Literature DB >> 34761306

Machine learning models accurately predict recurrent infection following revision total knee arthroplasty for periprosthetic joint infection.

Christian Klemt1, Samuel Laurencin1, Akachimere Cosmas Uzosike1, Jillian C Burns1, Timothy G Costales1, Ingwon Yeo1, Yasamin Habibi1, Young-Min Kwon2.   

Abstract

PURPOSE: This study aimed to develop and validate machine-learning models for the prediction of recurrent infection in patients following revision total knee arthroplasty for periprosthetic joint infection.
METHODS: A total of 618 consecutive patients underwent revision total knee arthroplasty for periprosthetic joint infection. The patient cohort included 165 patients with confirmed recurrent periprosthetic joint infection (PJI). Potential risk factors including patient demographics and surgical characteristics served as input to three machine-learning models which were developed to predict recurrent periprosthetic joint. The machine-learning models were assessed by discrimination, calibration and decision curve analysis.
RESULTS: The factors most significantly associated with recurrent PJI in patients following revision total knee arthroplasty for PJI included irrigation and debridement with/without modular component exchange (p < 0.001), > 4 prior open surgeries (p < 0.001), metastatic disease (p < 0.001), drug abuse (p < 0.001), HIV/AIDS (p < 0.01), presence of Enterococcus species (p < 0.01) and obesity (p < 0.01). The machine-learning models all achieved excellent performance across discrimination (AUC range 0.81-0.84).
CONCLUSION: This study developed three machine-learning models for the prediction of recurrent infections in patients following revision total knee arthroplasty for periprosthetic joint infection. The strongest predictors were previous irrigation and debridement with or without modular component exchange and prior open surgeries. The study findings show excellent model performance, highlighting the potential of these computational tools in quantifying increased risks of recurrent PJI to optimize patient outcomes. LEVEL OF EVIDENCE: IV.
© 2021. The Author(s) under exclusive licence to European Society of Sports Traumatology, Knee Surgery, Arthroscopy (ESSKA).

Entities:  

Keywords:  Artificial intelligence; Machine learning; Periprosthetic joint infection; Revision total knee arthroplasty; Risk factors

Mesh:

Year:  2021        PMID: 34761306     DOI: 10.1007/s00167-021-06794-3

Source DB:  PubMed          Journal:  Knee Surg Sports Traumatol Arthrosc        ISSN: 0942-2056            Impact factor:   4.114


  4 in total

1.  Predicting surgical operative time in primary total knee arthroplasty utilizing machine learning models.

Authors:  Ingwon Yeo; Christian Klemt; Christopher M Melnic; Meghan H Pattavina; Bruna M Castro De Oliveira; Young-Min Kwon
Journal:  Arch Orthop Trauma Surg       Date:  2022-08-22       Impact factor: 2.928

Review 2.  Current understanding on artificial intelligence and machine learning in orthopaedics - A scoping review.

Authors:  Vishal Kumar; Sandeep Patel; Vishnu Baburaj; Aditya Vardhan; Prasoon Kumar Singh; Raju Vaishya
Journal:  J Orthop       Date:  2022-08-26

3.  Artificial intelligence algorithms accurately predict prolonged length of stay following revision total knee arthroplasty.

Authors:  Christian Klemt; Venkatsaiakhil Tirumala; Ameen Barghi; Wayne Brian Cohen-Levy; Matthew Gerald Robinson; Young-Min Kwon
Journal:  Knee Surg Sports Traumatol Arthrosc       Date:  2022-01-31       Impact factor: 4.114

4.  Machine learning algorithms predict within one size of the final implant ultimately used in total knee arthroplasty with good-to-excellent accuracy.

Authors:  Kyle N Kunze; Evan M Polce; Arpan Patel; P Maxwell Courtney; Scott M Sporer; Brett R Levine
Journal:  Knee Surg Sports Traumatol Arthrosc       Date:  2022-01-13       Impact factor: 4.114

  4 in total

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