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源自20节段评分的17节段评分用于心肌灌注单光子发射计算机断层扫描解读的预后验证。

Prognostic validation of a 17-segment score derived from a 20-segment score for myocardial perfusion SPECT interpretation.

作者信息

Berman Daniel S, Abidov Aiden, Kang Xingping, Hayes Sean W, Friedman John D, Sciammarella Maria G, Cohen Ishac, Gerlach James, Waechter Parker B, Germano Guido, Hachamovitch Rory

机构信息

Department of Imaging, Cedars-Sinai Medical Center, Los Angeles, CA 90048, USA.

出版信息

J Nucl Cardiol. 2004 Jul-Aug;11(4):414-23. doi: 10.1016/j.nuclcard.2004.03.033.

Abstract

BACKGROUND

Recently, a 17-segment model of the left ventricle has been recommended as an optimally weighted approach for interpreting myocardial perfusion single photon emission computed tomography (SPECT). Methods to convert databases from previous 20- to new 17-segment data and criteria for abnormality for the 17-segment scores are needed.

METHODS AND RESULTS

Initially, for derivation of the conversion algorithm, 65 patients were studied (algorithm population) (pilot group, n = 28; validation group, n = 37). Three conversion algorithms were derived: algorithm 1, which used mid, distal, and apical scores; algorithm 2, which used distal and apical scores alone; and algorithm 3, which used maximal scores of the distal septal, lateral, and apical segments in the 20-segment model for 3 corresponding segments of the 17-segment model. The prognosis population comprised 16,020 consecutive patients (mean age, 65 +/- 12 years; 41% women) who had exercise or vasodilator stress technetium 99m sestamibi myocardial perfusion SPECT and were followed up for 2.1 +/- 0.8 years. In this population, 17-segment scores were derived from 20-segment scores by use of algorithm 2, which demonstrated the best agreement with expert 17-segment reading in the algorithm population. The prognostic value of the 20- and 17-segment scores was compared by converting the respective summed scores into percent myocardium abnormal. Conversion algorithm 2 was found to be highly concordant with expert visual analysis by the 17-segment model (r = 0.982; kappa = 0.866) in the algorithm population. In the prognosis population, 456 cardiac deaths occurred during follow-up. When the conversion algorithm was applied, extent and severity of perfusion defects were nearly identical by 20- and derived 17-segment scores. The receiver operating characteristic curve areas by 20- and 17-segment perfusion scores were identical for predicting cardiac death (both 0.77 +/- 0.02, P = not significant). The optimal prognostic cutoff value for either 20- or derived 17-segment models was confirmed to be 5% myocardium abnormal, corresponding to a summed stress score greater than 3. Of note, the 17-segment model demonstrated a trend toward fewer mildly abnormal scans and more normal and severely abnormal scans.

CONCLUSION

An algorithm for conversion of 20-segment perfusion scores to 17-segment scores has been developed that is highly concordant with expert visual analysis by the 17-segment model and provides nearly identical prognostic information. This conversion model may provide a mechanism for comparison of studies analyzed by the 17-segment system with previous studies analyzed by the 20-segment approach.

摘要

背景

最近,左心室17节段模型已被推荐为解释心肌灌注单光子发射计算机断层扫描(SPECT)的最佳加权方法。需要将先前20节段数据库转换为新的17节段数据的方法以及17节段评分的异常标准。

方法与结果

最初,为了推导转换算法,对65例患者进行了研究(算法人群)(试验组,n = 28;验证组,n = 37)。推导了三种转换算法:算法1,使用中间、远端和心尖评分;算法2,仅使用远端和心尖评分;算法3,使用20节段模型中远端间隔、侧壁和心尖节段的最大评分来对应17节段模型的3个相应节段。预后人群包括16020例连续患者(平均年龄65±12岁;41%为女性),这些患者进行了运动或血管扩张剂负荷锝99m甲氧基异丁基异腈心肌灌注SPECT检查,并随访了2.1±0.8年。在该人群中,通过算法2从20节段评分得出17节段评分,该算法在算法人群中与专家的17节段解读显示出最佳一致性。通过将各自的总评分转换为心肌异常百分比,比较了20节段和17节段评分的预后价值。在算法人群中,发现转换算法2与17节段模型的专家视觉分析高度一致(r = 0.982;kappa = 0.866)。在预后人群中,随访期间发生了456例心源性死亡。应用转换算法时,20节段评分和推导的17节段评分所显示的灌注缺损范围和严重程度几乎相同。20节段和17节段灌注评分用于预测心源性死亡的受试者工作特征曲线面积相同(均为0.77±0.02,P无显著性差异)。证实20节段或推导的17节段模型的最佳预后截断值为心肌异常5%,对应于负荷总评分大于3。值得注意的是,17节段模型显示出轻度异常扫描较少、正常和重度异常扫描较多的趋势。

结论

已开发出一种将20节段灌注评分转换为17节段评分的算法,该算法与17节段模型的专家视觉分析高度一致,并提供几乎相同的预后信息。这种转换模型可能为将17节段系统分析的研究与先前20节段方法分析的研究进行比较提供一种机制。

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