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 inKnee surgery, sports traumatology, arthroscopy : official journal of the ESSKA Vol. 30; no. 2; pp. 545 - 554
Main Authors Ko, Sunho, Jo, Changwung, Chang, Chong Bum, Lee, Yong Seuk, Moon, Young-Wan, Youm, Jae woo, Han, Hyuk-Soo, Lee, Myung Chul, Lee, Hajeong, Ro, Du Hyun
Format Journal Article
LanguageEnglish
Published Berlin/Heidelberg Springer Berlin Heidelberg 01.02.2022
John Wiley & Sons, Inc
Subjects
Online AccessGet full text
ISSN0942-2056
1433-7347
1433-7347
DOI10.1007/s00167-020-06258-0

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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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  givenname: Sunho
  surname: Ko
  fullname: Ko, Sunho
  organization: Seoul National University College of Medicine
– sequence: 2
  givenname: Changwung
  surname: Jo
  fullname: Jo, Changwung
  organization: Seoul National University College of Medicine
– sequence: 3
  givenname: Chong Bum
  surname: Chang
  fullname: Chang, Chong Bum
  organization: Department of Orthopedic Surgery, Seoul National University Bundang Hospital
– sequence: 4
  givenname: Yong Seuk
  surname: Lee
  fullname: Lee, Yong Seuk
  organization: Department of Orthopedic Surgery, Seoul National University Bundang Hospital
– sequence: 5
  givenname: Young-Wan
  surname: Moon
  fullname: Moon, Young-Wan
  organization: Department of Orthopedic Surgery, Samsung Medical Center
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  givenname: Jae woo
  surname: Youm
  fullname: Youm, Jae woo
  organization: Department of Orthopedic Surgery, Samsung Medical Center
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  fullname: Han, Hyuk-Soo
  organization: Department of Orthopedic Surgery, Seoul National University Hospital
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  givenname: Myung Chul
  surname: Lee
  fullname: Lee, Myung Chul
  organization: Department of Orthopedic Surgery, Seoul National University Hospital
– sequence: 9
  givenname: Hajeong
  surname: Lee
  fullname: Lee, Hajeong
  organization: Department of Internal Medicine, Seoul National University Hospital
– sequence: 10
  givenname: Du Hyun
  orcidid: 0000-0001-6199-908X
  surname: Ro
  fullname: Ro, Du Hyun
  email: duhyunro@gmail.com
  organization: Department of Orthopedic Surgery, Seoul National University Hospital
BackLink https://www.ncbi.nlm.nih.gov/pubmed/32880677$$D View this record in MEDLINE/PubMed
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ContentType Journal Article
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.
Copyright_xml – notice: European Society of Sports Traumatology, Knee Surgery, Arthroscopy (ESSKA) 2020
– notice: 2020. European Society of Sports Traumatology, Knee Surgery, Arthroscopy (ESSKA).
– notice: 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
Language English
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2020. European Society of Sports Traumatology, Knee Surgery, Arthroscopy (ESSKA).
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PublicationTitle Knee surgery, sports traumatology, arthroscopy : official journal of the ESSKA
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Snippet Purpose 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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