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Bayesian variable selection based on clinical relevance weights in small sample studies-Application to colon cancer

机译:贝叶斯变量选择基于临床相关性重量的小型样本研究 - 适用于结肠癌

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摘要

Using clinical data to model the medical decisions behind sequential treatment actions raises methodological challenges. Physicians often have access to many covariates that may be used when making sequential treatment decisions for individual patients. Statistical variable selection methods may help finding which of these variables are used for this decision in everyday practice. When the sample size is not large, Bayesian variable selection methods can address this setting and allow for expert information to be incorporated into prior distributions. Motivated by clinical practice data involving repeated dose adaptation for Irinotecan in colorectal metastatic cancer, we propose a modification of the stochastic search variable selection (SSVS) method, which we call weight-based SSVS (WBS). We use clinical relevance weights elicited from physician experts to construct prior distributions, with the goal to identify the most influential toxicities and other covariates used for dose adjustment. We evaluate and compare the WBS model performance to the Lasso and SSVS through an extensive simulation study. The simulations show that WBS has better performance and lower rates of false positives and false negatives than the other methods but depends strongly on the covariate weights.
机译:使用临床数据来模拟顺序治疗行动背后的医学决策提高了方法论挑战。医生通常可以访问许多协变者,这些协变量可以在为个体患者制定连续治疗决策时使用。统计变量选择方法可以帮助找到在日常练习中使用这些变量的哪些变量。当样本大小不大时,贝叶斯变量选择方法可以解决此设置并允许将专家信息合并到以前的分布中。通过临床实践数据,涉及对伊替康的反复剂量适应在结肠直肠转移癌中,我们提出了一种改进随机搜索变量选择(SSV)方法,我们调用基于重量的SSV(WBS)。我们使用从医生专家引发的临床相关权重构建现有分布,目标是确定最有影响力的毒性和用于剂量调整的其他协变量。通过广泛的仿真研究,我们将WBS模型性能进行评估并比较套索和SSV。模拟表明,WBS具有比其他方法更好的性能和较低的假阳性率和假阴性率,而是依赖于协变量的重量。

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