Literature DB >> 32274856

Using Artificial Intelligence for Predicting Survival of Individual Grafts in Liver Transplantation: A Systematic Review.

Laura R Wingfield1, Carlo Ceresa1, Simon Thorogood2, Jacques Fleuriot2, Simon Knight1.   

Abstract

The demand for liver transplantation far outstrips the supply of deceased donor organs, and so, listing and allocation decisions aim to maximize utility. Most existing methods for predicting transplant outcomes use basic methods, such as regression modeling, but newer artificial intelligence (AI) techniques have the potential to improve predictive accuracy. The aim was to perform a systematic review of studies predicting graft outcomes following deceased donor liver transplantation using AI techniques and to compare these findings to linear regression and standard predictive modeling: donor risk index (DRI), Model for End-Stage Liver Disease (MELD), and Survival Outcome Following Liver Transplantation (SOFT). After reviewing available article databases, a total of 52 articles were reviewed for inclusion. Of these articles, 9 met the inclusion criteria, which reported outcomes from 18,771 liver transplants. Artificial neural networks (ANNs) were the most commonly used methodology, being reported in 7 studies. Only 2 studies directly compared machine learning (ML) techniques to liver scoring modalities (i.e., DRI, SOFT, and balance of risk [BAR]). Both studies showed better prediction of individual organ survival with the optimal ANN model, reporting an area under the receiver operating characteristic curve (AUROC) 0.82 compared with BAR (0.62) and SOFT (0.57), and the other ANN model gave an AUC ROC of 0.84 compared with a DRI (0.68) and SOFT (0.64). AI techniques can provide high accuracy in predicting graft survival based on donors and recipient variables. When compared with the standard techniques, AI methods are dynamic and are able to be trained and validated within every population. However, the high accuracy of AI may come at a cost of losing explainability (to patients and clinicians) on how the technology works.
Copyright © 2020 by the American Association for the Study of Liver Diseases.

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Year:  2020        PMID: 32274856     DOI: 10.1002/lt.25772

Source DB:  PubMed          Journal:  Liver Transpl        ISSN: 1527-6465            Impact factor:   5.799


  7 in total

1.  Accurate long-term prediction of death for patients with cirrhosis.

Authors:  David Goldberg; Alejandro Mantero; David Kaplan; Cindy Delgado; Binu John; Nadine Nuchovich; Ezekiel Emanuel; Peter P Reese
Journal:  Hepatology       Date:  2022-04-01       Impact factor: 17.298

Review 2.  Role of artificial intelligence in hepatobiliary and pancreatic surgery.

Authors:  Hassaan Bari; Sharan Wadhwani; Bobby V M Dasari
Journal:  World J Gastrointest Surg       Date:  2021-01-27

Review 3.  Artificial Intelligence in hepatology, liver surgery and transplantation: Emerging applications and frontiers of research.

Authors:  Fadl H Veerankutty; Govind Jayan; Manish Kumar Yadav; Krishnan Sarojam Manoj; Abhishek Yadav; Sindhu Radha Sadasivan Nair; T U Shabeerali; Varghese Yeldho; Madhu Sasidharan; Shiraz Ahmad Rather
Journal:  World J Hepatol       Date:  2021-12-27

4.  Advancements of Artificial Intelligence in Liver-Associated Diseases and Surgery.

Authors:  Anas Taha; Vincent Ochs; Leos N Kayhan; Bassey Enodien; Daniel M Frey; Lukas Krähenbühl; Stephanie Taha-Mehlitz
Journal:  Medicina (Kaunas)       Date:  2022-03-22       Impact factor: 2.948

Review 5.  Artificial intelligence and its impact on the domains of universal health coverage, health emergencies and health promotion: An overview of systematic reviews.

Authors:  Antonio Martinez-Millana; Aida Saez-Saez; Roberto Tornero-Costa; Natasha Azzopardi-Muscat; Vicente Traver; David Novillo-Ortiz
Journal:  Int J Med Inform       Date:  2022-08-17       Impact factor: 4.730

Review 6.  Reducing Kidney Discard With Artificial Intelligence Decision Support: the Need for a Transdisciplinary Systems Approach.

Authors:  Richard Threlkeld; Lirim Ashiku; Casey Canfield; Daniel B Shank; Mark A Schnitzler; Krista L Lentine; David A Axelrod; Anil Choudary Reddy Battineni; Henry Randall; Cihan Dagli
Journal:  Curr Transplant Rep       Date:  2021-11-15

7.  Augmenting the Transplant Team With Artificial Intelligence: Toward Meaningful AI Use in Solid Organ Transplant.

Authors:  Jeffrey Clement; Angela Q Maldonado
Journal:  Front Immunol       Date:  2021-06-11       Impact factor: 7.561

  7 in total

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