Abstract

Skin lesions are a feature of many diseases including cutaneous leishmaniasis (CL). Ulcerative lesions are a common manifestation of CL. Response to treatment in such lesions is judged through the assessment of the healing process by regular clinical observations, which remains a challenge for the clinician, health system, and the patient in leishmaniasis endemic countries. In this study, image processing was initially done using 40 CL lesion color images that were captured using a mobile phone camera, to establish a technique to extract features from the image which could be related to the clinical status of the lesion. The identified techniques were further developed, and ten ulcer images were analyzed to detect the extent of inflammatory response and/or signs of healing using pattern recognition of inflammatory tissue captured in the image. The images were preprocessed at the outset, and the quality was improved using the CIE L∗a∗b color space technique. Furthermore, features were extracted using the principal component analysis and profiled using the signal spectrogram technique. This study has established an adaptive thresholding technique ranging between 35 and 200 to profile the skin lesion images using signal spectrogram plotted using Signal Analyzer in MATLAB. The outcome indicates its potential utility in visualizing and assessing inflammatory tissue response in a CL ulcer. This approach is expected to be developed further to a mHealth-based prediction algorithm to enable remote monitoring of treatment response of cutaneous leishmaniasis.

Highlights

  • Interdisciplinary approaches are becoming increasingly popular in the health sector, specially to improve the diagnosis and management of various diseases [1,2,3,4]

  • Color images of the lesions were taken from a mobile phone, before starting the treatment with weekly injections of intralesional sodium stibogluconate (IL-SSG), which is an antimony containing drug used as the standard treatment for cutaneous leishmaniasis (CL) in Sri Lanka [21]

  • A preliminary image processing was done for 40 images which included all phenotypes as given below under section (A), to establish an image processing technique to extract features from the images which could be related to the inflammatory response and/or treatment response of all types of CL lesions

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Summary

Introduction

Interdisciplinary approaches are becoming increasingly popular in the health sector, specially to improve the diagnosis and management of various diseases [1,2,3,4]. With the advent of mobile phones, the concept of mobile health or mHealth emerged and it could be broadly described as a medical and public health practice supported by mobile devices such as mobile phones [6]. With the increased usage of smart phones and tablets among people, their contribution to image analysis applications and mHealth has been noteworthy [7]. The most common disease form in the world is cutaneous leishmaniasis (CL) which affects the skin [8]. According to their morphological appearance, CL lesions are commonly categorized as papules, nodules, plaques, and ulcers. A CL ulcer has a ‘volcanic’ appearance with a central crater and a raised border [9]

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