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冠状动脉斑块检测的预测规则:来自心脏CT的证据。

Prediction rules for the detection of coronary artery plaques: evidence from cardiac CT.

作者信息

Saur Stefan C, Cattin Philippe C, Desbiolles Lotus, Fuchs Thomas J, Székely Gábor, Alkadhi Hatem

机构信息

Computer Vision Laboratory, ETH Zurich, Zurich, Switzerland.

出版信息

Invest Radiol. 2009 Aug;44(8):483-90. doi: 10.1097/rli.0b013e3181a8afc4.

Abstract

OBJECTIVES

To evaluate spatial plaque distribution patterns in coronary arteries based on computed tomography coronary angiography data sets and to express the learned patterns in prediction rules. An application is proposed to use these prediction rules for the detection of initially missed plaques.

MATERIAL AND METHODS

Two hundred fifty two consecutive patients with chronic coronary artery disease underwent contrast-enhanced dual-source computed tomography coronary angiography for clinical indications. Coronary artery plaques were manually labeled on a 16-segment coronary model and their position (ie, segments and bifurcations) and composition (ie, calcified, mixed, or noncalcified) were noted. The frequent itemset mining algorithm was used to statistically search for plaque distribution patterns. The patterns were expressed as prediction rules: given plaques at certain locations as conditions, a prediction rule gave evidence--with a certain confidence value--for a plaque at another location within the coronary artery tree. Prediction rules with the highest confidence values were evaluated and described. Furthermore, to improve manual plaque detection, all prediction rules were applied on the patient data to search for segments with potentially missed plaques. These segments were then reviewed in a second, guided reading for the existence of plaques. The same number of segments was also determined by a weighted random approach to evaluate the quality of prediction resulting from frequent itemset mining.

RESULTS

In 200 of 252 (79.4%) patients, at least one coronary plaque (range, 1-22 plaques) was found. In total 1229 plaques (990 calcified, 80.6%; 227 mixed, 18.5%; 12 noncalcified, 1%) distributed, over 916 coronary segments and 507 vessels were manually labeled. Four plaque distribution patterns were identified: 20.6% of the patients had no plaques at all; 31.7% had plaques in the left coronary artery tree; 46.4% had plaques both in left and right coronary arteries, whereas 1.2% of the patients had plaques solely in the right coronary artery (RCA). General rules were found predicting plaques in the left anterior descending artery (LAD), given plaques in segments of the RCA or in the left main artery. Further general rules predicted plaques in the LAD, given plaques in the circumflex artery. In the guided review, the segment selection based on the prediction rules from frequent itemset mining performed significantly better (P < 0.001) than the weighted random approach by revealing 48 initially missed plaques.

CONCLUSIONS

This study demonstrates spatial plaque distribution patterns in coronary arteries as determined with cardiac CT. Use of the frequent itemset mining algorithm yielded rules that predicted plaques at certain sites given plaques at other sites of the coronary artery tree. Use of these prediction rules improved the manual labeling of coronary plaques as initially missed plaques could be predicted with the guided review.

摘要

目的

基于计算机断层扫描冠状动脉造影数据集评估冠状动脉内斑块的空间分布模式,并将所了解到的模式转化为预测规则。提出了一种应用这些预测规则来检测最初漏诊斑块的方法。

材料与方法

252例连续性慢性冠状动脉疾病患者因临床指征接受了对比增强双源计算机断层扫描冠状动脉造影。在16段冠状动脉模型上手动标记冠状动脉斑块,并记录其位置(即节段和分叉处)和成分(即钙化、混合或非钙化)。使用频繁项集挖掘算法对斑块分布模式进行统计学搜索。这些模式被表示为预测规则:以冠状动脉树中某些位置存在斑块为条件,预测规则给出冠状动脉树中另一位置存在斑块的证据及一定的置信度值。对具有最高置信度值的预测规则进行评估和描述。此外,为了改进手动斑块检测,将所有预测规则应用于患者数据,以搜索可能漏诊斑块的节段。然后在第二次有指导的阅片中复查这些节段是否存在斑块。还通过加权随机方法确定相同数量的节段,以评估频繁项集挖掘所得预测的质量。

结果

252例患者中有200例(79.4%)发现至少一个冠状动脉斑块(范围为1 - 22个斑块)。总共1229个斑块(990个钙化斑块,占80.6%;227个混合斑块,占18.5%;12个非钙化斑块,占1%)分布在916个冠状动脉节段和507支血管上,并进行了手动标记。识别出四种斑块分布模式:20.6%的患者根本没有斑块;31.7%的患者左冠状动脉树有斑块;46.4%的患者左、右冠状动脉都有斑块,而1.2%的患者仅右冠状动脉(RCA)有斑块。发现了一些通用规则,若RCA节段或左主干有斑块,则可预测左前降支(LAD)有斑块。若回旋支有斑块,也可预测LAD有斑块。在有指导的阅片中,基于频繁项集挖掘的预测规则进行节段选择,通过发现48个最初漏诊的斑块,其表现明显优于加权随机方法(P < 0.001)。

结论

本研究展示了通过心脏CT确定的冠状动脉内斑块空间分布模式。使用频繁项集挖掘算法得出的规则能够在冠状动脉树其他部位有斑块的情况下预测特定部位的斑块。使用这些预测规则可改进冠状动脉斑块的手动标记,因为在有指导的阅片中可预测最初漏诊的斑块。

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