首页> 外国专利> METHOD OF MACHINE LEARNING, EMPLOYING BAYESIAN LATENT CLASS INFERENCE: COMBINING MULTIPLE GENOMIC FEATURE DETECTION ALGORITHMS TO PRODUCE AN INTEGRATED GENOMIC FEATURE SET WITH SPECIFICITY, SENSITIVITY AND ACCURACY

METHOD OF MACHINE LEARNING, EMPLOYING BAYESIAN LATENT CLASS INFERENCE: COMBINING MULTIPLE GENOMIC FEATURE DETECTION ALGORITHMS TO PRODUCE AN INTEGRATED GENOMIC FEATURE SET WITH SPECIFICITY, SENSITIVITY AND ACCURACY

机译:机器学习的方法,采用贝叶斯隐式分类推理:结合多个遗传特征检测算法,以生成具有特异性,灵敏度和准确性的集成遗传特征集

摘要

BAYSIC (BAYesian System for Integrated Combination) combines sets of genomic and other biological data features to optimize selected data feature attributes, for example, detecting genome variants including single nucleotide variants (SNVs) and small insertion/deletions in genomes. The present disclosure presents one possible embodiment employing BAYSIC to combine single nucleotide variants detected by several distinct variant calling methods into an integrated SNV call set that is more accurate than any single SNV calling method or any ad hoc method of combining call sets. BAYSIC is a, tested and validated method using unsupervised machine learning, employing Bayesian latent class inference to combine variant sets produced by different packages.
机译:BAYSIC(BAYesian集成组合系统)结合了基因组和其他生物学数据特征集,以优化选定的数据特征属性,例如,检测包括单核苷酸变体(SNV)的基因组变体和基因组中的小插入/缺失。本公开提出了一种可能的实施方式,其使用BAYSIC将通过几种不同的变体呼叫方法检测到的单核苷酸变体组合成集成的SNV呼叫集合,其比任何单个SNV呼叫方法或任何组合呼叫集合的特设方法更准确。 BAYSIC是一种使用无监督机器学习的经过测试和验证的方法,它利用贝叶斯隐性类推论来组合由不同程序包产生的变量集。

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