Literature DB >> 21744932

In vivo serial MRI-based models and statistical methods to quantify sensitivity and specificity of mechanical predictors for carotid plaque rupture: location and beyond.

Zheyang Wu1, Chun Yang, Dalin Tang.   

Abstract

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.

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Year:  2011        PMID: 21744932      PMCID: PMC3136918          DOI: 10.1115/1.4004189

Source DB:  PubMed          Journal:  J Biomech Eng        ISSN: 0148-0731            Impact factor:   2.097


  22 in total

1.  3D critical plaque wall stress is a better predictor of carotid plaque rupture sites than flow shear stress: An in vivo MRI-based 3D FSI study.

Authors:  Zhongzhao Teng; Gador Canton; Chun Yuan; Marina Ferguson; Chun Yang; Xueying Huang; Jie Zheng; Pamela K Woodard; Dalin Tang
Journal:  J Biomech Eng       Date:  2010-03       Impact factor: 2.097

Review 2.  Image-based computational fluid dynamics modeling in realistic arterial geometries.

Authors:  David A Steinman
Journal:  Ann Biomed Eng       Date:  2002-04       Impact factor: 3.934

3.  Influence of curvature dynamics on pulsatile coronary artery flow in a realistic bifurcation model.

Authors:  Martin Prosi; Karl Perktold; Zhaohua Ding; Morton H Friedman
Journal:  J Biomech       Date:  2004-11       Impact factor: 2.712

4.  A hypothesis for vulnerable plaque rupture due to stress-induced debonding around cellular microcalcifications in thin fibrous caps.

Authors:  Yuliya Vengrenyuk; Stéphane Carlier; Savvas Xanthos; Luis Cardoso; Peter Ganatos; Renu Virmani; Shmuel Einav; Lane Gilchrist; Sheldon Weinbaum
Journal:  Proc Natl Acad Sci U S A       Date:  2006-09-26       Impact factor: 11.205

5.  Stress analysis of carotid plaque rupture based on in vivo high resolution MRI.

Authors:  Zhi-Yong Li; Simon Howarth; Rikin A Trivedi; Jean M U-King-Im; Martin J Graves; Andrew Brown; Liqun Wang; Jonathan H Gillard
Journal:  J Biomech       Date:  2005-10-26       Impact factor: 2.712

6.  Local maximal stress hypothesis and computational plaque vulnerability index for atherosclerotic plaque assessment.

Authors:  Dalin Tang; Chun Yang; Jie Zheng; Pamela K Woodard; Jeffrey E Saffitz; Joseph D Petruccelli; Gregorio A Sicard; Chun Yuan
Journal:  Ann Biomed Eng       Date:  2005-12       Impact factor: 3.934

7.  Anisotropic mechanical properties of tissue components in human atherosclerotic plaques.

Authors:  Gerhard A Holzapfel; Gerhard Sommer; Peter Regitnig
Journal:  J Biomech Eng       Date:  2004-10       Impact factor: 2.097

8.  3D MRI-based multicomponent FSI models for atherosclerotic plaques.

Authors:  Dalin Tang; Chun Yang; Jie Zheng; Pamela K Woodard; Gregorio A Sicard; Jeffrey E Saffitz; Chun Yuan
Journal:  Ann Biomed Eng       Date:  2004-07       Impact factor: 3.934

9.  Effects of fibrous cap thickness on peak circumferential stress in model atherosclerotic vessels.

Authors:  H M Loree; R D Kamm; R G Stringfellow; R T Lee
Journal:  Circ Res       Date:  1992-10       Impact factor: 17.367

10.  Characterization of the atherosclerotic carotid bifurcation using MRI, finite element modeling, and histology.

Authors:  M R Kaazempur-Mofrad; A G Isasi; H F Younis; R C Chan; D P Hinton; G Sukhova; G M LaMuraglia; R T Lee; R D Kamm
Journal:  Ann Biomed Eng       Date:  2004-07       Impact factor: 3.934

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  10 in total

1.  Fluid-structure interaction models based on patient-specific IVUS at baseline and follow-up for prediction of coronary plaque progression by morphological and biomechanical factors: A preliminary study.

