Bai Jieyun, Lu Yaosheng, Wang Huijin, Zhao Jichao
Guangdong Provincial Key Laboratory of Traditional Chinese Medicine Information Technology, Jinan University, Guangzhou, China.
College of Information Science and Technology, Jinan University, Guangzhou, China.
Front Physiol. 2022 Aug 30;13:957604. doi: 10.3389/fphys.2022.957604. eCollection 2022.
Atrial fibrillation (AF) with multiple complications, high morbidity and mortality, and low cure rates, has become a global public health problem. Although significant progress has been made in the treatment methods represented by anti-AF drugs and radiofrequency ablation, the therapeutic effect is not as good as expected. The reason is mainly because of our lack of understanding of AF mechanisms. This field has benefited from mechanistic and (or) statistical methodologies. Recent renewed interest in digital twin techniques by synergizing between mechanistic and statistical models has opened new frontiers in AF analysis. In the review, we briefly present findings that gave rise to the AF pathophysiology and current therapeutic modalities. We then summarize the achievements of digital twin technologies in three aspects: understanding AF mechanisms, screening anti-AF drugs and optimizing ablation strategies. Finally, we discuss the challenges that hinder the clinical application of the digital twin heart. With the rapid progress in data reuse and sharing, we expect their application to realize the transition from AF description to response prediction.
伴有多种并发症、高发病率和死亡率以及低治愈率的心房颤动(AF)已成为一个全球性的公共卫生问题。尽管以抗房颤药物和射频消融术为代表的治疗方法取得了重大进展,但治疗效果并不如预期。原因主要是我们对房颤机制缺乏了解。该领域受益于机制和(或)统计方法。最近,通过机制模型和统计模型之间的协同作用,人们对数字孪生技术重新产生了兴趣,这为房颤分析开辟了新的前沿领域。在这篇综述中,我们简要介绍了引发房颤病理生理学和当前治疗方式的研究结果。然后,我们从三个方面总结数字孪生技术的成果:理解房颤机制、筛选抗房颤药物和优化消融策略。最后,我们讨论了阻碍数字孪生心脏临床应用的挑战。随着数据重用和共享的迅速发展,我们期望它们的应用能够实现从房颤描述到反应预测的转变。