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Microarray Feature Selection and Dynamic Selection of Classifiers for Early Detection of Insect Bite Hypersensitivity in Horses

机译:马的昆虫叮咬超敏反应的微阵列特征选择和分类器动态选择

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Microarrays can be employed to better characterise allergies, as interactions between antibodies and allergens in mammals can be monitored. Once the joint dynamics of these elements in both healthy and diseased animals are understood, a model to predict the likelihood of an individual having allergic reactions can be defined. We investigate the potential use of Dynamic Selection (DS) methods to classify protein microarray data, with a case study of equine insect bite hypersensitivity (IBH) disease. To the best of our knowledge DS has not yet been applied to these data types. Since most microarrays datasets have a low number of samples, we hypothesise that DS models will produce satisfactory results due to their ability to perform better when compared to traditional ensemble techniques for similar data. We focus on three research questions: 1) What is the potential of DS for microarray data classification and how does it compare with existing classical classification methods results? 2) how do DS methods perform for the IBH dataset? and 3) does feature selection improve DS performance for this data? A wrapper using backward elimination and embedded with a regularized extreme learning machine are adopted to identify the more relevant features influencing the onset of the disease. Results from traditional classifiers are compared to 21 different DS methods before and after performing feature selection. Our results indicate that DS methods do not outperform single and static classifiers on this high-dimensional dataset and their performance also does not improved after feature selection.
机译:由于可以监测哺乳动物中抗体和过敏原之间的相互作用,因此可以使用微阵列更好地表征过敏。一旦了解了健康和患病动物中这些元素的关节动力学,就可以定义一个模型来预测个体发生过敏反应的可能性。我们调查动态选择(DS)方法对蛋白质微阵列数据进行分类的潜在用途,并以马蚊虫叮咬超敏性(IBH)疾病为例进行研究。据我们所知,DS尚未应用于这些数据类型。由于大多数微阵列数据集的样本数量很少,因此我们假设DS模型将产生令人满意的结果,这是因为与传统的集成技术相比,DS模型具有更好的性能。我们关注三个研究问题:1)DS在微阵列数据分类中的潜力是什么?与现有经典分类方法的结果相比,DS有何潜力? 2)DS方法对IBH数据集如何执行?和3)功能选择是否可以改善此数据的DS性能?采用使用向后消除的包装器并嵌入规则化的极限学习机,以识别影响疾病发作的更相关特征。在进行特征选择之前和之后,将传统分类器的结果与21种不同的DS方法进行比较。我们的结果表明,在此高维数据集上,DS方法不会胜过单个分类器和静态分类器,并且在选择特征后其性能也不会得到改善。

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