利用机器学习从电子健康记录中识别谵妄患者的新方法

R. Kavitha, Kdv Prasad, S. Archana Shreee, B. Maheshwari, G. Jeevitha Sai, V. Dankan Gowda
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引用次数: 0

摘要

在大多数情况下,谵妄引起的精神损害是可以治疗并最终逆转的。注意力不集中、迷失方向、思维不连贯、意识程度波动都是症状。谵妄是一种以注意力不集中和全身性认知障碍为特征的急性神经精神障碍,是一种常见的、危险的、通常与不良结果相关的疾病。谵妄患者在重症监护病房期间发生不良后果的风险增加。诊断谵妄需要时间和医疗能力。那些有发展为谵妄风险的人应该尽快被识别出来。一旦做出诊断,治疗过程可能会很漫长,需要几个小组共同努力。本文的目标是展示如何建立一个模型,利用机器学习技术使用电子健康记录数据来诊断谵妄。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Novel Method of Identification of Delirium in Patients from Electronic Health Records Using Machine Learning
In most cases, the mental impairment caused by delirium may be treated and eventually reversed. Lack of concentration, disorientation, incoherent thought, and fluctuating degrees of awareness (consciousness) are all symptoms. Delirium, an acute neuropsychiatric disorder characterised by inattention and generalised cognitive impairment, is common, hazardous, and generally linked with poor results. Patients with delirium are at increased risk for adverse outcomes throughout their time in the critical care unit. It requires time and medical competence to diagnose delirium. Those at risk of developing delirium should be identified as soon as possible. Once a diagnosis has been made, the treatment process may be lengthy and include several groups working together. This paper’s goal is to show how a model may be built to diagnose delirium using Electronic Health Record data employing a Machine Learning technique.
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