Role of Artificial Intelligence in Lung Transplantation: Current State, Challenges, and Future Directions.

IF 0.8
Robert P Duncheskie, Omar Al Omari, Fatima Anjum
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Abstract

Lung transplantation remains a critical treatment for end-stage lung diseases, yet it continues to have 1 of the lowest survival rates among solid organ transplants. Despite its life-saving potential, the field faces several challenges, including organ shortages, suboptimal donor matching, and post-transplant complications. The rapidly advancing field of artificial intelligence (AI) offers significant promise in addressing these challenges. Traditional statistical models, such as linear and logistic regression, have been used to predict post-transplant outcomes but struggle to adapt to new trends and evolving data. In contrast, machine learning algorithms can evolve with new data, offering dynamic and updated predictions. AI holds the potential to enhance lung transplantation at multiple stages. In the pre-transplant phase, AI can optimize waitlist management, refine donor selection, and improve donor-recipient matching, and enhance diagnostic imaging by harnessing vast datasets. Post-transplant, AI can help predict allograft rejection, improve immunosuppressive management, and better forecast long-term patient outcomes, including quality of life. However, the integration of AI in lung transplantation also presents challenges, including data privacy concerns, algorithmic bias, and the need for external clinical validation. This review explores the current state of AI in lung transplantation, summarizes key findings from recent studies, and discusses the potential benefits, challenges, and ethical considerations in this rapidly evolving field, highlighting future research directions.

人工智能在肺移植中的作用:现状、挑战和未来方向。
肺移植仍然是终末期肺部疾病的重要治疗方法,但它仍然是实体器官移植中存活率最低的方法之一。尽管该领域具有挽救生命的潜力,但仍面临着一些挑战,包括器官短缺、供体匹配不理想以及移植后并发症。快速发展的人工智能(AI)领域为解决这些挑战提供了巨大的希望。传统的统计模型,如线性和逻辑回归,已被用于预测移植后的结果,但难以适应新的趋势和不断变化的数据。相比之下,机器学习算法可以随着新数据的发展而发展,提供动态和更新的预测。人工智能具有在多个阶段增强肺移植的潜力。在移植前阶段,人工智能可以优化等待名单管理,优化供体选择,改善供体-受体匹配,并通过利用大量数据集增强诊断成像。移植后,人工智能可以帮助预测同种异体移植排斥反应,改善免疫抑制管理,更好地预测患者的长期预后,包括生活质量。然而,人工智能在肺移植中的整合也面临挑战,包括数据隐私问题、算法偏差以及需要外部临床验证。本文探讨了人工智能在肺移植中的现状,总结了近期研究的主要发现,并讨论了这一快速发展领域的潜在益处、挑战和伦理考虑,并强调了未来的研究方向。
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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