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Understanding the predictive value of continuous markers for censored survival data using a likelihood ratio approach

机译:使用似然比方法了解连续标记物对审查的生存数据的预测价值

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The likelihood ratio function (LR), the ratio of conditional probabilities of obtaining a specific marker value among those with the event of interest over those without, provides an easily interpretable way to quantify the update of the risk prediction due to the knowledge of the marker value. The LR has been explored for both binary and continuous markers for binary events (e.g., diseased or not), however the use of the LR in censored data has not been fully explored. We extend the concept of LR to a time-dependent LR (TD-LR) for survival outcomes that are subject to censoring. Estimation for the TD-LR is done using Kaplan-Meier estimation and a univariate Cox proportional hazards (PH) model. A “scale invariant” approach based on marker quantiles is provided to allow comparison of predictive values between markers with different scales. Relationships to time-dependent receiver-operator characteristic (ROC) curves, area under the curve (AUC), and optimal cut-off values are considered. The proposed methods were applied to data from a bladder cancer clinical trial to determine whether the neutrophil-to-lymphocyte ratio (NLR) is a valuable biomarker for predicting overall survival following surgery or combined chemotherapy and surgery. The TD-LR method yielded results consistent with the original findings while providing an easily interpretable three-dimensional surface display of how NLR related to the likelihood of event in the trial data. The TD-LR provides a more nuanced understanding of the relationship between continuous markers and the likelihood of events in censored survival data. This method also allows more straightforward communication with a clinical audience through graphical presentation.
机译:似然比函数(LR),即在有关注事件的情况下获得特定标志物值的条件概率与没有相关事件的条件概率之间的比率,提供了一种易于解释的方法,可以基于标志物的知识来量化风险预测的更新值。已经针对二进制事件(例如,患病与否)的二进制标记和连续标记对LR进行了探索,但是,在受检数据中对LR的使用尚未得到充分探索。我们将LR的概念扩展为与时间相关的LR(TD-LR),以实现受审查的生存结果。 TD-LR的估计是使用Kaplan-Meier估计和单变量Cox比例风险(PH)模型完成的。提供了基于标记分位数的“尺度不变”方法,以允许比较具有不同尺度的标记之间的预测值。考虑与时间相关的接收器-操作员特性(ROC)曲线,曲线下面积(AUC)和最佳截止值之间的关系。拟议的方法应用于来自膀胱癌临床试验的数据,以确定中性粒细胞与淋巴细胞的比例(NLR)是否是预测手术或联合化疗后整体生存率的有价值的生物标志物。 TD-LR方法产生的结果与原始发现一致,同时提供了NLR与试验数据中事件的可能性如何相关的易于解释的三维表面显示。 TD-LR提供了对连续标记与审查生存数据中事件可能性之间关系的更细微的了解。该方法还允许通过图形表示与临床观众进行更直接的交流。

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