Literature DB >> 34344909

Machine learning-based prediction of acute kidney injury after nephrectomy in patients with renal cell carcinoma.

Yeonhee Lee1,2, Jiwon Ryu3, Min Woo Kang1, Kyung Ha Seo4, Jayoun Kim4, Jungyo Suh5, Yong Chul Kim1, Dong Ki Kim1, Kook-Hwan Oh1, Kwon Wook Joo1, Yon Su Kim1, Chang Wook Jeong5, Sang Chul Lee5, Cheol Kwak6, Sejoong Kim7,8,9, Seung Seok Han10.   

Abstract

The precise prediction of acute kidney injury (AKI) after nephrectomy for renal cell carcinoma (RCC) is an important issue because of its relationship with subsequent kidney dysfunction and high mortality. Herein we addressed whether machine learning (ML) algorithms could predict postoperative AKI risk better than conventional logistic regression (LR) models. A total of 4104 RCC patients who had undergone unilateral nephrectomy from January 2003 to December 2017 were reviewed. ML models such as support vector machine, random forest, extreme gradient boosting, and light gradient boosting machine (LightGBM) were developed, and their performance based on the area under the receiver operating characteristic curve, accuracy, and F1 score was compared with that of the LR-based scoring model. Postoperative AKI developed in 1167 patients (28.4%). All the ML models had higher performance index values than the LR-based scoring model. Among them, the LightGBM model had the highest value of 0.810 (0.783-0.837). The decision curve analysis demonstrated a greater net benefit of the ML models than the LR-based scoring model over all the ranges of threshold probabilities. The application of ML algorithms improves the predictability of AKI after nephrectomy for RCC, and these models perform better than conventional LR-based models.
© 2021. The Author(s).

Entities:  

Year:  2021        PMID: 34344909     DOI: 10.1038/s41598-021-95019-1

Source DB:  PubMed          Journal:  Sci Rep        ISSN: 2045-2322            Impact factor:   4.379


  27 in total

1.  European Association of Urology Guidelines on Renal Cell Carcinoma: The 2019 Update.

Authors:  Börje Ljungberg; Laurance Albiges; Yasmin Abu-Ghanem; Karim Bensalah; Saeed Dabestani; Sergio Fernández-Pello; Rachel H Giles; Fabian Hofmann; Milan Hora; Markus A Kuczyk; Teele Kuusk; Thomas B Lam; Lorenzo Marconi; Axel S Merseburger; Thomas Powles; Michael Staehler; Rana Tahbaz; Alessandro Volpe; Axel Bex
Journal:  Eur Urol       Date:  2019-02-23       Impact factor: 20.096

2.  Guideline for management of the clinical T1 renal mass.

Authors:  Steven C Campbell; Andrew C Novick; Arie Belldegrun; Michael L Blute; George K Chow; Ithaar H Derweesh; Martha M Faraday; Jihad H Kaouk; Raymond J Leveillee; Surena F Matin; Paul Russo; Robert G Uzzo
Journal:  J Urol       Date:  2009-08-14       Impact factor: 7.450

3.  Compensatory hypertrophy after partial and radical nephrectomy in adults.

Authors:  Toshio Takagi; Maria C Mir; Nidhi Sharma; Erick M Remer; Jianbo Li; Sevag Demirjian; Jihad H Kaouk; Steven C Campbell
Journal:  J Urol       Date:  2014-06-12       Impact factor: 7.450

4.  National trends in the use of partial nephrectomy: a rising tide that has not lifted all boats.

Authors:  Sanjay G Patel; David F Penson; Baldeep Pabla; Peter E Clark; Michael S Cookson; Sam S Chang; S Duke Herrell; Joseph A Smith; Daniel A Barocas
Journal:  J Urol       Date:  2012-01-15       Impact factor: 7.450

Review 5.  Trends in surgical management of T1 renal cell carcinoma.

Authors:  Jonas Schiffmann; Marco Bianchi; Maxine Sun; Andreas Becker
Journal:  Curr Urol Rep       Date:  2014-02       Impact factor: 3.092

6.  Compensatory Changes in Parenchymal Mass and Function after Radical Nephrectomy.

Authors:  Diego Aguilar Palacios; Elvis R Caraballo; Hajime Tanaka; Yanbo Wang; Chalairat Suk-Ouichai; Yunlin Ye; Lin Lin; Jianbo Li; Robert Abouassaly; Steven C Campbell
Journal:  J Urol       Date:  2020-02-14       Impact factor: 7.450

7.  Compensatory Structural and Functional Adaptation after Radical Nephrectomy for Renal Cell Carcinoma According to Preoperative Stage of Chronic Kidney Disease.

Authors:  Don Kyoung Choi; Se Bin Jung; Bong Hee Park; Byong Chang Jeong; Seong Il Seo; Seong Soo Jeon; Hyun Moo Lee; Han-Yong Choi; Hwang Gyun Jeon
Journal:  J Urol       Date:  2015-04-28       Impact factor: 7.450

8.  Rising incidence of small renal masses: a need to reassess treatment effect.

Authors:  John M Hollingsworth; David C Miller; Stephanie Daignault; Brent K Hollenbeck
Journal:  J Natl Cancer Inst       Date:  2006-09-20       Impact factor: 13.506

9.  National trends in the utilization of partial nephrectomy before and after the establishment of AUA guidelines for the management of renal masses.

Authors:  Marc A Bjurlin; Dawn Walter; Glen B Taksler; William C Huang; James S Wysock; Ganesh Sivarajan; Stacy Loeb; Samir S Taneja; Danil V Makarov
Journal:  Urology       Date:  2013-12       Impact factor: 2.649

10.  Renal cell cancer stage migration: analysis of the National Cancer Data Base.

Authors:  Christopher J Kane; Katherine Mallin; Jamie Ritchey; Matthew R Cooperberg; Peter R Carroll
Journal:  Cancer       Date:  2008-07-01       Impact factor: 6.860

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  2 in total

1.  Comparison Between Statistical Model and Machine Learning Methods for Predicting the Risk of Renal Function Decline Using Routine Clinical Data in Health Screening.

Authors:  Xia Cao; Yanhui Lin; Binfang Yang; Ying Li; Jiansong Zhou
Journal:  Risk Manag Healthc Policy       Date:  2022-04-26

2.  Development of artificial neural networks for early prediction of intestinal perforation in preterm infants.

Authors:  Joonhyuk Son; Daehyun Kim; Jae Yoon Na; Donggoo Jung; Ja-Hye Ahn; Tae Hyun Kim; Hyun-Kyung Park
Journal:  Sci Rep       Date:  2022-07-15       Impact factor: 4.996

  2 in total

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