Qualitative American Heart Association plot of late gadolinium enhancement with mortality and ventricular arrhythmia prediction using artificial intelligence.

Ebraham Alskaf, Cian M Scannell, Avan Suinesiaputra, Richard Crawley, PierGiorgio Masci, Alistair Young, Divaka Perera, Amedeo Chiribiri
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Abstract

Background: The prognostic value of late gadolinium enhancement (LGE) in cardiac magnetic resonance (CMR) imaging is well-established. However, the direct relationship between image pixels and outcomes remains poorly understood. We hypothesised that leveraging artificial intelligence (AI) to analyse qualitative LGE images based on American Heart Association (AHA) guidelines could elucidate this relationship.

Methods: We collected retrospective CMR cases from a stress perfusion database, selecting LGE images comprising three long-axis views and 10 short-axis views. Clinical CMR reports served for annotation. We trained a multi-label convolutional neural network (CNN) to predict each AHA segment. Additionally, we transformed LGE image pixels into features, combined them with clinical data features, and trained a hybrid neural network (HNN) to predict mortality and ventricular arrhythmia. The dataset was divided into training (70%), validation (15%), and test (15%) sets. Evaluation metrics included the area under the curve (AUC).

Results: The total number of cases included was 2,740, with 218 patients experiencing positive mortality events (8%). The total number of cases with at least one AHA segment positive for LGE was 823 (30%), among which 111 (13%) experienced mortality events, and 84 (10%) had ventricular arrhythmia events. When assessing all segments combined, the most common cases were those classified as normal studies, with each AHA segment having a score of 0 (1,661 cases, 60.6%). The multi-label classifier demonstrated fair performance (AUC: 64%), whereas the cluster classifier did not yield any predictions (AUC: 53%, P<0.001). The mortality HNN achieved a satisfactory performance with an AUC of 77%, as did the ventricular arrhythmia HNN with an AUC of 75%.

Conclusions: Our study demonstrates the feasibility of generating qualitative AHA LGE maps using AI. Furthermore, the prediction of mortality and ventricular arrhythmia using HNN represents a potent new approach for risk stratification in patients with known or suspected coronary artery disease (CAD).

用人工智能预测晚期钆增强与死亡率和室性心律失常的定性美国心脏协会图。
背景:晚期钆增强(LGE)在心脏磁共振(CMR)成像中的预后价值已经确立。然而,图像像素和结果之间的直接关系仍然知之甚少。我们假设利用人工智能(AI)来分析基于美国心脏协会(AHA)指南的定性LGE图像可以阐明这种关系。方法:我们从应力灌注数据库中收集回顾性CMR病例,选择LGE图像,包括3个长轴视图和10个短轴视图。临床CMR报告用于注释。我们训练了一个多标签卷积神经网络(CNN)来预测每个AHA片段。此外,我们将LGE图像像素转化为特征,并将其与临床数据特征相结合,训练混合神经网络(HNN)预测死亡率和室性心律失常。数据集被分为训练集(70%)、验证集(15%)和测试集(15%)。评价指标包括曲线下面积(AUC)。结果:纳入的病例总数为2740例,其中218例出现阳性死亡事件(8%)。至少有一个AHA节段LGE阳性的病例总数为823例(30%),其中111例(13%)发生死亡事件,84例(10%)发生室性心律失常事件。当综合评估所有节段时,最常见的病例是那些被归类为正常研究的病例,每个AHA节段得分为0(1661例,60.6%)。多标签分类器表现出良好的性能(AUC: 64%),而聚类分类器没有产生任何预测(AUC: 53%)。结论:我们的研究证明了使用人工智能生成定性AHA LGE地图的可行性。此外,使用HNN预测死亡率和室性心律失常代表了已知或疑似冠状动脉疾病(CAD)患者风险分层的有效新方法。
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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