Classification Model Analysis of ICU Mortality Level using Random Forest and Neural Network

Lymin Lymin, Alvin Alvin, Bodhi Lhoardi, Darwis Darwis, Joseph Siahaan, Abdi Dharma
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Abstract

Based on the results of previous studies, research on machine learning for predicting ICU patients is crucial as it can aid doctors in identifying high-risk individuals. A high accuracy in machine learning models is necessary for assisting doctors in making informed decisions. In this study, machine learning models were developed using two models, namely Random Forest and Artificial Neural Network (ANN), to predict patient mortality in the ICU. Patient data was obtained from The Global Open Source Severity of Illness Score (GOSSIS) and underwent preprocessing to address issues of missing values and imbalanced data. The data was then divided into training, validation, and testing sets for model training and evaluation. The results of the study indicate that the Random Forest model performs better with an accuracy of 93% on the testing data compared to the ANN which only achieved an accuracy of 86% on the testing data. Consequently, the Random Forest model can be utilized as a solution for predicting patient mortality in the ICU.
利用随机森林和神经网络对重症监护室死亡率进行分类模型分析
根据以往的研究结果,对机器学习预测重症监护病房病人的研究至关重要,因为它可以帮助医生识别高危人群。机器学习模型的高准确性对于协助医生做出明智的决定非常必要。本研究使用随机森林和人工神经网络(ANN)两种模型开发了机器学习模型,用于预测重症监护室患者的死亡率。患者数据来自全球开放源疾病严重程度评分(GOSSIS),并经过预处理以解决缺失值和不平衡数据问题。然后将数据分为训练集、验证集和测试集,用于模型训练和评估。研究结果表明,随机森林模型在测试数据上的准确率为 93%,而 ANN 在测试数据上的准确率仅为 86%,两者相比,随机森林模型的表现更好。因此,随机森林模型可用作预测重症监护室病人死亡率的解决方案。
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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