Applying the Huntington's Disease Integrated Staging System (HD-ISS) to Observational Studies.

IF 2.1 Q3 NEUROSCIENCES Journal of Huntington's disease Pub Date : 2023-01-01 DOI:10.3233/JHD-220555
Jeffrey D Long, Emily C Gantman, James A Mills, Jatin G Vaidya, Alexandra Mansbach, Sarah J Tabrizi, Cristina Sampaio
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引用次数: 1

Abstract

Background: The Huntington's Disease Integrated Staging System (HD-ISS) has four stages that characterize disease progression. Classification is based on CAG length as a marker of Huntington's disease (Stage 0), striatum atrophy as a biomarker of pathogenesis (Stage 1), motor or cognitive deficits as HD signs and symptoms (Stage 2), and functional decline (Stage 3). One issue for implementation is the possibility that not all variables are measured in every study, and another issue is that the stages are broad and may benefit from progression subgrouping.

Objective: Impute stages of the HD-ISS for observational studies in which missing data precludes direct stage classification, and then define progression subgroups within stages.

Methods: A machine learning algorithm was used to impute stages. Agreement of the imputed stages with the observed stages was evaluated using graphical methods and propensity score matching. Subgroups were defined based on descriptive statistics and optimal cut-point analysis.

Results: There was good overall agreement between the observed stages and the imputed stages, but the algorithm tended to over-assign Stage 0 and under-assign Stage 1 for individuals who were early in progression.

Conclusion: There is evidence that the imputed stages can be treated similarly to the observed stages for large-scale analyses. When imaging data are not available, imputation can be avoided by collapsing the first two stages using the categories of Stage≤1, Stage 2, and Stage 3. Progression subgroups defined within a stage can help to identify groups of more homogeneous individuals.

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亨廷顿舞蹈病综合分期系统(HD-ISS)在观察性研究中的应用
背景:亨廷顿氏病综合分期系统(HD-ISS)有四个阶段表征疾病进展。分类基于CAG长度作为亨廷顿病的标志物(0期),纹状体萎缩作为发病机制的生物标志物(1期),运动或认知缺陷作为HD的体征和症状(2期),以及功能下降(3期)。实施的一个问题是,在每项研究中可能没有测量所有变量,另一个问题是阶段很广泛,可能受益于进展亚组。目的:为缺少数据的观察性研究推断HD-ISS的分期,排除直接分期的可能,然后在分期内定义进展亚组。方法:采用机器学习算法进行分期计算。使用图形方法和倾向评分匹配来评估估算阶段与观测阶段的一致性。根据描述性统计和最佳切点分析定义亚组。结果:在观察到的阶段和计算的阶段之间有很好的总体一致性,但算法倾向于对早期发展的个体过度分配阶段0和低估分配阶段1。结论:有证据表明,在大规模分析中,计算的阶段可以与观察到的阶段类似。当无法获得成像数据时,可以通过使用Stage≤1、Stage 2和Stage 3的分类将前两个阶段折叠来避免插补。在一个阶段内定义的进展亚组可以帮助确定更同质的个体群体。
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来源期刊
CiteScore
4.80
自引率
9.70%
发文量
60
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