Division of Biostatistics, School of Public Health, University of Minnesota, Minneapolis, MN 55455, USA.
Center for Magnetic Resonance Research, Department of Radiology, University of Minnesota, Minneapolis, MN 55455, USA.
Stat Med. 2018 Sep 30;37(22):3214-3229. doi: 10.1002/sim.7810. Epub 2018 Jun 19.
Multiparametric magnetic resonance imaging (mpMRI), which combines traditional anatomic and newer quantitative MRI methods, has been shown to result in improved voxel-wise classification of prostate cancer as compared with any single MRI parameter. While these results are promising, substantial heterogeneity in the mpMRI parameter values and voxel-wise prostate cancer risk has been observed both between and within regions of the prostate. This suggests that classification of prostate cancer can potentially be improved by incorporating structural information into the classifier. In this paper, we propose a novel voxel-wise classifier of prostate cancer that accounts for the anatomic structure of the prostate by Bayesian hierarchical modeling, which can be combined with post hoc spatial Gaussian kernel smoothing to account for residual spatial correlation. Our proposed classifier results in significantly improved area under the ROC curve (0.822 vs 0.729, P < .001) and sensitivity corresponding to 90% specificity (0.599 vs 0.429, P < .001), compared with a baseline model that does not account for the anatomic structure of the prostate. Furthermore, the classifier can also be applied on voxels with missing mpMRI parameters, resulting in similar performance, which is an important practical consideration that cannot be easily accommodated using regression-based classifiers. In addition, our classifier achieved high computational efficiency with a closed-form solution for the posterior predictive cancer probability.
多参数磁共振成像(mpMRI)结合了传统的解剖学和新的定量 MRI 方法,与任何单一 MRI 参数相比,它可以提高前列腺癌的体素分类准确性。虽然这些结果很有前景,但在前列腺的不同区域之间和内部,mpMRI 参数值和体素前列腺癌风险都存在很大的异质性。这表明通过将结构信息纳入分类器,前列腺癌的分类可以得到改善。在本文中,我们通过贝叶斯层次模型提出了一种新的前列腺癌体素分类器,该分类器可以通过后验空间高斯核平滑来解释剩余的空间相关性,从而考虑到前列腺的解剖结构。与不考虑前列腺解剖结构的基线模型相比,我们提出的分类器的 ROC 曲线下面积显著提高(0.822 对 0.729,P <.001),并且在 90%特异性时的敏感性也相应提高(0.599 对 0.429,P <.001)。此外,该分类器还可以应用于缺少 mpMRI 参数的体素,从而获得相似的性能,这是一个重要的实际考虑因素,使用基于回归的分类器很难轻易处理。此外,我们的分类器通过后验预测癌症概率的闭式解实现了高计算效率。