Prediction analysis of human brucellosis cases in Ili Kazakh Autonomous Prefecture Xinjiang China based on time series.

Publication date: Jan 07, 2025

Human brucellosis remains a significant public health issue in the Ili Kazak Autonomous Prefecture, Xinjiang, China. To assist local Centers for Disease Control and Prevention (CDC) in promptly formulate effective prevention and control measures, this study leveraged time-series data on brucellosis cases from February 2010 to September 2023 in Ili Kazak Autonomous Prefecture. Three distinct predictive modeling techniques-Seasonal Autoregressive Integrated Moving Average (SARIMA), eXtreme Gradient Boosting (XGBoost), and Long Short-Term Memory (LSTM) networks-were employed for long-term forecasting. Further, the optimal model will be used to explore the impact of COVID-19 on the transmission of Human brucellosis in the region. We constructed a SARIMA(4,1,1)(3,1,2)12 model, an XGBoost model with a time lag of 22, and an LSTM model featuring 3 LSTM layers and 100 neurons in the fully connected layer to predict monthly reported cases from January 2021 to September 2023. The results indicated that the occurrence of brucellosis exhibits pronounced seasonal patterns, with higher incidence during summer and autumn, peaking in June annually. Performance evaluations revealed low Mean Absolute Error (MAE), Root Mean Square Error (RMSE), and Symmetric Mean Absolute Percentage Error (SMAPE) for all three models. Specifically, the coefficient of determination (R) was 0. 6177 for the SARIMA model, 0. 8033 for the XGBoost model, and 0. 6523 for the LSTM model. The study found that the XGBoost model outperformed the other two in long-term forecasting of brucellosis, demonstrating higher predictive accuracy. This discovery can aid public health departments in advancing the deployment of prevention and control resources, particularly during peak seasons of brucellosis. It was also found that the impact of the COVID-19 pandemic on the transmission of human brucellosis in the region was minimal. This research not only provides a reliable predictive tool but also offers a scientific basis for formulating early prevention and control strategies, potentially reducing the spread of this disease.

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Concepts Keywords
Brucellosis Brucella
June Brucellosis
Reliable Brucellosis
Sarima41131212 China
Xinjiang COVID-19
Forecasting
Humans
Incidence
LSTM
SARIMA
SARS-CoV-2
Seasons
XGBoost

Semantics

Type Source Name
disease MESH brucellosis
drug DRUGBANK Flunarizine
disease MESH COVID-19
disease MESH Long Covid
disease IDO zoonosis
disease IDO bacteria
disease IDO pathogen
drug DRUGBANK Water
disease MESH infection
disease MESH stillbirths
disease MESH premature births
disease MESH joint pain
disease MESH complications
drug DRUGBANK Coenzyme M
disease MESH aids
disease IDO process
disease MESH infectious diseases
disease MESH dengue
disease IDO history
drug DRUGBANK Tropicamide
disease IDO algorithm
disease IDO intervention
drug DRUGBANK Medical air
disease IDO primary infection
disease MESH weight gain
disease IDO quality
disease IDO production
drug DRUGBANK Guanosine
disease MESH tuberculosis
pathway KEGG Tuberculosis
disease MESH scarlet fever
disease MESH hepatitis
disease MESH cutaneous leishmaniasis
disease MESH pertussis
pathway KEGG Pertussis
disease MESH syndrome
disease MESH sepsis
disease MESH Neglected Tropical Diseases
disease IDO country
disease MESH Influenza
disease MESH mumps
disease MESH zoonotic diseases
pathway REACTOME Reproduction

Original Article

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