Abstract

Manual diagnosis of skin cancer is time-consuming and expensive; therefore, it is essential to develop automated diagnostics methods with the ability to classify multiclass skin lesions with greater accuracy. We propose a fully automated approach for multiclass skin lesion segmentation and classification by using the most discriminant deep features. First, the input images are initially enhanced using local color-controlled histogram intensity values (LCcHIV). Next, saliency is estimated using a novel Deep Saliency Segmentation method, which uses a custom convolutional neural network (CNN) of ten layers. The generated heat map is converted into a binary image using a thresholding function. Next, the segmented color lesion images are used for feature extraction by a deep pre-trained CNN model. To avoid the curse of dimensionality, we implement an improved moth flame optimization (IMFO) algorithm to select the most discriminant features. The resultant features are fused using a multiset maximum correlation analysis (MMCA) and classified using the Kernel Extreme Learning Machine (KELM) classifier. The segmentation performance of the proposed methodology is analyzed on ISBI 2016, ISBI 2017, ISIC 2018, and PH2 datasets, achieving an accuracy of 95.38%, 95.79%, 92.69%, and 98.70%, respectively. The classification performance is evaluated on the HAM10000 dataset and achieved an accuracy of 90.67%. To prove the effectiveness of the proposed methods, we present a comparison with the state-of-the-art techniques.

Highlights

  • According to the World Health Organization (WHO), skin cancer accounts for onethird of all types of cancers [1,2]

  • The results presented in this table were calculated in terms of average accuracy for all selected images of one dataset

  • After segmentation using the newly implemented convolutional neural network (CNN) model, the resultant image was compared with given ground truth images

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Summary

Introduction

According to the World Health Organization (WHO), skin cancer accounts for onethird of all types of cancers [1,2]. Skin cancer cases increase and result in a higher number of deaths. Approximately 3 million non-melanoma and 132,000 melanoma skin cancer cases are diagnosed globally every year [3]. The average annual cost of treating such cases is USD 3.3 and 4.8, respectively [5]. The number of invasive melanoma cases has increased by 47% in the last ten years [6]. In Europe, more than 100,000 new cases of diagnosed melanoma are reported annually. In Australia, on the other hand, the number of annual reported cases of melanoma is 15,229. The latest statistics show that the number of skin cancer cases has been increasing since 1990. The current trend was explained by the reducing ozone layer and the increased use of solariums and tanning beds [7]

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