Logistic Regression Using Hyperparameter Optimization on COVID-19 Patients’ Vital Status

Vinna Rahmayanti Setyaning Nastiti, Yufis Azhar, Riska Septiana Putri
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Abstract

This study aims to classify COVID-19 patients based on the results of their hematology tests. Hematology test results have been shown to be useful in identifying the severity and risk of COVID-19 patients. Specifically, this study focuses on classifying COVID-19 patients based on their vital status, namely Deceased and Alive. The dataset used in this study contains four variables: white blood cells (WBC), neutrophils (NEU), lymphocytes (LYM), and Neutrophil Lymphocyte Ratio (NLR). Logistic Regression algorithm was used to solve the problem, and hyperparameter optimization was implemented to obtain the best model performance. The objective of this study was to build the best parameter in classifying the patients’ vital status. The proposed model achieved an accuracy score of 78%, which is the best performance among the tested models. The results of this study provide a key component for decision making in hospitals, as it provides a way to quickly and accurately identify the vital status of COVID-19 patients. This study has important implications for managing the COVID-19 pandemic and should be of interest to researchers and practitioners in the field.  
基于超参数优化的新冠肺炎患者生命状态Logistic回归
这项研究旨在根据血液学检查结果对COVID-19患者进行分类。血液学检测结果已被证明可用于确定COVID-19患者的严重程度和风险。具体来说,本研究的重点是根据COVID-19患者的生命状态进行分类,即死亡和活着。本研究中使用的数据集包含四个变量:白细胞(WBC)、中性粒细胞(NEU)、淋巴细胞(LYM)和中性粒细胞淋巴细胞比率(NLR)。采用Logistic回归算法求解该问题,并进行超参数优化以获得最佳模型性能。本研究的目的是建立对患者生命状态进行分类的最佳参数。该模型的准确率达到78%,是所有模型中准确率最高的。本研究的结果为医院决策提供了关键组成部分,因为它提供了一种快速准确地识别COVID-19患者生命状态的方法。这项研究对管理COVID-19大流行具有重要意义,应该引起该领域的研究人员和从业人员的兴趣。
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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