The Lifelong Impact of Artificial Intelligence and Clinical Prediction Models on Patients With Tetralogy of Fallot

Xander Jacquemyn BSc , Shelby Kutty MD, PhD, MHCM , Cedric Manlhiot PhD
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Abstract

Medical advancements in the diagnosis, surgical techniques, perioperative care, and continued care throughout childhood have transformed the outlook for individuals with tetralogy of Fallot (TOF), improving survival and shifting the perspective towards lifelong care. However, with a growing population of survivors, longstanding challenges have been accentuated, and new challenges have surfaced, necessitating a re-evaluation of TOF care. Availability of prenatal diagnostics, insufficient information from traditional imaging techniques, previously unforeseen medical complications, and debates surrounding optimal timing and indications for reintervention are among the emerging issues. To address these challenges, the integration of artificial intelligence and machine learning holds great promise as they have the potential to revolutionize patient management and positively impact lifelong outcomes for individuals with TOF. Innovative applications of artificial intelligence and machine learning have spanned across multiple domains of TOF care, including screening and diagnosis, automated image processing and interpretation, clinical risk stratification, and planning and performing cardiac interventions. By embracing these advancements and incorporating them into routine clinical practice, personalized medicine could be delivered, leading to the best possible outcomes for patients. In this review, we provide an overview of these evolving applications and emphasize the challenges, limitations, and future potential for integrating them into clinical care.

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人工智能和临床预测模型对法洛四联症患者的终身影响
在诊断、手术技术、围手术期护理和整个儿童时期的持续护理方面的医学进步已经改变了法洛四联症(TOF)患者的前景,提高了生存率,并将观点转向终身护理。然而,随着幸存者人数的增加,长期存在的挑战已经加剧,新的挑战已经浮出水面,需要重新评估TOF治疗。产前诊断的可获得性、传统成像技术的信息不足、以前无法预见的医疗并发症以及围绕再干预的最佳时机和适应症的争论都是新出现的问题。为了应对这些挑战,人工智能和机器学习的整合具有很大的前景,因为它们有可能彻底改变患者管理,并对TOF患者的终身预后产生积极影响。人工智能和机器学习的创新应用已经跨越了TOF护理的多个领域,包括筛查和诊断、自动图像处理和解释、临床风险分层以及心脏干预的规划和执行。通过接受这些进步并将其纳入常规临床实践,可以提供个性化医疗,为患者带来最好的结果。在这篇综述中,我们概述了这些不断发展的应用,并强调了将它们整合到临床护理中的挑战、限制和未来潜力。
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