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Machine learning implementation for multi-analyte assay of biological samples

机译:用于生物样品多分析物测定的机器学习实现

摘要

Systems and methods that analyze blood-based cancer diagnostic tests using multiple classes of molecules are described. The system uses machine learning (ML) to analyze multiple analytes, for example cell-free DNA, cell-free microRNA, and circulating proteins, from a biological sample. The system can use multiple assays, e.g., whole-genome sequencing, whole-genome bisulfite sequencing or EM-seq, small-RNA sequencing, and quantitative immunoassay. This can increase the sensitivity and specificity of diagnostics by exploiting independent information between signals. During operation, the system receives a biological sample, and separates a plurality of molecule classes from the sample. For a plurality of assays, the system identifies feature sets to input to a machine learning model. The system performs an assay on each molecule class and forms a feature vector from the measured values. The system inputs the feature vector into the machine learning model and obtains an output classification of whether the sample has a specified property.
机译:描述了使用多种类型的分子分析基于血液的癌症诊断测试的系统和方法。该系统使用机器学习(ML)来分析生物样品中的多种分析物,例如无细胞DNA,无细胞microRNA和循环蛋白。该系统可以使用多种测定,例如全基因组测序,全基因组亚硫酸氢盐测序或EM-seq,小RNA测序和定量免疫测定。通过利用信号之间的独立信息,可以提高诊断的灵敏度和特异性。在操作期间,系统接收生物样品,并从样品中分离出多种分子类别。对于多个测定,系统识别特征集以输入到机器学习模型。该系统对每种分子类别进行分析,并根据测量值形成特征向量。系统将特征向量输入到机器学习模型中,并获得样本是否具有指定属性的输出分类。

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