» Articles » PMID: 35915457

Machine Learning Algorithms' Accuracy in Predicting Kidney Disease Progression: a Systematic Review and Meta-analysis

Overview
Publisher Biomed Central
Date 2022 Aug 1
PMID 35915457
Authors
Affiliations
Soon will be listed here.
Abstract

Background: Kidney disease progression rates vary among patients. Rapid and accurate prediction of kidney disease outcomes is crucial for disease management. In recent years, various prediction models using Machine Learning (ML) algorithms have been established in nephrology. However, their accuracy have been inconsistent. Therefore, we conducted a systematic review and meta-analysis to investigate the diagnostic accuracy of ML algorithms for kidney disease progression.

Methods: We searched PubMed, EMBASE, Cochrane Central Register of Controlled Trials, the Chinese Biomedicine Literature Database, Chinese National Knowledge Infrastructure, Wanfang Database, and the VIP Database for diagnostic studies on ML algorithms' accuracy in predicting kidney disease prognosis, from the establishment of these databases until October 2020. Two investigators independently evaluate study quality by QUADAS-2 tool and extracted data from single ML algorithm for data synthesis using the bivariate model and the hierarchical summary receiver operating characteristic (HSROC) model.

Results: Fifteen studies were left after screening, only 6 studies were eligible for data synthesis. The sample size of these 6 studies was 12,534, and the kidney disease types could be divided into chronic kidney disease (CKD) and Immunoglobulin A Nephropathy, with 5 articles using end-stage renal diseases occurrence as the primary outcome. The main results indicated that the area under curve (AUC) of the HSROC was 0.87 (0.84-0.90) and ML algorithm exhibited a strong specificity, 95% confidence interval and heterogeneity (I) of (0.87, 0.84-0.90, [I 99.0%]) and a weak sensitivity of (0.68, 0.58-0.77, [I 99.7%]) in predicting kidney disease deterioration. And the the results of subgroup analysis indicated that ML algorithm's AUC for predicting CKD prognosis was 0.82 (0.79-0.85), with the pool sensitivity of (0.64, 0.49-0.77, [I 99.20%]) and pool specificity of (0.84, 0.74-0.91, [I 99.84%]). The ML algorithm's AUC for predicting IgA nephropathy prognosis was 0.78 (0.74-0.81), with the pool sensitivity of (0.74, 0.71-0.77, [I 7.10%]) and pool specificity of (0.93, 0.91-0.95, [I 83.92%]).

Conclusion: Taking advantage of big data, ML algorithm-based prediction models have high accuracy in predicting kidney disease progression, we recommend ML algorithms as an auxiliary tool for clinicians to determine proper treatment and disease management strategies.

Citing Articles

Artificial intelligence in predicting chronic kidney disease prognosis. A systematic review and meta-analysis.

Pan Q, Tong M Ren Fail. 2024; 46(2):2435483.

PMID: 39663146 PMC: 11636155. DOI: 10.1080/0886022X.2024.2435483.


External validation of a 2-year all-cause mortality prediction tool developed using machine learning in patients with stage 4-5 chronic kidney disease.

Tran D, Ducher M, Fouque D, Fauvel J J Nephrol. 2024; 37(8):2267-2274.

PMID: 38965199 DOI: 10.1007/s40620-024-02011-9.


Derivation and Validation of a Machine Learning Model for the Prevention of Unplanned Dialysis.

Klamrowski M, Klein R, McCudden C, Green J, Rashidi B, White C Clin J Am Soc Nephrol. 2024; .

PMID: 38787617 PMC: 11390024. DOI: 10.2215/CJN.0000000000000489.


Preoperative Age and Its Impact on Long-Term Renal Functional Decline after Robotic-Assisted Partial Nephrectomy: Insights from a Tertiary Referral Center.

Saitta C, Garofano G, Lughezzani G, Meagher M, Yuen K, Fasulo V Medicina (Kaunas). 2024; 60(3).

PMID: 38541189 PMC: 10971873. DOI: 10.3390/medicina60030463.


Interpretable machine learning for predicting chronic kidney disease progression risk.

Zheng J, Li X, Zhu J, Guan S, Zhang S, Wang W Digit Health. 2024; 10:20552076231224225.

PMID: 38235416 PMC: 10793198. DOI: 10.1177/20552076231224225.


References
1.
Zacharias H, Altenbuchinger M, Schultheiss U, Samol C, Kotsis F, Poguntke I . A Novel Metabolic Signature To Predict the Requirement of Dialysis or Renal Transplantation in Patients with Chronic Kidney Disease. J Proteome Res. 2019; 18(4):1796-1805. DOI: 10.1021/acs.jproteome.8b00983. View

2.
Beam A, Kohane I . Big Data and Machine Learning in Health Care. JAMA. 2018; 319(13):1317-1318. DOI: 10.1001/jama.2017.18391. View

3.
van Enst W, Ochodo E, Scholten R, Hooft L, Leeflang M . Investigation of publication bias in meta-analyses of diagnostic test accuracy: a meta-epidemiological study. BMC Med Res Methodol. 2014; 14:70. PMC: 4035673. DOI: 10.1186/1471-2288-14-70. View

4.
Dovgan E, Gradisek A, Lustrek M, Uddin M, Nursetyo A, Annavarajula S . Using machine learning models to predict the initiation of renal replacement therapy among chronic kidney disease patients. PLoS One. 2020; 15(6):e0233976. PMC: 7274378. DOI: 10.1371/journal.pone.0233976. View

5.
Liu Y, Zhang Y, Liu D, Tan X, Tang X, Zhang F . Prediction of ESRD in IgA Nephropathy Patients from an Asian Cohort: A Random Forest Model. Kidney Blood Press Res. 2018; 43(6):1852-1864. DOI: 10.1159/000495818. View