Authors:  Liang Wang; Dalin Tang; Akiko Maehara; Zheyang Wu; Chun Yang; David Muccigrosso; Jie Zheng; Richard Bach; Kristen L Billiar; Gary S Mintz
Journal:  J Biomech       Date:  2017-12-15       Impact factor: 2.712

Review 2.  Image-based modeling for better understanding and assessment of atherosclerotic plaque progression and vulnerability: data, modeling, validation, uncertainty and predictions.

Authors:  Dalin Tang; Roger D Kamm; Chun Yang; Jie Zheng; Gador Canton; Richard Bach; Xueying Huang; Thomas S Hatsukami; Jian Zhu; Genshan Ma; Akiko Maehara; Gary S Mintz; Chun Yuan
Journal:  J Biomech       Date:  2014-01-14       Impact factor: 2.712

3.  Combining morphological and biomechanical factors for optimal carotid plaque progression prediction: An MRI-based follow-up study using 3D thin-layer models.

Authors:  Qingyu Wang; Dalin Tang; Liang Wang; Gador Canton; Zheyang Wu; Thomas S Hatsukami; Kristen L Billiar; Chun Yuan
Journal:  Int J Cardiol       Date:  2019-07-04       Impact factor: 4.164

4.  Image-based modeling and precision medicine: patient-specific carotid and coronary plaque assessment and predictions.

Authors:  Dalin Tang; Chun Yang; Jie Zheng; Gador Canton; Richard G Bach; Thomas S Hatsukami; Liang Wang; Deshan Yang; Kristen L Billiar; Chun Yuan
Journal:  IEEE Trans Biomed Eng       Date:  2013-01-25       Impact factor: 4.538

5.  Subject-Specific Fully-Coupled and One-Way Fluid-Structure Interaction Models for Modeling of Carotid Atherosclerotic Plaques in Humans.

Authors:  Xiaojuan Tao; Peiyi Gao; Lina Jing; Yan Lin; Binbin Sui
Journal:  Med Sci Monit       Date:  2015-10-29

Review 6.  High shear stress induces atherosclerotic vulnerable plaque formation through angiogenesis.

Authors:  Yi Wang; Juhui Qiu; Shisui Luo; Xiang Xie; Yiming Zheng; Kang Zhang; Zhiyi Ye; Wanqian Liu; Hans Gregersen; Guixue Wang
Journal:  Regen Biomater       Date:  2016-06-26

7.  Contralateral artery enlargement predicts carotid plaque progression based on machine learning algorithm models in apoE-/- mice.

Authors:  Bing Li; Yun Jiao; Cong Fu; Bo Xie; Genshan Ma; Gaojun Teng; Yuyu Yao
Journal:  Biomed Eng Online       Date:  2016-12-28       Impact factor: 2.819

8.  Analysis of Vascular Mechanical Characteristics after Coronary Degradable Stent Implantation.

Authors:  Hao Ding; Ying Zhang; Yujia Liu; Chunxun Shi; Zhichao Nie; Haoyu Liu; Yuling Gu
Journal:  Biomed Res Int       Date:  2019-11-20       Impact factor: 3.411

Review 9.  Fluorescence imaging in surgery.

Authors:  Ryan K Orosco; Roger Y Tsien; Quyen T Nguyen
Journal:  IEEE Rev Biomed Eng       Date:  2013-01-15

10.  Plaque Composition as a Predictor of Plaque Ulceration in Carotid Artery Atherosclerosis: The Plaque At RISK Study.

Authors:  K Dilba; D H K van Dam-Nolen; A C van Dijk; M Kassem; A F W van der Steen; P J Koudstaal; P J Nederkoorn; J Hendrikse; M E Kooi; J J Wentzel; A van der Lugt
Journal:  AJNR Am J Neuroradiol       Date:  2020-11-19       Impact factor: 3.825

  10 in total

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