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使用光学相干断层扫描和血管内超声成像定量冠状动脉斑块帽应力/应变及进展:一项使用三维薄层模型的随访研究。

Using Optical Coherence Tomography and Intravascular Ultrasound Imaging to Quantify Coronary Plaque Cap Stress/Strain and Progression: A Follow-Up Study Using 3D Thin-Layer Models.

作者信息

Lv Rui, Maehara Akiko, Matsumura Mitsuaki, Wang Liang, Zhang Caining, Huang Mengde, Guo Xiaoya, Samady Habib, Giddens Don P, Zheng Jie, Mintz Gary S, Tang Dalin

机构信息

School of Biological Science and Medical Engineering, Southeast University, Nanjing, China.

The Cardiovascular Research Foundation, Columbia University, New York, NY, United States.

出版信息

Front Bioeng Biotechnol. 2021 Aug 23;9:713525. doi: 10.3389/fbioe.2021.713525. eCollection 2021.

Abstract

Accurate plaque cap thickness quantification and cap stress/strain calculations are of fundamental importance for vulnerable plaque research. To overcome uncertainties due to intravascular ultrasound (IVUS) resolution limitation, IVUS and optical coherence tomography (OCT) coronary plaque image data were combined together to obtain accurate and reliable cap thickness data, stress/strain calculations, and reliable plaque progression predictions. IVUS, OCT, and angiography baseline and follow-up data were collected from nine patients (mean age: 69; m: 5) at Cardiovascular Research Foundation with informed consent obtained. IVUS and OCT slices were coregistered and merged to form IVUS + OCT (IO) slices. A total of 114 matched slices (IVUS and OCT, baseline and follow-up) were obtained, and 3D thin-layer models were constructed to obtain stress and strain values. A generalized linear mixed model (GLMM) and least squares support vector machine (LSSVM) method were used to predict cap thickness change using nine morphological and mechanical risk factors. Prediction accuracies by all combinations (511) of those predictors with both IVUS and IO data were compared to identify optimal predictor(s) with their best accuracies. For the nine patients, the average of minimum cap thickness from IVUS was 0.17 mm, which was 26.08% lower than that from IO data (average = 0.23 mm). Patient variations of the individual errors ranged from ‒58.11 to 20.37%. For maximum cap stress between IO and IVUS, patient variations of the individual errors ranged from ‒30.40 to 46.17%. Patient variations of the individual errors of maximum cap strain values ranged from ‒19.90 to 17.65%. For the GLMM method, the optimal combination predictor using IO data had AUC (area under the ROC curve) = 0.926 and highest accuracy = 90.8%, vs. AUC = 0.783 and accuracy = 74.6% using IVUS data. For the LSSVM method, the best combination predictor using IO data had AUC = 0.838 and accuracy = 75.7%, vs. AUC = 0.780 and accuracy = 69.6% using IVUS data. This preliminary study demonstrated improved plaque cap progression prediction accuracy using accurate cap thickness data from IO slices and the differences in cap thickness, stress/strain values, and prediction results between IVUS and IO data. Large-scale studies are needed to verify our findings.

摘要

准确的斑块帽厚度量化以及帽应力/应变计算对于易损斑块研究至关重要。为克服血管内超声(IVUS)分辨率限制带来的不确定性,将IVUS和光学相干断层扫描(OCT)冠状动脉斑块图像数据相结合,以获取准确可靠的帽厚度数据、应力/应变计算结果以及可靠的斑块进展预测。在获得知情同意后,从心血管研究基金会的9名患者(平均年龄:69岁;男性:5名)收集了IVUS、OCT和血管造影的基线及随访数据。将IVUS和OCT切片进行配准并合并,形成IVUS + OCT(IO)切片。共获得114个匹配切片(IVUS和OCT,基线和随访),并构建三维薄层模型以获取应力和应变值。使用广义线性混合模型(GLMM)和最小二乘支持向量机(LSSVM)方法,利用9个形态学和力学危险因素预测帽厚度变化。比较所有这些预测因子与IVUS和IO数据的所有组合(511种)的预测准确性, 以确定具有最佳准确性的最佳预测因子。对于这9名患者,IVUS测得的最小帽厚度平均值为0.17毫米,比IO数据测得的结果(平均值 = 0.23毫米)低26.08%。个体误差的患者差异范围为‒58.11%至20.37%。对于IO和IVUS之间的最大帽应力,个体误差的患者差异范围为‒30.40%至46.17%。最大帽应变值的个体误差的患者差异范围为‒19.90%至17.65%。对于GLMM方法,使用IO数据的最佳组合预测因子的AUC(ROC曲线下面积)= 0.926,最高准确率 = 90.8%,而使用IVUS数据时AUC = 0.783,准确率 = 74.6%。对于LSSVM方法,使用IO数据的最佳组合预测因子的AUC = 0.838,准确率 = 75.7%,而使用IVUS数据时AUC = 0.780,准确率 = 69.6%。这项初步研究表明,使用来自IO切片的准确帽厚度数据可提高斑块帽进展预测的准确性,并展示了IVUS和IO数据在帽厚度、应力/应变值及预测结果方面的差异。需要进行大规模研究来验证我们的发现。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/300b/8419245/6f9a929206b9/fbioe-09-713525-g001.jpg

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