Machine Learning Models for Predicting Corticosteroid Therapy Necessity in COVID-19 Patients: A Comparative Study

Mujiba Shaima, Norun Nabi, Md Nasir Uddin Rana, Ahmed Ali Linkon, Badruddowza, Md Shohail Uddin Sarker, Nishat Anjum, Hammed Esa
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Abstract

This study analyzes machine learning algorithms to predict the need for corticosteroid (CS) therapy in COVID-19 patients based on initial assessments. Using data from 1861 COVID-19 patients, parameters like blood tests and pulmonary function tests were examined. Decision Tree and XGBoost emerged as top performers, achieving accuracy rates of 80.68% and 83.44% respectively. Multilayer Perceptron and AdaBoost also showed competitive performance. These findings highlight the potential of AI in guiding CS therapy decisions, with Decision Tree and XGBoost standing out as effective tools for patient identification. This research offers valuable insights for personalized medicine in infectious disease management.
用于预测 COVID-19 患者皮质类固醇治疗必要性的机器学习模型:比较研究
本研究分析了机器学习算法,以根据初步评估预测 COVID-19 患者对皮质类固醇(CS)治疗的需求。研究使用了 1861 名 COVID-19 患者的数据,对血液检测和肺功能检测等参数进行了检查。决策树和 XGBoost 表现最佳,准确率分别达到 80.68% 和 83.44%。多层感知器和 AdaBoost 的表现也很有竞争力。这些发现凸显了人工智能在指导 CS 治疗决策方面的潜力,其中决策树和 XGBoost 是识别患者的有效工具。这项研究为传染病管理中的个性化医疗提供了宝贵的见解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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