Division of Statistics and Data Science, Department of Mathematical Sciences, University of Cincinnati.
Department of Statistics, Inha University, Incheon, Korea.
Stat Methods Med Res. 2021 Mar;30(3):826-842. doi: 10.1177/0962280220978990. Epub 2020 Dec 13.
Parkinson's disease is a progressive, chronic, and neurodegenerative disorder that is primarily diagnosed by clinical examinations and magnetic resonance imaging (MRI). In this paper, we propose a Bayesian model to predict Parkinson's disease employing a functional MRI (fMRI) based radiomics approach. We consider a spike and slab prior for variable selection in high-dimensional logistic regression models, and present an approximate Gibbs sampler by replacing a logistic distribution with a -distribution. Under mild conditions, we establish model selection consistency of the induced posterior and illustrate the performance of the proposed method outperforms existing state-of-the-art methods through simulation studies. In fMRI analysis, 6216 whole-brain functional connectivity features are extracted for 50 healthy controls along with 70 Parkinson's disease patients. We apply our method to the resulting dataset and further show its benefits with a higher average prediction accuracy of 0.83 compared to other contenders based on 10 random splits. The model fitting procedure also reveals the most discriminative brain regions for Parkinson's disease. These findings demonstrate that the proposed Bayesian variable selection method has the potential to support radiological diagnosis for patients with Parkinson's disease.
帕金森病是一种进行性、慢性和神经退行性疾病,主要通过临床检查和磁共振成像(MRI)来诊断。在本文中,我们提出了一种贝叶斯模型,通过基于功能磁共振成像(fMRI)的放射组学方法来预测帕金森病。我们考虑了一种尖峰和板条先验,用于高维逻辑回归模型中的变量选择,并通过用 -分布替换逻辑分布,提出了一种近似 Gibbs 抽样器。在温和的条件下,我们证明了诱导后验的模型选择一致性,并通过模拟研究表明,所提出的方法的性能优于现有的最先进的方法。在 fMRI 分析中,我们从 50 名健康对照者和 70 名帕金森病患者中提取了 6216 个全脑功能连接特征。我们将我们的方法应用于得到的数据集,并进一步显示,与基于 10 个随机分割的其他竞争者相比,它具有更高的平均预测准确率 0.83,具有更高的优势。模型拟合过程还揭示了帕金森病最具鉴别力的大脑区域。这些发现表明,所提出的贝叶斯变量选择方法有可能支持帕金森病患者的放射诊断。