A web-based machine-learning algorithm predicting postoperative acute kidney injury after total knee arthroplasty
Purpose Acute kidney injury (AKI) is a deleterious complication after total knee arthroplasty (TKA). The purposes of this study were to identify preoperative risk factors and develop a web-based prediction model for postoperative AKI, and assess how AKI affected the progression to ESRD. Method The s...
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| Published in | Knee surgery, sports traumatology, arthroscopy : official journal of the ESSKA Vol. 30; no. 2; pp. 545 - 554 |
|---|---|
| Main Authors | , , , , , , , , , |
| Format | Journal Article |
| Language | English |
| Published |
Berlin/Heidelberg
Springer Berlin Heidelberg
01.02.2022
John Wiley & Sons, Inc |
| Subjects | |
| Online Access | Get full text |
| ISSN | 0942-2056 1433-7347 1433-7347 |
| DOI | 10.1007/s00167-020-06258-0 |
Cover
| Abstract | Purpose
Acute kidney injury (AKI) is a deleterious complication after total knee arthroplasty (TKA). The purposes of this study were to identify preoperative risk factors and develop a web-based prediction model for postoperative AKI, and assess how AKI affected the progression to ESRD.
Method
The study included 5757 patients treated in three tertiary teaching hospitals. The model was developed using data on 5302 patients from two hospitals and externally validated in 455 patients from the third hospital. Eighteen preoperative variables were collected and feature selection was performed. A gradient boosting machine (GBM) was used to predict AKI. A tenfold-stratified area under the curve (AUC) served as the metric for internal validation. Calibration was performed via isotonic regression and evaluated using a calibration plot. End-stage renal disease (ESRD) was followed up for an average of 41.7 months.
Results
AKI develops in up to 10% of patients undergoing TKA, increasing the risk of progression to ESRD. The ESRD odds ratio of AKI patients (compared to non-AKI patients) was 9.8 (95% confidence interval 4.3–22.4). Six key predictors of postoperative AKI were selected: higher preoperative levels of creatinine in serum, the use of general anesthesia, male sex, a higher ASA class (> 3), use of a renin–angiotensin–aldosterone system inhibitor, and no use of tranexamic acid (all
p
< 0.001). The predictive performance of our model was good (area under the curve 0.78 [95% CI 0.74–0.81] in the developmental cohort and improved in the external validation cohort (0.89). Our model can be accessed at
https://safetka.net
.
Conclusions
A web-based predictive model for AKI after TKA was developed using a machine-learning algorithm featuring six preoperative variables. The model is simple and has been validated to improve both short- and long-term prognoses of TKA patients. Postoperative AKI may lead to ESRD, which surgeons should strive to avoid.
Level of evidence
Diagnostic level II. |
|---|---|
| AbstractList | PurposeAcute kidney injury (AKI) is a deleterious complication after total knee arthroplasty (TKA). The purposes of this study were to identify preoperative risk factors and develop a web-based prediction model for postoperative AKI, and assess how AKI affected the progression to ESRD.MethodThe study included 5757 patients treated in three tertiary teaching hospitals. The model was developed using data on 5302 patients from two hospitals and externally validated in 455 patients from the third hospital. Eighteen preoperative variables were collected and feature selection was performed. A gradient boosting machine (GBM) was used to predict AKI. A tenfold-stratified area under the curve (AUC) served as the metric for internal validation. Calibration was performed via isotonic regression and evaluated using a calibration plot. End-stage