOv8 then processes to precisely crop and extract
the membrane region, even if the test kit is not centered in the frame or is
positioned at the very edge of the image. This capability offers greater
accessibility, allowing even visually impaired individuals to capture test
images without needing perfect alignment, thus promoting user independence and
inclusivity. The extracted image is analyzed by an additional CNN classifier
that determines if the results are positive, negative, or invalid, providing
users with the results and a confidence level. Through validation experiments
with commonly used rapid test kits across various diagnostic applications, our
results demonstrate that the synergistic integration of AI significantly
improves sensitivity and specificity in test result interpretation. This
improvement can be attributed to the extraction of the membrane zones from the
test kit images using the state-of-the-art YOLO algorithm. Additionally, we
performed SHapley Additive exPlanations (SHAP) analysis to investigate the
factors influencing the model's decisions, identifying reasons behind both
correct and incorrect classifications. By facilitating the differentiation of
genuine test lines from background noise and providing valuable insights into
test line intensity and uniformity, our approach offers a robust solution to
challenges in rapid test interpretation. |
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DOI: | 10.48550/arxiv.2411.18007 |