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首页> 外文期刊>Orthopaedic Journal of Sports Medicine >Streamlining the KOOS Activities of Daily Living Subscale Using Machine Learning
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Streamlining the KOOS Activities of Daily Living Subscale Using Machine Learning

机译:使用机器学习精简日常生活船只的KOOS活动

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Background: Functional outcome scores provide valuable data, yet they can be burdensome to patients and require significant resources to administer. The Knee injury and Osteoarthritis Outcome Score (KOOS) is a knee-specific patient-reported outcome measure (PROM) and is validated for anterior cruciate ligament (ACL) reconstruction outcomes. The KOOS requires 42 questions in 5 subscales. We utilized a machine learning (ML) algorithm to determine whether the number of questions and the resultant burden to complete the survey can be lowered in a subset (activities of daily living; ADL) of KOOS, yet still provide identical data. Hypothesis: Fewer questions than the 17 currently provided are actually needed to predict KOOS ADL subscale scores with high accuracy. Study Design: Cohort study (diagnosis); Level of evidence, 2. Methods: Pre- and postoperative patient-reported KOOS ADL scores were obtained from the Surgical Outcome System (SOS) data registry for patients who had ACL reconstruction. Categorical Boosting (CatBoost) ML models were built to analyze each question and its value in predicting the patient’s actual functional outcome (ie, KOOS ADL score). A streamlined set of minimal essential questions were then identified. Results: The SOS registry contained 6185 patients who underwent ACL reconstruction. A total of 2525 patients between the age of 16 and 50 years had completed KOOS ADL scores presurgically and 3 months postoperatively. The data set consisted of 51.84% male patients and 48.16% female patients, with a mean age of 29 years. The CatBoost model predicted KOOS ADL scores with high accuracy when only 6 questions were asked ( R ~(2) = 0.95), similar to when all 17 questions of the subscale were asked ( R ~(2) = 0.99). Conclusion: ML algorithms successfully identified the essential questions in the KOOS ADL questionnaire. Only 35% (6/17) of KOOS ADL questions (descending stairs, ascending stairs, standing, walking on flat surface, putting on socks/stockings, and getting on/off toilet) are needed to predict KOOS ADL scores with high accuracy after ACL reconstruction. ML can be utilized successfully to streamline the burden of patient data collection. This, in turn, can potentially lead to improved patient reporting, increased compliance, and increased utilization of PROMs while still providing quality data.
机译:背景:功能结果评分提供有价值的数据,但它们可能对患者繁重,并需要大量资源来管理。膝关节损伤和骨关节炎结果评分(KOOS)是膝关节患者报告的结果测量(PROM),并验证了前十字韧带(ACL)重建结果。 KOOS在5个分量处需要42个问题。我们利用机器学习(ML)算法来确定问题的数量和完成调查的负担可以降低KOO的子集(日常生活活动; ADL),但仍然提供相同的数据。假设:实际上需要比目前提供的17个问题更少,以预测高精度的KOOS ADL次码分数。研究设计:队列研究(诊断);证据水平,2.方法:术后患者报告的KOOS ADL评分是从手术结果系统(SOS)数据登记处获得,用于接受ACL重建的患者。构建了分类升压(CATBoost)ML模型以分析每个问题及其价值,以预测患者的实际功能结果(即KOOS ADL得分)。然后确定了一种简化的一系列最小基本问题。结果:SOS注册表含有6185名接受ACL重建的患者。共有2525岁和50岁之间的患者在术前和3个月内完成了Koos ADL分数。数据集由51.84%的男性患者和48.16%的女性患者组成,平均年龄为29岁。当仅提出6个问题时,Catboost模型预测了KOOS ADL评分(R〜(2)= 0.95),类似于当询问的所有17个问题时(R〜(2)= 0.99)。结论:ML算法成功地确定了KOOS ADL问卷中的基本问题。只需要35%(6/17)KOOS ADL问题(下楼梯,升降楼梯,站立,在平坦的表面上行走,穿上袜子/丝袜,并在袜子/丝袜上行驶,并上厕所)以预测KOOS ADL以后高精度ACL重建。可以成功利用ML来简化患者数据收集的负担。反过来,这可能导致改善患者报告,增加的遵守情况,并在仍提供质量数据的同时增加竞争对手的利用率。

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