阿尔茨海默病严重程度的时间量化:“时间指数”模型。

J W Ashford, M Shan, S Butler, A Rajasekar, F A Schmitt
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引用次数: 51

摘要

在阿尔茨海默病患者的临床和神经病理学评估的一个基本问题是量化痴呆严重程度的进展。已经提出了几种方法,目的是在疾病的不同阶段用不同的敏感性对痴呆症进行分期,但没有开发出数学函数来将这些措施与物理连续体联系起来。使用一种动态方法来量化疾病严重程度,严重程度随时间的变化被引用到一个累积时间指数,一个物理维度。来自33名可能患有阿尔茨海默病的患者的数据,在三个50分制量表上进行至少两次连续评估,测量认知、行为和日常生活技能,以确定变化率。使用数据的“模糊”平滑,随时间的整合和最小二乘回归来推导三次多项式函数来计算严重程度度量,其中从严重程度评分中估计“疾病天数”。该方法可用于提高各种精神状态测试表现的可比性,并将临床前痴呆的早期阶段和晚期深度痴呆阶段的测量联系起来。该方法还提供了对任何人口的“平均”时间过程的描述,从该指数中得出。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Temporal quantification of Alzheimer's disease severity: 'time index' model.

A fundamental issue in the clinical and neuropathological assessment of Alzheimer's disease patients is quantification of dementia severity progression. Several methods have been advanced for the purpose of staging dementia with various sensitivities at different phases of the disease, but no mathematical function has been developed to link these measures to a physical continuum. Using a dynamic method for quantifying illness severity, change in severity over time was referenced to a cumulative temporal index, a physical dimension. Data from 33 patients with probable Alzheimer's disease with at least 2 successive assessments on three 50-point scales measuring cognitive, behavioral, and daily living skills were used to determine rate of change. 'Fuzzylogic' smoothing of the data, integration over time, and least-squares regression were used to derive a cubic polynomial function to calculate a severity measure in which 'days of illness' was estimated from the severity score. This method can be used to improve the comparability of performance across various mental status tests, and to link measures of very early phases of preclinical dementia and late profound dementia phases. This method also provides a description of an 'average' time course for any population from which the index is derived.

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