结核与肺部疾病杂志 ›› 2026, Vol. 7 ›› Issue (2): 194-202.doi: 10.19983/j.issn.2096-8493.20250212

• 论著 • 上一篇    

2014—2024年山东省泰安市肺结核流行特征及发病趋势预测

王瑞华1, 杨雨晴1, 张洪昌2, 肖文倩3, 成玲4()   

  1. 1 山东省泰安市疾病预防控制中心结核病防制科, 泰安 271000
    2 山东省泰安市疾病预防控制中心法制审验科, 泰安 271000
    3 山东省宁阳县疾病预防控制中心结核病防制科, 泰安 271000
    4 山东省泰安市疾病预防控制中心质量管理科, 泰安 271000
  • 收稿日期:2026-01-06 出版日期:2026-04-20 发布日期:2026-04-13
  • 通信作者: 成玲 E-mail:724942275@qq.com
  • 基金资助:
    泰安市科技创新发展项目(2024NS365)

Epidemiological characteristics and the incidence trend prediction of pulmonary tuberculosis in Tai’an City, Shandong Province, 2014—2024

Wang Ruihua1, Yang Yuqing1, Zhang Hongchang2, Xiao Wenqian3, Cheng Ling4()   

  1. 1 Department of Tuberculosis Prevention and Control, Tai’an Municipal Center for Disease Control and Prevention, Tai’an 271000, China
    2 Department of Legal Compliance and Review, Tai’an Municipal Center for Disease Control and Prevention, Tai’an 271000, China
    3 Department of Tuberculosis Prevention and Control, Ningyang Municipal Center for Disease Control and Prevention, Tai’an 271000, China
    4 Department of Quality Management, Tai’an Municipal Center for Disease Control and Prevention, Tai’an 271000, China
  • Received:2026-01-06 Online:2026-04-20 Published:2026-04-13
  • Contact: Cheng Ling E-mail:724942275@qq.com
  • Supported by:
    Tai’an Science and Technology Innovation and Development Project(2024NS365)

摘要:

目的: 分析2014—2024年山东省泰安市肺结核的流行病学特征,构建季节性自回归移动平均模型(seasonal autoregressive integrated moving average model, SARIMA)和Prophet模型预测泰安市肺结核登记趋势,为进一步制定科学防控策略提供依据。方法: 通过“中国疾病预防控制信息系统”的子系统“结核病信息管理系统”收集2014—2024年泰安市肺结核患者相关数据进行描述性流行病学特征分析,构建SARIMA模型和Prophet模型进行肺结核登记趋势预测分析。结果: 泰安市2014—2024年肺结核年均登记率为25.66/10万(15820例),整体呈下降趋势(${\chi }_{趋势}^{2}$=2043.193,P<0.001),其中2014年肺结核登记率为45.60/10万(2564例),2024年为18.85/10万(1008例),年均递降率为8.45%[(1-$\sqrt[10]{\frac{18.85/10万}{45.60/10万}}$)×100%]。泰安市肺结核登记病例集中在每年12月,占9.26%(1465/15820);2月最少,占6.45%(1020/15820);高发地区为东平县(32.90/10万,2772例)和宁阳县(29.65/10万,2538例);登记患者男性居多,男女性别比为2.94∶1(11808∶4012),男性登记率(37.61/10万)高于女性(13.03/10万),差异有统计学意义(χ2=336.950,P<0.001);登记人群以55~64岁年龄段为主,占20.34%(3217/15820),0~14岁年龄段占比最少,为0.56%(89/15820)。使用月登记患者数构建SARIMA(0,1,1)(1,1,0)12模型与Prophet模型,预测结果显示,SARIMA模型预测2025年肺结核登记患者数(1249例)较2024年(1008例)上升,5月为预测登记高峰(125例),11月为低谷(88例);Prophet模型预测2025年结果(849例)相较于2024年(1008例)呈下降趋势,12月为预测登记高峰(95例),2月为低谷(65例)。误差分析表明,Prophet模型预测结果精确度(15.26%)优于SARIMA模型(19.29%)。结论: 2014—2024年泰安市肺结核登记率总体呈现下降趋势,应加强对55~64岁高风险群体和东平县、宁阳县等高发地区的结核病筛查及健康教育工作;相较于SARIMA模型,Prophet模型在预测泰安市肺结核登记趋势方面效果更佳。基于Prophet模型的预测,建议泰安市在秋季末提前强化肺结核监测和宣教资源部署,从而将防控模式从被动应对转向主动干预,以提升整体效能。

