Computer Aided Diagnosis for Spitzoid lesions classification using Artificial Intelligence techniques

A. Belaala, L. Terrissa, N. Zerhouni, C. Devalland
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引用次数: 1

Abstract

Spitzoid lesions may be largely categorized into Spitz Nevus, Atypical Spitz Tumors, and Spitz Melanomas. Classifying a lesion precisely as Atypical Spitz Tumors or AST is challenging and often requires the integration of clinical, histological, and immunohistochemical features to differentiate AST from regular Spitz Nevus and malignant Spitz Melanomas. Specifically, this paper aims to test several artificial intelligence techniques so as to build a computer-aided diagnosis system. A proposed three-phase approach is being implemented. In Phase 1, collected data are preprocessed with an effective SMOTE-based method being implemented to treat the imbalance data problem. Then, a feature selection mechanism using genetic algorithm (GA) is applied in Phase 2. Finally, in Phase 3, a 10-fold cross-validation method is used to compare the performance of seven machine-learning algorithms for classification. Results obtained with SMOTE-Multilayer Perceptron with GA-based 14 features show the highest classification accuracy, specificity (0.98), and a sensitivity of 0.99.
应用人工智能技术进行Spitzoid病变分类的计算机辅助诊断
Spitz样病变大致可分为Spitz痣、非典型Spitz肿瘤和Spitz黑色素瘤。准确地将病变分类为非典型Spitz肿瘤或AST是具有挑战性的,通常需要结合临床、组织学和免疫组织化学特征来区分AST与正常Spitz痣和恶性Spitz黑色素瘤。具体而言,本文旨在测试几种人工智能技术,以构建计算机辅助诊断系统。拟议的三阶段方法正在实施中。在阶段1中,使用基于smote的有效方法对收集的数据进行预处理,以处理数据不平衡问题。然后,在第二阶段采用了基于遗传算法的特征选择机制。最后,在阶段3中,使用10倍交叉验证方法来比较七种机器学习分类算法的性能。使用基于ga的SMOTE-Multilayer Perceptron获得的结果显示出最高的分类准确率、特异性(0.98)和灵敏度(0.99)。
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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