renal disease (ESRD) was followed up for an average of 41.7 months.ResultsAKI develops in up to 10% of patients undergoing TKA, increasing the risk of progression to ESRD. The ESRD odds ratio of AKI patients (compared to non-AKI patients) was 9.8 (95% confidence interval 4.3–22.4). Six key predictors of postoperative AKI were selected: higher preoperative levels of creatinine in serum, the use of general anesthesia, male sex, a higher ASA class (> 3), use of a renin–angiotensin–aldosterone system inhibitor, and no use of tranexamic acid (all p < 0.001). The predictive performance of our model was good (area under the curve 0.78 [95% CI 0.74–0.81] in the developmental cohort and improved in the external validation cohort (0.89). Our model can be accessed at https://safetka.net.ConclusionsA web-based predictive model for AKI after TKA was developed using a machine-learning algorithm featuring six preoperative variables. The model is simple and has been validated to improve both short- and long-term prognoses of TKA patients. Postoperative AKI may lead to ESRD, which surgeons should strive to avoid.Level of evidenceDiagnostic level II. Acute kidney injury (AKI) is a deleterious complication after total knee arthroplasty (TKA). The purposes of this study were to identify preoperative risk factors and develop a web-based prediction model for postoperative AKI, and assess how AKI affected the progression to ESRD. The study included 5757 patients treated in three tertiary teaching hospitals. The model was developed using data on 5302 patients from two hospitals and externally validated in 455 patients from the third hospital. Eighteen preoperative variables were collected and feature selection was performed. A gradient boosting machine (GBM) was used to predict AKI. A tenfold-stratified area under the curve (AUC) served as the metric for internal validation. Calibration was performed via isotonic regression and evaluated using a calibration plot. End-stage renal disease (ESRD) was followed up for an average of 41.7 months. AKI develops in up to 10% of patients undergoing TKA, increasing the risk of progression to ESRD. The ESRD odds ratio of AKI patients (compared to non-AKI patients) was 9.8 (95% confidence interval 4.3-22.4). Six key predictors of postoperative AKI were selected: higher preoperative levels of creatinine in serum, the use of general anesthesia, male sex, a higher ASA class (> 3), use of a renin-angiotensin-aldosterone system inhibitor, and no use of tranexamic acid (all p < 0.001). The predictive performance of our model was good (area under the curve 0.78 [95% CI 0.74-0.81] in the developmental cohort and improved in the external validation cohort (0.89). Our model can be accessed at https://safetka.net . A web-based predictive model for AKI after TKA was developed using a machine-learning algorithm featuring six preoperative variables. The model is simple and has been validated to improve both short- and long-term prognoses of TKA patients. Postoperative AKI may lead to ESRD, which surgeons should strive to avoid. Diagnostic level II. Acute kidney injury (AKI) is a deleterious complication after total knee arthroplasty (TKA). The purposes of this study were to identify preoperative risk factors and develop a web-based prediction model for postoperative AKI, and assess how AKI affected the progression to ESRD.PURPOSEAcute kidney injury (AKI) is a deleterious complication after total knee arthroplasty (TKA). The purposes of this study were to identify preoperative risk factors and develop a web-based prediction model for postoperative AKI, and assess how AKI affected the progression to ESRD.The study included 5757 patients treated in three tertiary teaching hospitals. The model was developed using data on 5302 patients from two hospitals