Revolutionizing Kidney Transplantation: Connecting Machine Learning and Artificial Intelligence with Next-Generation Healthcare—From Algorithms to Allografts
L. Ramalhete, Paula Almeida, Raquel Ferreira, Olga Abade, Cristiana Teixeira, Rúben Araújo
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引用次数: 0
Abstract
This review explores the integration of artificial intelligence (AI) and machine learning (ML) into kidney transplantation (KT), set against the backdrop of a significant donor organ shortage and the evolution of ‘Next-Generation Healthcare’. Its purpose is to evaluate how AI and ML can enhance the transplantation process, from donor selection to postoperative patient care. Our methodology involved a comprehensive review of current research, focusing on the application of AI and ML in various stages of KT. This included an analysis of donor–recipient matching, predictive modeling, and the improvement in postoperative care. The results indicated that AI and ML significantly improve the efficiency and success rates of KT. They aid in better donor–recipient matching, reduce organ rejection, and enhance postoperative monitoring and patient care. Predictive modeling, based on extensive data analysis, has been particularly effective in identifying suitable organ matches and anticipating postoperative complications. In conclusion, this review discusses the transformative impact of AI and ML in KT, offering more precise, personalized, and effective healthcare solutions. Their integration into this field addresses critical issues like organ shortages and post-transplant complications. However, the successful application of these technologies requires careful consideration of their ethical, privacy, and training aspects in healthcare settings.
在供体器官严重短缺和 "下一代医疗保健 "不断发展的背景下,本综述探讨了人工智能(AI)和机器学习(ML)与肾移植(KT)的结合。其目的是评估人工智能和 ML 如何能够改进从供体选择到术后患者护理的移植过程。我们的研究方法包括全面回顾当前的研究,重点关注人工智能和 ML 在 KT 各个阶段的应用。其中包括对供体与受体匹配、预测建模以及术后护理改进的分析。研究结果表明,人工智能和人工智能大大提高了 KT 的效率和成功率。它们有助于更好地匹配供体和受体,减少器官排斥反应,并加强术后监测和患者护理。基于大量数据分析的预测建模在确定合适的器官配型和预测术后并发症方面尤为有效。总之,本综述讨论了人工智能和 ML 在 KT 领域的变革性影响,它们提供了更加精确、个性化和有效的医疗保健解决方案。将这些技术融入这一领域可解决器官短缺和移植后并发症等关键问题。然而,要成功应用这些技术,需要仔细考虑其在医疗环境中的道德、隐私和培训方面的问题。