Literature DB >> 33555931

Association Between Preoperative Mental Health and Clinically Meaningful Outcomes After Osteochondral Allograft for Cartilage Defects of the Knee: A Machine Learning Analysis.

Prem N Ramkumar1, Jaret M Karnuta1, Heather S Haeberle1,2, Kwadwo A Owusu-Akyaw2, Tyler S Warner2, Scott A Rodeo2, Benedict U Nwachukwu2, Riley J Williams2.   

Abstract

BACKGROUND: Fresh osteochondral allograft transplantation (OCA) is an effective method of treating symptomatic cartilage defects of the knee. This cartilage restoration technique involves the single-stage implantation of viable, mature hyaline cartilage into the chondral or osteochondral lesion. Predictive models for reaching the clinically meaningful outcome among patients undergoing OCA for cartilage lesions of the knee remain under investigation.
PURPOSE: To apply machine learning to determine which preoperative variables are predictive for achieving the minimal clinically important difference (MCID) and substantial clinical benefit (SCB) at 1 and 2 years after OCA for cartilage lesions of the knee. STUDY
DESIGN: Case-control study; Level of evidence, 3.
METHODS: Data were analyzed for patients who underwent OCA of the knee by 2 high-volume fellowship-trained cartilage surgeons before May 1, 2018. The International Knee Documentation Committee questionnaire (IKDC), Knee Outcome Survey-Activities of Daily Living (KOS-ADL), and Mental Component (MCS) and Physical Component (PCS) Summaries of the 36-Item Short Form Health Survey (SF-36) were administered preoperatively and at 1 and 2 years postoperatively. A total of 84 predictive models were created using 7 unique architectures to detect achievement of the MCID for each of the 4 outcome measures and the SCB for the IKDC and KOS-ADL at both time points. Data inputted into the models included previous and concomitant surgical history, laterality, sex, age, body mass index (BMI), intraoperative findings, and patient-reported outcome measures (PROMs). Shapley Additive Explanations (SHAP) analysis identified predictors of reaching the MCID and SCB.
RESULTS: Of the 185 patients who underwent OCA for the knee and met eligibility criteria from an institutional cartilage registry, 135 (73%) patients were available for the 1-year follow-up and 153 (83%) patients for the 2-year follow-up. In predicting outcomes after OCA in terms of the IKDC, KOS-ADL, MCS, and PCS at 1 and 2 years, areas under the receiver operating characteristic curve (AUCs) of the top-performing models ranged from fair (0.72) to excellent (0.94). Lower baseline mental health (MCS), higher baseline physical health (PCS) and knee function scores (KOS-ADL, IKDC Subjective), lower baseline activity demand (Marx, Cincinnati sports), worse pain symptoms (Cincinnati pain, SF-36 pain), and higher BMI were thematic predictors contributing to failure to achieve the MCID or SCB at 1 and 2 years postoperatively.
CONCLUSION: Our machine learning models were effective in predicting outcomes and elucidating the relationships between baseline factors contributing to achieving the MCID for OCA of the knee. Patients who preoperatively report poor mental health, catastrophize pain symptoms, compensate with higher physical health and knee function, and exhibit lower activity demands are at risk for failing to reach clinically meaningful outcomes after OCA of the knee.

Entities:  

Keywords:  MCID; cartilage; machine learning; osteochondral allograft; outcomes

Mesh:

Year:  2021        PMID: 33555931     DOI: 10.1177/0363546520988021

Source DB:  PubMed          Journal:  Am J Sports Med        ISSN: 0363-5465            Impact factor:   6.202


  3 in total

1.  Artificial intelligence and machine learning: an introduction for orthopaedic surgeons.

Authors:  R Kyle Martin; Christophe Ley; Ayoosh Pareek; Andreas Groll; Thomas Tischer; Romain Seil
Journal:  Knee Surg Sports Traumatol Arthrosc       Date:  2021-09-15       Impact factor: 4.114

2.  Detection of statin-induced rhabdomyolysis and muscular related adverse events through data mining technique.

Authors:  Patratorn Kunakorntham; Oraluck Pattanaprateep; Charungthai Dejthevaporn; Ratchainant Thammasudjarit; Ammarin Thakkinstian
Journal:  BMC Med Inform Decis Mak       Date:  2022-09-05       Impact factor: 3.298

3.  Can minimal clinically important differences in patient reported outcome measures be predicted by machine learning in patients with total knee or hip arthroplasty? A systematic review.

Authors:  Benedikt Langenberger; Andreas Thoma; Verena Vogt
Journal:  BMC Med Inform Decis Mak       Date:  2022-01-20       Impact factor: 2.796

  3 in total

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