| Literature DB >> 34075696 |
Huiwen Xiong1, Zhipeng Huang1, Zhejun Yang1, Qiuyuan Lin1, Bin Yang1, Xueen Fang1, Baohong Liu1, Hui Chen1, Jilie Kong1.
Abstract
Exosomes, known as nanometer-sized vesicles (30-200 nm), are secreted by many types of cells. Cancer-derived exosomes have great potential to be biomarkers for early clinical diagnosis and evaluation of cancer therapeutic efficacy. Conventional detection methods are limited to low sensitivity and reproducibility. There are hundreds of papers published with different detection methods in recent years to address these challenges. Therefore, in this review, pioneering researches about various detection strategies are comprehensively summarized and the analytical performance of these tests is evaluated. Furthermore, the exosome molecular composition (protein and nucleic acid) profiling, a single exosome profiling, and their application in clinical cancer diagnosis are reviewed. Finally, the principles and applications of machine learning method in exosomes researches are presented.Entities:
Keywords: biomarkers; clinical cancer diagnosis; detection methods; exosomes; profiling
Year: 2021 PMID: 34075696 DOI: 10.1002/smll.202007971
Source DB: PubMed Journal: Small ISSN: 1613-6810 Impact factor: 13.281