School of Mathematics and Statistics, Shaanxi Normal University, Xi'an, People's Republic of China.
School of Mathematics and Statistics, Shanxi University, Taiyuan, People's Republic of China.
PLoS Comput Biol. 2024 Sep 27;20(9):e1012499. doi: 10.1371/journal.pcbi.1012499. eCollection 2024 Sep.
Aedes mosquitoes, known as vectors of mosquito-borne diseases, pose significant risks to public health and safety. Modeling the population dynamics of Aedes mosquitoes requires comprehensive approaches due to the complex interplay between biological mechanisms and environmental factors. This study developed a model that couples differential equations with a neural network to simulate the dynamics of mosquito population, and explore the relationships between oviposition rate, temperature, and precipitation. Data from nine cities in Guangdong Province spanning four years were used for model training and parameter estimation, while data from the remaining three cities were reserved for model validation. The trained model successfully simulated the mosquito population dynamics across all twelve cities using the same set of parameters. Correlation coefficients between simulated results and observed data exceeded 0.7 across all cities, with some cities surpassing 0.85, demonstrating high model performance. The coupled neural network in the model effectively revealed the relationships among oviposition rate, temperature, and precipitation, aligning with biological patterns. Furthermore, symbolic regression was used to identify the optimal functional expression for these relationships. By integrating the traditional dynamic model with machine learning, our model can adhere to specific biological mechanisms while extracting patterns from data, thus enhancing its interpretability in biology. Our approach provides both accurate modeling and an avenue for uncovering potential unknown biological mechanisms. Our conclusions can provide valuable insights into designing strategies for controlling mosquito-borne diseases and developing related prediction and early warning systems.
伊蚊是蚊媒疾病的传播媒介,对公众健康和安全构成重大威胁。由于生物机制和环境因素之间的复杂相互作用,模拟伊蚊种群动态需要综合的方法。本研究开发了一种模型,该模型将微分方程与神经网络相结合,以模拟蚊虫种群的动态,并探讨产卵率、温度和降水之间的关系。该模型使用来自广东省九个城市的四年数据进行模型训练和参数估计,而其余三个城市的数据则用于模型验证。使用相同的参数集,训练有素的模型成功地模拟了所有十二个城市的蚊虫种群动态。所有城市的模拟结果与观测数据之间的相关系数均超过 0.7,有些城市超过 0.85,表明模型性能较高。模型中的耦合神经网络有效地揭示了产卵率、温度和降水之间的关系,与生物学模式一致。此外,符号回归用于确定这些关系的最佳函数表达式。通过将传统的动态模型与机器学习相结合,我们的模型可以在提取数据模式的同时遵守特定的生物学机制,从而提高其在生物学中的可解释性。我们的方法既提供了准确的建模,又为揭示潜在的未知生物学机制提供了途径。我们的结论可以为设计控制蚊媒疾病的策略以及开发相关的预测和预警系统提供有价值的见解。