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基于常规临床特征预测功能性消化不良的针灸疗效:预测、预防和个性化医学框架下的机器学习研究

Predicting acupuncture efficacy for functional dyspepsia based on routine clinical features: a machine learning study in the framework of predictive, preventive, and personalized medicine.

作者信息

Yin Tao, Zheng Hui, Ma Tingting, Tian Xiaoping, Xu Jing, Li Ying, Lan Lei, Liu Mailan, Sun Ruirui, Tang Yong, Liang Fanrong, Zeng Fang

机构信息

Acupuncture and Tuina School/The 3rd Teaching Hospital, Chengdu University of Traditional Chinese Medicine, Chengdu, 610075 Sichuan China.

Acupuncture-Brain Science Research Center, Chengdu University of Traditional Chinese Medicine, Chengdu, 610075 Sichuan China.

出版信息

EPMA J. 2022 Feb 2;13(1):137-147. doi: 10.1007/s13167-022-00271-8. eCollection 2022 Mar.

Abstract

BACKGROUND

Acupuncture is safe and effective for functional dyspepsia (FD), while its efficacy varies among individuals. Predicting the response of different FD patients to acupuncture treatment in advance and therefore administering the tailored treatment to the individual is consistent with the principle of predictive, preventive, and personalized medicine (PPPM/3PM). In the current study, the individual efficacy prediction models were developed based on the support vector machine (SVM) algorithm and routine clinical features, aiming to predict the efficacy of acupuncture in treating FD and identify the FD patients who were appropriate to acupuncture treatment.

METHODS

A total of 745 FD patients were collected from two clinical trials. All the patients received a 4-week acupuncture treatment. Based on the demographic and baseline clinical features of 80% of patients in trial 1, the SVM models were established to predict the acupuncture response and improvements of symptoms and quality of life (QoL) at the end of treatment. Then, the left 20% of patients in trial 1 and 193 patients in trial 2 were respectively applied to evaluate the internal and external generalizations of these models.

RESULTS

These models could predict the efficacy of acupuncture successfully. In the internal test set, models achieved an accuracy of 0.773 in predicting acupuncture response and an of 0.446 and 0.413 in the prediction of QoL and symptoms improvements, respectively. Additionally, these models had well generalization in the independent validation set and could also predict, to a certain extent, the long-term efficacy of acupuncture at the 12-week follow-up. The gender, subtype of disease, and education level were finally identified as the critical predicting features.

CONCLUSION

Based on the SVM algorithm and routine clinical features, this study established the models to predict acupuncture efficacy for FD patients. The prediction models developed accordingly are promising to assist doctors in judging patients' responses to acupuncture in advance, so that they could tailor and adjust acupuncture treatment plans for different patients in a prospective rather than the reactive manner, which could greatly improve the clinical efficacy of acupuncture treatment for FD and save medical expenditures.

SUPPLEMENTARY INFORMATION

The online version contains supplementary material available at 10.1007/s13167-022-00271-8.

摘要

背景

针刺疗法治疗功能性消化不良(FD)安全有效,但疗效存在个体差异。预先预测不同FD患者对针刺治疗的反应,并据此为个体提供个性化治疗,符合预测、预防和个性化医学(PPPM/3PM)原则。在本研究中,基于支持向量机(SVM)算法和常规临床特征建立了个体疗效预测模型,旨在预测针刺治疗FD的疗效,并识别适合针刺治疗的FD患者。

方法

从两项临床试验中收集了745例FD患者。所有患者均接受为期4周的针刺治疗。基于试验1中80%患者的人口统计学和基线临床特征,建立SVM模型以预测治疗结束时的针刺反应以及症状和生活质量(QoL)的改善情况。然后,分别将试验1中剩余的20%患者和试验2中的193例患者用于评估这些模型的内部和外部泛化能力。

结果

这些模型能够成功预测针刺疗效。在内部测试集中,模型预测针刺反应的准确率为0.773,预测QoL和症状改善的准确率分别为0.446和0.413。此外,这些模型在独立验证集中具有良好的泛化能力,并且在12周随访时也能在一定程度上预测针刺的长期疗效。最终确定性别、疾病亚型和教育水平为关键预测特征。

结论

本研究基于SVM算法和常规临床特征建立了预测FD患者针刺疗效的模型。相应开发的预测模型有望帮助医生提前判断患者对针刺的反应,从而以前瞻性而非反应性的方式为不同患者量身定制和调整针刺治疗方案,这可以大大提高针刺治疗FD的临床疗效并节省医疗费用。

补充信息

在线版本包含可在10.1007/s13167-022-00271-8获取的补充材料。

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