Li Hao, Zhang Huahong, Johnson Hans, Long Jeffrey D, Paulsen Jane S, Oguz Ipek
Department of Electrical Engineering and Computer Science, Vanderbilt University, Nashville, TN 37235.
Department of Electrical and Computer Engineering, University of Iowa, Iowa City, IA 52242.
Proc SPIE Int Soc Opt Eng. 2021 Feb;11596. doi: 10.1117/12.2582340. Epub 2021 Feb 15.
Longitudinal information is important for monitoring the progression of neurodegenerative diseases, such as Huntington's disease (HD). Specifically, longitudinal magnetic resonance imaging (MRI) studies may allow the discovery of subtle intra-subject changes over time that may otherwise go undetected because of inter-subject variability. For HD patients, the primary imaging-based marker of disease progression is the atrophy of subcortical structures, mainly the caudate and putamen. To better understand the course of subcortical atrophy in HD and its correlation with clinical outcome measures, highly accurate segmentation is important. In recent years, subcortical segmentation methods have moved towards deep learning, given the state-of-the-art accuracy and computational efficiency provided by these models. However, these methods are not designed for longitudinal analysis, but rather treat each time point as an independent sample, discarding the longitudinal structure of the data. In this paper, we propose a deep learning based subcortical segmentation method that takes into account this longitudinal information. Our method takes a longitudinal pair of 3D MRIs as input, and jointly computes the corresponding segmentations. We use bi-directional convolutional long short-term memory (C-LSTM) blocks in our model to leverage the longitudinal information between scans. We test our method on the PREDICT-HD dataset and use the Dice coefficient, average surface distance and 95-percent Hausdorff distance as our evaluation metrics. Compared to cross-sectional segmentation, we improve the overall accuracy of segmentation, and our method has more consistent performance across time points. Furthermore, our method identifies a stronger correlation between subcortical volume loss and decline in the total motor score, an important clinical outcome measure for HD.
纵向信息对于监测神经退行性疾病(如亨廷顿舞蹈症,HD)的进展非常重要。具体而言,纵向磁共振成像(MRI)研究可能会发现随着时间推移个体内部的细微变化,否则由于个体间的差异这些变化可能无法被检测到。对于HD患者,基于成像的疾病进展主要标志物是皮质下结构萎缩,主要是尾状核和壳核。为了更好地理解HD中皮质下萎缩的过程及其与临床结局指标的相关性,高精度分割很重要。近年来,鉴于这些模型所提供的最先进的准确性和计算效率,皮质下分割方法已朝着深度学习发展。然而,这些方法并非为纵向分析而设计,而是将每个时间点视为独立样本,丢弃了数据的纵向结构。在本文中,我们提出了一种基于深度学习的皮质下分割方法,该方法考虑了这种纵向信息。我们的方法将一对纵向的3D MRI作为输入,并联合计算相应的分割。我们在模型中使用双向卷积长短期记忆(C-LSTM)块来利用扫描之间的纵向信息。我们在PREDICT-HD数据集上测试了我们的方法,并使用Dice系数、平均表面距离和95%的豪斯多夫距离作为评估指标。与横断面分割相比,我们提高了分割的整体准确性,并且我们的方法在各个时间点的性能更一致。此外,我们的方法识别出皮质下体积损失与总运动评分下降之间更强的相关性,总运动评分是HD的一项重要临床结局指标。