Literature DB >> 32996170

Machine learning to predict transplant outcomes: helpful or hype? A national cohort study.

Sunjae Bae1,2,3, Allan B Massie1,2, Brian S Caffo3, Kyle R Jackson2, Dorry L Segev1,2.   

Abstract

An increasing number of studies claim machine learning (ML) predicts transplant outcomes more accurately. However, these claims were possibly confounded by other factors, namely, supplying new variables to ML models. To better understand the prospects of ML in transplantation, we compared ML to conventional regression in a "common" analytic task: predicting kidney transplant outcomes using national registry data. We studied 133 431 adult deceased-donor kidney transplant recipients between 2005 and 2017. Transplant centers were randomly divided into 70% training set (190 centers/97 787 recipients) and 30% validation set (82 centers/35 644 recipients). Using the training set, we performed regression and ML procedures [gradient boosting (GB) and random forests (RF)] to predict delayed graft function, one-year acute rejection, death-censored graft failure C, all-cause graft failure, and death. Their performances were compared on the validation set using -statistics. In predicting rejection, regression (C = 0.601 0.6110.621 ) actually outperformed GB (C = 0.581 0.5910.601 ) and RF (C = 0.569 0.5790.589 ). For all other outcomes, the C-statistics were nearly identical across methods (delayed graft function, 0.717-0.723; death-censored graft failure, 0.637-0.642; all-cause graft failure, 0.633-0.635; and death, 0.705-0.708). Given its shortcomings in model interpretability and hypothesis testing, ML is advantageous only when it clearly outperforms conventional regression; in the case of transplant outcomes prediction, ML seems more hype than helpful.
© 2020 Steunstichting ESOT. Published by John Wiley & Sons Ltd.

Entities:  

Keywords:  kidney transplantation; machine learning; prediction; regression

Mesh:

Year:  2020        PMID: 32996170     DOI: 10.1111/tri.13695

Source DB:  PubMed          Journal:  Transpl Int        ISSN: 0934-0874            Impact factor:   3.782


  5 in total

1.  Machine Learning-Based Prediction of Masked Hypertension Among Children With Chronic Kidney Disease.

Authors:  Sunjae Bae; Joshua A Samuels; Joseph T Flynn; Mark M Mitsnefes; Susan L Furth; Bradley A Warady; Derek K Ng
Journal:  Hypertension       Date:  2022-07-07       Impact factor: 9.897

2.  The Independent Effects of Procurement Biopsy Findings on 10-Year Outcomes of Extended Criteria Donor Kidney Transplants.

Authors:  Darren E Stewart; Julia Foutz; Layla Kamal; Samantha Weiss; Harrison S McGehee; Matthew Cooper; Gaurav Gupta
Journal:  Kidney Int Rep       Date:  2022-05-30

Review 3.  Deceased Donor Characteristics and Kidney Transplant Outcomes.

Authors:  Adnan Sharif
Journal:  Transpl Int       Date:  2022-08-25       Impact factor: 3.842

4.  Predicting a Positive Antibody Response After 2 SARS-CoV-2 mRNA Vaccines in Transplant Recipients: A Machine Learning Approach With External Validation.

Authors:  Jennifer L Alejo; Jonathan Mitchell; Teresa P-Y Chiang; Amy Chang; Aura T Abedon; William A Werbel; Brian J Boyarsky; Laura B Zeiser; Robin K Avery; Aaron A R Tobian; Macey L Levan; Daniel S Warren; Allan B Massie; Linda W Moore; Ashrith Guha; Howard J Huang; Richard J Knight; Ahmed Osama Gaber; Rafik Mark Ghobrial; Jacqueline M Garonzik-Wang; Dorry L Segev; Sunjae Bae
Journal:  Transplantation       Date:  2022-07-21       Impact factor: 5.385

5.  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

  5 in total

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