and externally validated in 455 patients from the third hospital. Eighteen preoperative variables were collected and feature selection was performed. A gradient boosting machine (GBM) was used to predict AKI. A tenfold-stratified area under the curve (AUC) served as the metric for internal validation. Calibration was performed via isotonic regression and evaluated using a calibration plot. End-stage renal disease (ESRD) was followed up for an average of 41.7 months.METHODThe study included 5757 patients treated in three tertiary teaching hospitals. The model was developed using data on 5302 patients from two hospitals and externally validated in 455 patients from the third hospital. Eighteen preoperative variables were collected and feature selection was performed. A gradient boosting machine (GBM) was used to predict AKI. A tenfold-stratified area under the curve (AUC) served as the metric for internal validation. Calibration was performed via isotonic regression and evaluated using a calibration plot. End-stage renal disease (ESRD) was followed up for an average of 41.7 months.AKI develops in up to 10% of patients undergoing TKA, increasing the risk of progression to ESRD. The ESRD odds ratio of AKI patients (compared to non-AKI patients) was 9.8 (95% confidence interval 4.3-22.4). Six key predictors of postoperative AKI were selected: higher preoperative levels of creatinine in serum, the use of general anesthesia, male sex, a higher ASA class (> 3), use of a renin-angiotensin-aldosterone system inhibitor, and no use of tranexamic acid (all p < 0.001). The predictive performance of our model was good (area under the curve 0.78 [95% CI 0.74-0.81] in the developmental cohort and improved in the external validation cohort (0.89). Our model can be accessed at https://safetka.net .RESULTSAKI develops in up to 10% of patients undergoing TKA, increasing the risk of progression to ESRD. The ESRD odds ratio of AKI patients (compared to non-AKI patients) was 9.8 (95% confidence interval 4.3-22.4). Six key predictors of postoperative AKI were selected: higher preoperative levels of creatinine in serum, the use of general anesthesia, male sex, a higher ASA class (> 3), use of a renin-angiotensin-aldosterone system inhibitor, and no use of tranexamic acid (all p < 0.001). The predictive performance of our model was good (area under the curve 0.78 [95% CI 0.74-0.81] in the developmental cohort and improved in the external validation cohort (0.89). Our model can be accessed at https://safetka.net .A web-based predictive model for AKI after TKA was developed using a machine-learning algorithm featuring six preoperative variables. The model is simple and has been validated to improve both short- and long-term prognoses of TKA patients. Postoperative AKI may lead to ESRD, which surgeons should strive to avoid.CONCLUSIONSA web-based predictive model for AKI after TKA was developed using a machine-learning algorithm featuring six preoperative variables. The model is simple and has been validated to improve both short- and long-term prognoses of TKA patients. Postoperative AKI may lead to ESRD, which surgeons should strive to avoid.Diagnostic level II.LEVEL OF EVIDENCEDiagnostic level II. Purpose Acute kidney injury (AKI) is a deleterious complication after total knee arthroplasty (TKA). The purposes of this study were to identify preoperative risk factors and develop a web-based prediction model for postoperative AKI, and assess how AKI affected the progression to ESRD. Method The study included 5757 patients treated in three tertiary teaching hospitals. The model was developed using data on 5302 patients from two hospitals and externally validated in 455 patients from the third hospital. Eighteen preoperative variables were collected and feature selection was