Development of a liver graft assessment expert machine-learning system: when the artificial intelligence helps liver transplant surgeons

被引:2
|
作者
Balanza, Beatriz Pontes [1 ]
Tunon, Juan M. Castillo [2 ]
Garcia, Daniel Mateos [1 ]
Ruiz, Javier Padillo [3 ]
Santos, Jose C. Riquelme [1 ]
Martinez, Jose M. Alamo [3 ]
Bellido, Carmen Bernal [3 ]
Artacho, Gonzalo Suarez [3 ]
Franco, Carmen Cepeda [3 ]
Bravo, Miguel A. Gomez [3 ]
Gomez, Luis M. Marin [3 ]
机构
[1] Sevilla Univ, Dept Comp Languages & Syst, Seville, Spain
[2] Virgen Macarena Univ Hosp, HPB Surg Unit, Seville, Spain
[3] Virgen Rocio Univ Hosp, HPB Surg & Liver Transplant Unit, Seville, Spain
来源
FRONTIERS IN SURGERY | 2023年 / 10卷
关键词
liver transplants; machine learning; decision-making process; liver graft assessment; artificial intelligence; NEURAL-NETWORKS;
D O I
10.3389/fsurg.2023.1048451
中图分类号
R61 [外科手术学];
学科分类号
摘要
Background: The complex process of liver graft assessment is one point for improvement in liver transplantation. The main objective of this study is to develop a tool that supports the surgeon who is responsible for liver donation in the decision-making process whether to accept a graft or not using the initial variables available to it.Material and method: Liver graft samples candidate for liver transplantation after donor brain death were studied. All of them were evaluated "in situ" for transplantation, and those discarded after the "in situ" evaluation were considered as no transplantable liver grafts, while those grafts transplanted after "in situ" evaluation were considered as transplantable liver grafts. First, a single-center, retrospective and cohort study identifying the risk factors associated with the no transplantable group was performed. Then, a prediction model decision support system based on machine learning, and using a tree ensemble boosting classifier that is capable of helping to decide whether to accept or decline a donor liver graft, was developed.Results: A total of 350 liver grafts that were evaluated for liver transplantation were studied. Steatosis was the most frequent reason for classifying grafts as no transplantable, and the main risk factors identified in the univariant study were age, dyslipidemia, personal medical history, personal surgical history, bilirubinemia, and the result of previous liver ultrasound (p < 0.05). When studying the developed model, we observe that the best performance reordering in terms of accuracy corresponds to 76.29% with an area under the curve of 0.79. Furthermore, the model provides a classification together with a confidence index of reliability, for most cases in our data, with the probability of success in the prediction being above 0.85.Conclusion: The tool presented in this study obtains a high accuracy in predicting whether a liver graft will be transplanted or deemed non-transplantable based on the initial variables assigned to it. The inherent capacity for improvement in the system causes the rate of correct predictions to increase as new data are entered. Therefore, we believe it is a tool that can help optimize the graft pool for liver transplantation.
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页数:11
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