Machine learning models for predicting acute kidney injury: a systematic review and critical appraisal

被引:11
|
作者
Vagliano, Iacopo [1 ]
Chesnaye, Nicholas C. [2 ]
Leopold, Jan Hendrik [1 ]
Jager, Kitty J. [2 ]
Abu-Hanna, Ameen [1 ]
Schut, Martijn C. [1 ]
机构
[1] Univ Amsterdam, Amsterdam UMC, Amsterdam Publ Hlth Res Inst, Dept Med Informat, Amsterdam, Netherlands
[2] Univ Amsterdam, Amsterdam Publ Hlth Res Inst, Amsterdam UMC, ERA Registry,Dept Med Informat, Amsterdam, Netherlands
关键词
acute kidney injury; clinical prediction models; critical appraisal; machine learning; systematic review; RISK STRATIFICATION MODELS; REGRESSION; SURGERY; TRANSPLANTATION; ALGORITHMS; BIOMARKERS; WORLD; BIAS;
D O I
10.1093/ckj/sfac181
中图分类号
R5 [内科学]; R69 [泌尿科学(泌尿生殖系疾病)];
学科分类号
1002 ; 100201 ;
摘要
Lay Summary The number of studies applying machine learning (ML) to predict acute kidney injury (AKI) has grown steadily over the past decade. We assessed and critically appraised the state of the art in ML models for AKI prediction, considering performance, methodological soundness, and applicability. Forty-six studies from 3166 titles were included. Thirty-eight studies developed a model, five developed and externally validated one, and three studies externally validated one. Flexible ML methods were popular for the prediction of AKI, although more complex models based on deep learning are emerging and were especially common with temporal variables and text. Our critical appraisal identified a high risk of bias in 39 studies. External validation and interpretability of results were rarely considered. Fifteen studies focused on AKI prediction in the intensive care setting. Studies should externally validate models more often, improve model interpretability, and share data and code to improve reproducibility. Background The number of studies applying machine learning (ML) to predict acute kidney injury (AKI) has grown steadily over the past decade. We assess and critically appraise the state of the art in ML models for AKI prediction, considering performance, methodological soundness, and applicability. Methods We searched PubMed and ArXiv, extracted data, and critically appraised studies based on the Transparent Reporting of a Multivariable Prediction Model for Individual Prognosis or Diagnosis (TRIPOD), Checklist for Critical Appraisal and Data Extraction for Systematic Reviews of Prediction Modelling Studies (CHARMS), and Prediction Model Risk of Bias Assessment Tool (PROBAST) guidelines. Results Forty-six studies from 3166 titles were included. Thirty-eight studies developed a model, five developed and externally validated one, and three studies externally validated one. Flexible ML methods were used more often than deep learning, although the latter was common with temporal variables and text as predictors. Predictive performance showed an area under receiver operating curves ranging from 0.49 to 0.99. Our critical appraisal identified a high risk of bias in 39 studies. Some studies lacked internal validation, whereas external validation and interpretability of results were rarely considered. Fifteen studies focused on AKI prediction in the intensive care setting, and the US-derived Medical Information Mart for Intensive Care (MIMIC) data set was commonly used. Reproducibility was limited as data and code were usually unavailable. Conclusions Flexible ML methods are popular for the prediction of AKI, although more complex models based on deep learning are emerging. Our critical appraisal identified a high risk of bias in most models: Studies should use calibration measures and external validation more often, improve model interpretability, and share data and code to improve reproducibility.
引用
收藏
页码:2266 / 2280
页数:15
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