ChatGPT-Assisted Deep Learning Models for Influenza-Like Illness Prediction in Mainland China: Time Series Analysis.

Publication date: Jun 27, 2025

Influenza in mainland China results in a large number of outpatient and emergency visits related to influenza-like illness (ILI) annually. While deep learning models show promise for improving influenza forecasting, their technical complexity remains a barrier to practical implementation. Large language models, such as ChatGPT, offer the potential to reduce these barriers by supporting automated code generation, debugging, and model optimization. This study aimed to evaluate the predictive performance of several deep learning models for ILI positive rates in mainland China and to explore the auxiliary role of ChatGPT-assisted development in facilitating model implementation. ILI positivity rate data spanning from 2014 to 2024 were obtained from the Chinese National Influenza Center (CNIC) database. In total, 5 deep learning architectures-long short-term memory (LSTM), neural basis expansion analysis for time series (N-BEATS), transformer, temporal fusion transformer (TFT), and time-series dense encoder (TiDE)-were developed using a ChatGPT-assisted workflow covering code generation, error debugging, and performance optimization. Models were trained on data from 2014 to 2023 and tested on holdout data from 2024 (weeks 1-39). Performance was evaluated using mean squared error (MSE), mean absolute error (MAE), and mean absolute percentage error (MAPE). ILI trends exhibited clear seasonal patterns with winter peaks and summer troughs, alongside marked fluctuations during the COVID-19 pandemic period (2020-2022). All 5 deep learning models were successfully constructed, debugged, and optimized with the assistance of ChatGPT. Among the 5 models, TiDE achieved the best predictive performance nationally (MAE=5. 551, MSE=43. 976, MAPE=72. 413%) and in the southern region (MAE=7. 554, MSE=89. 708, MAPE=74. 475%). In the northern region, where forecasting proved more challenging, TiDE still performed best (MAE=4. 131, MSE=28. 922), although high percentage errors remained (MAPE>400%). N-BEATS demonstrated the second-best performance nationally (MAE=9. 423) and showed greater stability in the north (MAE=6. 325). In contrast, transformer and TFT consistently underperformed, with national MAE values of 10. 613 and 12. 538, respectively. TFT exhibited the highest deviation (national MAPE=169. 29%). Extreme regional disparities were observed, particularly in northern China, where LSTM and TFT generated MAPE values exceeding 1918%, despite LSTM’s moderate performance in the south (MAE=9. 460). Deep learning models, particularly TiDE, demonstrate strong potential for accurate ILI forecasting across diverse regions of China. Furthermore, large language models like ChatGPT can substantially enhance modeling efficiency and accessibility by assisting nontechnical users in model development. These findings support the integration of AI-assisted workflows into epidemic prediction systems as a scalable approach for improving public health preparedness.

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Concepts Keywords
China China
Improving Deep Learning
Outpatient epidemic forecasting
Forecasting
Generative Artificial Intelligence
Humans
Influenza, Human
model optimization
public health preparedness
seasonal pattern
time series analysis

Semantics

Type Source Name
disease MESH Influenza
disease MESH emergency
disease IDO role
drug DRUGBANK Trifluridine
disease MESH COVID-19 pandemic
disease MESH AIDS
disease MESH Emerging Infectious Diseases
disease IDO process
drug DRUGBANK Tegafur-uracil
drug DRUGBANK Tegafur
disease MESH recurrence
drug DRUGBANK Naproxen
drug DRUGBANK Flunarizine
disease MESH misdiagnoses
drug DRUGBANK Tropicamide
disease MESH uncertainty
drug DRUGBANK Guanosine
drug DRUGBANK Ozone
drug DRUGBANK Water
disease MESH infection
disease MESH infectious diseases
disease MESH coinfections
disease MESH obesity
pathway REACTOME Reproduction

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