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机器学习算法:手术治疗脆性骨折后临床再骨折的预测与特征选择

Machine Learning Algorithms: Prediction and Feature Selection for Clinical Refracture after Surgically Treated Fragility Fracture.

作者信息

Shimizu Hirokazu, Enda Ken, Shimizu Tomohiro, Ishida Yusuke, Ishizu Hotaka, Ise Koki, Tanaka Shinya, Iwasaki Norimasa

机构信息

Department of Orthopaedic Surgery, Faculty of Medicine and Graduate School of Medicine, Hokkaido University, Sapporo 060-8638, Japan.

Department of Cancer Pathology, Faculty of Medicine, Hokkaido University, Sapporo 060-8638, Japan.

出版信息

J Clin Med. 2022 Apr 5;11(7):2021. doi: 10.3390/jcm11072021.

Abstract

BACKGROUND

The number of patients with fragility fracture has been increasing. Although the increasing number of patients with fragility fracture increased the rate of fracture (refracture), the causes of refracture are multifactorial, and its predictors are still not clarified. In this issue, we collected a registry-based longitudinal dataset that contained more than 7000 patients with fragility fractures treated surgically to detect potential predictors for clinical refracture.

METHODS

Based on the fact that machine learning algorithms are often used for the analysis of a large-scale dataset, we developed automatic prediction models and clarified the relevant features for patients with clinical refracture. Formats of input data containing perioperative clinical information were table data. Clinical refracture was documented as the primary outcome if the diagnosis of fracture was made at postoperative outpatient care. A decision-tree-based model, LightGBM, had moderate accuracy for the prediction in the test and the independent dataset, whereas the other models had poor accuracy or worse.

RESULTS

From a clinical perspective, rheumatoid arthritis (RA) and chronic kidney disease (CKD) were noted as the relevant features for patients with clinical refracture, both of which were associated with secondary osteoporosis.

CONCLUSION

The decision-tree-based algorithm showed the precise prediction of clinical refracture, in which RA and CKD were detected as the potential predictors. Understanding these predictors may improve the management of patients with fragility fractures.

摘要

背景

脆性骨折患者数量一直在增加。尽管脆性骨折患者数量的增加提高了骨折(再骨折)发生率,但再骨折的原因是多因素的,其预测因素仍未明确。在本期中,我们收集了一个基于登记的纵向数据集,其中包含7000多名接受手术治疗的脆性骨折患者,以检测临床再骨折的潜在预测因素。

方法

基于机器学习算法常用于大规模数据集分析这一事实,我们开发了自动预测模型,并明确了临床再骨折患者的相关特征。包含围手术期临床信息的输入数据格式为表格数据。如果在术后门诊护理中诊断出骨折,则将临床再骨折记录为主要结局。基于决策树的模型LightGBM在测试集和独立数据集中的预测准确性中等,而其他模型的准确性较差或更差。

结果

从临床角度来看,类风湿性关节炎(RA)和慢性肾脏病(CKD)被视为临床再骨折患者的相关特征,二者均与继发性骨质疏松症相关。

结论

基于决策树的算法显示出对临床再骨折的精确预测,其中RA和CKD被检测为潜在预测因素。了解这些预测因素可能会改善脆性骨折患者的管理。

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