Prediction Model for the Risk of Scapular Winging in Young Women Based on the Decision Tree

Gyeong-tae Gwak, Sun-hee Ahn, Jun-hee Kim, Young-soo Weon, O. Kwon
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引用次数: 4

Abstract

Background: Scapular winging (SW) could be caused by tightness or weakness of the periscapular muscles. Although data mining techniques are useful in classifying or predicting risk of musculoskeletal disorder, predictive models for risk of musculoskeletal disorder using the results of clinical test or quantitative data are scarce. Objects: This study aimed to (1) investigate the difference between young women with and without SW, (2) establish a predictive model for presence of SW, and (3) determine the cutoff value of each variable for predicting the risk of SW using the decision tree method. Methods: Fifty young female subjects participated in this study. To classify the presence of SW as the outcome variable, scapular protractor strength, elbow flexor strength, shoulder internal rotation, and whether the scapula is in the dominant or nondominant side were determined. Results: The classification tree selected scapular protractor strength, shoulder internal rotation range of motion, and whether the scapula is in the dominant or nondominant side as predictor variables. The classification tree model correctly classified 78.79% (p = 0.02) of the training data set. The accuracy obtained by the classification tree on the test data set was 82.35% (p = 0.04). Conclusion: The classification tree showed acceptable accuracy (82.35%) and high specificity (95.65%) but low sensitivity (54.55%). Based on the predictive model in this study, we suggested that 20% of body weight in scapular protractor strength is a meaningful cutoff value for presence of SW.
基于决策树的年轻女性肩胛骨翅的风险预测模型
背景:肩胛骨翅(SW)可能是由肩胛周围肌肉的紧绷或无力引起的。尽管数据挖掘技术在分类或预测肌肉骨骼疾病风险方面很有用,但使用临床试验结果或定量数据的肌肉骨骼疾病风险预测模型很少。目的:本研究的目的是(1)研究年轻女性患有和不患有SW的差异,(2)建立SW存在的预测模型,(3)利用决策树方法确定预测SW风险的各个变量的截止值。方法:50名年轻女性受试者参与本研究。为了将SW的存在分类为结果变量,我们确定了肩胛骨量角器强度、肘关节屈肌强度、肩部内旋以及肩胛骨是在优势侧还是非优势侧。结果:分类树选择肩胛骨量角器强度、肩部内旋运动范围、肩胛骨是否在优势侧或非优势侧作为预测变量。分类树模型对训练数据集的正确率为78.79% (p = 0.02)。分类树在测试数据集上得到的准确率为82.35% (p = 0.04)。结论:该分类树具有良好的准确率(82.35%)和高特异性(95.65%),但敏感性较低(54.55%)。根据本研究的预测模型,我们认为肩胛骨量角器强度为体重的20%是一个有意义的SW存在的临界值。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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