生物医学数据的集成分类器:性能评估

Hanaa Ismail Elshazly, A. Elkorany, A. Hassanien, A. Azar
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引用次数: 21

摘要

机器学习概念为生物医学研究领域提供了极大的支持。它为疾病的发现和相关药物的开发提供了许多机会。机器学习的医学应用是从医生的需求发展而来的,并受到实证研究中有希望的结果的推动。医疗支持系统可以通过筛选、医学图像、模式分类和微阵列基因表达分析来提供。医学数据的典型特点是维度巨大,样本相对有限。特征选择是提高分类性能的关键步骤。近年来,机器学习领域对分类过程的研究出现了一种新的强分类器方案——集成分类器。本文研究了随机森林(Random Forest, RF)和旋转森林(Rotation Forest, ROT)两种新型集成分类器在生物医学数据集上的性能,并对5个医学数据集进行了测试。使用三种不同的特征选择方法提取每个数据集中最相关的特征。使用准确度度量来评估预测性能。我们观察到,在大多数测试病例中,ROT达到了最高的分类准确率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Ensemble classifiers for biomedical data: Performance evaluation
Machine Learning concept offers the biomedical research field a great support. It provides many opportunities for disease discovering and related drugs revealing. The machine learning medical applications had been evolved from the physician needs and motivated by the promising results extracted from empirical studies. Medical support systems can be provided by screening, medical images, pattern classification and microarrays gene expression analysis. Typically medical data is characterized by its huge dimensionality and relatively limited examples. Feature selection is a crucial step to improve classification performance. Recent studies in machine learning field about classification process emerged a novel strong classifier scheme called the ensemble classifier. In this paper, a study for the performance of two novel ensemble classifiers namely Random Forest (RF) and Rotation Forest (ROT) for biomedical data sets is tested with five medical datasets. Three different feature selection methods were used to extract the most relevant features in each data set. Prediction performance is evaluated using accuracy measure. It was observed that ROT achieved the highest classification accuracy in most tested cases.
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