Abstract

ObjectivesRotator cuff tear is a common cause of shoulder diseases. Correct diagnosis of rotator cuff tears can save patients from further invasive, costly and painful tests. This study used predictive data mining and Bayesian theory to improve the accuracy of diagnosing rotator cuff tears by clinical examination alone.MethodsIn this retrospective study, 169 patients who had a preliminary diagnosis of rotator cuff tear on the basis of clinical evaluation followed by confirmatory MRI between 2007 and 2011 were identified. MRI was used as a reference standard to classify rotator cuff tears. The predictor variable was the clinical assessment results, which consisted of 16 attributes. This study employed 2 data mining methods (ANN and the decision tree) and a statistical method (logistic regression) to classify the rotator cuff diagnosis into “tear” and “no tear” groups. Likelihood ratio and Bayesian theory were applied to estimate the probability of rotator cuff tears based on the results of the prediction models.ResultsOur proposed data mining procedures outperformed the classic statistical method. The correction rate, sensitivity, specificity and area under the ROC curve of predicting a rotator cuff tear were statistical better in the ANN and decision tree models compared to logistic regression. Based on likelihood ratios derived from our prediction models, Fagan's nomogram could be constructed to assess the probability of a patient who has a rotator cuff tear using a pretest probability and a prediction result (tear or no tear).ConclusionsOur predictive data mining models, combined with likelihood ratios and Bayesian theory, appear to be good tools to classify rotator cuff tears as well as determine the probability of the presence of the disease to enhance diagnostic decision making for rotator cuff tears.

Highlights

  • The rotator cuff consists of 4 muscles and their tendons that stabilize the shoulder joint

  • We developed and compared 3 predictive models (ANN, logistic regression, and decision tree) used to classify rotator cuff tears based on patient demographics, symptom history, and physical examination results

  • The correction rate, sensitivity, and specificity of predicting a rotator cuff tear were statistical better in the artificial neural networks (ANNs) and decision tree models compared to logistic regression

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Summary

Introduction

The rotator cuff consists of 4 muscles and their tendons that stabilize the shoulder joint. Rotator cuff injury, including tendon impingement or a tear, is a common source of shoulder pain, accounting for approximately 50% of major shoulder injuries [1,2]. Patients who report shoulder pain and are diagnosed with a rotator cuff tear may require aggressive treatment or surgical intervention [4]. A rotator cuff tear is diagnosed using clinical examination and imaging tests. A preliminary diagnosis can be obtained by assessing the shoulder for tendon weakness and rotational ability [1]. The gold standard for the diagnosis of a rotator cuff tear is a double contrast arthrogram, which has 86%

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