performed. A gradient boosting machine (GBM) was used to predict AKI. A tenfold-stratified area under the curve (AUC) served as the metric for internal validation. Calibration was performed via isotonic regression and evaluated using a calibration plot. End-stage renal disease (ESRD) was followed up for an average of 41.7 months. Results AKI develops in up to 10% of patients undergoing TKA, increasing the risk of progression to ESRD. The ESRD odds ratio of AKI patients (compared to non-AKI patients) was 9.8 (95% confidence interval 4.3–22.4). Six key predictors of postoperative AKI were selected: higher preoperative levels of creatinine in serum, the use of general anesthesia, male sex, a higher ASA class (> 3), use of a renin–angiotensin–aldosterone system inhibitor, and no use of tranexamic acid (all p < 0.001). The predictive performance of our model was good (area under the curve 0.78 [95% CI 0.74–0.81] in the developmental cohort and improved in the external validation cohort (0.89). Our model can be accessed at https://safetka.net . Conclusions A web-based predictive model for AKI after TKA was developed using a machine-learning algorithm featuring six preoperative variables. The model is simple and has been validated to improve both short- and long-term prognoses of TKA patients. Postoperative AKI may lead to ESRD, which surgeons should strive to avoid. Level of evidence Diagnostic level II. |
| Author | Lee, Hajeong Han, Hyuk-Soo Chang, Chong Bum Jo, Changwung Youm, Jae woo Lee, Myung Chul Lee, Yong Seuk Moon, Young-Wan Ro, Du Hyun Ko, Sunho |
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| BackLink | https://www.ncbi.nlm.nih.gov/pubmed/32880677$$D View this record in MEDLINE/PubMed |
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| Cites_doi | 10.2106/JBJS.M.00018 10.1371/journal.pone.0155705 10.1001/jama.2016.0548 10.1016/j.metabol.2017.01.011 10.3390/jcm7100322 10.2106/JBJS.N.01141 10.1038/kisup.2015.3 10.1097/CCM.0000000000003123 10.1136/bmj.h5639 10.1016/j.arth.2015.08.012 10.1007/s00167-019-05602-3 10.1016/j.ccc.2016.12.008 10.1681/ASN.2018070757 10.1308/rcsann.2016.0324 10.7326/0003-4819-122-9-199505010-00011 10.1177/2054358118776326 10.7326/0003-4819-150-9-200905050-00006 10.1038/ki.2011.379 10.1053/j.ajkd.2008.11.034 10.1097/SLA.0000000000000732 10.1155/2017/3762651 10.1681/ASN.2010050442 10.1093/ndtplus/sfn173 10.1007/s00167‐019‐05602‐3 10.1159/000339789 10.7326/0003‐4819‐150‐9‐200905050‐00006 10.7326/0003‐4819‐122‐9‐199505010‐00011 |
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| Copyright | European Society of Sports Traumatology, Knee Surgery, Arthroscopy (ESSKA) 2020 2020. European Society of Sports Traumatology, Knee Surgery, Arthroscopy (ESSKA). European Society of Sports Traumatology, Knee Surgery, Arthroscopy (ESSKA) 2020. |
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| Keywords | End-stage renal disease Total knee arthroplasty Total knee replacement Acute kidney injury Machine learning Prediction |
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| PublicationTitle | Knee surgery, sports traumatology, arthroscopy : official journal of the ESSKA |
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| References | Warth, Noiseux, Hogue, Klaassen, Liu, Callaghan (CR27) 2016; 31 Coca, Yusuf, Shlipak, Garg, Parikh (CR5) 2009; 53 Park, Cho, Park, Lee, Kim, Yoon (CR23) 2019; 30 Ferguson, Winter, Russo, Khan, Hair, MacGregor (CR7) 2017; 99 Maradit Kremers, Larson, Crowson, Kremers, Washington, Steiner (CR20) 2015; 97 Billings, Hendricks, Schildcrout, Shi, Petracek, Byrne (CR3) 2016; 315 Lameire, Van Biesen, Hoste, Vanholder (CR16) 2008; 1 Bell, Dekker, Vadiveloo, Marwick, Deshmukh, Donnan (CR1) 2015; 351 Lameire, van Biesen, Hoste, Vanholder (CR15) 2009; 2 Hobson, Ozrazgat-Baslanti, Kuxhausen, Thottakkara, Efron, Moore (CR9) 2015; 261 Jin (CR11) 2015; 5 Unal (CR26) 2017; 2017 Koyner, Carey, Edelson, Churpek (CR14) 2018; 46 Coca, Singanamala, Parikh (CR4) 2012; 81 Levey, Stevens, Schmid, Zhang, Castro, Feldman (CR19) 2009; 150 Belmont, Goodman, Waterman, Bader, Schoenfeld (CR2) 2014; 96 Hobson, Ruchi, Bihorac (CR10) 2017; 33 Mohamadlou, Lynn-Palevsky, Barton, Chettipally, Shieh, Calvert (CR21) 2018; 5 Hamet, Tremblay (CR8) 2017; 69S Thottakkara, Ozrazgat-Baslanti, Hupf, Rashidi, Pardalos, Momcilovic (CR24) 2016; 11 Lee, Yoon, Yang, Kim, Ryu, Jung (CR18) 2018; 7 Khwaja (CR13) 2012; 120 Jo, Ko, Shin, Han, Lee, Ko (CR12) 2020; 28 Molnar, Coca, Devereaux, Jain, Kitchlu, Luo (CR22) 2011; 22 Lee, Yoon, Nam, Cho, Kim, Kim (CR17) 2018; 7 Edwards, Smith, Herrett, MacGregor, Blom, Ben-Shlomo (CR6) 2018; 3 Tierney, Overhage, McDonald (CR25) 1995; 122 e_1_2_8_27_2 e_1_2_8_28_2 e_1_2_8_23_2 e_1_2_8_24_2 e_1_2_8_25_2 Lameire N (e_1_2_8_17_2) 2008; 1 Lee HC (e_1_2_8_19_2) 2018; 7 e_1_2_8_26_2 e_1_2_8_9_2 e_1_2_8_2_2 e_1_2_8_4_2 e_1_2_8_3_2 e_1_2_8_6_2 Edwards HB (e_1_2_8_7_2) 2018; 3 e_1_2_8_5_2 e_1_2_8_8_2 e_1_2_8_20_2 e_1_2_8_21_2 e_1_2_8_22_2 e_1_2_8_16_2 e_1_2_8_18_2 e_1_2_8_12_2 e_1_2_8_13_2 e_1_2_8_14_2 e_1_2_8_15_2 e_1_2_8_10_2 e_1_2_8_11_2 |
| References_xml | – volume: 96 start-page: 20 year: 2014 end-page: 26 ident: CR2 article-title: Thirty-day postoperative complications and mortality following total knee arthroplasty: incidence and risk factors among a national sample of 15,321 patients publication-title: J Bone Joint Surg Am doi: 10.2106/JBJS.M.00018 – volume: 11 start-page: e0155705 year: 2016 ident: CR24 article-title: Application of machine learning techniques to high-dimensional clinical data to forecast postoperative complications publication-title: PLoS ONE doi: 10.1371/journal.pone.0155705 – volume: 315 start-page: 877 year: 2016 end-page: 888 ident: CR3 article-title: High-dose perioperative atorvastatin and acute kidney injury following cardiac surgery: a randomized clinical trial publication-title: JAMA doi: 10.1001/jama.2016.0548 – volume: 3 start-page: e0042 year: 2018 ident: CR6 article-title: The effect of age, sex, area deprivation, and living arrangements on total knee replacement outcomes: a study involving the united kingdom national joint registry dataset publication-title: J Bone Joint Surg Open Access – volume: 69S start-page: S36 year: 2017 end-page: S40 ident: CR8 article-title: Artificial intelligence in medicine publication-title: Metabolism doi: 10.1016/j.metabol.2017.01.011 – volume: 7 start-page: 322 year: 2018 ident: CR17 article-title: Derivation and validation of machine learning approaches to predict acute kidney injury after cardiac surgery publication-title: J Clin Med doi: 10.3390/jcm7100322 – volume: 97 start-page: 1386 year: 2015 end-page: 1397 ident: CR20 article-title: Prevalence of total hip and knee replacement in the United States publication-title: J Bone Joint Surg Am doi: 10.2106/JBJS.N.01141 – volume: 5 start-page: 8 year: 2015 end-page: 11 ident: CR11 article-title: Dialysis registries in the world: Korean dialysis registry publication-title: Kidney Int Suppl doi: 10.1038/kisup.2015.3 – volume: 46 start-page: 1070 year: 2018 end-page: 1077 ident: CR14 article-title: The development of a machine learning inpatient acute kidney injury prediction model publication-title: Crit Care Med doi: 10.1097/CCM.0000000000003123 – volume: 1 start-page: 392 year: 2008 end-page: 402 ident: CR16 article-title: The prevention of acute kidney injury: an in-depth narrative review Part 1: volume resuscitation and avoidance of drug- and nephrotoxin-induced AKI publication-title: NDT Plus – volume: 120 start-page: c179 year: 2012 end-page: 184 ident: CR13 article-title: KDIGO clinical practice guidelines for acute kidney