Machine Learning for Multi-Vessel Coronary Artery Disease Prediction on Electrocardiogram Gated Single-Photon Emission Computed Tomography.

Annals of nuclear cardiology Pub Date : 2023-01-01 Epub Date: 2023-10-31 DOI:10.17996/anc.22-00155
Masato Shimizu, Shigeki Kimura, Hiroyuki Fujii, Makoto Suzuki, Mitsuhiro Nishizaki, Tetsuo Sasano
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Abstract

Background: Single-photon emission computed tomography (SPECT) encounters difficulties in diagnosing severe multi-vessel coronary artery disease (svMVD) because of balanced ischemia. We estimated the predictive value of electrocardiogram-gated SPECT for svMVD and improved it using machine learning (ML). Methods and results: We enrolled consecutive 335 patients (median age, 74 years; 255 men) who underwent adenosine stress-gated SPECT (99mTechnesium) and coronary angiography. svMVD was defined as three-vessel disease or left main tract stenosis. Predictive models were constructed using statistical and ML methods. Eighteen cases (5%) showed svMVD, and diabetes, summed stress score (SSS), and the max difference among segmental time of stroke volume per cardiac cycle (MDSV: a parameter of left ventricular [LV] end-systolic dyssynchrony) on adenosine stress were independent significant predictors. The area under the receiver operating characteristic curve (AUC) of SSS and MDSV on stress were 0.759 and 0.763, respectively. Conversely, the extra trees classifier and light gradient boosting machine had improved AUC values of 0.826 and 0.870, respectively, and the MDSV on stress and diabetes showed high feature values in the ML models. Conclusion: ML on SPECT helped to improve the diagnostic performance of svMVD and diabetes, and the parameters of LV dyssynchrony played essential roles in the ML predictive models.

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机器学习在心电图门控单光子发射计算机断层上的多支冠状动脉疾病预测。
背景:单光子发射计算机断层扫描(SPECT)在诊断严重的多支冠状动脉疾病(svMVD)时遇到了困难,因为它存在平衡缺血。我们估计了心电图门控SPECT对svMVD的预测价值,并使用机器学习(ML)对其进行了改进。方法和结果:我们连续入组335例患者(中位年龄74岁;255名男性)接受了腺苷应激门控SPECT (99mTechnesium)和冠状动脉造影。svMVD定义为三支血管疾病或左主干狭窄。采用统计学和ML方法构建预测模型。18例(5%)患者表现为svMVD,糖尿病、总应激评分(SSS)、每心周期搏量节段时间(MDSV:左室收缩末期非同步化参数)对腺苷应激的最大差异为独立显著预测因子。应力作用下SSS和MDSV的受者工作特征曲线下面积(AUC)分别为0.759和0.763。相反,额外树分类器和光梯度增强机的AUC值分别提高了0.826和0.870,应激和糖尿病的MDSV在ML模型中表现出较高的特征值。结论:SPECT上的ML有助于提高svMVD和糖尿病的诊断效能,而左室非同步化参数在ML预测模型中起重要作用。
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