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Hierarchical multiresolution approaches for dense point-level breast cancer treatment data

机译:密集的点级乳腺癌治疗数据的分层多分辨率方法

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The analysis of point-level (geostatistical) data has historically been plagued by computational difficulties, owing to the high dimension of the nondiagonal spatial covariance matrices that need to be inverted. This problem is greatly compounded in hierarchical Bayesian settings, since these inversions need to take place at every iteration of the associated Markov chain Monte Carlo (MCMC) algorithm. This paper offers an approach for modeling the spatial correlation at two separate scales. This reduces the computational problem to a collection of lower-dimensional inversions that remain feasible within the MCMC framework. The approach yields full posterior inference for the model parameters of interest, as well as the fitted spatial response surface itself. We illustrate the importance and applicability of our methods using a collection of dense point-referenced breast cancer data collected over the mostly rural northern part of the state of Minnesota. Substantively, we wish to discover whether women who live more than a 60-mile drive from the nearest radiation treatment facility tend to opt for mastectomy over breast conserving surgery (BCS, or “lumpectomy”), which is less disfiguring but requires 6 weeks of follow-up radiation therapy. Our hierarchical multiresolution approach resolves this question while still properly accounting for all sources of spatial association in the data.
机译:历史上,由于非对角空间协方差矩阵的维数很高,需要对点级(地统计)数据进行分析,因此计算困难。在分层贝叶斯设置中,此问题变得更加复杂,因为这些反转需要在关联的马尔可夫链蒙特卡洛(MCMC)算法的每次迭代中进行。本文提供了一种在两个不同尺度上对空间相关性进行建模的方法。这将计算问题减少到在MCMC框架内仍然可行的低维反转的集合。该方法对感兴趣的模型参数以及拟合的空间响应曲面本身产生了完全后验推论。我们使用在明尼苏达州北部大部分农村地区收集的密集点参考乳腺癌数据来说明我们的方法的重要性和适用性。实质上,我们希望发现距离最近的放射治疗机构超过60英里车程的女性是否倾向于选择保留乳房的手术而不是保留乳房的手术(BCS或“乳房切除术”),这需要减少毁容性但需要6周的时间后续放射治疗。我们的分层多分辨率方法解决了这个问题,同时仍然适当考虑了数据中空间关联的所有来源。

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