基于阵列比较基因组杂交的肺癌分类机器学习模型。

Proceedings. AMIA Symposium Pub Date : 2002-01-01
C F Aliferis, D Hardin, P P Massion
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引用次数: 0

摘要

阵列CGH是最近推出的一项技术,可以在一次实验中测量数百个基因的基因拷贝数变化。本研究的主要目标是开发机器学习模型,根据组织病理学类型对非小细胞肺癌进行分类,并在此学习任务中比较几种机器学习方法。从37例患者的肿瘤(21例鳞状癌,16例腺癌)中提取DNA并将其杂交到452 BAC克隆阵列上。使用了以下算法:KNN,决策树归纳,支持向量机和前馈神经网络。性能通过留一分类精度来衡量。发现的最佳多基因模型的遗漏准确率为89.2%。在这个学习任务和数据集中,决策树的表现比其他方法差。我们得出结论,基因拷贝数作为测量阵列CGH,总的来说,是一个很好的指标的组织学亚型。讨论了几个有趣的研究方向。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine learning models for lung cancer classification using array comparative genomic hybridization.

Array CGH is a recently introduced technology that measures changes in the gene copy number of hundreds of genes in a single experiment. The primary goal of this study was to develop machine learning models that classify non-small Lung Cancers according to histopathology types and to compare several machine learning methods in this learning task. DNA from tumors of 37 patients (21 squamous carcinomas, and 16 adenocarcinomas) were extracted and hybridized onto a 452 BAC clone array. The following algorithms were used: KNN, Decision Tree Induction, Support Vector Machines and Feed-Forward Neural Networks. Performance was measured via leave-one-out classification accuracy. The best multi-gene model found had a leave-one-out accuracy of 89.2%. Decision Trees performed poorer than the other methods in this learning task and dataset. We conclude that gene copy numbers as measured by array CGH are, collectively, an excellent indicator of histological subtype. Several interesting research directions are discussed.

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