Prediction and detection models for acute kidney injury in hospitalized older adults

被引:112
作者
Kate, Rohit J. [1 ]
Perez, Ruth M. [2 ]
Mazumdar, Debesh [3 ]
Pasupathy, Kalyan S. [4 ]
Nilakantan, Vani [2 ]
机构
[1] Univ Wisconsin, Dept Hlth Informat & Adm, Milwaukee, WI 53211 USA
[2] Aurora Hlth Care, Aurora Res Inst, Patient Ctr Res, Milwaukee, WI 53233 USA
[3] Milwaukee Kidney Associates, Milwaukee, WI 53212 USA
[4] Mayo Clin, Div Hlth Care Policy & Res, Robert D & Patricia E Kern Ctr Sci Hlth Care Deli, Rochester, MN 55902 USA
关键词
Acute kidney injury (AKI); Prediction; Detection; Machine learning; Modeling; Elderly; ACUTE-RENAL-FAILURE; CROSS-VALIDATION; BYPASS SURGERY; RISK; MORTALITY; SCORE; AKI;
D O I
10.1186/s12911-016-0277-4
中图分类号
R-058 [];
学科分类号
摘要
Background: Acute Kidney Injury (AKI) occurs in at least 5 % of hospitalized patients and can result in 40-70 % morbidity and mortality. Even following recovery, many subjects may experience progressive deterioration of renal function. The heterogeneous etiology and pathophysiology of AKI complicates its diagnosis and medical management and can add to poor patient outcomes and incur substantial hospital costs. AKI is predictable and may be avoidable if early risk factors are identified and utilized in the clinical setting. Timely detection of undiagnosed AKI in hospitalized patients can also lead to better disease management. Methods: Data from 25,521 hospital stays in one calendar year of patients 60 years and older was collected from a large health care system. Four machine learning models (logistic regression, support vector machines, decision trees and naive Bayes) along with their ensemble were tested for AKI prediction and detection tasks. Patient demographics, laboratory tests, medications and comorbid conditions were used as the predictor variables. The models were compared using the area under ROC curve (AUC) evaluation metric. Results: Logistic regression performed the best for AKI detection (AUC 0.743) and was a close second to the ensemble for AKI prediction (AUC ensemble: 0.664, AUC logistic regression: 0.660). History of prior AKI, use of combination drugs such as ACE inhibitors, NSAIDS and diuretics, and presence of comorbid conditions such as respiratory failure were found significant for both AKI detection and risk prediction. Conclusions: The machine learning models performed fairly well on both predicting AKI and detecting undiagnosed AKI. To the best of our knowledge, this is the first study examining the difference between prediction and detection of AKI. The distinction has clinical relevance, and can help providers either identify at risk subjects and implement preventative strategies or manage their treatment depending on whether AKI is predicted or detected.
引用
收藏
页数:11
相关论文
共 26 条
[1]  
[Anonymous], 2014, Evaluating Learning Algorithms A Classification Perspective, DOI DOI 10.1017/CBO9780511921803
[2]   Acute kidney injury, mortality, length of stay, and costs in hospitalized patients [J].
Chertow, GM ;
Burdick, E ;
Honour, M ;
Bonventre, JV ;
Bates, DW .
JOURNAL OF THE AMERICAN SOCIETY OF NEPHROLOGY, 2005, 16 (11) :3365-3370
[3]   Acute Respiratory Distress Syndrome and Risk of AKI among Critically Ill Patients [J].
Darmon, Michael ;
Clec'h, Christophe ;
Adrie, Christophe ;
Argaud, Laurent ;
Allaouchiche, Bernard ;
Azoulay, Elie ;
Bouadma, Lila ;
Garrouste-Orgeas, Maite ;
Haouache, Hakim ;
Schwebel, Carole ;
Goldgran-Toledano, Dany ;
Khallel, Hatem ;
Dumenil, Anne-Sylvie ;
Jamali, Samir ;
Souweine, Bertrand ;
Zeni, Fabrice ;
Cohen, Yves ;
Timsit, Jean-Francois .
CLINICAL JOURNAL OF THE AMERICAN SOCIETY OF NEPHROLOGY, 2014, 9 (08) :1347-1353
[4]   Ensemble methods in machine learning [J].
Dietterich, TG .
MULTIPLE CLASSIFIER SYSTEMS, 2000, 1857 :1-15
[5]   Combined use of nonsteroidal anti-inflammatory drugs with diuretics and/or renin-angiotensin system inhibitors in the community increases the risk of acute kidney injury [J].
Dreischulte, Tobias ;
Morales, Daniel R. ;
Bell, Samira ;
Guthrie, Bruce .
KIDNEY INTERNATIONAL, 2015, 88 (02) :396-403
[6]   Prediction of acute renal failure after cardiac surgery: retrospective cross-validation of a clinical algorithm [J].
Eriksen, BO ;
Hoff, KRS ;
Solberg, S .
NEPHROLOGY DIALYSIS TRANSPLANTATION, 2003, 18 (01) :77-81
[7]   Predicting acute renal failure after coronary bypass surgery: Cross-validation of two risk-stratification algorithms [J].
Fortescue, EB ;
Bates, DW ;
Chertow, GM .
KIDNEY INTERNATIONAL, 2000, 57 (06) :2594-2602
[8]   Risk of acute renal failure in patients with Type 2 diabetes mellitus [J].
Girman, C. J. ;
Kou, T. D. ;
Brodovicz, K. ;
Alexander, C. M. ;
O'Neill, E. A. ;
Engel, S. ;
Williams-Herman, D. E. ;
Katz, L. .
DIABETIC MEDICINE, 2012, 29 (05) :614-621
[9]   The assessment, serial evaluation, and subsequent sequelae of acute kidney injury (ASSESS-AKI) study: design and methods [J].
Go, Alan S. ;
Parikh, Chirag R. ;
Ikizler, T. Alp ;
Coca, Steven ;
Siew, Edward D. ;
Chinchilli, Vernon M. ;
Hsu, Chi-yuan ;
Garg, Amit X. ;
Zappitelli, Michael ;
Liu, Kathleen D. ;
Reeves, W. Brian ;
Ghahramani, Nasrollah ;
Devarajan, Prasad ;
Faulkner, Georgia Brown ;
Tan, Thida C. ;
Kimmel, Paul L. ;
Eggers, Paul ;
Stokes, John B. .
BMC NEPHROLOGY, 2010, 11
[10]  
Hall M., 2009, SIGKDD EXPLORATIONS, V11, P10, DOI [DOI 10.1145/1656274.1656278, 10.1145/1656274.1656278]