| Literature DB >> 29019651 |
Jina Ko1,2, Neha Bhagwat1,2, Stephanie S Yee1,2, Natalia Ortiz1,2, Amine Sahmoud1,2, Taylor Black1,2, Nicole M Aiello1,2, Lydie McKenzie1,2, Mark O'Hara1,2, Colleen Redlinger1,2, Janae Romeo1,2, Erica L Carpenter1,2, Ben Z Stanger1,2, David Issadore1,2.
Abstract
Circulating exosomes contain a wealth of proteomic and genetic information, presenting an enormous opportunity in cancer diagnostics. While microfluidic approaches have been used to successfully isolate cells from complex samples, scaling these approaches for exosome isolation has been limited by the low throughput and susceptibility to clogging of nanofluidics. Moreover, the analysis of exosomal biomarkers is confounded by substantial heterogeneity between patients and within a tumor itself. To address these challenges, we developed a multichannel nanofluidic system to analyze crude clinical samples. Using this platform, we isolated exosomes from healthy and diseased murine and clinical cohorts, profiled the RNA cargo inside of these exosomes, and applied a machine learning algorithm to generate predictive panels that could identify samples derived from heterogeneous cancer-bearing individuals. Using this approach, we classified cancer and precancer mice from healthy controls, as well as pancreatic cancer patients from healthy controls, in blinded studies.Entities:
Keywords: cancer diagnostics; exosomes; machine learning; nanofluidics; pancreatic cancer
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Year: 2017 PMID: 29019651 DOI: 10.1021/acsnano.7b05503
Source DB: PubMed Journal: ACS Nano ISSN: 1936-0851 Impact factor: 15.881