Perelman School of Medicine, University of Pennsylvania, Philadelphia, Pennsylvania, USA; email:
Department of Bioengineering, School of Engineering and Applied Science, University of Pennsylvania, Philadelphia, Pennsylvania, USA.
Annu Rev Biomed Data Sci. 2022 Aug 10;5:269-292. doi: 10.1146/annurev-biodatasci-122120-113218. Epub 2022 May 13.
Liquid biopsy is the analysis of materials shed by tumors into circulation, such as circulating tumor cells, nucleic acids, and extracellular vesicles (EVs), for the diagnosis and management of cancer. These assays have rapidly evolved with recent FDA approvals of single biomarkers in patients with advanced metastatic disease. However, they have lacked sensitivity or specificity as a diagnostic in early-stage cancer, primarily due to low concentrations in circulating plasma. EVs, membrane-enclosed nanoscale vesicles shed by tumor and other cells into circulation, are a promising liquid biopsy analyte owing to their protein and nucleic acid cargoes carried from their mother cells, their surface proteins specific to their cells of origin, and their higher concentrations over other noninvasive biomarkers across disease stages. Recently, the combination of EVs with non-EV biomarkers has driven improvements in sensitivity and accuracy; this has been fueled by the use of machine learning (ML) to algorithmically identify and combine multiple biomarkers into a composite biomarker for clinical prediction. This review presents an analysis of EV isolation methods, surveys approaches for and issues with using ML in multianalyte EV datasets, and describes best practices for bringing multianalyte liquid biopsy to clinical implementation.
液体活检是对肿瘤释放到循环系统中的物质(如循环肿瘤细胞、核酸和细胞外囊泡 (EV))进行分析,用于癌症的诊断和管理。随着最近 FDA 批准在晚期转移性疾病患者中使用单一生物标志物,这些检测方法得到了快速发展。然而,由于在循环血浆中的浓度较低,它们作为早期癌症的诊断方法缺乏敏感性或特异性。EV 是肿瘤和其他细胞释放到循环系统中的膜封闭纳米级囊泡,由于其母细胞携带的蛋白质和核酸货物、其特定于起源细胞的表面蛋白以及其在其他非侵入性生物标志物中的浓度高于其他非侵入性生物标志物,因此是一种很有前途的液体活检分析物。最近,EV 与非-EV 生物标志物的结合提高了检测的敏感性和准确性;这得益于机器学习 (ML) 的使用,它可以通过算法识别和组合多个生物标志物,形成用于临床预测的复合生物标志物。本综述分析了 EV 分离方法,调查了在多分析物 EV 数据集中使用 ML 的方法和问题,并描述了将多分析物液体活检应用于临床的最佳实践。