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使用神经网络改善心肌灌注成像解释的质量控制。

Use of neural networks to improve quality control of interpretations in myocardial perfusion imaging.

作者信息

Tägil K, Marving J, Lomsky M, Hesse B, Edenbrandt L

机构信息

Department of Clinical Sciences Malmö, Lund University Research Program in Medical Informatics, Malmö University Hospital, Malmo, Sweden.

出版信息

Int J Cardiovasc Imaging. 2008 Dec;24(8):841-8. doi: 10.1007/s10554-008-9329-x. Epub 2008 Jun 29.

Abstract

BACKGROUND

The aim of this study was to explore the feasibility of using a technique based on artificial neural networks for quality assurance of image reporting. The networks were used to identify potentially suboptimal or erroneous interpretations of myocardial perfusion scintigrams (MPS).

METHODS

Reversible perfusion defects (ischaemia) in each of five myocardial regions, as interpreted by one experienced nuclear medicine physician during his daily routine of clinical reporting, were assessed by artificial neural networks in 316 consecutive patients undergoing stress/rest 99mTc-sestamibi myocardial perfusion scintigraphy. After a training process, the networks were used to select the 20 cases in each region that were more likely to have a false clinical interpretation. These cases, together with 20 control cases in which the networks detected no likelihood of false clinical interpretation, were presented in random order to a group of three experienced physicians for a consensus re-interpretation; no information regarding clinical or neural network interpretations was provided to the re-evaluation panel.

RESULTS

The clinical interpretation and the re-evaluation differed in 53 of the 200 cases. Forty-six of the 53 cases (87%) came from the group selected by the neural networks, and only seven (13%) were control cases (P < 0.001). The disagreements between clinical routine interpretation by an experienced nuclear medicine expert and artificial networks were related to small and mild perfusion defects and localization of defects.

CONCLUSION

The results demonstrate that artificial neural networks can identify those myocardial perfusion scintigrams that may have suboptimal image interpretations. This is a potentially highly cost-effective technique, which could be of great value, both in daily practice as a clinical decision support tool and as a tool in quality assurance.

摘要

背景

本研究旨在探讨使用基于人工神经网络的技术进行图像报告质量保证的可行性。这些网络用于识别心肌灌注闪烁图(MPS)潜在的次优或错误解读。

方法

在316例接受静息/负荷99mTc- sestamibi心肌灌注闪烁扫描的连续患者中,人工神经网络对一位经验丰富的核医学医师在日常临床报告中解读的五个心肌区域中的每一个区域的可逆灌注缺损(缺血)进行评估。经过训练过程后,网络用于在每个区域选择20例更可能存在假临床解读的病例。这些病例与20例网络检测到无假临床解读可能性的对照病例一起,以随机顺序呈现给一组三位经验丰富的医师进行共识重新解读;重新评估小组未获得有关临床或神经网络解读的任何信息。

结果

200例病例中有53例临床解读与重新评估结果不同。53例中的46例(87%)来自神经网络选择的组,只有7例(13%)是对照病例(P < 0.001)。经验丰富的核医学专家的临床常规解读与人工网络之间的分歧与小的、轻度灌注缺损以及缺损的定位有关。

结论

结果表明,人工神经网络可以识别那些可能存在次优图像解读的心肌灌注闪烁图。这是一种潜在的高性价比技术,无论是在日常实践中作为临床决策支持工具,还是作为质量保证工具,都可能具有巨大价值。

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