Artificial intelligence to guide management of acute kidney injury in the ICU: a narrative review

被引:14
作者
De Vlieger, Greet [1 ,2 ]
Kashani, Kianoush [3 ,4 ]
Meyfroidt, Geert [1 ,2 ]
机构
[1] Katholieke Univ Leuven, Acad Dept Cellular & Mol Med, Clin Div, Herestr 49, B-3000 Leuven, Belgium
[2] Katholieke Univ Leuven, Acad Dept Cellular & Mol Med, Lab Intens Care Med, Herestr 49, B-3000 Leuven, Belgium
[3] Mayo Clin, Div Nephrol & Hypertens, Dept Med, Rochester, MN USA
[4] Mayo Clin, Div Pulm & Crit Care Med, Dept Med, Rochester, MN USA
关键词
acute kidney injury; artificial intelligence; machine learning; prediction; CRITICALLY-ILL PATIENTS; PREDICTION; MODELS; FLUID; SURVEILLANCE; VALIDATION; THERAPY;
D O I
10.1097/MCC.0000000000000775
中图分类号
R4 [临床医学];
学科分类号
1002 ; 100602 ;
摘要
Purpose of review Acute kidney injury (AKI) frequently complicates hospital admission, especially in the ICU or after major surgery, and is associated with high morbidity and mortality. The risk of developing AKI depends on the presence of preexisting comorbidities and the cause of the current disease. Besides, many other parameters affect the kidney function, such as the state of other vital organs, the host response, and the initiated treatment. Advancements in the field of informatics have led to the opportunity to store and utilize the patient-related data to train and validate models to detect specific patterns and, as such, predict disease states or outcomes. Recent findings Machine-learning techniques have also been applied to predict AKI, as well as the patients' outcomes related to their AKI, such as mortality or the need for kidney replacement therapy. Several models have recently been developed, but only a few of them have been validated in external cohorts. In this article, we provide an overview of the machine-learning prediction models for AKI and its outcomes in critically ill patients and individuals undergoing major surgery. We also discuss the pitfalls and the opportunities related to the implementation of these models in clinical practices.
引用
收藏
页码:563 / 573
页数:11
相关论文
共 56 条
[1]   Improved predictive models for acute kidney injury with IDEA: Intraoperative Data Embedded Analytics [J].
Adhikari, Lasith ;
Ozrazgat-Baslanti, Tezcan ;
Ruppert, Matthew ;
Madushani, R. W. M. A. ;
Paliwal, Srajan ;
Hashemighouchani, Haleh ;
Zheng, Feng ;
Tao, Ming ;
Lopes, Juliano M. ;
Li, Xiaolin ;
Rashidi, Parisa ;
Bihorac, Azra .
PLOS ONE, 2019, 14 (04)
[2]   Development and validation of electronic surveillance tool for acute kidney injury: A retrospective analysis [J].
Ahmed, Adil ;
Vairavan, Srinivasan ;
Akhoundi, Abbasali ;
Wilson, Gregory ;
Chiofolo, Caitlyn ;
Chbat, Nicolas ;
Cartin-Ceba, Rodrigo ;
Li, Guangxi ;
Kashani, Kianoush .
JOURNAL OF CRITICAL CARE, 2015, 30 (05) :988-993
[3]  
[Anonymous], 2012, Kidney Int Suppl (2011), V2, P19, DOI [10.1038/kisup.2011.32, DOI 10.1038/KISUP.2011.32]
[4]  
Beam AL, 2018, JAMA, V319, P1317, DOI [DOI 10.1001/JAMA.2017.18391, 10.1001/jama.2017.18391]
[5]   Acute renal failure - definition, outcome measures, animal models, fluid therapy and information technology needs: the Second International Consensus Conference of the Acute Dialysis Quality Initiative (ADQI) Group [J].
Bellomo, R ;
Ronco, C ;
Kellum, JA ;
Mehta, RL ;
Palevsky, P .
CRITICAL CARE, 2004, 8 (04) :R204-R212
[6]   MySurgeryRisk: Development and Validation of a Machine-learning Risk Algorithm for Major Complications and Death After Surgery [J].
Bihorac, Azra ;
Ozrazgat-Baslanti, Tezcan ;
Ebadi, Ashkan ;
Motaei, Amir ;
Madkour, Mohcine ;
Pardalos, Panagote M. ;
Lipori, Gloria ;
Hogan, William R. ;
Efron, Philip A. ;
Moore, Frederick ;
Moldawer, Lyle L. ;
Wang, Daisy Zhe ;
Hobson, Charles E. ;
Rashidi, Parisi ;
Li, Xiaolin ;
Momcilovic, Petar .
ANNALS OF SURGERY, 2019, 269 (04) :652-662
[7]   Comparing clinical judgment with the MySurgeryRisk algorithm for preoperative risk assessment: A pilot usability study [J].
Brennan, Meghan ;
Puri, Sahil ;
Ozrazgat-Baslanti, Tezcan ;
Feng, Zheng ;
Ruppert, Matthew ;
Hashemighouchani, Haleh ;
Momcilovic, Petar ;
Li, Xiaolin ;
Wang, Daisy Zhe ;
Bihorac, Azra .
SURGERY, 2019, 165 (05) :1035-1045
[8]   Fluid bolus therapy: monitoring and predicting fluid responsiveness [J].
Carsetti, Andrea ;
Cecconi, Maurizio ;
Rhodes, Andrew .
CURRENT OPINION IN CRITICAL CARE, 2015, 21 (05) :388-394
[9]   Automated Continuous Acute Kidney Injury Prediction and Surveillance: A Random Forest Model [J].
Chiofolo, Caitlyn ;
Chbat, Nicolas ;
Ghosh, Erina ;
Eshelman, Larry ;
Kashani, Kianoush .
MAYO CLINIC PROCEEDINGS, 2019, 94 (05) :783-792
[10]   Chronic kidney disease after acute kidney injury: a systematic review and meta-analysis [J].
Coca, Steven G. ;
Singanamala, Swathi ;
Parikh, Chirag R. .
KIDNEY INTERNATIONAL, 2012, 81 (05) :442-448