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:从无细胞核酸中检测体细胞单核苷酸变异体及其在最小残留疾病监测中的应用

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:本公开提供了用于在无细胞核酸样品中进行准确和灵敏的体细胞单核苷酸变体(SNV)检测的概率模型,其包括一组序列数据。可以为序列数据集中的每个基因座确定联合基因型,并且可以固有地去除种系突变。可以应用一组过滤来消除低质量的躯体变异调用。此外,可以考虑全局无肿瘤脱氧核糖核酸(cfDNA)组分和重叠的阅读伴侣,从而能够从具有低肿瘤cfDNA组分的样品中准确地进行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敏感的最小残留疾病(MRD)早期检测,以区分真实变异与测序错误。

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