Computerised Methods for Monitoring Diabetic Foot Ulcers on Plantar Foot : A Feasibility Study

Goyal, Manu and Reeves, Neil D. and Rajbhandari, Satyan and Yap, Moi Hoon (2022) Computerised Methods for Monitoring Diabetic Foot Ulcers on Plantar Foot : A Feasibility Study. In: Medical Image Understanding and Analysis : 26th Annual Conference, MIUA 2022, Cambridge, UK, July 27–29, 2022, Proceedings. Lecture Notes in Computer Science . Springer-Verlag, Cham, pp. 199-211. ISBN 9783031120527

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Abstract

Recognition and analysis of Diabetic Foot Ulcers (DFU) by computerised methods has been an emerging research area with the evolution of image processing and machine learning algorithms. Precise documentation of wound size over time allows clinicians to gauge responses to treatment, improving healing rates by modifying interventions as required. One of the major issues in the analysis of DFU is non-standardised foot images captured with cameras including factors such as distance of the camera from the foot and orientation of the image. Designing a computerised solution to determine site of DFU and measurements of area for remote assessment and monitoring represents a significant challenge due to the variables involved. In this work, we propose a new computerised solution with the combination of image processing and deep learning algorithms to estimate the site and predict the progress (based on estimated area index) of the DFU irrespective of distance and orientation of the plantar foot. First we segment the foot region and align the foot by fixing the orientation of a series of longitudinal images. Then we localise the region of interest of DFUs and find its relative size to the foot area. We introduce a distribution analysis to determine the site of DFUs. Finally, we introduce an area index ( ) to predict the healing progress of DFU at different time intervals (t). We demonstrate the feasibility of our proposed method on 154 longitudinal DFUs of plantar foot. We achieved 92.3% on site estimation and 84.7% on healing progress prediction.

Item Type:
Contribution in Book/Report/Proceedings
Uncontrolled Keywords:
Research Output Funding/yes_externally_funded
Subjects:
?? yes - externally funded ??
ID Code:
226111
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Deposited On:
06 May 2025 13:45
Refereed?:
Yes
Published?:
Published
Last Modified:
06 May 2025 13:45