Mehdi Rana Raza, Kadivar Nikhil, Mukherjee Tanmay, Mendiola Emilio A, Bersali Akila, Shah Dipan J, Karniadakis George, Avazmohammadi Reza
Department of Biomedical Engineering, Texas A&M University, College Station, TX, 77843, USA.
School of Engineering, Brown University, Providence, RI, 02912, USA.
Adv Sci (Weinh). 2025 Jun 19:e06933. doi: 10.1002/advs.202406933.
Myocardial infarction (MI) continues to be a leading cause of death worldwide. The precise quantification of infarcted tissue is crucial to diagnosis, therapeutic management, and post-MI care. Late gadolinium enhancement-cardiac magnetic resonance (LGE-CMR) is regarded as the gold standard for precise infarct tissue localization in MI patients. A fundamental limitation of LGE-CMR is the invasive intravenous introduction of gadolinium-based contrast agents that present potential high-risk toxicity, particularly for individuals with underlying chronic kidney diseases. Herein, a completely non-invasive methodology is developed to identify the location and extent of an infarct region in the left ventricle via a machine learning (ML) model using only cardiac strains as inputs. In this transformative approach, the remarkable performance of a multi-fidelity ML model is demonstrated, which combines rodent-based in-silico-generated training data (low-fidelity) with very limited patient-specific human data (high-fidelity) in predicting LGE ground truth. The results offer a new paradigm for developing feasible prognostic tools by augmenting synthetic simulation-based data with very small amounts of in vivo human data. More broadly, the proposed approach can significantly assist with addressing biomedical challenges in healthcare where human data are limited.
心肌梗死(MI)仍然是全球主要的死亡原因。梗死组织的精确量化对于诊断、治疗管理以及心肌梗死后护理至关重要。延迟钆增强心脏磁共振成像(LGE-CMR)被视为心肌梗死患者梗死组织精确定位的金标准。LGE-CMR的一个根本局限性在于,基于钆的造影剂需要通过静脉侵入性引入,这存在潜在的高风险毒性,尤其是对于患有潜在慢性肾病的个体。在此,我们开发了一种完全非侵入性的方法,通过仅使用心脏应变作为输入的机器学习(ML)模型来识别左心室梗死区域的位置和范围。在这种变革性方法中,展示了一个多保真度ML模型的卓越性能,该模型在预测LGE真实情况时,将基于啮齿动物的计算机模拟生成的训练数据(低保真度)与非常有限的患者特异性人体数据(高保真度)相结合。研究结果通过用极少量的体内人体数据增强基于合成模拟的数据,为开发可行的预后工具提供了一种新范式。更广泛地说,所提出的方法可以显著帮助应对医疗保健中人体数据有限的生物医学挑战。