Explainable AI-Based Skin Cancer Detection Using CNN, Particle Swarm Optimization and Machine Learning.

IF 2.7 Q3 IMAGING SCIENCE & PHOTOGRAPHIC TECHNOLOGY
Syed Adil Hussain Shah, Syed Taimoor Hussain Shah, Roa'a Khaled, Andrea Buccoliero, Syed Baqir Hussain Shah, Angelo Di Terlizzi, Giacomo Di Benedetto, Marco Agostino Deriu
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Abstract

Skin cancer is among the most prevalent cancers globally, emphasizing the need for early detection and accurate diagnosis to improve outcomes. Traditional diagnostic methods, based on visual examination, are subjective, time-intensive, and require specialized expertise. Current artificial intelligence (AI) approaches for skin cancer detection face challenges such as computational inefficiency, lack of interpretability, and reliance on standalone CNN architectures. To address these limitations, this study proposes a comprehensive pipeline combining transfer learning, feature selection, and machine-learning algorithms to improve detection accuracy. Multiple pretrained CNN models were evaluated, with Xception emerging as the optimal choice for its balance of computational efficiency and performance. An ablation study further validated the effectiveness of freezing task-specific layers within the Xception architecture. Feature dimensionality was optimized using Particle Swarm Optimization, reducing dimensions from 1024 to 508, significantly enhancing computational efficiency. Machine-learning classifiers, including Subspace KNN and Medium Gaussian SVM, further improved classification accuracy. Evaluated on the ISIC 2018 and HAM10000 datasets, the proposed pipeline achieved impressive accuracies of 98.5% and 86.1%, respectively. Moreover, Explainable-AI (XAI) techniques, such as Grad-CAM, LIME, and Occlusion Sensitivity, enhanced interpretability. This approach provides a robust, efficient, and interpretable solution for automated skin cancer diagnosis in clinical applications.

基于CNN、粒子群优化和机器学习的可解释的人工智能皮肤癌检测。
皮肤癌是全球最常见的癌症之一,因此需要及早发现和准确诊断,以改善预后。传统的诊断方法,基于视觉检查,是主观的,费时的,需要专门的专业知识。目前用于皮肤癌检测的人工智能(AI)方法面临着计算效率低下、缺乏可解释性以及依赖独立的CNN架构等挑战。为了解决这些限制,本研究提出了一种结合迁移学习、特征选择和机器学习算法的综合管道,以提高检测精度。对多个预训练的CNN模型进行了评估,Xception成为计算效率和性能平衡的最佳选择。消融研究进一步验证了在exception架构中冻结特定任务层的有效性。采用粒子群算法对特征维数进行优化,将特征维数从1024降至508,显著提高了计算效率。包括子空间KNN和中高斯SVM在内的机器学习分类器进一步提高了分类精度。在ISIC 2018和HAM10000数据集上进行评估,所提出的管道分别达到了令人印象深刻的98.5%和86.1%的精度。此外,可解释ai (XAI)技术,如Grad-CAM, LIME和遮挡敏感性,增强了可解释性。这种方法为临床应用中的皮肤癌自动诊断提供了一种强大、高效和可解释的解决方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Journal of Imaging
Journal of Imaging Medicine-Radiology, Nuclear Medicine and Imaging
CiteScore
5.90
自引率
6.20%
发文量
303
审稿时长
7 weeks
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