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数字左心室造影术中通过密度测定法对收缩期功能进行在线评估。

On-line evaluation of systolic performance by densitometry in digital left ventriculography.

作者信息

Lehmkuhl H, Altstidl R, Machnig T, Blunck B, Barth K, Bachmann K

机构信息

Department of Cardiology, University of Erlangen, Germany.

出版信息

Clin Cardiol. 1996 Sep;19(9):729-36. doi: 10.1002/clc.4960190911.

Abstract

The angiocardiographic evaluation of left ventricular end-diastolic (LVEDV) and end-systolic (LVESV) volumes and ejection fraction (EF) is routinely performed by the area-length method (ALM) but may lead to erroneous results. Digital imaging in real time allows densitometric procedures of determining left ventricular (LV) performance to be applied alternatively. In this study, we present densitometric algorithms for the analysis of LVEDV, LVESV, and EF from digital image data, establish accuracy and reproducibility, and determine value and limitations in comparison with ALM in single-plane 30 degrees right anterior oblique (RAO) projection. A linear relationship between iodine depth and measured densities is mainly burdened with scatter radiation and beam hardening which reduce primary radiation and suppress iodine depth. However, facilities such as deconvolution and correction algorithms are capable of reducing these sources of error. In the present study, computer-analyzed contrast images of iodine-filled wedges and spheres showed a near-linear relationship between iodine depth between 50-100 mg/cm2 and measured densities. Contrast images of heart casts and LV angio-grams of 54 patients were obtained with a digital image acquisition and processing system, and evaluated by two independent observers. The phantom study resulted in significantly (p < or = 0.01) better densitometric standard errors of estimate for volumes [3.3 ml densitometry (DENS) vs. 8.9 ml (ALM)] and simulated EF [4.3% (DENS) vs. 7.8% (ALM)] than ALM. The standard error of estimate for the comparison between both methods was 8.4 ml for volumes and 7.5% for EF. Densitometric volumes tended to underestimate volumes calculated by ALM. The angiographic study of patients demonstrated significant correlations between both methods (LVEDV r = 0.78, LVESV r = 0.83, total volumes: r = 0.89; EF r = 0.88). The standard errors of estimate can be ascribed to systematic, method-related errors of both DENS and ALM (LVEDV +/- 28.9 ml, LVESV +/- 23.4 ml, total volumes (EDV and ESV) +/- 27.1 ml; EF +/- 8.1%). The intra- and interobserver variability, respectively, exhibited significantly smaller (p < or = 0.01 and p < or = 0.05, respectively) standard errors of estimate for densitometric EF [4.6% (DENS) vs. 8.5% (ALM) and 7.1% (DENS) vs. 10.3% (ALM), respectively]. Inclined but not significant differences were found for LVEDV and LVESV. In conclusion, the data presented indicate that the calculation of LV volumes and EF in digital left ventriculography may be performed accurately by densitometric calculation in single-plane 30 degrees RAO projection. Minor underestimations in densitometric volume determination may be anticipated in the evaluation of LV geometry.

摘要

左心室舒张末期容积(LVEDV)、收缩末期容积(LVESV)和射血分数(EF)的心血管造影评估通常采用面积-长度法(ALM)进行,但可能会得出错误结果。实时数字成像允许采用密度测定法来评估左心室(LV)功能。在本研究中,我们提出了用于分析数字图像数据中LVEDV、LVESV和EF的密度测定算法,确定了其准确性和可重复性,并与单平面30度右前斜(RAO)投影中的ALM相比,确定了其价值和局限性。碘深度与测量密度之间的线性关系主要受到散射辐射和束硬化的影响,这会减少原始辐射并抑制碘深度。然而,诸如去卷积和校正算法等工具能够减少这些误差来源。在本研究中,计算机分析的碘填充楔形物和球体的对比图像显示,碘深度在50 - 100 mg/cm²之间与测量密度呈近似线性关系。使用数字图像采集和处理系统获得了54例患者的心脏铸型对比图像和LV血管造影图像,并由两名独立观察者进行评估。模型研究得出,对于容积[密度测定法(DENS)为3.3 ml,而ALM为8.9 ml]和模拟EF[4.3%(DENS)对7.8%(ALM)],密度测定法的估计标准误差显著(p≤0.01)优于ALM。两种方法之间比较的估计标准误差,容积为8.4 ml,EF为7.5%。密度测定容积往往低估了ALM计算出的容积。对患者的血管造影研究表明,两种方法之间存在显著相关性(LVEDV r = 0.78,LVESV r = 0.83,总体积:r = 0.89;EF r = 0.88)。估计标准误差可归因于DENS和ALM两者与方法相关的系统误差(LVEDV±28.9 ml,LVESV±23.4 ml,总体积(EDV和ESV)±27.1 ml;EF±8.1%)。观察者内和观察者间变异性分别显示,密度测定EF的估计标准误差显著更小(分别为p≤0.01和p≤0.05)[分别为4.6%(DENS)对8.5%(ALM)和7.1%(DENS)对10.3%(ALM)]。在LVEDV和LVESV方面发现了有倾向但不显著的差异。总之,所呈现的数据表明,在单平面30度RAO投影中,通过密度测定计算可以准确地在数字左心室造影中计算LV容积和EF。在评估LV几何形状时,可能会预期密度测定容积测定存在轻微低估。

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