Prediction of dengue cases using the attention-based long short-term memory (LSTM) approach

被引:3
作者
Majeed, Mokhalad A. [1 ]
Shafri, Helmi Z. M. [1 ,2 ]
Wayayok, Aimrun [3 ]
Zulkafli, Zed [1 ]
机构
[1] Univ Putra Malaysia UPM, Dept Civil Engn, Fac Engn, Serdang, Malaysia
[2] Univ Putra Malaysia, Geospatial Informat Sci Res Ctr GISRC, Fac Engn, Serdang, Malaysia
[3] Univ Putra Malaysia, Dept Biol & Agr Engn, Fac Engn, Serdang, Malaysia
关键词
dengue fever; LSTM; attention; deep learning; Malaysia; OUTBREAKS;
D O I
10.4081/gh.2023.1176
中图分类号
R19 [保健组织与事业(卫生事业管理)];
学科分类号
摘要
This research proposes a 'temporal attention' addition for long-short term memory (LSTM) models for dengue prediction. The number of monthly dengue cases was collected for each of five Malaysian states i.e. Selangor, Kelantan, Johor, Pulau Pinang, and Melaka from 2011 to 2016. Climatic, demographic, geographic and temporal attributes were used as covariates. The proposed LSTM models with temporal attention was compared with several benchmark models including a linear support vector machine (LSVM), a radial basis function support vector machine (RBFSVM), a decision tree (DT), a shallow neural network (SANN) and a deep neural network (D-ANN). In addition, experiments were conducted to analyze the impact of look-back settings on each model performance. The results showed that the attention LSTM (A-LSTM) model performed best, with the stacked, attention LSTM (SA-LSTM) one in second place. The LSTM and stacked LSTM (S-LSTM) models performed almost identically but with the accuracy improved by the attention mechanism was added. Indeed, they were both found to be superior to the benchmark models mentioned above. The best results were obtained when all attributes were included in the model. The four models (LSTM, S-LSTM, A-LSTM and SA-LSTM) were able to accurately predict dengue presence 1-6 months ahead. Our findings provide a more accurate dengue prediction model than previously used, with the prospect of also applying this approach in other geographic areas.
引用
收藏
页数:11
相关论文
共 48 条
  • [1] Altassan KK, 2020, THESIS
  • [2] Anggraeni Wiwik, 2020, 2020 International Seminar on Intelligent Technology and Its Applications (ISITIA). Proceedings, P199, DOI 10.1109/ISITIA49792.2020.9163708
  • [3] Spatiotemporal dengue fever hotspots associated with climatic factors in Taiwan including outbreak predictions based on machine-learning
    Anno, Sumiko
    Hara, Takeshi
    Kai, Hiroki
    Lee, Ming-An
    Chang, Yi
    Oyoshi, Kei
    Mizukami, Yousei
    Tadono, Takeo
    [J]. GEOSPATIAL HEALTH, 2019, 14 (02) : 183 - 194
  • [4] A Multi-Stage Machine Learning Approach to Predict Dengue Incidence: A Case Study in Mexico
    Appice, Annalisa
    Gel, Yulia R.
    Iliev, Iliyan
    Lyubchich, Vyacheslav
    Malerba, Donato
    [J]. IEEE ACCESS, 2020, 8 : 52713 - 52725
  • [5] Dengue forecasting in Sao Paulo city with generalized additive models, artificial neural networks and seasonal autoregressive integrated moving average models
    Baquero, Oswaldo Santos
    Reis Santana, Lidia Maria
    Chiaravalloti-Neto, Francisco
    [J]. PLOS ONE, 2018, 13 (04):
  • [6] Bogado JV, 2020, P SERIES BRAZILIAN S, V7
  • [7] Predicting Dengue Outbreaks in Cambodia
    Cousien, Anthony
    Ledien, Julia
    Souv, Kimsan
    Leang, Rithea
    Huy, Rekol
    Fontenille, Didier
    Ly, Sowath
    Duong, Veasna
    Dussart, Philippe
    Piola, Patrice
    Cauchemez, Simon
    Tarantola, Arnaud
    [J]. EMERGING INFECTIOUS DISEASES, 2019, 25 (12) : 2281 - 2283
  • [8] Interpretable spatio-temporal attention LSTM model for flood forecasting
    Ding, Yukai
    Zhu, Yuelong
    Feng, Jun
    Zhang, Pengcheng
    Cheng, Zirun
    [J]. NEUROCOMPUTING, 2020, 403 : 348 - 359
  • [9] Diong J. Y., 2015, Malaysian Meteorol Department, V3, P1
  • [10] Donahue J, 2015, PROC CVPR IEEE, P2625, DOI 10.1109/CVPR.2015.7298878