Institute of Electrical and Biomedical Engineering, UMIT - Private University For Health Sciences and Health Technology, Hall in Tirol, Austria.
Institute of Health Care Engineering with European Testing Center of Medical Devices, Graz University of Technology, Graz, Austria.
PLoS One. 2022 Nov 9;17(11):e0276607. doi: 10.1371/journal.pone.0276607. eCollection 2022.
High throughput technologies in genomics enable the analysis of small alterations in gene expression levels. Patterns of such deviations are an important starting point for the discovery and verification of new biomarker candidates. Identifying such patterns is a challenging task that requires sophisticated machine learning approaches. Currently, there are a variety of classification models, and a common approach is to compare the performance and select the best one for a given classification problem. Since the association between the features of a data set and the performance of a particular classification method is still not fully understood, the main contribution of this work is to provide a new methodology for predicting the prediction results of different classifiers in the field of biomarker discovery. We propose here a three-steps computational workflow that includes an analysis of the data set characteristics, the calculation of the classification accuracy and, finally, the prediction of the resulting classification error. The experiments were carried out on synthetic and microarray datasets. Using this method, we showed that the predictability strongly depends on the discriminatory ability of the features, e.g., sets of genes, in two or multi-class datasets. If a dataset has a certain discriminatory ability, this method enables prediction of the classification performance before applying a learning model. Thus, our results contribute to a better understanding of the relationship between dataset characteristics and the corresponding performance of a machine learning method, and suggest the optimal classification method for a given dataset based on its discriminatory ability.
高通量技术在基因组学中能够分析基因表达水平的微小变化。这些偏差模式是发现和验证新生物标志物候选物的重要起点。识别这些模式是一项具有挑战性的任务,需要复杂的机器学习方法。目前有各种分类模型,一种常见的方法是比较性能并选择最适合给定分类问题的模型。由于数据集的特征与特定分类方法的性能之间的关联尚未完全理解,因此这项工作的主要贡献在于提供一种新的方法学,用于预测生物标志物发现领域中不同分类器的预测结果。我们在这里提出了一个包含三个步骤的计算工作流程,包括数据集特征分析、分类准确性计算以及最终的分类误差预测。实验在合成数据集和微阵列数据集上进行。使用这种方法,我们表明可预测性强烈取决于特征的区分能力,例如,两个或多个类别的数据集的基因集。如果数据集具有一定的区分能力,则该方法可以在应用学习模型之前预测分类性能。因此,我们的结果有助于更好地理解数据集特征与机器学习方法的相应性能之间的关系,并根据数据集的区分能力为给定数据集建议最佳分类方法。