1. Active regression model for clinical grading of COVID-19
- Author
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Yuan Sh, Jierong Dong, Zhongqing Chen, Meiqing Yuan, Lingna Lyu, and Xiuli Zhang
- Subjects
COVID-19 ,deep learning ,active regression ,feature engineering ,clinical data ,Immunologic diseases. Allergy ,RC581-607 - Abstract
BackgroundIn the therapeutic process of COVID-19, the majority of indicators that physicians have for assisting treatment have come from clinical tests represented by proteins, metabolites, and immune levels in patients’ blood. Therefore, this study constructs an individualized treatment model based on deep learning methods, aiming to realize timely intervention based on clinical test indicator data of COVID-19 patients and provide an important theoretical basis for optimizing medical resource allocation.MethodsThis study collected clinical data from a total of 1,799 individuals, including 560 controls for non-respiratory infectious diseases (Negative), 681 controls for other respiratory virus infections (Other), and 558 coronavirus infections (Positive) for COVID-19. We first used the Student T-test to screen for statistically significant differences (Pvalue
- Published
- 2023
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