Estimating the Temporal Epidemiological Trends of Tuberculosis Incidence by Using an Advanced Theta Method.

Estimating the Temporal Epidemiological Trends of Tuberculosis Incidence by Using an Advanced Theta Method.

Publication date: Jun 18, 2024

We aimed to assess the temporal epidemiological trends in tuberculosis (TB) by use of an advanced Theta method. The TB incidence data from Tianjin, Heilongjiang, Hubei, and Guangxi provinces in China, spanning January 2005 to December 2019, were extracted. We then constructed and compared various modeling approaches, including the seasonal autoregressive integrated moving average (SARIMA) model, the Theta model, the standard Theta model (STM), the dynamic optimized Theta model (DOTM), the dynamic standard Theta model (DSTM), and the optimized Theta model (OTM). During 2005-2019, these four provinces recorded a total of 2,068,399 TB cases. Analyses indicated that TB exhibited seasonality, with prominent peaks in spring and winter, and a slight downward trend was seen in incidence. In the Tianjin forecast, the OTM consistently demonstrated superior performance with the lowest values across metrics, including mean absolute deviation (0. 159), mean absolute percentage error (7. 032), root mean square error (0. 21), mean error rate (0. 068), and root mean square percentage error (0. 093), compared with those of SARIMA (0. 397, 16. 654, 0. 436, 0. 169, and 0. 179, respectively), Theta (0. 166, 7. 248, 0. 231, 0. 071, and 0. 102, respectively), DOTM (0. 169, 7. 341, 0. 234, 0. 072, and 0. 102, respectively), DSTM (0. 169, 7. 532, 0. 203, 0. 072, and 0. 092, respectively), and STM (0. 165, 7. 218, 0. 231, 0. 070, and 0. 101, respectively). Similar results were also observed in the other provinces, emphasizing the effectiveness of the OTM in estimating TB trends. Thus, the OTM may serve as a beneficial and effective tool for estimating the temporal epidemiological trends of TB.

Concepts Keywords
China Advanced
December Compared
Tuberculosis Epidemiological
Error
Estimating
Incidence
Method
Otm
Provinces
Tb
Temporal
Theta
Tianjin
Trends
Tuberculosis

Semantics

Type Source Name
disease MESH Tuberculosis
pathway KEGG Tuberculosis

Original Article

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