Zhu Yingying, Kim Minjeong, Zhu Xiaofeng, Kaufer Daniel, Wu Guorong
Department of Computer Science, University of Texas at Arlington, TX, USA.
Department of Computer Science, University of North Carolina at Greensboro, NC, USA.
Med Image Anal. 2021 Jan;67:101825. doi: 10.1016/j.media.2020.101825. Epub 2020 Oct 14.
The enormous social and economic cost of Alzheimer's disease (AD) has driven a number of neuroimaging investigations for early detection and diagnosis. Towards this end, various computational approaches have been applied to longitudinal imaging data in subjects with Mild Cognitive Impairment (MCI), as serial brain imaging could increase sensitivity for detecting changes from baseline, and potentially serve as a diagnostic biomarker for AD. However, current state-of-the-art brain imaging diagnostic methods have limited utility in clinical practice due to the lack of robust predictive power. To address this limitation, we propose a flexible spatial-temporal solution to predict the risk of MCI conversion to AD prior to the onset of clinical symptoms by sequentially recognizing abnormal structural changes from longitudinal magnetic resonance (MR) image sequences. Firstly, our model is trained to sequentially recognize different length partial MR image sequences from different stages of AD. Secondly, our method is leveraged by the inexorably progressive nature of AD. To that end, a Temporally Structured Support Vector Machine (TS-SVM) model is proposed to constrain the partial MR image sequence's detection score to increase monotonically with AD progression. Furthermore, in order to select the best morphological features for enabling classifiers, we propose a joint feature selection and classification framework. We demonstrate that our early diagnosis method using only two follow-up MR scans is able to predict conversion to AD 12 months ahead of an AD clinical diagnosis with 81.75% accuracy.
阿尔茨海默病(AD)巨大的社会和经济成本推动了多项用于早期检测和诊断的神经影像学研究。为此,各种计算方法已被应用于轻度认知障碍(MCI)患者的纵向成像数据,因为系列脑成像可以提高检测相对于基线变化的敏感性,并有可能作为AD的诊断生物标志物。然而,由于缺乏强大的预测能力,当前最先进的脑成像诊断方法在临床实践中的效用有限。为了解决这一局限性,我们提出了一种灵活的时空解决方案,通过依次识别纵向磁共振(MR)图像序列中的异常结构变化,在临床症状出现之前预测MCI转化为AD的风险。首先,我们的模型经过训练,以依次识别来自AD不同阶段的不同长度的部分MR图像序列。其次,我们的方法利用了AD不可阻挡的进展特性。为此,提出了一种时间结构支持向量机(TS-SVM)模型,以约束部分MR图像序列的检测分数随AD进展单调增加。此外,为了选择最佳的形态学特征以启用分类器,我们提出了一个联合特征选择和分类框架。我们证明,我们仅使用两次随访MR扫描的早期诊断方法能够在AD临床诊断前12个月预测向AD的转化,准确率为81.75%。