A New Method Using Deep Learning to Predict the Response to Cardiac Resynchronization Therapy.

Kristoffer Larsen, Zhuo He, Fernando de A Fernandes, Xinwei Zhang, Chen Zhao, Qiuying Sha, Claudio T Mesquita, Diana Paez, Ernest V Garcia, Jiangang Zou, Amalia Peix, Guang-Uei Hung, Weihua Zhou
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Abstract

Clinical parameters measured from gated single-photon emission computed tomography myocardial perfusion imaging (SPECT MPI) have value in predicting cardiac resynchronization therapy (CRT) patient outcomes, but still show limitations. The purpose of this study is to combine clinical variables, features from electrocardiogram (ECG), and parameters from assessment of cardiac function with polar maps from gated SPECT MPI through deep learning (DL) to predict CRT response. A total of 218 patients who underwent rest-gated SPECT MPI were enrolled in this study. CRT response was defined as an increase in left ventricular ejection fraction (LVEF) > 5% at a 6-month follow-up. A DL model was constructed by combining a pre-trained VGG16 model and a multilayer perceptron. Two modalities of data were input to the model: polar map images from SPECT MPI and tabular data from clinical features, ECG parameters, and SPECT-MPI-derived parameters. Gradient-weighted class activation mapping (Grad-CAM) was applied to the VGG16 model to provide explainability for the polar maps. For comparison, four machine learning (ML) models were trained using only the tabular features. Modeling was performed on 218 patients who underwent CRT implantation with a response rate of 55.5% (n = 121). The DL model demonstrated average AUC (0.83), accuracy (0.73), sensitivity (0.76), and specificity (0.69) surpassing ML models and guideline criteria. Guideline recommendations achieved accuracy (0.53), sensitivity (0.75), and specificity (0.26). The DL model trended towards improvement over the ML models, showcasing the additional predictive benefit of utilizing SPECT MPI polar maps. Incorporating additional patient data directly in the form of medical imagery can improve CRT response prediction.

通过门控单光子发射计算机断层扫描心肌灌注成像(SPECT MPI)测得的临床参数在预测心脏再同步化治疗(CRT)患者预后方面具有价值,但仍存在局限性。本研究旨在通过深度学习(DL)将临床变量、心电图(ECG)特征、心功能评估参数与门控 SPECT MPI 极坐标图结合起来,预测 CRT 反应。本研究共纳入了 218 名接受静息门控 SPECT MPI 的患者。CRT反应定义为随访6个月时左心室射血分数(LVEF)增加>5%。通过结合预先训练的 VGG16 模型和多层感知器,构建了一个 DL 模型。模型输入了两种数据模式:SPECT MPI极坐标图图像和来自临床特征、心电图参数和SPECT-MPI衍生参数的表格数据。梯度加权类激活图谱(Grad-CAM)被应用于 VGG16 模型,以提供极坐标图的可解释性。为了进行比较,仅使用表格特征训练了四个机器学习(ML)模型。建模对象为 218 名接受 CRT 植入术的患者,响应率为 55.5%(n = 121)。DL 模型的平均 AUC(0.83)、准确性(0.73)、灵敏度(0.76)和特异性(0.69)均超过了 ML 模型和指南标准。指南推荐的准确性(0.53)、灵敏度(0.75)和特异性(0.26)均达到了标准。DL模型比ML模型有改进的趋势,显示了利用SPECT MPI极坐标图的额外预测优势。直接以医学图像的形式纳入额外的患者数据可以改善 CRT 反应预测。
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