Current state of artificial intelligence in liver transplantation

Q4 Medicine Transplantation Reports Pub Date : 2025-02-10 DOI:10.1016/j.tpr.2025.100173
Ashley E. Montgomery , Abbas Rana
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引用次数: 0

Abstract

Over the past few decades, substantial progress has been made in the field of liver transplantation. Yet, challenges remain in the field due to an increasing organ allograft shortage as well as significant waitlist mortality. With these challenges, organ allocation policies have been developed and are constantly being modified to result in more efficient organ allocation. One tool that has been explored to improve the field of liver transplantation is artificial intelligence, which is an umbrella term for techniques such as machine learning and deep learning. This review article explores the use of artificial intelligence in the field of liver transplantation. Specifically, studies have shown potential applications of artificial intelligence in improving waitlist mortality models, assessing allograft characteristics, using large language models for research question development and patient education, developing post-transplant models, as well as predicting multiple risk factors such as cardiovascular disease, infection, graft failure, malignancy, graft fibrosis, and pneumonia. However, even with these studies, several limitations for the use of artificial intelligence exist such as biased data sets leading to biased model development, lack of extensive validation of the artificial intelligence models, and the need for large datasets for model development. With additional studies evaluating the use of artificial intelligence and wide-scale validation of these studies highlighted, the use of artificial intelligence may transform the field of transplantation in the future.
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来源期刊
Transplantation Reports
Transplantation Reports Medicine-Transplantation
CiteScore
0.60
自引率
0.00%
发文量
24
审稿时长
101 days
期刊介绍: To provide to national and regional audiences experiences unique to them or confirming of broader concepts originating in large controlled trials. All aspects of organ, tissue and cell transplantation clinically and experimentally. Transplantation Reports will provide in-depth representation of emerging preclinical, impactful and clinical experiences. -Original basic or clinical science articles that represent initial limited experiences as preliminary reports. -Clinical trials of therapies previously well documented in large trials but now tested in limited, special, ethnic or clinically unique patient populations. -Case studies that confirm prior reports but have occurred in patients displaying unique clinical characteristics such as ethnicities or rarely associated co-morbidities. Transplantation Reports offers these benefits: -Fast and fair peer review -Rapid, article-based publication -Unrivalled visibility and exposure for your research -Immediate, free and permanent access to your paper on Science Direct -Immediately citable using the article DOI
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