计算生物学
DNA测序
生物
寡核苷酸
数字聚合酶链反应
DNA
聚合酶链反应
遗传学
基因
作者
Farzaneh Darbeheshti,Fangyan Yu,Farzana Ahmed,Viktor A. Adalsteinsson,G. Mike Makrigiorgos
出处
期刊:Clinical Chemistry
[Oxford University Press]
日期:2022-10-04
卷期号:68 (10): 1250-1260
被引量:6
标识
DOI:10.1093/clinchem/hvac093
摘要
Presence of excess unaltered, wild-type DNA (wtDNA) providing information of little clinical value may often mask low-level mutations containing important diagnostic or therapeutic clues. This is a recurring hurdle in biotechnology and medicine, including cancer, prenatal diagnosis, infectious diseases, and organ transplantation. Mutation enrichment techniques that allow reduction of unwanted DNA to enable the detection of low-level mutations have emerged since the early 1990s. They are continuously being refined and updated with new technologies. The burgeoning interest in liquid biopsies for residual cancer monitoring, detection of resistance to therapy, and early cancer detection has driven an expanded interest in new and improved methodologies for practical and effective mutation enrichment and detection of low-level mutations of clinical relevance.Newly developed mutation enrichment technologies are described and grouped according to the main principle of operation, PCR-blocking technologies, enzymatic methods, and physicochemical approaches. Special emphasis is given to technologies enabling pre-PCR blockage of wtDNA to bypass PCR errors [nuclease-assisted minor-allele enrichment assay with overlapping probes (NaME-PrO) and UV-mediated cross-linking minor allele enrichment (UVME)] or providing high multiplexity followed by next-generation sequencing [Minor allele enriched sequencing through recognition oligonucleotides (MAESTRO)].This review summarizes technological developments in rare mutation enrichment over the last 12 years, complementing pre-2010 reviews on this topic. The expanding field of liquid biopsy calls for improved limits of detection (LOD) and highly parallel applications, along with the traditional requirements for accuracy, speed, and cost-effectiveness. The current technologies are reviewed with regards to these new requirements.
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