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基于全国髋关节镜检查注册中心的机器学习修正预测模型的临床应用有限。

Limited clinical utility of a machine learning revision prediction model based on a national hip arthroscopy registry.

机构信息

Department of Orthopaedic Surgery, University of Minnesota, 2512 South 7th Street, Suite R200, Minneapolis, MN, 55455, USA.

Department of Orthopaedic Surgery, CentraCare, Saint Cloud, MN, USA.

出版信息

Knee Surg Sports Traumatol Arthrosc. 2023 Jun;31(6):2079-2089. doi: 10.1007/s00167-022-07054-8. Epub 2022 Aug 10.

Abstract

PURPOSE

Accurate prediction of outcome following hip arthroscopy is challenging and machine learning has the potential to improve our predictive capability. The purpose of this study was to determine if machine learning analysis of the Danish Hip Arthroscopy Registry (DHAR) can develop a clinically meaningful calculator for predicting the probability of a patient undergoing subsequent revision surgery following primary hip arthroscopy.

METHODS

Machine learning analysis was performed on the DHAR. The primary outcome for the models was probability of revision hip arthroscopy within 1, 2, and/or 5 years after primary hip arthroscopy. Data were split randomly into training (75%) and test (25%) sets. Four models intended for these types of data were tested: Cox elastic net, random survival forest, gradient boosted regression (GBM), and super learner. These four models represent a range of approaches to statistical details like variable selection and model complexity. Model performance was assessed by calculating calibration and area under the curve (AUC). Analysis was performed using only variables available in the pre-operative clinical setting and then repeated to compare model performance using all variables available in the registry.

RESULTS

In total, 5581 patients were included for analysis. Average follow-up time or time-to-revision was 4.25 years (± 2.51) years and overall revision rate was 11%. All four models were generally well calibrated and demonstrated concordance in the moderate range when restricted to only pre-operative variables (0.62-0.67), and when considering all variables available in the registry (0.63-0.66). The 95% confidence intervals for model concordance were wide for both analyses, ranging from a low of 0.53 to a high of 0.75, indicating uncertainty about the true accuracy of the models.

CONCLUSION

The association between pre-surgical factors and outcome following hip arthroscopy is complex. Machine learning analysis of the DHAR produced a model capable of predicting revision surgery risk following primary hip arthroscopy that demonstrated moderate accuracy but likely limited clinical usefulness. Prediction accuracy would benefit from enhanced data quality within the registry and this preliminary study holds promise for future model generation as the DHAR matures. Ongoing collection of high-quality data by the DHAR should enable improved patient-specific outcome prediction that is generalisable across the population.

LEVEL OF EVIDENCE

Level III.

摘要

目的

准确预测髋关节镜术后的结果具有挑战性,而机器学习有可能提高我们的预测能力。本研究的目的是确定对丹麦髋关节镜登记处(DHAR)进行机器学习分析是否可以开发一种用于预测初次髋关节镜手术后患者进行后续翻修手术概率的有临床意义的计算器。

方法

对 DHAR 进行了机器学习分析。模型的主要结果是初次髋关节镜术后 1、2 和/或 5 年内进行翻修髋关节镜的概率。数据随机分为训练(75%)和测试(25%)集。测试了四种旨在用于此类数据的模型:Cox 弹性网络、随机生存森林、梯度提升回归(GBM)和超级学习者。这四种模型代表了对统计细节(如变量选择和模型复杂度)的不同处理方法。通过计算校准和曲线下面积(AUC)来评估模型性能。仅使用术前临床环境中可用的变量进行分析,然后重复分析以比较使用登记处中所有可用变量的模型性能。

结果

共纳入 5581 例患者进行分析。平均随访时间或翻修时间为 4.25±2.51 年,总体翻修率为 11%。当仅考虑术前变量时,所有四种模型的校准通常都较好,并且在中等范围内具有一致性(0.62-0.67),而当考虑登记处中所有可用变量时,一致性也在中等范围内(0.63-0.66)。两种分析的模型一致性置信区间都很宽,从低值 0.53 到高值 0.75,表明模型的真实准确性存在不确定性。

结论

术前因素与髋关节镜术后结果之间的关联很复杂。DHAR 的机器学习分析产生了一种能够预测初次髋关节镜术后翻修手术风险的模型,该模型具有中等准确性,但可能临床应用价值有限。预测准确性将受益于登记处中数据质量的提高,并且随着 DHAR 的成熟,本初步研究为未来的模型生成提供了希望。DHAR 持续高质量地收集数据应能够改善针对特定患者的预测结果,并使其在人群中具有普遍性。

证据等级

III 级。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/77e5/10183422/7e7157433249/167_2022_7054_Fig1_HTML.jpg

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