关键词: 结核, 肺, 流行病学研究特征(主题), 预测, 小地区分析

Abstract:

Objective: To analyze the epidemiological characteristics of pulmonary tuberculosis (PTB) in Tai’an City, Shandong Province, from 2014 to 2024, a seasonal autoregressive integrated moving average (SARIMA) model and a Prophet model were established to predict the PTB notification trend, thereby providing a scientific basis for the formulation of future prevention and control strategies. Methods: Data on PTB cases in Tai’an City from 2014 to 2024 were collected through the TB Information Management System, a subsystem of the China Disease Prevention and Control Information System. Descriptive epidemiological analysis was performed, and both SARIMA and Prophet models were established to analyze and predict the PTB notification trend. Results: The average annual notification rate of PTB in Tai’an City from 2014 to 2024 was 25.66 per 100000 population (15820 cases), showing an overall downward trend (${\chi }_{trend}^{2}$=2043.193, P<0.001). The notification rate was 45.60 per 100000 (2564 cases) in 2014 and 18.85 per 100000 (1008 cases) in 2024, with an average annual decline rate of 8.45% ((1-$\sqrt[10]{\frac{18.85/100000}{45.60/100000}}$)×100%). The notified cases were concentrated in December, accounting for 9.26% (1465/15820) of the total, while the fewest cases were reported in February, accounting for 6.45% (1020/15820). High-incidence areas included Dongping County (32.90/100000, 2772 cases) and Ningyang County (29.65/100000, 2538 cases). Most notified patients were male, with a male-to-female ratio of 2.94∶1 (11808∶4012), and the notification rate in males (37.61/100000) was significantly higher than that in females (13.03/100000), with a statistically significant difference (χ2=336.950, P<0.001). The age group of 55-64 years accounted for the largest proportion of cases (20.34%, 3217/15820), while the 0-14 years group accounted for the smallest proportion (0.56%, 89/15820). The SARIMA (0,1,1)(1,1,0)12 model and the Prophet model were established using monthly notified PTB case data, demonstrated a good fit with the historical data. The SARIMA model predicted an increase in the number of notified PTB cases in 2025 (1249 cases) compared with 2024 (1008 cases), with a predicted peak in May (125 cases) and a trough in November (88 cases). In contrast, the Prophet model predicted a declining trend in 2025 (849 cases) compared with 2024 (1008 cases), with a predicted peak in December (95 cases) and a trough in February (65 cases). Error analysis indicated that the predictive accuracy of the Prophet model (15.26%) was better than that of the SARIMA model (19.29%). Thus, the Prophet model performed better in capturing temporal distribution characteristics and achieved higher prediction precision. Conclusion: The notification rate of PTB in Tai’an City showed an overall downward trend from 2014 to 2024. It is recommended to strengthen TB screening and health education for high-risk groups such as those aged 55-64 years, as well as in high-incidence areas including Dongping County and Ningyang County. The Prophet model performed better than the SARIMA model in predicting the PTB notification trend in Tai’an City. Based on the predictions of the Prophet model, it is recommended that Tai’an City prioritize enhanced PTB surveillance and health education resources deployment in advance in late autumn, so as to shift the prevention and control mode from passive response to active intervention and improve overall effectiveness.

Key words: Tuberculosis, pulmonary, Epidemiologic study characteristics as topic, Forecasting, Small-area analysis

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