Litcius/Paper detail

Real‐time intelligent classification of <scp>COVID</scp> ‐19 and thrombosis via massive image‐based analysis of platelet aggregates

Chenqi Zhang, Maik Herbig, Yuqi Zhou, Masako Nishikawa, Mohammad Shifat‐E‐Rabbi, Hiroshi Kanno, Ruoxi Yang, Yuma Ibayashi, Ting‐Hui Xiao, Gustavo K. Rohde, Masataka Sato, Satoshi Kodera, Masao Daimon, Yutaka Yatomi, Keisuke Goda

2023Cytometry Part A12 citationsDOIOpen Access PDF

Abstract

Microvascular thrombosis is a typical symptom of COVID-19 and shows similarities to thrombosis. Using a microfluidic imaging flow cytometer, we measured the blood of 181 COVID-19 samples and 101 non-COVID-19 thrombosis samples, resulting in a total of 6.3 million bright-field images. We trained a convolutional neural network to distinguish single platelets, platelet aggregates, and white blood cells and performed classical image analysis for each subpopulation individually. Based on derived single-cell features for each population, we trained machine learning models for classification between COVID-19 and non-COVID-19 thrombosis, resulting in a patient testing accuracy of 75%. This result indicates that platelet formation differs between COVID-19 and non-COVID-19 thrombosis. All analysis steps were optimized for efficiency and implemented in an easy-to-use plugin for the image viewer napari, allowing the entire analysis to be performed within seconds on mid-range computers, which could be used for real-time diagnosis.

Topics & Concepts

ThrombosisPlateletPlatelet activationConvolutional neural networkCoronavirus disease 2019 (COVID-19)PopulationArtificial intelligenceMedicinePathologyPattern recognition (psychology)Computer scienceBiomedical engineeringImmunologyInternal medicineInfectious disease (medical specialty)Environmental healthDiseaseCOVID-19 Clinical Research StudiesCOVID-19 diagnosis using AIRetinal Imaging and Analysis