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Disease Trajectories and End-of-Life Care for Dementias: Latent Topic Modeling and Trend Analysis Using Clinical Notes

机译:痴呆症的疾病轨迹和生命终结护理:使用临床笔记的潜在主题建模和趋势分析

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摘要

Despite the increasing prevalence, growing costs, and high mortality of dementia in older adults in the U.S., little is known about the course of these diseases and what care dementia patients receive in their final years of life. Using a large volume of clinical notes of dementia patients over the last two years of life, we conducted automatic topic modeling to capture the trends of various themes mentioned in care provider notes, including patients’ physical function status, mental health, falls, nutrition and feeding, infections, hospital care, intensive care, end-of-life care, and family and social supports. Our research contributes to the adoption and evaluation of an unsupervised machine learning method using large amounts of retrospective free-text electronic health record data to discover and understand illness and health care trajectories.
机译:尽管在美国老年人中痴呆症的患病率增加,费用增加并且死亡率很高,但对于这些疾病的病程以及痴呆症患者在其生命的最后几年中所接受的护理知之甚少。我们使用生命的最后两年中大量的痴呆症患者的临床笔记,进行了自动主题建模,以捕获护理提供者笔记中提到的各种主题的趋势,包括患者的身体功能状况,心理健康,跌倒,营养和喂养,感染,医院护理,重症监护,临终护理以及家庭和社会支持。我们的研究有助于采用和评估一种无监督的机器学习方法,该方法使用大量的回顾性自由文本电子健康记录数据来发现和了解疾病和保健轨迹。

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