injury publication-title: Nephron Clin Pract – volume: 351 start-page: h5639 year: 2015 ident: CR1 article-title: Risk of postoperative acute kidney injury in patients undergoing orthopaedic surgery–development and validation of a risk score and effect of acute kidney injury on survival: observational cohort study publication-title: BMJ doi: 10.1136/bmj.h5639 – volume: 31 start-page: 253 year: 2016 end-page: 255 ident: CR27 article-title: Risk of Acute kidney injury after primary and revision total hip arthroplasty and total knee arthroplasty using a multimodal approach to perioperative pain control including ketorolac and celecoxib publication-title: J Arthroplasty doi: 10.1016/j.arth.2015.08.012 – volume: 28 start-page: 1757 year: 2020 end-page: 1764 ident: CR12 article-title: Transfusion after total knee arthroplasty can be predicted using the machine learning algorithm publication-title: Knee Surg Sports Traumatol Arthrosc doi: 10.1007/s00167-019-05602-3 – volume: 33 start-page: 379 year: 2017 end-page: 396 ident: CR10 article-title: Perioperative acute kidney injury: risk factors and predictive strategies publication-title: Crit Care Clin doi: 10.1016/j.ccc.2016.12.008 – volume: 30 start-page: 170 year: 2019 end-page: 181 ident: CR23 article-title: Simple postoperative AKI risk (SPARK) classification before noncardiac surgery: a prediction index development study with external validation publication-title: J Am Soc Nephrol doi: 10.1681/ASN.2018070757 – volume: 99 start-page: 307 year: 2017 end-page: 312 ident: CR7 article-title: Acute kidney injury following primary hip and knee arthroplasty surgery publication-title: Ann R Coll Surg Engl doi: 10.1308/rcsann.2016.0324 – volume: 122 start-page: 725 year: 1995 end-page: 726 ident: CR25 article-title: Toward electronic medical records that improve care publication-title: Ann Intern Med doi: 10.7326/0003-4819-122-9-199505010-00011 – volume: 5 start-page: 1 year: 2018 end-page: 9 ident: CR21 article-title: Prediction of acute kidney injury with a machine learning algorithm using electronic health record data publication-title: Can J Kidney Health Dis doi: 10.1177/2054358118776326 – volume: 7 start-page: 428 year: 2018 ident: CR18 article-title: Prediction of acute kidney injury after liver transplantation: machine learning approaches vs publication-title: Logistic Regression Model J Clin Med – volume: 150 start-page: 604 year: 2009 end-page: 612 ident: CR19 article-title: A new equation to estimate glomerular filtration rate publication-title: Ann Intern Med doi: 10.7326/0003-4819-150-9-200905050-00006 – volume: 81 start-page: 442 year: 2012 end-page: 448 ident: CR4 article-title: Chronic kidney disease after acute kidney injury: a systematic review and meta-analysis publication-title: Kidney Int doi: 10.1038/ki.2011.379 – volume: 53 start-page: 961 year: 2009 end-page: 973 ident: CR5 article-title: Long-term risk of mortality and other adverse outcomes after acute kidney injury: a systematic review and meta-analysis publication-title: Am J Kidney Dis doi: 10.1053/j.ajkd.2008.11.034 – volume: 261 start-page: 1207 year: 2015 end-page: 1214 ident: CR9 article-title: Cost and mortality associated with postoperative acute kidney injury publication-title: Ann Surg doi: 10.1097/SLA.0000000000000732 – volume: 2017 start-page: 1 year: 2017 end-page: 14 ident: CR26 article-title: Defining an optimal cut-point value in ROC analysis: an alternative approach publication-title: Comput Math Methods Med doi: 10.1155/2017/3762651 – volume: 22 start-page: 939 year: 2011 end-page: 946 ident: CR22 article-title: Statin use associates with a lower incidence of acute kidney injury after major elective surgery publication-title: J Am Soc Nephrol doi: 10.1681/ASN.2010050442 – volume: 2 start-page: 1 year: 2009 end-page: 10 