Seo Kangwon, Pan Rong, Lee Dongjin, Thiyyagura Pradeep, Chen Kewei
Department of Industrial and Manufacturing Systems Engineering and Department of Statistics, University of Missouri, USA.
School of Computing, Informatics, and Decision Systems Engineering, Arizona State University, USA.
Heliyon. 2019 Aug 2;5(8):e02216. doi: 10.1016/j.heliyon.2019.e02216. eCollection 2019 Aug.
While tomographic neuroimaging data is information rich, objective, and with high sensitivity in the study of brain diseases such as Alzheimer's disease (AD), its direct use in clinical practice and in regulated clinical trial (CT) still has many challenges. Taking CT as an example, unless the relevant policy and the perception of the primary outcome measures change, the need to construct univariate indices (out of the 3-D imaging data) to serve as CT's primary outcome measures will remain the focus of active research. More relevant to this current study, an overall global index that summarizes multiple complicated features from neuroimages should be developed in order to provide high diagnostic accuracy and sensitivity in tracking AD progression over time in clinical setting. Such index should also be practically intuitive and logically explainable to patients and their families. In this research, we propose a new visualization tool, derived from the manifold-based nonlinear dimension reduction of brain MRI features, to track AD progression over time. In specific, we investigate the locally linear embedding (LLE) method using a dataset from Alzheimer's Disease Neuroimaging Initiative (ADNI), which includes the longitudinal MRIs from 562 subjects. About 20% of them progressed to the next stage of dementia. Using only the baseline data of cognitively unimpaired (CU) and AD subjects, LLE reduces the feature dimension to two and a subject's AD progression path can be plotted in this low dimensional LLE feature space. In addition, the likelihood of being categorized to AD is indicated by color. This LLE map is a new data visualization tool that can assist in tracking AD progression over time.
虽然断层神经成像数据信息丰富、客观,并且在阿尔茨海默病(AD)等脑部疾病研究中具有高灵敏度,但其在临床实践和规范的临床试验(CT)中的直接应用仍面临诸多挑战。以CT为例,除非相关政策和对主要结局指标的认知发生变化,否则构建单变量指标(从三维成像数据中提取)作为CT的主要结局指标仍将是积极研究的重点。与当前这项研究更相关的是,应开发一种能总结神经影像中多个复杂特征的整体全局指标,以便在临床环境中追踪AD随时间的进展时提供高诊断准确性和灵敏度。这样的指标还应在实际中直观易懂,并且对患者及其家属在逻辑上具有可解释性。在本研究中,我们提出了一种新的可视化工具,它源自基于流形的脑MRI特征非线性降维,用于追踪AD随时间的进展。具体而言,我们使用来自阿尔茨海默病神经成像倡议(ADNI)的数据集研究局部线性嵌入(LLE)方法,该数据集包括562名受试者的纵向MRI数据。其中约20%进展到痴呆的下一阶段。仅使用认知未受损(CU)和AD受试者的基线数据,LLE将特征维度降至二维,并且可以在这个低维LLE特征空间中绘制受试者的AD进展路径。此外,通过颜色表示被归类为AD的可能性。这个LLE图是一种新的数据可视化工具,可有助于追踪AD随时间的进展。