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Missing data imputation in longitudinal cohort studies - application of PLANN-ARD in breast cancer survival

机译:纵向队列研究中缺少数据局面 - Plann-ARD在乳腺癌存活中的应用

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Missing values are common in medical datasets and may be amenable to data imputation when modelling a given data set or validating on an external cohort. This paper discusses model averaging over samples of the imputed distribution and extends this approach to generic non-linear modelling with the Partial Logistic Artificial Neural Network (PLANN) regularised within the evidence-based framework with Automatic Relevance Determination (ARD). The study then applies the imputation to external validation over new patient cohorts, considering also the case of predictions made for individual patients. A prognostic index is defined for the non-linear model and validation results show that 4 statistically significant risk groups identified at the 95% level of confidence from the modelling data, from Christie Hospital (n=931), retain good separation during external validation with data from the British Columbia Cancer Agency (n=4,083).
机译:缺失值在医疗数据集中常见,并且在建模给定的数据集或在外部群组上验证时,可以适用于数据载体。本文讨论了欠压分布样本的平均模型,并将这种方法扩展到与基于证据的框架内的部分物流人工神经网络(PLANN)与自动相关性确定(ARD)的局部逻辑人工神经网络(PLANN)延伸到通用非线性建模。然后,研究对新患者队列的外部验证归咎,考虑到个体患者的预测情况也适用于外部验证。为非线性模型和验证结果定义了预后指数,表明,从克里斯蒂医院(N = 931),从模特医院(n = 931)的95%信心达到95%的统计学显着的风险群体,在外部验证期间保持良好的分离来自不列颠哥伦比亚癌症癌症机构的数据(n = 4,083)。

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