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Scoring and staging systems using cox linear regression modeling and recursive partitioning.

机译:使用Cox线性回归建模和递归分区的评分和分期系统。

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OBJECTIVES: Scoring and staging systems are used to determine the order and class of data according to predictors. Systems used for medical data, such as the Child-Turcotte-Pugh scoring and staging systems for ordering and classifying patients with liver disease, are often derived strictly from physicians' experience and intuition. We construct objective and data-based scoring/staging systems using statistical methods. METHODS: We consider Cox linear regression modeling and recursive partitioning techniques for censored survival data. In particular, to obtain a target number of stages we propose cross-validation and amalgamation algorithms. We also propose an algorithm for constructing scoring and staging systems by integrating local Cox linear regression models into recursive partitioning, so that we can retain the merits of both methods such as superior predictive accuracy, ease of use, and detection of interactions between predictors. The staging system construction algorithms are compared by cross-validation evaluation of real data. RESULTS: The data-based cross-validation comparison shows that Cox linear regression modeling is somewhat better than recursive partitioning when there are only continuous predictors, while recursive partitioning is better when there are significant categorical predictors. The proposed local Cox linear recursive partitioning has better predictive accuracy than Cox linear modeling and simple recursive partitioning. CONCLUSIONS: This study indicates that integrating local linear modeling into recursive partitioning can significantly improve prediction accuracy in constructing scoring and staging systems.
机译:目的:评分和分级系统用于根据预测变量确定数据的顺序和类别。用于医学数据的系统,例如用于对肝病患者进行排序和分类的Child-Turcotte-Pugh评分和分期系统,通常严格地根据医生的经验和直觉得出。我们使用统计方法构建客观的和基于数据的评分/分期系统。方法:我们考虑了Cox线性回归建模和递归分区技术,用于审查生存数据。特别是,为了获得目标阶段数,我们提出了交叉验证和合并算法。我们还提出了一种通过将局部Cox线性回归模型集成到递归分区中来构建评分和分期系统的算法,以便我们可以保留这两种方法的优点,例如优越的预测准确性,易用性以及检测预测变量之间的相互作用。通过对真实数据的交叉验证评估,比较了登台系统构建算法。结果:基于数据的交叉验证比较表明,当只有连续预测变量时,Cox线性回归建模要好于递归分区;而当存在明显的分类预测变量时,Cox线性回归建模会更好。所提出的局部Cox线性递归分区比Cox线性建模和简单递归分区具有更好的预测精度。结论:这项研究表明,将局部线性模型集成到递归分区中可以显着提高构建评分和分级系统的预测准确性。

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