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基于机器学习方法的乳腺癌患者慢性术后疼痛预测模型

Prediction models for chronic postsurgical pain in patients with breast cancer based on machine learning approaches.

作者信息

Sun Chen, Li Mohan, Lan Ling, Pei Lijian, Zhang Yuelun, Tan Gang, Zhang Zhiyong, Huang Yuguang

机构信息

Department of Anesthesiology, Peking Union Medical College Hospital, Chinese Academy of Medical Sciences & Peking Union Medical College, Beijing, China.

Outcomes Research Consortium, Cleveland, OH, United States.

出版信息

Front Oncol. 2023 Feb 27;13:1096468. doi: 10.3389/fonc.2023.1096468. eCollection 2023.

Abstract

PURPOSE

This study aimed to develop prediction models for chronic postsurgical pain (CPSP) after breast cancer surgery using machine learning approaches and evaluate their performance.

METHODS

The study was a secondary analysis based on a high-quality dataset from a randomized controlled trial (NCT00418457), including patients with primary breast cancer undergoing mastectomy. The primary outcome was CPSP at 12 months after surgery, defined as modified Brief Pain Inventory > 0. The dataset was randomly split into a training dataset (90%) and a testing dataset (10%). Variables were selected using recursive feature elimination combined with clinical experience, and potential predictors were then incorporated into three machine learning models, including random forest, gradient boosting decision tree and extreme gradient boosting models for outcome prediction, as well as logistic regression. The performances of these four models were tested and compared.

RESULTS

1152 patients were finally included, of which 22.1% developed CPSP at 12 months after breast cancer surgery. The 6 leading predictors were higher numerical rating scale within 2 days after surgery, post-menopausal status, urban medical insurance, history of at least one operation, under fentanyl with sevoflurane general anesthesia, and received axillary lymph node dissection. Compared with the multivariable logistic regression model, machine learning models showed better specificity, positive likelihood ratio and positive predictive value, helping to identify high-risk patients more accurately and create opportunities for early clinical intervention.

CONCLUSIONS

Our study developed prediction models for CPSP after breast cancer surgery based on machine learning approaches, which may help to identify high-risk patients and improve patients' management after breast cancer.

摘要

目的

本研究旨在使用机器学习方法开发乳腺癌手术后慢性术后疼痛(CPSP)的预测模型,并评估其性能。

方法

该研究是基于一项随机对照试验(NCT00418457)的高质量数据集进行的二次分析,纳入了接受乳房切除术的原发性乳腺癌患者。主要结局是术后12个月时的CPSP,定义为改良简明疼痛量表>0。将数据集随机分为训练数据集(90%)和测试数据集(10%)。使用递归特征消除结合临床经验选择变量,然后将潜在预测因素纳入三种机器学习模型,包括随机森林、梯度提升决策树和极端梯度提升模型用于结局预测,以及逻辑回归。对这四种模型的性能进行测试和比较。

结果

最终纳入1152例患者,其中22.1%在乳腺癌手术后12个月发生CPSP。6个主要预测因素为术后2天内较高的数字评定量表评分、绝经后状态、城镇医疗保险、至少有一次手术史、使用芬太尼联合七氟醚全身麻醉以及接受腋窝淋巴结清扫。与多变量逻辑回归模型相比,机器学习模型显示出更好的特异性、阳性似然比和阳性预测值,有助于更准确地识别高危患者并为早期临床干预创造机会。

结论

我们的研究基于机器学习方法开发了乳腺癌手术后CPSP的预测模型,这可能有助于识别高危患者并改善乳腺癌患者的管理。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/77bc/10009151/fbf436bf9e13/fonc-13-1096468-g001.jpg

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