An Adaptive SCG-ECG Multimodal Gating Framework for Cardiac CTA.

Shambavi Ganesh, Mostafa Abozeed, Usman Aziz, Srini Tridandapani, Pamela T Bhatti
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Abstract

Cardiovascular disease (CVD) is the leading cause of death worldwide. Coronary artery disease (CAD), a prevalent form of CVD, is typically assessed using catheter coronary angiography (CCA), an invasive, costly procedure with associated risks. While cardiac computed tomography angiography (CTA) presents a less invasive alternative, it suffers from limited temporal resolution, often resulting in motion artifacts that degrade diagnostic quality. Traditional ECG-based gating methods for CTA inadequately capture cardiac mechanical motion. To address this, we propose a novel multimodal approach that enhances CTA imaging by predicting cardiac quiescent periods using seismocardiogram (SCG) and ECG data, integrated through a weighted fusion (WF) approach and artificial neural networks (ANNs). We developed a regression-based ANN framework (r-ANN WF) designed to improve prediction accuracy and reduce computational complexity, which was compared with a classification-based framework (c-ANN WF), ECG gating, and US data. Our results demonstrate that the r-ANN WF approach improved overall diastolic and systolic cardiac quiescence prediction accuracy by 52.6% compared to ECG-based predictions, using ultrasound (US) as the ground truth, with an average prediction time of 4.83 ms. Comparative evaluations based on reconstructed CTA images show that both r-ANN WF and c-ANN WF offer diagnostic quality comparable to US-based gating, underscoring their clinical potential. Additionally, the lower computational complexity of r-ANN WF makes it suitable for real-time applications. This approach could enhance CTA's diagnostic quality, offering a more accurate and efficient method for CVD diagnosis and management.

用于心脏 CTA 的自适应 SCG-ECG 多模态选通框架。
心血管疾病(CVD)是导致全球死亡的主要原因。冠状动脉疾病(CAD)是一种常见的心血管疾病,通常采用导管冠状动脉造影术(CCA)进行评估,这是一种侵入性、昂贵且存在相关风险的手术。虽然心脏计算机断层扫描血管造影术(CTA)是一种创伤较小的替代方法,但它的时间分辨率有限,经常会产生运动伪影,从而降低诊断质量。传统的基于心电图的 CTA 门控方法不能充分捕捉心脏的机械运动。为了解决这个问题,我们提出了一种新颖的多模态方法,通过加权融合(WF)方法和人工神经网络(ANN),利用地震心动图(SCG)和心电图数据预测心脏静息期,从而增强 CTA 成像。我们开发了基于回归的人工神经网络框架(r-ANN WF),旨在提高预测准确性并降低计算复杂性,并将其与基于分类的框架(c-ANN WF)、心电图门控和 US 数据进行了比较。我们的研究结果表明,与基于心电图的预测相比,r-ANN WF 方法将心脏舒张和收缩期静息的整体预测准确率提高了 52.6%,并将超声波(US)作为基本事实,平均预测时间为 4.83 毫秒。基于重建的 CTA 图像的比较评估显示,r-ANN WF 和 c-ANN WF 的诊断质量可与基于 US 的选通相媲美,突显了它们的临床潜力。此外,r-ANN WF 的计算复杂度较低,适合实时应用。这种方法可以提高 CTA 的诊断质量,为心血管疾病的诊断和管理提供更准确、更高效的方法。
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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