Madhumitha Rabindranath, Maryam Naghibzadeh, Xun Zhao, Sandra Holdsworth, Michael Brudno, Aman Sidhu, Mamatha Bhat
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引用次数: 0
摘要
机器学习(ML)的医疗应用在分析患者数据以支持临床决策和提供患者特定结果方面已显示出良好前景。在移植领域,机器学习有多种应用,包括移植前:患者优先排序、供体与受体匹配、器官分配和移植后结果。大量研究表明,ML 模型的开发和实用性具有增强移植医学的潜力。尽管越来越多的人努力开发用于临床的强大 ML 模型,但在医疗环境中部署这些工具的却寥寥无几。在此,我们总结了当前 ML 在移植中的应用,并以器官移植为例讨论了潜在的临床部署框架。我们发现,创建跨学科团队、策划可靠的数据集、解决实施障碍以及了解当前的临床评估模型有助于将 ML 模型部署到移植临床环境中。
Clinical Deployment of Machine Learning Tools in Transplant Medicine: What Does the Future Hold?
Medical applications of machine learning (ML) have shown promise in analyzing patient data to support clinical decision-making and provide patient-specific outcomes. In transplantation, several applications of ML exist which include pretransplant: patient prioritization, donor-recipient matching, organ allocation, and posttransplant outcomes. Numerous studies have shown the development and utility of ML models, which have the potential to augment transplant medicine. Despite increasing efforts to develop robust ML models for clinical use, very few of these tools are deployed in the healthcare setting. Here, we summarize the current applications of ML in transplant and discuss a potential clinical deployment framework using examples in organ transplantation. We identified that creating an interdisciplinary team, curating a reliable dataset, addressing the barriers to implementation, and understanding current clinical evaluation models could help in deploying ML models into the transplant clinic setting.
期刊介绍:
The official journal of The Transplantation Society, and the International Liver Transplantation Society, Transplantation is published monthly and is the most cited and influential journal in the field, with more than 25,000 citations per year.
Transplantation has been the trusted source for extensive and timely coverage of the most important advances in transplantation for over 50 years. The Editors and Editorial Board are an international group of research and clinical leaders that includes many pioneers of the field, representing a diverse range of areas of expertise. This capable editorial team provides thoughtful and thorough peer review, and delivers rapid, careful and insightful editorial evaluation of all manuscripts submitted to the journal.
Transplantation is committed to rapid review and publication. The journal remains competitive with a time to first decision of fewer than 21 days. Transplantation was the first in the field to offer CME credit to its peer reviewers for reviews completed.
The journal publishes original research articles in original clinical science and original basic science. Short reports bring attention to research at the forefront of the field. Other areas covered include cell therapy and islet transplantation, immunobiology and genomics, and xenotransplantation.