基于深度学习的皮肤镜图像诊断模型

IF 2 4区 计算机科学 Q2 Computer Science
G. Reshma, Chiai Al-Atroshi, Vinay Kumar Nassa, B. T. Geetha, G. Sunitha, Mohammad Gouse Galety, S. Neelakandan
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引用次数: 37

摘要

近年来,由于人工智能(AI)技术的集成,医疗保健领域的智能自动化变得更加熟悉。智能医疗保健系统有助于做出更好的决策,从而进一步使患者能够提供更好的医疗服务。同时,皮肤病变是一种影响所有年龄组的人的致命疾病。皮肤病变的分割与分类对智能系统早期、准确诊断皮肤癌起着至关重要的作用。然而,皮肤镜图像中皮肤病变的自动诊断具有挑战性,因为存在诸如伪影(头发,凝胶泡,标尺标记),边界模糊,对比度差以及病变图像大小和形状可变等问题。本研究利用皮肤镜图像开发了基于深度学习(IMLT-DL)的智能多层阈值分割和分类模型来解决这些问题。首先,所提出的IMLT-DL模型结合了Top hat滤波和图像预处理技术对皮肤镜图像进行预处理。此外,采用基于多级Kapur阈值分割的Mayfly Optimization (MFO)方法确定感染区域。此外,基于Inception v3的特征提取器被应用于派生一组有价值的特征向量。最后,使用梯度增强树(GBT)模型进行分类。该模型的性能是针对国际皮肤成像协作(ISIC)数据集进行的,并且实验结果在不同的评估措施中进行了检验。所得的实验值保证了所提出的IMLT-DL模型优于现有的方法,达到了0.992的更高精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep Learning-Based Skin Lesion Diagnosis Model Using Dermoscopic Images
In recent years, intelligent automation in the healthcare sector becomes more familiar due to the integration of artificial intelligence (AI) techniques. Intelligent healthcare systems assist in making better decisions, which further enable the patient to provide improved medical services. At the same time, skin lesion is a deadly disease that affects people of all age groups. Skin lesion segmentation and classification play a vital part in the earlier and precise skin cancer diagnosis by intelligent systems. However, the automated diagnosis of skin lesions in dermoscopic images is challenging because of the problems such as artifacts (hair, gel bubble, ruler marker), blurry boundary, poor contrast, and variable sizes and shapes of the lesion images. This study develops intelligent multilevel thresholding with deep learning (IMLT-DL) based skin lesion segmentation and classification model using dermoscopic images to address these problems. Primarily, the presented IMLT-DL model incorporates the Top hat filtering and inpainting technique for the pre-processing of the dermoscopic images. In addition, the Mayfly Optimization (MFO) with multilevel Kapur’s thresholding-based segmentation process is involved in determining the infected regions. Besides, an Inception v3 based feature extractor is applied to derive a valuable set of feature vectors. Finally, the classification process is carried out using a gradient boosting tree (GBT) model. The presented model’s performance takes place against the International Skin Imaging Collaboration (ISIC) dataset, and the experimental outcomes are inspected in different evaluation measures. The resultant experimental values ensure that the proposed IMLT-DL model outperforms the existing methods by achieving higher accuracy of 0.992.
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来源期刊
Intelligent Automation and Soft Computing
Intelligent Automation and Soft Computing 工程技术-计算机:人工智能
CiteScore
3.50
自引率
10.00%
发文量
429
审稿时长
10.8 months
期刊介绍: An International Journal seeks to provide a common forum for the dissemination of accurate results about the world of intelligent automation, artificial intelligence, computer science, control, intelligent data science, modeling and systems engineering. It is intended that the articles published in the journal will encompass both the short and the long term effects of soft computing and other related fields such as robotics, control, computer, vision, speech recognition, pattern recognition, data mining, big data, data analytics, machine intelligence, cyber security and deep learning. It further hopes it will address the existing and emerging relationships between automation, systems engineering, system of systems engineering and soft computing. The journal will publish original and survey papers on artificial intelligence, intelligent automation and computer engineering with an emphasis on current and potential applications of soft computing. It will have a broad interest in all engineering disciplines, computer science, and related technological fields such as medicine, biology operations research, technology management, agriculture and information technology.
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