首页> 外文期刊>American Journal of Biostatistics. >General Linear Models in a Missing Outcome Environment of Clinical Trials Incorporating with Splines for Time-Invariant Continuous Adjustment | Science Publications
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General Linear Models in a Missing Outcome Environment of Clinical Trials Incorporating with Splines for Time-Invariant Continuous Adjustment | Science Publications

机译:临床试验缺少结果的环境中的通用线性模型,结合样条曲线进行时不变连续调整科学出版物

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> >Missing data is a common occurrence in longitudinal studies of health care research. Although many studies have shown the potential usefulness of current missing analyses, e.g., (1) Complete Case (CC) analysis; (2) imputation methods such as Last Observation Carried Forward (LOCF), multiple imputations, Expectation-Maximization algorithm approach; and (3) methods using all available data such as linear mixed model and generalized estimation equations approach, the CC analysis or LOCF imputation method have been popular due to their simplicity of execution regardless of some critical drawbacks. The proposed approach employs the generalized least squares method using all available data without deletion or imputations for missing outcomes, producing the best linear unbiased estimate. A simulation study was conducted to compare the proposed approach to commonly used missing analyses under each missing data mechanism and showed the validity of the proposed approach, especially with the first order autoregressive correlation structure. B-spline is applied to the proposed model to manage non-linear relationships between outcome and continuous covariate. Application to a cell therapy clinical trial is presented.
机译: > >缺少数据是卫生保健研究纵向研究中的常见现象。尽管许多研究表明,目前的缺失分析有潜在的用处,例如:(1)完整病例(CC)分析; (2)插补方法,例如最后观察结转(LOCF),多重插补,期望最大化算法方法; (3)使用线性混合模型和广义估计方程法等所有可用数据的方法,CC分析或LOCF插补方法由于易于执行而不受某些关键缺点的欢迎。所提出的方法采用广义最小二乘法,使用所有可用数据,而不会缺失或归因于缺失的结果,从而产生最佳的线性无偏估计。进行了仿真研究,将所提出的方法与每种缺失数据机制下的常用缺失分析进行了比较,并证明了所提出方法的有效性,尤其是在一阶自回归相关结构下。 B样条被应用于所提出的模型,以管理结果和连续协变量之间的非线性关系。介绍了在细胞疗法临床试验中的应用。

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