首页> 外文期刊>The Journal of Nuclear Medicine >Improved classifications of myocardial bull's-eye scintigrams with computer-based decision support system.
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Improved classifications of myocardial bull's-eye scintigrams with computer-based decision support system.

机译:借助基于计算机的决策支持系统,改进了心肌牛眼闪烁图的分类。

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In a recent study, artificial neural networks were trained to detect coronary artery disease using scintigraphic data as input. The performance of the networks was better than that of human experts using coronary angiography as a gold standard. In clinical practice, this type of neural networks will not take over the decision-making process from the physician but will assist by proposing an interpretation of the scintigram. The purpose of this study was to assess the influence of such decision support on the interpretations of the physicians. METHODS: A population of 135 patients who had undergone both myocardial 99mTc-sestamibi rest/stress scintigraphy and coronary angiography within a 3-mo period was studied. An image set consisting of the bull's-eye rest, stress, difference and quote images was constructed for each patient. Three experienced physicians independently classified all image sets regarding the presence and/or absence of coronary artery disease in two vascular territories using a four-grade scale. The physicians classified the image sets twice with and twice without the advice of artificial neural networks. RESULTS: The joint evaluation of the three physicians showed significantly improved performance with decision support, measured as increases in the areas under the receiver operating characteristic curves from 0.65 to 0.70 (P = 0.018) and from 0.79 to 0.82 (P = 0.006) for two vascular territories. Furthermore, the joint evaluation showed significantly less intraobserver and interobserver variability with decision support. CONCLUSION: Physicians classifying myocardial bull's-eye images benefit from the advice of artificial neural networks. These results show the high potential for neural networks as clinical decision support systems.
机译:在最近的一项研究中,训练了人工神经网络以使用闪烁显像数据作为输入来检测冠状动脉疾病。网络的性能优于使用冠状动脉造影作为金标准的人类专家。在临床实践中,这种类型的神经网络将不会接管医生的决策过程,但会建议对闪烁图进行解释。这项研究的目的是评估这种决策支持对医师解释的影响。方法:研究了135名在3个月内进行了99mTc-司他他比静息/压力闪烁显像和冠状动脉造影的患者。为每个患者构建了一个由靶心,压力,差异和报价图像组成的图像集。三位经验丰富的医生使用四级量表对两个血管区域中是否存在冠状动脉疾病进行了独立分类。在没有人工神经网络的建议下,医生对图像集进行了两次分类,两次进行了分类。结果:三位医生的联合评估显示,在决策支持下,患者的工作性能显着改善,对于两个患者,受试者工作特征曲线下的面积从0.65增至0.70(P = 0.018),从0.79增至0.82(P = 0.006)血管领域。此外,联合评估显示,在决策支持下,观察者内部和观察者之间的差异明显较小。结论:分类心脏牛眼图像的医师受益于人工神经网络的建议。这些结果显示了神经网络作为临床决策支持系统的巨大潜力。

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