Aortic Institute at Yale-New Haven Hospital, Yale University School of Medicine, New Haven, CT, USA.
New York University Grossman School of Medicine, New York, NY, USA.
Eur J Cardiothorac Surg. 2021 Jul 30;60(2):213-221. doi: 10.1093/ejcts/ezab095.
Machine learning (ML) has experienced a revolutionary decade with advances across many disciplines. We seek to understand how recent advances in ML are going to specifically influence the practice of surgery in the future with a particular focus on thoracic surgery.
Review of relevant literature in both technical and clinical domains.
ML is a revolutionary technology that promises to change the way that surgery is practiced in the near future. Spurred by an advance in computing power and the volume of data produced in healthcare, ML has shown remarkable ability to master tasks that had once been reserved for physicians. Supervised learning, unsupervised learning and reinforcement learning are all important techniques that can be leveraged to improve care. Five key applications of ML to cardiac surgery include diagnostics, surgical skill assessment, postoperative prognostication, augmenting intraoperative performance and accelerating translational research. Some key limitations of ML include lack of interpretability, low quality and volumes of relevant clinical data, ethical limitations and difficulties with clinical implementation.
In the future, the practice of cardiac surgery will be greatly augmented by ML technologies, ultimately leading to improved surgical performance and better patient outcomes.
机器学习(ML)在多个领域取得了突破性进展,经历了一个革命性的十年。我们旨在了解 ML 的最新进展将如何特别影响未来的外科手术实践,特别是胸外科手术。
回顾技术和临床领域的相关文献。
机器学习是一项革命性技术,有望在不久的将来改变外科手术的实践方式。在计算能力和医疗保健领域产生的数据量的推动下,机器学习已经显示出掌握曾经仅限于医生的任务的非凡能力。监督学习、无监督学习和强化学习都是可以用来改善护理的重要技术。机器学习在心脏外科中的五个关键应用包括诊断、手术技能评估、术后预后预测、术中表现增强和加速转化研究。机器学习的一些关键限制包括缺乏可解释性、相关临床数据的质量和数量低、伦理限制以及临床实施困难。
未来,心脏外科手术的实践将大大增强 ML 技术,最终导致手术表现的提高和患者预后的改善。