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Decision Tree Learning Algorithm for Classifying Knee Injury Status Using Return-to-Activity Criteria

机译:使用活动恢复准则对膝关节损伤状态进行分类的决策树学习算法

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Anterior cruciate ligament (ACL) injury rates in female adolescents are increasing. Irrespective of treatment options, approximately 1/3 will suffer secondary ACL injuries following their return to activity (RTA). Despite this, there are no evidence-informed RTA guidelines to aid clinicians in deciding when this should occur. The first step towards these guidelines is to identify relevant and feasible measures to assess the functional status of these patients. The purpose of this study was therefore to evaluate tests frequently used to assess functional capacity following surgery using a Reduced Error Pruning Tree (REPT). Thirty-six healthy and forty-two ACLinjured adolescent females performed a series of functional tasks. Motion analysis along with spatiotemporal measures were used to extract thirty clinically relevant variables. The REPT reduced these variables down to two limb symmetry measures (maximum anterior hop and maximum lateral hop), capable of classifying injury status between the healthy and ACL injured participants with a 69% sensitivity, 78% specificity and kappa statistic of 0.464. We, therefore, conclude that the REPT model was able to evaluate functional capacity as it relates to injury status in adolescent females. We also recommend considering these variables when developing RTA assessments and guidelines.Clinical Relevance— Our results indicate that spatiotemporal measures may differentiate ACL-injured and healthy female adolescents with moderate confidence using a REPT. The identified tests may reasonably be added to the clinical evaluation process when evaluating functional capacity and readiness to return to activity.
机译:女性青少年的前十字韧带(ACL)损伤率正在增加。无论选择哪种治疗方法,大约有1/3的患者在恢复活动(RTA)后将遭受继发性ACL损伤。尽管如此,目前还没有证据灵通的RTA指南可以帮助临床医生确定何时应该发生这种情况。遵循这些指南的第一步是确定相关且可行的措施,以评估这些患者的功能状态。因此,本研究的目的是使用减少错误修剪树(REPT)评估经常用于评估手术后功能能力的测试。 36例健康受损和42例ACL受损的青春期女性执行了一系列功能性任务。运动分析和时空测量方法被用来提取三十个临床相关变量。 REPT将这些变量减少为两个肢体对称性度量(最大前跳和最大侧跳),能够以69%的敏感性,78%的特异性和0.464的kapp统计量对健康人和ACL受伤参与者之间的损伤状态进行分类。因此,我们得出结论,REPT模型能够评估功能能力,因为它与青春期女性的损伤状态有关。我们还建议在制定RTA评估和指南时考虑这些变量。临床相关性—我们的结果表明,时空测量可以使用REPT以中等置信度区分ACL损伤和健康的女性青少年。在评估功能能力和恢复活动的意愿时,可以将识别出的测试合理地添加到临床评估过程中。

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