| Literature DB >> 32393438 |
Yuqi Zhou1, Atsushi Yasumoto2, Cheng Lei1,3, Chun-Jung Huang4, Hirofumi Kobayashi1, Yunzhao Wu1, Sheng Yan1, Chia-Wei Sun4, Yutaka Yatomi2, Keisuke Goda1,3,5.
Abstract
Platelets are anucleate cells in blood whose principal function is to stop bleeding by forming aggregates for hemostatic reactions. In addition to their participation in physiological hemostasis, platelet aggregates are also involved in pathological thrombosis and play an important role in inflammation, atherosclerosis, and cancer metastasis. The aggregation of platelets is elicited by various agonists, but these platelet aggregates have long been considered indistinguishable and impossible to classify. Here we present an intelligent method for classifying them by agonist type. It is based on a convolutional neural network trained by high-throughput imaging flow cytometry of blood cells to identify and differentiate subtle yet appreciable morphological features of platelet aggregates activated by different types of agonists. The method is a powerful tool for studying the underlying mechanism of platelet aggregation and is expected to open a window on an entirely new class of clinical diagnostics, pharmacometrics, and therapeutics.Entities:
Keywords: blood; cell biology; deep learning; human; human biology; imaging flow cytometry; medicine; microfluidics; platelet; thrombosis
Year: 2020 PMID: 32393438 DOI: 10.7554/eLife.52938
Source DB: PubMed Journal: Elife ISSN: 2050-084X Impact factor: 8.140