叙述性综述:利用人工智能建模预测肝移植移植物存活率

Aiste Gulla, I. Jakiūnaitė, I. Juchneviciute, G. Dzemyda
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引用次数: 0

摘要

肝移植是治疗肝功能衰竭患者的唯一方法。随着肝移植需求的增长,预测肝移植的短期和长期存活率仍是一项挑战。最近,人工智能模型被用于评估肝移植的短期和长期存活率。为了使模型更加准确,必须使用合适的肝移植特征作为输入来训练模型。在这篇叙述性综述中,我们回顾了 2017 年至 2022 年间发表在 PubMed、Web of Science 和 Cochrane 数据库中有关肝移植的研究。我们根据筛选标准选出了 17 项研究并对其进行了分析,评估了哪些医疗特征被用作创建人工智能模型的输入。在 8 项研究中,我们只创建了估计短期肝移植存活率的模型,而在 5 项研究中,我们只创建了预测长期肝移植存活率的模型。其中四项研究建立了评估短期和长期肝移植存活率的人工智能算法。在所回顾的研究中,对模型准确性影响最大的医学特征是受者的年龄、受者的体重指数、受者血清中的肌酐水平、受者的国际正常化比率、糖尿病以及受者的终末期肝病模型评分。总之,为了定义重要的肝移植特征,以便在预测肝移植存活率时将其作为人工智能算法的输入,需要创建和分析更多的模型,以充分支持本综述的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A narrative review: predicting liver transplant graft survival using artificial intelligence modeling
Liver transplantation is the only treatment for patients with liver failure. As demand for liver transplantation grows, it remains a challenge to predict the short- and long-term survival of the liver graft. Recently, artificial intelligence models have been used to evaluate the short- and long-term survival of the liver transplant. To make the models more accurate, suitable liver transplantation characteristics must be used as input to train them. In this narrative review, we reviewed studies concerning liver transplantations published in the PubMed, Web of Science, and Cochrane databases between 2017 and 2022. We picked out 17 studies using our selection criteria and analyzed them, evaluating which medical characteristics were used as input for creation of artificial intelligence models. In eight studies, models estimating only short-term liver graft survival were created, while in five of the studies, models for the prediction of only long-term liver graft survival were built. In four of the studies, artificial intelligence algorithms evaluating both the short- and long-term liver graft survival were created. Medical characteristics that were used as input in reviewed studies and had the biggest impact on the accuracy of the model were the recipient's age, recipient's body mass index, creatinine levels in the recipient's serum, recipient's international normalized ratio, diabetes mellitus, and recipient's model of end-stage liver disease score. To conclude, in order to define important liver transplantation characteristics that could be used as an input for artificial intelligence algorithms when predicting liver graft survival, more models need to be created and analyzed, in order to fully support the results of this review.
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