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A multiple instance learning approach for detecting COVID-19 in peripheral blood smears.


ABSTRACT: A wide variety of diseases are commonly diagnosed via the visual examination of cell morphology within a peripheral blood smear. For certain diseases, such as COVID-19, morphological impact across the multitude of blood cell types is still poorly understood. In this paper, we present a multiple instance learning-based approach to aggregate high-resolution morphological information across many blood cells and cell types to automatically diagnose disease at a per-patient level. We integrated image and diagnostic information from across 236 patients to demonstrate not only that there is a significant link between blood and a patient's COVID-19 infection status, but also that novel machine learning approaches offer a powerful and scalable means to analyze peripheral blood smears. Our results both backup and enhance hematological findings relating blood cell morphology to COVID-19, and offer a high diagnostic efficacy; with a 79% accuracy and a ROC-AUC of 0.90.

SUBMITTER: Cooke CL 

PROVIDER: S-EPMC9931330 | biostudies-literature | 2022 Aug

REPOSITORIES: biostudies-literature

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A multiple instance learning approach for detecting COVID-19 in peripheral blood smears.

Cooke Colin L CL   Kim Kanghyun K   Xu Shiqi S   Chaware Amey A   Yao Xing X   Yang Xi X   Neff Jadee J   Pittman Patricia P   McCall Chad C   Glass Carolyn C   Jiang Xiaoyin Sara XS   Horstmeyer Roarke R  

PLOS digital health 20220819 8


A wide variety of diseases are commonly diagnosed via the visual examination of cell morphology within a peripheral blood smear. For certain diseases, such as COVID-19, morphological impact across the multitude of blood cell types is still poorly understood. In this paper, we present a multiple instance learning-based approach to aggregate high-resolution morphological information across many blood cells and cell types to automatically diagnose disease at a per-patient level. We integrated image  ...[more]

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