Abstract

Melanoma is a type of skin cancer with a higher mortality rates. Early and accurate diagnosis of melanoma has critical importance on its prognosis. Recently, deep learning models dominated the CAD systems for classification of the potential melanoma lesions. In clinical settings, capturing impeccable skin images is not always possible. Sometimes, the skin images can be blurry, noisy or have low contrast or can have additional data. The aim of this work is to investigate the effects of external objects (ruler, hair) and image quality (blur, noise, contrast) on the classification of melanoma using commonly used Convolutional Neural Network (CNN) models: ResNet50, DenseNet121, VGG16 and AlexNet. We applied data augmentation, trained four models separately and tested our six datasets. In our experiments, melanoma images can be classified with higher accuracy under contrast changes unlike the benign images, and we recommend ResNet model when image contrast is an issue. Noise significantly degrades classification accuracy of melanoma compared to benign lesions. In addition, both classes are sensitive to blur changes. Best accuracy is obtained with DenseNet in blurred and noisy datasets. The images that contain ruler have decreased the accuracy and ResNet has higher accuracy in this set. We calculated the highest accuracy in hairy skin images since it has the maximum number of images in overall dataset. We evaluated the accuracies as 89.22% for hair set, 86% for ruler set and 88.81% for none set. We can infer that DenseNet can be used for melanoma classification with image distortions and degradations.

Highlights

  • Melanoma is a type of skin cancer with a higher mortality compared to other types of skin cancers

  • In this study, we investigate the effect of ruler/hair and image blur, noise and contrast on the melanoma detection performance of four commonly used CNN models: ResNet50, DenseNet121, VGG16 and AlexNet

  • Melanoma images can be better recognized under contrast changes unlike the benign images, we recommend ResNet model whenever there is contrast issue

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Summary

Introduction

Melanoma is a type of skin cancer with a higher mortality compared to other types of skin cancers. And accurate diagnosis of melanoma has critical importance on its prognosis. Deep neural network based models dominated the CAD systems for classification of the potential melanoma lesions. The aim of this work is to investigate the effects of external objects (ruler, hair) and image quality (blur, noise, contrast) on the classification of melanoma using commonly used Convolutional Neural Network(CNN) models. Despite its low prevalence (5%), it has higher mortality rate compared to other types of skin cancers.Just like many other types of cancer, early diagnosis of melanoma is very important for an effective treatment and to avoid poor prognosis. Images are collected using dermatoscopy, lesions are segmented and classified as melanoma or not. The studies differ in their methods to process, segment and classify the lesions

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