Wu Zheyang, Yang Chun, Tang Dalin
Mathematical Sciences Department, Worcester Polytechnic Institute, Worcester, MA 01609, USA.
J Biomech Eng. 2011 Jun;133(6):064503. doi: 10.1115/1.4004189.
It has been hypothesized that mechanical risk factors may be used to predict future atherosclerotic plaque rupture. Truly predictive methods for plaque rupture and methods to identify the best predictor(s) from all the candidates are lacking in the literature. A novel combination of computational and statistical models based on serial magnetic resonance imaging (MRI) was introduced to quantify sensitivity and specificity of mechanical predictors to identify the best candidate for plaque rupture site prediction. Serial in vivo MRI data of carotid plaque from one patient was acquired with follow-up scan showing ulceration. 3D computational fluid-structure interaction (FSI) models using both baseline and follow-up data were constructed and plaque wall stress (PWS) and strain (PWSn) and flow maximum shear stress (FSS) were extracted from all 600 matched nodal points (100 points per matched slice, baseline matching follow-up) on the lumen surface for analysis. Each of the 600 points was marked "ulcer" or "nonulcer" using follow-up scan. Predictive statistical models for each of the seven combinations of PWS, PWSn, and FSS were trained using the follow-up data and applied to the baseline data to assess their sensitivity and specificity using the 600 data points for ulcer predictions. Sensitivity of prediction is defined as the proportion of the true positive outcomes that are predicted to be positive. Specificity of prediction is defined as the proportion of the true negative outcomes that are correctly predicted to be negative. Using probability 0.3 as a threshold to infer ulcer occurrence at the prediction stage, the combination of PWS and PWSn provided the best predictive accuracy with (sensitivity, specificity) = (0.97, 0.958). Sensitivity and specificity given by PWS, PWSn, and FSS individually were (0.788, 0.968), (0.515, 0.968), and (0.758, 0.928), respectively. The proposed computational-statistical process provides a novel method and a framework to assess the sensitivity and specificity of various risk indicators and offers the potential to identify the optimized predictor for plaque rupture using serial MRI with follow-up scan showing ulceration as the gold standard for method validation. While serial MRI data with actual rupture are hard to acquire, this single-case study suggests that combination of multiple predictors may provide potential improvement to existing plaque assessment schemes. With large-scale patient studies, this predictive modeling process may provide more solid ground for rupture predictor selection strategies and methods for image-based plaque vulnerability assessment.
有假设认为,机械风险因素可用于预测未来动脉粥样硬化斑块破裂。目前文献中缺乏真正用于预测斑块破裂的方法,以及从所有候选因素中识别最佳预测因素的方法。本文引入了一种基于序列磁共振成像(MRI)的计算模型与统计模型的新组合,以量化机械预测因素的敏感性和特异性,从而识别斑块破裂部位预测的最佳候选因素。采集了一名患者颈动脉斑块的序列体内MRI数据,并进行随访扫描,结果显示有溃疡形成。利用基线数据和随访数据构建了三维计算流体-结构相互作用(FSI)模型,并从管腔表面的所有600个匹配节点(每个匹配切片100个点,基线与随访匹配)中提取斑块壁应力(PWS)、应变(PWSn)和血流最大剪应力(FSS)进行分析。利用随访扫描将600个点中的每一个标记为“溃疡”或“非溃疡”。使用随访数据对PWS、PWSn和FSS的七种组合中的每一种建立预测统计模型,并将其应用于基线数据,利用600个数据点进行溃疡预测,以评估其敏感性和特异性。预测敏感性定义为预测为阳性的真阳性结果的比例。预测特异性定义为正确预测为阴性的真阴性结果的比例。在预测阶段,以概率0.3作为推断溃疡发生的阈值,PWS和PWSn的组合提供了最佳预测准确性,(敏感性,特异性)=(0.97,0.958)。PWS、PWSn和FSS单独给出的敏感性和特异性分别为(0.788,0.968)、(0.515,0.968)和(0.758,0.928)。所提出的计算-统计过程提供了一种新的方法和框架,用于评估各种风险指标的敏感性和特异性,并提供了以随访扫描显示溃疡作为方法验证的金标准,利用序列MRI识别斑块破裂的优化预测因素的潜力。虽然很难获得具有实际破裂情况的序列MRI数据,但这个单病例研究表明,多个预测因素的组合可能会对现有的斑块评估方案有所改进。通过大规模患者研究,这种预测建模过程可能为破裂预测因素选择策略和基于图像的斑块易损性评估方法提供更坚实的基础。