Abstract

Dermatological problems are the most widely spread skin diseases amongst human beings. They can be infectious, chronic, and sometimes may also lead to serious health problems such as skin cancer. Generally, rural area clinics lack trained dermatologists and mostly rely on the analysis of remotely accessible experts through mobile-based networks for sharing the images and other related information. Under such circumstances, poor image quality introduced due to the capturing device results in misleading diagnosis. Here, a genetic-algorithm- (GA-) based approach used as an image enhancement technique has been explored to improve the low quality of the dermatological images received from the rural clinic. The diagnosis is performed on the enhanced images using convolutional neural network (CNN) classifier for the identification of the diseases. The scope of this paper is limited to only motion blurred images, which is the most prevalent problem in capturing of the images, specifically when any of the two (device or the object) may move unpredictably. Seven types of skin diseases, namely, melanoma, melanocytic nevus, basal cell carcinoma, actinic keratosis, benign keratosis, vascular lesion, and squamous cell carcinoma, have been investigated using ResNet-152 giving an overall accuracy of 87.40% for the blurred images. Use of GA-enhanced images increased the accuracy to 95.85%. The results were further analyzed using a confusion matrix and t-test-based statistical investigations. The advantage of the proposed technique is that it reduces the analysis time and errors due to manual diagnosis. Furthermore, speedy and reliable diagnosis at the earliest stage reduces the risk of developing more severe skin problems.

Highlights

  • Skin is the largest organ of the human body protecting us against injuries, infections, and environmental hazards

  • Prior to diagnosis using the convolutional neural network (CNN), the received images are enhanced using Genetic Algorithm (GA)-based algorithm as the quality of the images may generally be low because of unpredictable errors introduced at the rural clinic such as random movement of the device or the patient. e classified images are sent to the domain experts for analysis and report preparation

  • The database is updated as per the feedback received from the experts, and the final analysis report is sent to the rural clinic center. e CNN is retrained regularly in

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Summary

Introduction

Skin is the largest organ of the human body protecting us against injuries, infections, and environmental hazards. In clinical evaluation, it helps in the assessment of a patient’s prime health status. Skin diseases are generally categorized into degenerative, infectious, inflammatory, viral, and malignant [1]. Malignant skin diseases such as psoriasis, eczema, and melanoma may lead to fatal consequences if not timely diagnosed. Melanoma is the most common form of skin cancers. It is a malignant tumor of melanocytes produced due to mutations occurring within the skin [3]. About 87110, 91270, and 192310 patients were reported

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