Fan Longling, Yao Jing, Yang Chun, Wu Zheyang, Xu Di, Tang Dalin
Department of Mathematics, Southeast University, Nanjing, 210096, China.
Department of Cardiology, First Affiliated Hospital of Nanjing Medical University, Nanjing, 210029, China.
Biomed Eng Online. 2016 Apr 5;15:34. doi: 10.1186/s12938-016-0151-8.
Ventricle material properties are difficult to obtain under in vivo conditions and are not readily available in the current literature. It is also desirable to have an initial determination if a patient had an infarction based on echo data before more expensive examinations are recommended. A noninvasive echo-based modeling approach and a predictive method were introduced to determine left ventricle material parameters and differentiate patients with recent myocardial infarction (MI) from those without.
Echo data were obtained from 10 patients, 5 with MI (Infarct Group) and 5 without (Non-Infarcted Group). Echo-based patient-specific computational left ventricle (LV) models were constructed to quantify LV material properties. All patients were treated equally in the modeling process without using MI information. Systolic and diastolic material parameter values in the Mooney-Rivlin models were adjusted to match echo volume data. The equivalent Young's modulus (YM) values were obtained for each material stress-strain curve by linear fitting for easy comparison. Predictive logistic regression analysis was used to identify the best parameters for infract prediction.
The LV end-systole material stiffness (ES-YMf) was the best single predictor among the 12 individual parameters with an area under the receiver operating characteristic (ROC) curve of 0.9841. LV wall thickness (WT), material stiffness in fiber direction at end-systole (ES-YMf) and material stiffness variation (∆YMf) had positive correlations with LV ejection fraction with correlation coefficients r = 0.8125, 0.9495 and 0.9619, respectively. The best combination of parameters WT + ∆YMf was the best over-all predictor with an area under the ROC curve of 0.9951.
Computational modeling and material stiffness parameters may be used as a potential tool to suggest if a patient had infarction based on echo data. Large-scale clinical studies are needed to validate these preliminary findings.
在体内条件下难以获取心室材料特性,且当前文献中也不易获得。在推荐进行更昂贵的检查之前,基于超声心动图数据初步判断患者是否发生过梗死也很有必要。引入了一种基于非侵入性超声心动图的建模方法和预测方法,以确定左心室材料参数,并区分近期心肌梗死(MI)患者和非MI患者。
从10名患者中获取超声心动图数据,其中5名患有MI(梗死组),5名未患MI(非梗死组)。构建基于超声心动图的患者特异性计算左心室(LV)模型,以量化LV材料特性。在建模过程中,所有患者均一视同仁,不使用MI信息。调整Mooney-Rivlin模型中的收缩期和舒张期材料参数值,以匹配超声心动图容积数据。通过线性拟合获得每条材料应力-应变曲线的等效杨氏模量(YM)值,以便于比较。使用预测逻辑回归分析确定梗死预测的最佳参数。
在12个个体参数中,左心室收缩末期材料刚度(ES-YMf)是最佳单一预测指标,受试者操作特征(ROC)曲线下面积为0.9841。左心室壁厚度(WT)、收缩末期纤维方向的材料刚度(ES-YMf)和材料刚度变化(∆YMf)与左心室射血分数呈正相关,相关系数分别为r = 0.8125、0.9495和0.9619。参数WT + ∆YMf的最佳组合是总体最佳预测指标,ROC曲线下面积为0.9951。
计算建模和材料刚度参数可作为一种潜在工具,根据超声心动图数据提示患者是否发生过梗死。需要进行大规模临床研究来验证这些初步发现。