Suppr超能文献

[慢性阻塞性肺疾病患者6个月内急性加重风险预测模型的构建与验证:基于既往研究数据的二次分析]

[Construction and verification of the risk prediction model for acute exacerbation within 6 months in patients with chronic obstructive pulmonary disease: a secondary analysis based on previous research data].

作者信息

Wang Minghang, Cai Kunkun, Shi Dingli, Bi Lichan, Li Jiansheng

机构信息

Department of Respiratory Diseases, the First Affiliated Hospital of Henan University of Traditional Chinese Medicine, Zhengzhou 450000, Henan, China.

Respiratory Disease Diagnosis and Treatment and New Drug Research and Development Provincial and Ministry Co-built Collaborative Innovation Center, Henan University of Traditional Chinese Medicine, Henan Key Laboratory of Chinese Medicine for Respiratory Diseases, Zhengzhou 450046, Henan, China. Corresponding author: Li Jiansheng, Email:

出版信息

Zhonghua Wei Zhong Bing Ji Jiu Yi Xue. 2022 Apr;34(4):373-377. doi: 10.3760/cma.j.cn121430-20210929-01414.

Abstract

OBJECTIVE

To construct the risk prediction model of acute exacerbation of chronic obstructive pulmonary disease (AECOPD) and verify its effectiveness based on deep learning and back propagation algorithm neural network (BP neural network).

METHODS

Based on the relevant data of 1 326 patients with chronic obstructive pulmonary disease (COPD) in the team's previous clinical study, the acute exacerbation, and its risk factors during the stable period and 6 months of follow-up were recorded and analyzed. Combined with previous clinical research data and expert questionnaire results, the independent risk factors of AECOPD after screening and optimization by multivariate Logistic regression including gender, body mass index (BMI) classification, number of acute exacerbation, duration of acute exacerbation and forced expiratory volume in one second (FEV1) were used to build the BP neural network by Python 3.6 programming language and Tensorflow 1.12 deep learning framework. The patients were randomly selected according to the ratio of 4:1 to generate the training group and the test group, of which, the training group had 1 061 sample data while the test group had 265 pieces of sample data. The training group was used to establish the prediction model of neural network, and the test group was used for back-substitution test. When using the training group data to construct the neural network model, the training group was randomly divided into training set and verification set according to the ratio of 4:1. There were 849 training samples in the training set and 212 verification samples in the verification set. The optimal model was screened by adjusting the parameters of the neural network and combining the area under the receiver operator characteristic curve (AUC), and the sample data of the test group was substituted into the model for verification.

RESULTS

The independent risk factors including gender, BMI classification, number of acute exacerbation, duration of acute exacerbation and FEV1 were collected from the team's previous clinical research, and the AECOPD risk prediction model was constructed based on deep learning and BP neural network. After 10 000 training sessions, the accuracy of the AECOPD risk prediction model in the validation set of the training group was 83.09%. When the number of training times reached 8 000, the accuracy basically tended to be stable and the prediction ability reached the upper limit. The AECOPD risk prediction model trained for 10 000 times was used to predict the risk of the validation set data, and the receiver operator characteristic curve (ROC curve) analysis showed that the AUC was 0.803. When using this model to predict the risk of the data of the test group, the accuracy rate was 81.69%.

CONCLUSION

The risk prediction model based on deep learning and BP neural network has a medium level of prediction efficiency for acute exacerbation within 6 months in COPD patients, which can evaluate the risk of AECOPD and assist the clinic in making accurate treatment decisions.

摘要

目的

基于深度学习和反向传播算法神经网络(BP神经网络)构建慢性阻塞性肺疾病急性加重(AECOPD)风险预测模型并验证其有效性。

方法

基于团队既往临床研究中1326例慢性阻塞性肺疾病(COPD)患者的相关数据,记录并分析稳定期及随访6个月期间的急性加重情况及其危险因素。结合既往临床研究数据和专家问卷结果,经多因素Logistic回归筛选并优化后的AECOPD独立危险因素,包括性别、体重指数(BMI)分级、急性加重次数、急性加重持续时间及一秒用力呼气容积(FEV1),采用Python 3.6编程语言和Tensorflow 1.12深度学习框架构建BP神经网络。按照4∶1的比例随机抽取患者生成训练组和测试组,其中训练组有1061例样本数据,测试组有265例样本数据。训练组用于建立神经网络预测模型,测试组用于回代检验。利用训练组数据构建神经网络模型时,将训练组按照4∶1的比例随机分为训练集和验证集,训练集有849个训练样本,验证集有212个验证样本。通过调整神经网络参数并结合受试者工作特征曲线下面积(AUC)筛选最优模型,并将测试组样本数据代入模型进行验证。

结果

从团队既往临床研究中收集性别、BMI分级、急性加重次数、急性加重持续时间及FEV1等独立危险因素,基于深度学习和BP神经网络构建AECOPD风险预测模型。经过10000次训练后,训练组验证集的AECOPD风险预测模型准确率为83.09%。当训练次数达到8000次时,准确率基本趋于稳定,预测能力达到上限。用训练10000次的AECOPD风险预测模型对验证集数据进行风险预测,受试者工作特征曲线(ROC曲线)分析显示AUC为0.803。用该模型对测试组数据进行风险预测时,准确率为81.69%。

结论

基于深度学习和BP神经网络的风险预测模型对COPD患者6个月内急性加重的预测效率处于中等水平,可评估AECOPD风险,辅助临床做出准确治疗决策。

文献AI研究员

20分钟写一篇综述,助力文献阅读效率提升50倍。

立即体验

用中文搜PubMed

大模型驱动的PubMed中文搜索引擎

马上搜索

文档翻译

学术文献翻译模型,支持多种主流文档格式。

立即体验