Combined with the semantic features of CT and selected clinical variables, a machine learning model for accurately predicting the prognosis of Omicron was established
Di Jin, Zicong Li, Zhikang Deng, Jiayu Nan, Pei Huang, Bingliang Zeng, Bing Fan

TL;DR
This study uses CT scans and clinical data with machine learning to predict Omicron prognosis, aiming to improve personalized treatment.
Contribution
The study introduces a novel combined machine learning model using CT radiomics and clinical variables to predict Omicron prognosis.
Findings
The combined model achieved an AUC of 0.848 in training and 0.797 in validation for prognosis prediction.
The model integrates radiomics features and clinical indicators for improved accuracy.
The study highlights the lack of prior research on using CT images for Omicron prognosis prediction.
Abstract
To efficiently use medical resources and offer optimal personalized treatment for individuals with Omicron infection, it is vital to predict the disease’s outcome early on. This research developed three machine learning models to foresee the results for Omicron-infected patients. Data from 253 Omicron-infected patients, including their CT scans, clinical details, and relevant laboratory values, were studied. The patients were categorized into two groups based on their disease progression: favourable prognosis and unfavourable prognosis. Patients manifesting respiratory failure, acute liver or kidney impairment, or fatalities were placed in the “poor” group. Those lacking such symptoms were allocated to the “good” group. The participants were randomly split into training set (202) and validation set (51) with an 8:2 ratio. Radiomics features were produced using image processing, focused…
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Taxonomy
TopicsCOVID-19 diagnosis using AI · Radiomics and Machine Learning in Medical Imaging · AI in cancer detection
