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Development and optimization of SPECT gated blood pool cluster analysis for the prediction of CRT outcome

机译:开发和优化SPECT门控血池聚类分析以预测CRT结局

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Purpose: Phase analysis of single photon emission computed tomography (SPECT) radionuclide angiography (RNA) has been investigated for its potential to predict the outcome of cardiac resyn-chronization therapy (CRT). However, phase analysis may be limited in its potential at predicting CRT outcome as valuable information may be lost by assuming that time-activity curves (TAC) follow a simple sinusoidal shape. A new method, cluster analysis, is proposed which directly evaluates the TACs and may lead to a better understanding of dyssynchrony patterns and CRT outcome. Cluster analysis algorithms were developed and optimized to maximize their ability to predict CRT response. Methods: About 49 patients (N = 27 ischemic etiology) received a SPECT RNA scan as well as positron emission tomography (PET) perfusion and viability scans prior to undergoing CRT. A semi-automated algorithm sampled the left ventricle wall to produce 568 TACs from SPECT RNA data. The TACs were then subjected to two different cluster analysis techniques, K-means, and normal average, where several input metrics were also varied to determine the optimal settings for the prediction of CRT outcome. Each TAC was assigned to a cluster group based on the comparison criteria and global and segmental cluster size and scores were used as measures of dyssynchrony and used to predict response to CRT. A repeated random twofold cross-validation technique was used to train and validate the cluster algorithm. Receiver operating characteristic (ROC) analysis was used to calculate the area under the curve (AUC) and compare results to those obtained for SPECT RNA phase analysis and PET scar size analysis methods.Results: Using the normal average cluster analysis approach, the septal wall produced statistically significant results for predicting CRT results in the ischemic population (ROC AUC 0.73; p < 0.05 vs. equal chance ROC AUC = 0.50) with an optimal operating point of 71% sensitivity and 60% specificity. Cluster analysis results were similar to SPECT RNA phase analysis (ROC AUC = 0.78, p = 0.73 vs cluster AUC; sensitivity/specificity = 59%/89%) and PET scar size analysis (ROC AUC = 0.73, p = 1.0 vs cluster AUC; sensitivity/specificity = 76%/67%).Conclusions: A SPECT RNA cluster analysis algorithm was developed for the prediction of CRT outcome. Cluster analysis results produced results equivalent to those obtained from Fourier and scar analysis.
机译:目的:已经研究了单光子发射计算机断层扫描(SPECT)放射性核素血管造影(RNA)的相位分析,以预测心脏再同步治疗(CRT)的结果。但是,由于假设时间活动曲线(TAC)遵循简单的正弦曲线形状,可能会丢失有价值的信息,因此相位分析在预测CRT结果方面的潜力可能会受到限制。提出了一种新的方法,即聚类分析,可以直接评估TAC,并可能导致对不同步模式和CRT结果的更好理解。开发并优化了聚类分析算法,以最大化其预测CRT反应的能力。方法:约49例患者(N = 27缺血性病因)在接受CRT之前接受了SPECT RNA扫描以及正电子发射断层扫描(PET)灌注和生存力扫描。半自动算法从SPECT RNA数据中采样左心室壁以产生568个TAC。然后,对TAC进行两种不同的聚类分析技术,即K均值和法线平均,其中还改变了几个输入指标,以确定用于预测CRT结果的最佳设置。根据比较标准以及整体和分段群集的大小,将每个TAC分配到一个群集组,并将分数用作不同步性的量度,并用于预测对CRT的反应。重复随机双重交叉验证技术用于训练和验证聚类算法。接收者操作特征(ROC)分析用于计算曲线下面积(AUC),并将结果与​​SPECT RNA相分析和PET疤痕大小分析方法获得的结果进行比较。结果:使用正常的平均聚类分析方法,间隔壁产生的统计学显着性结果可预测缺血人群中的CRT结果(ROC AUC 0.73; p <0.05 vs等机会ROC AUC = 0.50),最佳操作点为71%敏感性和60%特异性。聚类分析结果类似于SPECT RNA相分析(ROC AUC = 0.78,p = 0.73 vs聚类AUC;灵敏度/特异性= 59%/ 89%)和PET疤痕大小分析(ROC AUC = 0.73,p = 1.0 vs聚类AUC ;敏感性/特异性= 76%/ 67%)。结论:开发了SPECT RNA聚类分析算法来预​​测CRT结局。聚类分析结果产生的结果与从傅立叶和疤痕分析获得的结果相同。

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