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Estimating Time to Event From Longitudinal Categorical Data: An Analysis of Multiple Sclerosis Progression

机译:从纵向分类数据估计事件发生的时间:多发性硬化进展的分析

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The expanded disability status scale (EDSS) is an ordinal score that measures progression in multiple sclerosis (MS). Progression is defined as reaching EDSS of a certain level (absolute progression) or increasing EDSS by one point (relative progression). Survival methods for time to progression are not adequate for such data because they do not exploit the EDSS level at the end of follow-up. Instead, we suggest a Markov transitional model applicable for repeated categorical or ordinal data. This approach enables derivation of covariate-specific survival curves, obtained after estimation of the regression coefficients and manipulations of the resulting transition matrix. Large-sample theory and resampling methods are employed to derive pointwise confidence intervals, which perform well in simulation. Methods for generating survival curves for time to EDSS of a certain level, time to increase EDSS by at least one point, and time to two consecutive visits with EDSS greater than 3 are described explicitly. The regression models described are easily implemented using standard software packages. Survival curves are obtained from the regression results using packages that support simple matrix calculation. We present and demonstrate our method on data collected at the Partners Multiple Sclerosis Center in Boston. We apply our approach to progression defined by time to two consecutive visits with EDSS greater than 3 and calculate crude (without covariates) and covariate-specific curves.
机译:扩展的残疾状态量表(EDSS)是一个序数评分,用于衡量多发性硬化症(MS)的进展。进展被定义为达到一定水平的EDSS(绝对进展)或使EDSS增加一个点(相对进展)。进展时间的生存方法不足以用于此类数据,因为它们在随访结束时并未利用EDSS水平。相反,我们建议适用于重复的分类或有序数据的马尔可夫过渡模型。这种方法能够推导协变量特定的生存曲线,该曲线是在估计回归系数并操纵所得的转换矩阵后获得的。采用大样本理论和重采样方法得出逐点置信区间,该区间在模拟中表现良好。明确描述了生成到一定水平的EDSS时间,将EDSS增加至少一个点的时间以及到EDSS大于3的两次连续访问的时间的生存曲线的方法。所描述的回归模型可以使用标准软件包轻松实现。使用支持简单矩阵计算的软件包从回归结果中获得生存曲线。我们介绍并展示了我们在波士顿合作伙伴多发性硬化中心收集的数据的方法。我们将方法定义为按时间定义的进展,两次连续访问时EDSS大于3,并计算粗略(无协变量)和特定于协变量的曲线。

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