Deep neural networks for endemic measles dynamics: Comparative analysis and integration with mechanistic models

被引:0
|
作者
Madden, Wyatt G. [1 ]
Jin, Wei [2 ]
Lopman, Benjamin [3 ]
Zufle, Andreas [2 ]
Dalziel, Benjamin [4 ]
Metcalf, C. Jessica E. [5 ]
Grenfell, Bryan T. [5 ]
Lau, Max S. Y. [1 ]
机构
[1] Emory Univ, Rollins Sch Publ Hlth, Dept Biostat & Bioinformat, Atlanta, GA 30322 USA
[2] Emory Univ, Coll Arts & Sci, Dept Comp Sci, Atlanta, GA USA
[3] Emory Univ, Rollins Sch Publ Hlth, Dept Epidemiol, Atlanta, GA USA
[4] Oregon State Univ, Dept Integrat Biol, Corvallis, OR USA
[5] Princeton Univ, Dept Ecol & Evolutionary Biol, Princeton, NJ USA
关键词
GRAVITY MODEL; PERSISTENCE; EXTINCTION; EPIDEMICS; IMPACT;
D O I
10.1371/journal.pcbi.1012616
中图分类号
Q5 [生物化学];
学科分类号
071010 ; 081704 ;
摘要
Measles is an important infectious disease system both for its burden on public health and as an opportunity for studying nonlinear spatio-temporal disease dynamics. Traditional mechanistic models often struggle to fully capture the complex nonlinear spatio-temporal dynamics inherent in measles outbreaks. In this paper, we first develop a high-dimensional feed-forward neural network model with spatial features (SFNN) to forecast endemic measles outbreaks and systematically compare its predictive power with that of a classical mechanistic model (TSIR). We illustrate the utility of our model using England and Wales measles data from 1944-1965. These data present multiple modeling challenges due to the interplay between metapopulations, seasonal trends, and nonlinear dynamics related to demographic changes. Our results show that while the TSIR model yields similarly performant short-term (1 to 2 biweeks ahead) forecasts for highly populous cities, our neural network model (SFNN) consistently achieves lower root mean squared error (RMSE) across other forecasting windows. Furthermore, we show that our spatial-feature neural network model, without imposing mechanistic assumptions a priori, can uncover gravity-model-like spatial hierarchy of measles spread in which major cities play an important role in driving regional outbreaks. We then turn our attention to integrative approaches that combine mechanistic and machine learning models. Specifically, we investigate how the TSIR can be utilized to improve a state-of-the-art approach known as Physics-Informed-Neural-Networks (PINN) which explicitly combines compartmental models and neural networks. Our results show that the TSIR can facilitate the reconstruction of latent susceptible dynamics, thereby enhancing both forecasts in terms of mean absolute error (MAE) and parameter inference of measles dynamics within the PINN. In summary, our results show that appropriately designed neural network-based models can outperform traditional mechanistic models for short to long-term forecasts, while simultaneously providing mechanistic interpretability. Our work also provides valuable insights into more effectively integrating machine learning models with mechanistic models to enhance public health responses to measles and similar infectious disease systems.
引用
收藏
页数:17
相关论文
共 50 条
  • [41] COMPARATIVE ANALYSIS ON NONLINEAR MODELS FOR RON GASOLINE BLENDING USING NEURAL NETWORKS
    Carreno Aguilera, R.
    Yu, Wen
    Tovar Rodriguez, J. C.
    Acevedo Mosqueda, M. Elena
    Patino Ortiz, M.
    Medel Juarez, J. J.
    Pacheco Bautista, D.
    FRACTALS-COMPLEX GEOMETRY PATTERNS AND SCALING IN NATURE AND SOCIETY, 2017, 25 (06)
  • [42] Evaluation of the Freshness of Food Products by Predictive Models and Neural Networks - a Comparative Analysis
    Mladenov, Miroljub
    Dejanov, Martin
    Penchev, Stanislav
    2016 IEEE 8TH INTERNATIONAL CONFERENCE ON INTELLIGENT SYSTEMS (IS), 2016, : 364 - 369
  • [43] Measles Rash Identification Using Transfer Learning and Deep Convolutional Neural Networks
    Glock, Kimberly
    Napier, Charlie
    Gary, Todd
    Gupta, Vibhuti
    Gigante, Joseph
    Schaffner, William
    Wang, Qingguo
    2021 IEEE INTERNATIONAL CONFERENCE ON BIG DATA (BIG DATA), 2021, : 3905 - 3910
  • [44] Multi-Horizon Short-Term Electrical Load Forecasting: A comparative Analysis of Statistical models and Deep Neural Networks
    Tshipata, Obed Tshimanga
    Kazumba, Dave Tshimbalanga
    Nzakuna, Pierre Sedi
    Paciello, Vincenzo
    Lusala, Angelo Kuti
    2024 IEEE INTERNATIONAL SYMPOSIUM ON MEASUREMENTS & NETWORKING, M & N 2024, 2024,
  • [45] Safety Analysis of Deep Neural Networks
    Guidotti, Dario
    PROCEEDINGS OF THE THIRTIETH INTERNATIONAL JOINT CONFERENCE ON ARTIFICIAL INTELLIGENCE, IJCAI 2021, 2021, : 4887 - 4888
  • [46] Sensitivity Analysis of Deep Neural Networks
    Shu, Hai
    Zhu, Hongtu
    THIRTY-THIRD AAAI CONFERENCE ON ARTIFICIAL INTELLIGENCE / THIRTY-FIRST INNOVATIVE APPLICATIONS OF ARTIFICIAL INTELLIGENCE CONFERENCE / NINTH AAAI SYMPOSIUM ON EDUCATIONAL ADVANCES IN ARTIFICIAL INTELLIGENCE, 2019, : 4943 - 4950
  • [47] Deep Neural Networks in Semantic Analysis
    Averkin, Alexey
    Yarushev, Sergey
    10TH INTERNATIONAL CONFERENCE ON THEORY AND APPLICATION OF SOFT COMPUTING, COMPUTING WITH WORDS AND PERCEPTIONS - ICSCCW-2019, 2020, 1095 : 846 - 853
  • [48] Discriminant Analysis Deep Neural Networks
    Li, Li
    Doroslovacki, Milos
    Loew, Murray H.
    2019 53RD ANNUAL CONFERENCE ON INFORMATION SCIENCES AND SYSTEMS (CISS), 2019,
  • [49] Deep Learning Neural Networks and Bayesian Neural Networks in Data Analysis
    Chernoded, Andrey
    Dudko, Lev
    Myagkov, Igor
    Volkov, Petr
    XXIII INTERNATIONAL WORKSHOP HIGH ENERGY PHYSICS AND QUANTUM FIELD THEORY (QFTHEP 2017), 2017, 158
  • [50] Towards Integration of Statistical Hypothesis Tests into Deep Neural Networks
    Aghaebrahimian, Ahmad
    Cieliebak, Mark
    57TH ANNUAL MEETING OF THE ASSOCIATION FOR COMPUTATIONAL LINGUISTICS (ACL 2019), 2019, : 5551 - 5557