Patient-Specific Computational Analysis of Transvenous Defibrillation: A Comparison to Clinical Metrics in Humans

被引:0
作者
Daniel Mocanu
Joachim Kettenbach
Michael O. Sweeney
Ron Kikinis
Bruce H. KenKnight
Solomon R. Eisenberg
机构
[1] Boston University,Department of Biomedical Engineering
[2] Brigham and Women's Hospital,Surgical Planning Laboratory
[3] Brigham and Women's Hospital,Cardiac Pacing and Implantable Device Therapies
[4] Guidant Corporation,Heart Failure Research
来源
Annals of Biomedical Engineering | 2004年 / 32卷
关键词
Transvenous defibrillation; Critical mass; Patient-specific; Modeling; Finite volume method;
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学科分类号
摘要
The goal of this study is to assess the predictive capacity of computational models of transvenous defibrillation by comparing the results of patient-specific simulations to clinical defibrillation thresholds (DFT). Nine patient-specific models of the thorax and in situ electrodes were created from segmented CT images taken after implantation of the cardioverter-defibrillator. The defibrillation field distribution was computed using the finite volume method. The DFTs were extracted from the calculated field distribution using the 95% critical mass criterion. The comparison between simulated and clinical DFT energy resulted in a rms difference of 12.4 J and a 0.05 correlation coefficient (cc). The model-predicted DFTs were well matched to the clinical values in four patients (rms= 1.5 J; cc= 0.84). For the remaining five patients the rms difference was 18.4 J with a cc= 0.85. These results suggest that computational models based soley on the critical mass criterion and a single value of the inexcitability threshold are not able to consistently predict DFTs for individual patients. However, inspection of the weak potential gradient field in all nine patients revealed a relationship between the degree of dispersion of the weak field and the clinical DFT, which may help identify high DFT patients.
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页码:775 / 783
页数:8
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