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Large-Scale Automatic Feature Selection for Biomarker Discovery in High-Dimensional OMICs Data

机译:高维OMIC数据中生物标记发现的大规模自动特征选择

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摘要

The identification of biomarker signatures in omics molecular profiling is usually performed to predict outcomes in a precision medicine context, such as patient disease susceptibility, diagnosis, prognosis, and treatment response. To identify these signatures, we have developed a biomarker discovery tool, called BioDiscML. From a collection of samples and their associated characteristics, i.e., the biomarkers (e.g., gene expression, protein levels, clinico-pathological data), BioDiscML exploits various feature selection procedures to produce signatures associated to machine learning models that will predict efficiently a specified outcome. To this purpose, BioDiscML uses a large variety of machine learning algorithms to select the best combination of biomarkers for predicting categorical or continuous outcomes from highly unbalanced datasets. The software has been implemented to automate all machine learning steps, including data pre-processing, feature selection, model selection, and performance evaluation. BioDiscML is delivered as a stand-alone program and is available for download at .
机译:通常在分子组学分子谱分析中对生物标志物特征进行鉴定,以预测精确医学背景下的结果,例如患者疾病的易感性,诊断,预后和治疗反应。为了识别这些签名,我们开发了一种称为BioDiscML的生物标记物发现工具。通过收集样本及其相关特征(即生物标志物(例如,基因表达,蛋白质水平,临床病理数据)),BioDiscML利用各种特征选择程序来生成与机器学习模型相关的签名,这些签名将有效地预测特定结果。为此,BioDiscML使用多种机器学习算法来选择最佳的生物标记组合,以从高度不平衡的数据集中预测分类或连续结果。该软件已实现自动执行所有机器学习步骤,包括数据预处理,特征选择,模型选择和性能评估。 BioDiscML是作为独立程序提供的,可以从下载。

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