The use of artificial intelligence for predicting postinfarction myocardial viability in echocardiographic images.

Cardiology journal Pub Date : 2024-01-01 Epub Date: 2024-05-14 DOI:10.5603/cj.93887
Błażej Michalski, Sławomir Skonieczka, Michał Strzelecki, Michał Simiera, Karolina Kupczyńska, Ewa Szymczyk, Paulina Wejner-Mik, Piotr Lipiec, Jarosław D Kasprzak
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Abstract

Background: Evaluation of standard echocardiographic examination with artificial intelligence may help in the diagnosis of myocardial viability and function recovery after acute coronary syndrome.

Methods: Sixty-one consecutive patients with acute coronary syndrome were enrolled in the present study (43 men, mean age 61 ± 9 years). All patients underwent percutaneous coronary intervention (PCI). 533 segments of the heart echo images were used. After 12 ± 1 months of follow-up, patients had an echocardiographic evaluation. After PCI each patient underwent cardiac magnetic resonance (CMR) with late enhancement and low-dose dobutamine echocardiographic examination. For texture analysis, custom software was used (MaZda 5.20, Institute of Electronics).Linear and non-linear (neural network) discriminative analyses were performed to identify the optimal analytic method correlating with CMR regarding the necrosis extent and viability prediction after follow-up. Texture parameters were analyzed using machine learning techniques: Artificial Neural Networks, Namely Multilayer Perceptron, Nonlinear Discriminant Analysis, Support Vector Machine, and Adaboost algorithm.

Results: The mean concordance between the CMR definition of viability and three classification models in Artificial Neural Networks varied from 42% to 76%. Echo-based detection of non-viable tissue was more sensitive in the segments with the highest relative transmural scar thickness: 51-75% and 76-99%. The best results have been obtained for images with contrast for red and grey components (74% of proper classification). In dobutamine echocardiography, the results of appropriate prediction were 67% for monochromatic images.

Conclusions: Detection and semi-quantification of scar transmurality are feasible in echocardiographic images analyzed with artificial intelligence. Selected analytic methods yielded similar accuracy, and contrast enhancement contributed to the prediction accuracy of myocardial viability after myocardial infarction in 12 months of follow-up.

利用人工智能预测超声心动图图像中梗死后心肌的存活能力。
背景:用人工智能评估标准超声心动图检查有助于诊断急性冠状动脉综合征后的心肌活力和功能恢复:用人工智能评估标准超声心动图检查有助于诊断急性冠状动脉综合征后心肌的存活能力和功能恢复情况:本研究共招募了 61 名急性冠状动脉综合征患者(43 名男性,平均年龄为 61 ± 9 岁)。所有患者均接受了经皮冠状动脉介入治疗(PCI)。共使用了 533 段心脏回声图像。随访 12±1 个月后,患者接受了超声心动图评估。PCI术后,每位患者都接受了心脏磁共振(CMR)晚期增强和低剂量多巴酚丁胺超声心动图检查。进行了线性和非线性(神经网络)判别分析,以确定与 CMR 相关的关于坏死程度和随访后存活率预测的最佳分析方法。使用机器学习技术分析了纹理参数:人工神经网络,即多层感知器、非线性判别分析、支持向量机和 Adaboost 算法:结果:CMR 对存活率的定义与人工神经网络中三种分类模型的平均一致性从 42% 到 76% 不等。在相对跨壁瘢痕厚度最高的区段,基于回波检测非存活组织的灵敏度更高:51%-75% 和 76%-99%。红色和灰色成分对比度高的图像效果最好(74% 的正确分类率)。在多巴酚丁胺超声心动图中,单色图像的适当预测结果为 67%:结论:在人工智能分析的超声心动图图像中,瘢痕透射性的检测和半量化是可行的。结论:利用人工智能对超声心动图图像进行分析,可以检测和半量化瘢痕的透射性。所选的分析方法具有相似的准确性,对比度增强有助于在 12 个月的随访中预测心肌梗死后心肌存活的准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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