首页> 外国专利> DETECTING SOMATIC SINGLE NUCLEOTIDE VARIANTS FROM CELL-FREE NUCLEIC ACID WITH APPLICATION TO MINIMAL RESIDUAL DISEASE MONITORING

DETECTING SOMATIC SINGLE NUCLEOTIDE VARIANTS FROM CELL-FREE NUCLEIC ACID WITH APPLICATION TO MINIMAL RESIDUAL DISEASE MONITORING

机译:用施用到最小的残留疾病监测,检测从无细胞核酸的体细胞单核苷酸变体

摘要

The present disclosure provides a probabilistic model for accurate and sensitive somatic single nucleotide variant (SNV) detection in cell-free nucleic acid samples comprising a set of sequence data. A joint genotype may be determined for each locus in the set of sequence data, and germline mutations may be intrinsically removed. A set of filtrations can be applied to eliminate low quality somatic variant calls. Further, a global tumor cell-free deoxyribonucleic acid (cfDNA) fraction and overlapping read mates can be considered, thereby enabling accurate SNV detection and variant allele frequency estimation from samples with low tumor cfDNA fraction. A sensitive early detection of minimal residual disease (MRD) is designed by using the probabilistic model and the machine learning model for distinguishing true variants from sequencing errors.
机译:本公开提供了一种用于准确敏感的细胞单核苷酸变体(SNV)检测的概率模型,所述无细胞核酸样品中包含一组序列数据。可以针对序列数据组中的每个基因座测定联合基因型,并且可以本质上除去种系突变。可以应用一组过滤以消除低质量的体制变体调用。此外,可以考虑全局肿瘤无细胞脱氧核糖核酸(CFDNA)级分和重叠读取配对,从而能够从具有低肿瘤CFDNA分数的样品中精确的SNV检测和变异等位基因频率估计。通过使用概率模型和机器学习模型来设计概率的敏感性疾病(MRD)的敏感性早期检测,以区分真正的变体从排序误差。

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