Acral melanoma detection using dermoscopic images and convolutional neural networks.

4区 计算机科学 Q1 Arts and Humanities Visual Computing for Industry, Biomedicine, and Art Pub Date : 2021-10-07 DOI:10.1186/s42492-021-00091-z
Qaiser Abbas, Farheen Ramzan, Muhammad Usman Ghani
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Abstract

Acral melanoma (AM) is a rare and lethal type of skin cancer. It can be diagnosed by expert dermatologists, using dermoscopic imaging. It is challenging for dermatologists to diagnose melanoma because of the very minor differences between melanoma and non-melanoma cancers. Most of the research on skin cancer diagnosis is related to the binary classification of lesions into melanoma and non-melanoma. However, to date, limited research has been conducted on the classification of melanoma subtypes. The current study investigated the effectiveness of dermoscopy and deep learning in classifying melanoma subtypes, such as, AM. In this study, we present a novel deep learning model, developed to classify skin cancer. We utilized a dermoscopic image dataset from the Yonsei University Health System South Korea for the classification of skin lesions. Various image processing and data augmentation techniques have been applied to develop a robust automated system for AM detection. Our custom-built model is a seven-layered deep convolutional network that was trained from scratch. Additionally, transfer learning was utilized to compare the performance of our model, where AlexNet and ResNet-18 were modified, fine-tuned, and trained on the same dataset. We achieved improved results from our proposed model with an accuracy of more than 90 % for AM and benign nevus, respectively. Additionally, using the transfer learning approach, we achieved an average accuracy of nearly 97 %, which is comparable to that of state-of-the-art methods. From our analysis and results, we found that our model performed well and was able to effectively classify skin cancer. Our results show that the proposed system can be used by dermatologists in the clinical decision-making process for the early diagnosis of AM.

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利用皮肤镜图像和卷积神经网络检测口腔黑色素瘤。
口腔黑色素瘤(AM)是一种罕见的致命性皮肤癌。皮肤科专家可通过皮肤镜成像对其进行诊断。由于黑色素瘤与非黑色素瘤之间的差异很小,因此皮肤科医生诊断黑色素瘤的难度很大。有关皮肤癌诊断的大部分研究都与将病变分为黑色素瘤和非黑色素瘤的二元分类有关。但迄今为止,关于黑色素瘤亚型分类的研究还很有限。本研究调查了皮肤镜和深度学习在黑色素瘤亚型(如 AM)分类中的有效性。在这项研究中,我们提出了一种新型深度学习模型,用于对皮肤癌进行分类。我们利用韩国延世大学卫生系统的皮肤镜图像数据集对皮肤病变进行分类。我们应用了各种图像处理和数据增强技术,开发出了一套用于AM检测的稳健的自动化系统。我们定制的模型是一个从头开始训练的七层深度卷积网络。此外,我们还利用迁移学习来比较模型的性能,对 AlexNet 和 ResNet-18 进行修改、微调,并在同一数据集上进行训练。我们提出的模型在 AM 和良性痣方面的准确率分别超过了 90%,取得了更好的结果。此外,利用迁移学习方法,我们的平均准确率接近 97%,与最先进的方法不相上下。从我们的分析和结果来看,我们发现我们的模型表现良好,能够有效地对皮肤癌进行分类。我们的研究结果表明,皮肤科医生在临床决策过程中可以使用所提出的系统来早期诊断 AM。
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来源期刊
Visual Computing for Industry, Biomedicine, and Art
Visual Computing for Industry, Biomedicine, and Art Arts and Humanities-Visual Arts and Performing Arts
CiteScore
5.60
自引率
0.00%
发文量
28
审稿时长
5 weeks
期刊最新文献
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