ident: CR15 article-title: The prevention of acute kidney injury an in-depth narrative review: Part 2: drugs in the prevention of acute kidney injury publication-title: NDT Plus doi: 10.1093/ndtplus/sfn173 – ident: e_1_2_8_13_2 doi: 10.1007/s00167‐019‐05602‐3 – ident: e_1_2_8_15_2 doi: 10.1097/CCM.0000000000003123 – ident: e_1_2_8_5_2 doi: 10.1038/ki.2011.379 – ident: e_1_2_8_10_2 doi: 10.1097/SLA.0000000000000732 – ident: e_1_2_8_18_2 doi: 10.3390/jcm7100322 – volume: 3 start-page: e0042 year: 2018 ident: e_1_2_8_7_2 article-title: The effect of age, sex, area deprivation, and living arrangements on total knee replacement outcomes: a study involving the united kingdom national joint registry dataset publication-title: J Bone Joint Surg Open Access – ident: e_1_2_8_9_2 doi: 10.1016/j.metabol.2017.01.011 – volume: 1 start-page: 392 year: 2008 ident: e_1_2_8_17_2 article-title: The prevention of acute kidney injury: an in‐depth narrative review Part 1: volume resuscitation and avoidance of drug‐ and nephrotoxin‐induced AKI publication-title: NDT Plus – ident: e_1_2_8_25_2 doi: 10.1371/journal.pone.0155705 – ident: e_1_2_8_4_2 doi: 10.1001/jama.2016.0548 – volume: 7 start-page: 428 year: 2018 ident: e_1_2_8_19_2 article-title: Prediction of acute kidney injury after liver transplantation: machine learning approaches vs publication-title: Logistic Regression Model J Clin Med – ident: e_1_2_8_16_2 doi: 10.1093/ndtplus/sfn173 – ident: e_1_2_8_28_2 doi: 10.1016/j.arth.2015.08.012 – ident: e_1_2_8_27_2 doi: 10.1155/2017/3762651 – ident: e_1_2_8_14_2 doi: 10.1159/000339789 – ident: e_1_2_8_8_2 doi: 10.1308/rcsann.2016.0324 – ident: e_1_2_8_23_2 doi: 10.1681/ASN.2010050442 – ident: e_1_2_8_3_2 doi: 10.2106/JBJS.M.00018 – ident: e_1_2_8_20_2 doi: 10.7326/0003‐4819‐150‐9‐200905050‐00006 – ident: e_1_2_8_21_2 doi: 10.2106/JBJS.N.01141 – ident: e_1_2_8_2_2 doi: 10.1136/bmj.h5639 – ident: e_1_2_8_22_2 doi: 10.1177/2054358118776326 – ident: e_1_2_8_26_2 doi: 10.7326/0003‐4819‐122‐9‐199505010‐00011 – ident: e_1_2_8_6_2 doi: 10.1053/j.ajkd.2008.11.034 – ident: e_1_2_8_11_2 doi: 10.1016/j.ccc.2016.12.008 – ident: e_1_2_8_12_2 doi: 10.1038/kisup.2015.3 – ident: e_1_2_8_24_2 doi: 10.1681/ASN.2018070757 |
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Acute kidney injury (AKI) is a deleterious complication after total knee arthroplasty (TKA). The purposes of this study were to identify preoperative... Acute kidney injury (AKI) is a deleterious complication after total knee arthroplasty (TKA). The purposes of this study were to identify preoperative risk... PurposeAcute kidney injury (AKI) is a deleterious complication after total knee arthroplasty (TKA). The purposes of this study were to identify preoperative... |
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| SubjectTerms | Acute Kidney Injury - diagnosis Acute Kidney Injury - epidemiology Acute Kidney Injury - etiology Aldosterone Algorithms Anesthesia Angiotensin Arthroplasty (knee) Arthroplasty, Replacement, Knee - adverse effects Calibration Confidence intervals Creatinine End-stage renal disease Hospitals Humans Internet Joint replacement surgery Joint surgery Kidney diseases Kidneys Knee Learning algorithms Machine Learning Male Medicine Medicine & Public Health Orthopedics Patients Performance prediction Postoperative Complications - diagnosis Postoperative Complications - epidemiology Postoperative Complications - etiology Postoperative period Prediction models Renin Retrospective Studies Risk analysis Risk Assessment Risk Factors Sports Medicine Statistical analysis |
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| Title | A web-based machine-learning algorithm predicting postoperative acute kidney injury after total knee arthroplasty |
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