Silver Aaron E, Lungren Matthew P, Johnson Marjorie E, O'Driscoll Shawn W, An Kai-Nan, Hughes Richard E
Department of Orthopaedic Surgery, University of Michigan, Orthopaedic Research Laboratories and MedSport, 24 Frank Lloyd Wright Drive, P. O. Box 391, Ann Arbor, MI 48106-0391, USA.
J Biomech. 2006;39(5):973-9. doi: 10.1016/j.jbiomech.2005.01.011.
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.
肩部力量数据对于肩部功能的术后评估很重要,并且已被用于肩袖病理的诊断。支持向量机(SVM)采用复杂的分析技术来解决分类和回归问题。作为一种机器学习技术,支持向量机可用于肩部力量数据的分析和分类。本研究的目的是基于肩部力量数据确定支持向量机的诊断能力,并应用支持向量机分析来得出单一代表性肩部力量评分。数据取自45例肩袖撕裂患者每个肩部(患侧和健侧)的14次等长肩部力量测量。发现支持向量机的诊断能力与报告的超声值相当。在术前组和术后12个月组的成对比较中,单一评分准确地反映了肩部功能的改善(P < 0.004)。因此,基于支持向量机的评分可能是总结肩袖力量数据的一个有前景的指标。