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The surgical patient mortality rate prediction by machine learning algorithms

机译:机器学习算法预测手术患者死亡率

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Malnutrition is a common problem in critical illness patients which is observed in patients who is undergoing for surgery and hospital mortality rate. The study found that patients undergone surgery who have malnutrition problem result in high death risk. In this research, we aim to predict the mortality rate of undergone surgery patient by using Chiang Rai Nutrition Assessment information (CNA) with various data mining models; J48, ADTree and KNN. Results from this study will help doctor to plan for patient health preparation before undergo surgery such as consumption behavior of patient. Besides, the approach developed in this study should be of value for future studies into understanding the effect of malnutrition in patient surgery result.
机译:营养不良是重症患者的普遍问题,在接受手术和住院死亡率的患者中观察到营养不良。研究发现,患有营养不良问题的接受手术治疗的患者有很高的死亡风险。在这项研究中,我们旨在通过使用Chiang Rai营养评估信息(CNA)和各种数据挖掘模型来预测手术患者的死亡率。 J48,ADTree和KNN。这项研究的结果将有助于医生在进行手术之前(例如患者的消费行为)计划患者的健康准备。此外,本研究中开发的方法对于理解营养不良在患者手术结果中的作用应具有参考价值。

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