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Methods for Using Data Abstracted from Medical Charts to Impute Longitudinal Missing Data in a Clinical Trial

机译:使用医疗图表中抽象的数据在临床试验中赋予纵向缺失数据的方法

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Objective: To describe a method for imputing missing follow-up blood pressure data in a clinical hypertension trial using blood pressures abstracted from medical charts. Methods: We tested a two-step method. In the first, a longitudinal mixed-effects model was estimated on blood pressures abstracted from medical charts. In the second, the patient-specific fitted values from this model at follow-up were used to impute blood pressures missing at follow-up in the trial. Simulations that imposed alternative missing data mechanisms on observed trial data were used to compare this approach to imputation approaches that do not incorporate data from charts. Results: For data that are missing at random, incorporating the fitted values from chart-based longitudinal models leads to estimates of the trial-based blood pressures thatare unbiased and have lower mean squared deviation than do blood pressures imputed without the chart-based data. For data that are missing not at random, incorporating fitted values ameliorates but does not eliminate the inherent missing data bias. Conclusions: Incorporating chart data into an imputation algorithm via the use of longitudinal mixed-effects model is an efficient way to impute longitudinal data that are missing from a randomized trial.
机译:目的:描述使用从医学图表中抽象的血压造成临床高血压试验中缺失后续血压数据的方法。方法:我们测试了一项两步法。首先,估计纵向混合效应模型在医学图表中抽象的血压上估计。第二,在随访中,来自该模型的患者特异性拟合值用于抑制试验中随访时缺失的血压。模拟所观察到的试验数据上的替代缺失数据机制的模拟用于将这种方法与图表中不包含数据的归纳方法进行比较。结果:对于随机缺失的数据,从图表为基础的纵向模型中的拟合值导致估计基于试验的血压的估计,而且具有比没有基于图表的血压在没有基于图表的数据的血压的平均平均偏差。对于不随机缺失的数据,包含拟合值改善但不会消除固有的缺失数据偏差。结论:通过使用纵向混合效果模型将图表数据纳入估算算法是抑制从随机试验中缺少的纵向数据的有效方法。

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