Using support vector machines to optimally classify rotator cuff strength data and quantify post-operative strength in rotator cuff tear patients

Aaron E. Silver, Matthew P. Lungren, Marjorie E. Johnson, Shawn W. O'Driscoll, Kai Nan An, Richard E. Hughes

研究成果: Article同行評審

10 引文 斯高帕斯(Scopus)

摘要

Shoulder strength data are important for post-operative assessment of shoulder function and have been used in diagnosis of rotator cuff pathology. Support vector machines (SVM) employ complex analysis techniques to solve classification and regression problems. A SVM, a machine learning technique, can be used for analysis and classification of shoulder strength data. The goals of this study were to determine the diagnostic competency of SVM based on shoulder strength data and to apply SVM analysis in efforts to derive a single representative shoulder strength score. Data were taken from fourteen isometric shoulder strength measurements of each shoulder (involved and uninvolved) in 45 rotator cuff tear patients. SVM diagnostic proficiency was found to be comparable to reported ultrasound values. Improvement of shoulder function was accurately represented by a single score in pairwise comparison of the pre-operative and the 12 month post-operative group (P<0.004). Thus, the SVM-based score may be a promising metric for summarizing rotator cuff strength data.

原文English
頁(從 - 到)973-979
頁數7
期刊Journal of Biomechanics
39
發行號5
DOIs
出版狀態Published - 2006

All Science Journal Classification (ASJC) codes

  • 生物物理學
  • 生物醫學工程
  • 骨科和運動醫學
  • 復健

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