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Automated chronic wounds medical assessment and tracking framework based on deep learning

Brayan Monroy, Karen Sánchez, Paula Arguello, Juan Estupiñán, Jorge Bacca, Claudia V. Correa, Laura Isabel Valencia-Ángel, Juan C. Castillo, Olinto Mieles, Henry Argüello, Sergio Castillo, Fernando Rojas-Morales

2023Computers in Biology and Medicine15 citationsDOIOpen Access PDF

Abstract

Chronic wounds are a latent health problem worldwide, due to high incidence of diseases such as diabetes and Hansen. Typically, wound evolution is tracked by medical staff through visual inspection, which becomes problematic for patients in rural areas with poor transportation and medical infrastructure. Alternatively, the design of software platforms for medical imaging applications has been increasingly prioritized. This work presents a framework for chronic wound tracking based on deep learning, which works on RGB images captured with smartphones, avoiding bulky and complicated acquisition setups. The framework integrates mainstream algorithms for medical image processing, including wound detection, segmentation, as well as quantitative analysis of area and perimeter. Additionally, a new chronic wounds dataset from leprosy patients is provided to the scientific community. Conducted experiments demonstrate the validity and accuracy of the proposed framework, with up to 84.5% in precision.

Topics & Concepts

Computer scienceArtificial intelligenceDeep learningSegmentationComputer visionImage segmentationMachine learningMedical imagingData scienceDiabetic Foot Ulcer Assessment and ManagementPressure Ulcer Prevention and ManagementWound Healing and Treatments