AI Article Synopsis

  • The study aimed to create a machine learning model that can identify subscapularis tears prior to surgery using imaging and physical exam data.
  • Between 2010 and 2020, data from 202 shoulder surgeries were analyzed, focusing on various examination and imaging findings related to rotator cuff repairs.
  • The model showed impressive accuracy (85%) in predicting these tears based solely on MRI results, highlighting specific MRI characteristics as the most important indicators without significant improvement from other clinical data.

Article Abstract

Purpose: To develop a machine learning model capable of identifying subscapularis tears before surgery based on imaging and physical examination findings.

Methods: Between 2010 and 2020, 202 consecutive shoulders underwent arthroscopic rotator cuff repair by a single surgeon. Patient demographics, physical examination findings (including range of motion, weakness with internal rotation, lift/push-off test, belly press test, and bear hug test), and imaging (including direct and indirect signs of tearing, biceps status, fatty atrophy, cystic changes, and other similar findings) were included for model creation.

Results: Sixty percent of the shoulders had partial or full thickness tears of the subscapularis verified during surgery (83% of these were upper third). Using only preoperative imaging-related parameters, the XGBoost model demonstrated excellent performance at predicting subscapularis tears (c-statistic, 0.84; accuracy, 0.85; F1 score, 0.87). The top 5 features included direct signs related to the presence of tearing as evidenced on magnetic resonance imaging (MRI) (changes in tendon morphology and signal), as well as the quality of the MRI and biceps pathology.

Conclusions: In this study, machine learning was successful in predicting subscapularis tears by MRI alone in 85% of patients, and this accuracy did not decrease by isolating the model to the top features. The top five features included direct signs related to the presence of tearing as evidenced on MRI (changes in tendon morphology and signal), as well as the quality of the MRI and biceps pathology. Last, in advanced modeling, the addition of physical examination or patient characteristics did not make a significant difference in the predictive ability of this model.

Level Of Evidence: Level III, diagnostic case-control study.

Download full-text PDF

Source
http://dx.doi.org/10.1016/j.arthro.2023.08.084DOI Listing

Publication Analysis

Top Keywords

subscapularis tears
16
machine learning
12
predicting subscapularis
12
physical examination
12
top features
12
learning model
8
excellent performance
8
performance predicting
8
features included
8
included direct
8

Similar Publications

Tearing of the subscapularis tendon is a common shoulder injury that typically requires arthroscopic repair. The suture-passing device is a standard tool for repairing the subscapularis tendon. However, it poses the risk of device breakage and may cause additional damage to the tendon.

View Article and Find Full Text PDF

Rotator cuff tears are a common cause of shoulder pain and dysfunction. Recent and historical reports suggest that a sizable percentage of patients may experience a retear of the rotator cuff despite surgical intervention. Multiple biological and mechanical factors can influence outcomes after rotator cuff surgery, including patient age, rotator cuff tear size, chronicity, and rotator cuff tissue quality.

View Article and Find Full Text PDF

Lower trapezius tendon transfer is a surgical procedure that has become increasingly popular in recent years. The biggest advantage of this method is that the pulling direction of the lower trapezius is the same as that of the infraspinatus. Thus, the transferred lower trapezius tendon can biomechanically mimic the functions of the posterior-superior rotator cuff.

View Article and Find Full Text PDF

In terms of rotator cuff repair, there is a goal for complete repair and healing, as rotator cuff integrity correlates with clinical and functional results. Retear has been shown to have a significant influence on progression toward osteoarthritis, and patients with an intact supraspinatus show superior abduction and flexion strength. However, in cases where complete repair may not be possible and/or cost limitations may prohibit augmentation, partial repair can provide a respectable outcome.

View Article and Find Full Text PDF

Background: Firefighters are routinely exposed to significant work-related musculoskeletal disorders (WRMSDs) which can sometimes be career-ending due to the workplace stressors and the physical demands of the job. Shoulder disorders are the third most frequent WRMSDs that cause pain, disability, and morbidity in the general working population. However, little is known about the task-specific causes and risk factors for work-related shoulder disorders (WSDs) among firefighters (FFs).

View Article and Find Full Text PDF

Want AI Summaries of new PubMed Abstracts delivered to your In-box?

Enter search terms and have AI summaries delivered each week - change queries or unsubscribe any time!