Forecasting the trend of tuberculosis incidence in Anhui Province based on machine learning optimization algorithm, 2013-2023.

IF 2.6 3区 医学 Q2 RESPIRATORY SYSTEM BMC Pulmonary Medicine Pub Date : 2024-10-26 DOI:10.1186/s12890-024-03296-z
Yan Zhang, Huan Ma, Hua Wang, Qing Xia, Shasha Wu, Jing Meng, Panpan Zhu, Zhilong Guo, Jing Hou
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Abstract

Tuberculosis has been one of the most common communicable diseases raising global concerns. Accurately predicting the incidence of Tuberculosis remains challenging. Here we constructed a time-series analysis and fusion tool using multi-source data, and aimed to more accurately predict the incidence trend of tuberculosis of Anhui Province from 2013 to 2023. Random forest algorithm (RF), Feature Recursive Elimination (RFE) and Least absolute shrinkage and selection operator (LASSO) were implemented to improve the derivation of features related to infectious diseases and feature work. Based on the characteristics of infectious disease data, a model of RF-RFE-LASSO integrated particle swarm optimization multiple inputs long short term memory recurrent neural network (RRL-PSO-MiLSTM) was created to perform more accurate prediction. Results showed that the PSO-MiLSTM achieved excellent prediction results compared with common single-input and multi-input time-series models (test set MSE:42.3555, MAE: 59.3333, RMSE: 146.7237, MAPE: 2.1133, R2: 0.8634). PSO-MiLSTM enriches and complements the methodological research content of calibrating the time-series predictive analysis of infectious diseases using multi-source data, and can be used as a brand-new benchmark for the analysis of influencing factors and trend prediction of infectious diseases at the public health level in the future, as well as providing a reference for incidence rate prediction of infectious diseases.

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基于机器学习优化算法的 2013-2023 年安徽省结核病发病趋势预测。
结核病一直是引起全球关注的最常见传染病之一。准确预测结核病的发病率仍是一项挑战。在此,我们利用多源数据构建了一个时间序列分析和融合工具,旨在更准确地预测安徽省 2013 年至 2023 年结核病的发病趋势。采用随机森林算法(RF)、特征递归消除算法(RFE)和最小绝对收缩与选择算子(LASSO)改进传染病相关特征的推导和特征工作。根据传染病数据的特点,创建了 RF-RFE-LASSO 集成粒子群优化多输入长短期记忆循环神经网络(RRL-PSO-MiLSTM)模型,以进行更精确的预测。结果表明,与常见的单输入和多输入时间序列模型相比,PSO-MiLSTM 取得了优异的预测结果(测试集 MSE:42.3555,MAE:59.3333,RMSE:146.7237,MAPE:2.1133,R2:0.8634):0.8634).PSO-MiLSTM丰富和补充了利用多源数据校准传染病时间序列预测分析的方法学研究内容,可作为未来公共卫生层面传染病影响因素分析和趋势预测的全新基准,并为传染病发病率预测提供参考。
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来源期刊
BMC Pulmonary Medicine
BMC Pulmonary Medicine RESPIRATORY SYSTEM-
CiteScore
4.40
自引率
3.20%
发文量
423
审稿时长
6-12 weeks
期刊介绍: BMC Pulmonary Medicine is an open access, peer-reviewed journal that considers articles on all aspects of the prevention, diagnosis and management of pulmonary and associated disorders, as well as related molecular genetics, pathophysiology, and epidemiology.
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