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肺癌术后患者运动恐惧风险预测模型的开发与验证:一项可解释的机器学习算法研究

Development and validation of a risk prediction model for kinesiophobia in postoperative lung cancer patients: an interpretable machine learning algorithm study.

作者信息

Li Chuang, Lin Youbei, Xiao Xuyang, Guo Xinru, Fei Jinrui, Lu Yanyan, Zhao Junling, Zhang Lan

机构信息

Department of Nursing, First Affiliated Hospital of Jinzhou Medical University, Jinzhou, 121001, China.

School of Nursing, Jinzhou Medical University, Jinzhou, 121001, China.

出版信息

Sci Rep. 2025 Jun 3;15(1):19412. doi: 10.1038/s41598-025-03575-7.

Abstract

Kinesiophobia is particularly common in postoperative lung cancer patients, which causes patients may be reluctant to cough and move due to misperception, internal fear or fear of pain, and avoid rehabilitation training affecting postoperative recovery. Therefore, it is clinically important to discover the factors associated with the occurrence of kinesiophobia and to develop a prediction model. This study aims to investigate the occurrence of kinesiophobia in postoperative lung cancer patients and to develop a prediction model to assess its performance, thereby providing a reference for clinical decision-making. A cross-sectional study involving 519 postoperative lung cancer patients from a tertiary hospital in Liaoning Province was conducted. The least absolute shrinkage and selection operator (LASSO) and multifactor logistic regression were used to screen predictors. Subsequently, six machine learning (ML) models were developed and compared to identify the optimal model. The importance of feature variables was ranked and interpreted to facilitate risk assessment. The incidence of kinesiophobia among postoperative lung cancer patients was 43.74%. Positive coping style, social support, pain severity, personal income, surgical history, and gender were identified as significant predictors of kinesiophobia. Among the evaluated models, the RF model demonstrated the best performance, with an AUROC of 0.893, accuracy of 0.803, precision of 0.732, recall of 0.870, and F1 score of 0.795. The calibration curve of the RF model closely aligned with the ideal 45-degree diagonal, indicating strong agreement between predicted and observed outcomes. Furthermore, DCA revealed that the RF model provided the highest net benefit in predicting postoperative agoraphobia in lung cancer patients. This study demonstrates that machine learning models-particularly the RF algorithm-hold substantial promise for predicting kinesiophobia in postoperative lung cancer patients. By integrating individual background characteristics along with physical, psychological, and social factors, the RF model effectively identifies high-risk patients and provides a valuable foundation for early clinical screening and intervention. These findings underscore the critical influence of multidimensional factors in the development of postoperative kinesiophobia and highlight the advantages of machine learning in enhancing predictive accuracy and supporting personalized medical decision-making. To improve the model's generalizability and clinical utility, future research should incorporate heterogeneous datasets from multiple regions and healthcare institutions to ensure broader applicability and greater robustness.

摘要

运动恐惧在肺癌术后患者中尤为常见,这会导致患者因错误认知、内心恐惧或害怕疼痛而不愿咳嗽和活动,进而避免康复训练,影响术后恢复。因此,发现与运动恐惧发生相关的因素并建立预测模型在临床上具有重要意义。本研究旨在调查肺癌术后患者运动恐惧的发生情况,并建立一个预测模型来评估其性能,从而为临床决策提供参考。对辽宁省某三级医院的519例肺癌术后患者进行了一项横断面研究。采用最小绝对收缩和选择算子(LASSO)和多因素逻辑回归筛选预测因素。随后,开发并比较了六种机器学习(ML)模型,以确定最优模型。对特征变量的重要性进行排序和解释,以促进风险评估。肺癌术后患者运动恐惧的发生率为43.74%。积极应对方式、社会支持、疼痛严重程度、个人收入、手术史和性别被确定为运动恐惧的重要预测因素。在所评估的模型中,随机森林(RF)模型表现最佳,曲线下面积(AUROC)为0.893,准确率为0.803,精确率为0.732,召回率为0.870,F1分数为0.795。RF模型的校准曲线与理想的45度对角线紧密吻合,表明预测结果与观察结果高度一致。此外,决策曲线分析(DCA)显示,RF模型在预测肺癌患者术后广场恐惧症方面提供了最高的净效益。本研究表明,机器学习模型——尤其是随机森林算法——在预测肺癌术后患者运动恐惧方面具有巨大潜力。通过整合个体背景特征以及身体、心理和社会因素,RF模型有效地识别出高危患者,并为早期临床筛查和干预提供了有价值的基础。这些发现强调了多维度因素在术后运动恐惧发生中的关键影响,并突出了机器学习在提高预测准确性和支持个性化医疗决策方面的优势。为了提高模型的通用性和临床实用性,未来的研究应纳入来自多个地区和医疗机构的异质数据集,以确保更广泛的适用性和更强的稳健性。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/02a5/12134359/8f0c2efbdc85/41598_2025_3575_Fig1_HTML.jpg

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