Literature DB >> 34048288

Effect of Preoperative Imaging and Patient Factors on Clinically Meaningful Outcomes and Quality of Life After Osteochondral Allograft Transplantation: A Machine Learning Analysis of Cartilage Defects of the Knee.

Prem N Ramkumar1, Jaret M Karnuta1, Heather S Haeberle1,2, 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 restoration technique involves the single-stage implantation of viable, mature hyaline cartilage into a chondral or osteochondral lesion. The extent to which preoperative imaging and patient factors predict achieving clinically meaningful outcomes among patients undergoing OCA for cartilage lesions of the knee remains unknown.
PURPOSE: To determine the predictive relationship of preoperative imaging, preoperative patient-reported outcome measures (PROMs), and patient demographics with achievement of the minimal clinically important difference (MCID) and substantial clinical benefit (SCB) for functional and quality-of-life PROMs at 2 years after OCA for symptomatic cartilage defects of the knee. STUDY
DESIGN: Case-control study; Level of evidence, 3.
METHODS: Data were analyzed for patients who underwent OCA before May 1, 2018, by 2 high-volume fellowship-trained cartilage surgeons. The International Knee Documentation Committee (IKDC) subjective form, Knee Outcome Survey-Activities of Daily Living (KOS-ADL), and mental and physical component summaries of the SF-36 were administered preoperatively and at 2 years postoperatively. A total of 42 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. Data inputted into the models included sex, age, body mass index, baseline PROMs, lesion size, concomitant ligamentous or meniscal tear, and presence of "bone bruise" or osseous edema. Shapley additive explanations plot 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, 153 (83%) had 2-year follow-up. Preoperative magnetic resonance imaging (MRI), baseline PROMs, and patient demographics best predicted reaching the 2-year MCID and SCB of the IKDC and KOS-ADL PROMs, with areas under the receiver operating characteristic curve of the top-performing models ranging from good (0.88) to excellent (0.91). MRI faired poorly (areas under the curve, 0.60-0.68) in predicting the MCID for the mental and physical component summaries. Higher body mass index, knee malalignment, absence of preoperative osseous edema, concomitant anterior cruciate ligament or meniscal injury, larger defect size, and the implantation of >1 OCA graft were consistent findings contributing to failure to achieve the MCID or SCB at 2 years postoperatively.
CONCLUSION: Our machine learning models demonstrated that preoperative MRI, baseline PROMs, and patient demographics reliably predict the ability to reach clinically meaningful thresholds for functional knee outcomes 2 years after OCA for cartilage defects. Although clinical improvement in knee function can be reliably predicted, improvements in quality of life after OCA depend on a comprehensive preoperative assessment of the patient's perception of his or her mental and physical health. Absence of osseous edema, concomitant anterior cruciate ligament or meniscal injury, larger lesion size on MRI, knee malalignment, and elevated body mass index are predictive of failure to achieve 2-year functional benefits after OCA of the knee.

Entities:  

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

Year:  2021        PMID: 34048288     DOI: 10.1177/03635465211015179

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.  Estimating Health-Related Quality of Life Based on Demographic Characteristics, Questionnaires, Gait Ability, and Physical Fitness in Korean Elderly Adults.

Authors:  Myeounggon Lee; Yoonjae Noh; Changhong Youm; Sangjin Kim; Hwayoung Park; Byungjoo Noh; Bohyun Kim; Hyejin Choi; Hyemin Yoon
Journal:  Int J Environ Res Public Health       Date:  2021-11-11       Impact factor: 3.390

Review 3.  Integrins, cadherins and channels in cartilage mechanotransduction: perspectives for future regeneration strategies.

Authors:  Martin Philipp Dieterle; Ayman Husari; Bernd Rolauffs; Thorsten Steinberg; Pascal Tomakidi
Journal:  Expert Rev Mol Med       Date:  2021-10-27       Impact factor: 5.600

  3 in total

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