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Estimating classification probabilities in high-dimensional diagnostic studies

机译:估计高维诊断研究中的分类概率

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Motivation: Classification algorithms for high-dimensional biological data like gene expression profiles or metabolomic fingerprints are typically evaluated by the number of misclassifications across a test dataset. However, to judge the classification of a single case in the context of clinical diagnosis, we need to assess the uncertainties associated with that individual case rather than the average accuracy across many cases. Reliability of individual classifications can be expressed in terms of class probabilities. While classification algorithms are a well-developed area of research, the estimation of class probabilities is considerably less progressed in biology, with only a few classification algorithms that provide estimated class probabilities.Results: We compared several probability estimators in the context of classification of metabolomics profiles. Evaluation criteria included sparseness biases, calibration of the estimator, the variance of the estimator and its performance in identifying highly reliable classifications. We observed that several of them display artifacts that compromise their use in practice. Classification probabilities based on a combination of local cross-validation error rates and monotone regression prove superior in metabolomic profiling.
机译:动机:针对高维度生物学数据(例如基因表达谱或代谢组学指纹)的分类算法通常通过测试数据集中的错误分类次数进行评估。但是,要在临床诊断的背景下判断单个病例的分类,我们需要评估与单个病例相关的不确定性,而不是许多病例的平均准确性。各个分类的可靠性可以用分类概率来表示。尽管分类算法是一个发展良好的研究领域,但分类概率的估计在生物学中的进展相对较少,只有少数分类算法提供了估计的分类概率。结果:我们在代谢组学分类的背景下比较了几种概率估计器个人资料。评估标准包括稀疏偏差,估计器的校准,估计器的方差及其在识别高度可靠的分类中的性能。我们观察到其中有一些显示出伪像,这些伪像在实践中影响了它们的使用。基于局部交叉验证错误率和单调回归的组合分类概率在代谢组学分析中证明是优越的。

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