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Statistical model for predicting falling in humans

机译:预测人类跌倒的统计模型

摘要

Dependent variables believed to contribute to a likelihood of falling are analyzed using a latent class analysis. The dependent variables are biomedical factors, which may include, for example, arthritis, high blood pressure, diabetes, foot disorders, Parkinson's Disease, stroke, eye disorder, limb disorder, or proprioceptive disorder. Data pertaining to the biomedical factors is gathered from a population of individuals at risk of falling. Covariate data, including for example age and the number of prescriptions taken, is further analyzed against latent class data. For a particular group of at risk individuals, a set of five classes produced useful results broadly corresponding to groups representing individuals who have: good health; a range of diseases; Parkinson's Disease; arthritis; and high blood pressure. A probability of falling is determined, relative to the group of individuals with good health.
机译:使用潜在类别分析来分析被认为会导致跌倒可能性的因变量。因变量是生物医学因素,其可以包括例如关节炎,高血压,糖尿病,足部疾病,帕金森氏病,中风,眼部疾病,肢体疾病或本体感受性疾病。与生物医学因素有关的数据是从有跌倒危险的人群中收集的。针对潜在类别数据进一步分析协变量数据,包括例如年龄和服用处方的数量。对于特定的高风险人群,一组五个等级产生的有用结果大致对应于代表以下人群的人群:身体健康;一系列疾病;帕金森氏病;关节炎;和高血压。相对于身体健康的个体,确定跌倒的可能性。

著录项

  • 公开/公告号US8521490B2

    专利类型

  • 公开/公告日2013-08-27

    原文格式PDF

  • 申请/专利权人 PATRICK C. HARDIGAN;

    申请/专利号US20100895097

  • 发明设计人 PATRICK C. HARDIGAN;

    申请日2010-09-30

  • 分类号G06F9/455;

  • 国家 US

  • 入库时间 2022-08-21 16:45:47

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