Predictive Model of Lyme Disease Epidemic Process Using Machine Learning Approach

被引:6
作者
Chumachenko, Dmytro [1 ]
Piletskiy, Pavlo [1 ]
Sukhorukova, Marya [2 ]
Chumachenko, Tetyana [2 ]
机构
[1] Natl Aerosp Univ, Dept Math Modelling & Artificial Intelligence, Kharkiv Aviat Inst, UA-61072 Kharkiv, Ukraine
[2] Kharkiv Natl Med Univ, Dept Epidemiol, UA-61000 Kharkiv, Ukraine
来源
APPLIED SCIENCES-BASEL | 2022年 / 12卷 / 09期
关键词
epidemic model; Ixodes tick-borne borreliosis; Lyme disease; epidemic process simulation; machine learning; artificial intelligence; INFECTIOUS-DISEASE; TRANSMISSION; BORRELIOSIS; TICKS; SEASONALITY; SIMULATION; DYNAMICS; ECOLOGY;
D O I
10.3390/app12094282
中图分类号
O6 [化学];
学科分类号
0703 ;
摘要
Lyme disease is the most prevalent tick-borne disease in Eastern Europe. This study focuses on the development of a machine learning model based on a neural network for predicting the dynamics of the Lyme disease epidemic process. A retrospective analysis of the Lyme disease cases reported in the Kharkiv region, East Ukraine, between 2010 and 2017 was performed. To develop the neural network model of the Lyme disease epidemic process, a multilayered neural network was used, and the backpropagation algorithm or the generalized delta rule was used for its learning. The adequacy of the constructed forecast was tested on real statistical data on the incidence of Lyme disease. The learning of the model took 22.14 s, and the mean absolute percentage error is 3.79%. A software package for prediction of the Lyme disease incidence on the basis of machine learning has been developed. Results of the simulation have shown an unstable epidemiological situation of Lyme disease, which requires preventive measures at both the population level and individual protection. Forecasting is of particular importance in the conditions of hostilities that are currently taking place in Ukraine, including endemic territories.
引用
收藏
页数:24
相关论文
共 74 条
[31]   Lyme borreliosis: diagnosis and management [J].
Kullberg, Bart Jan ;
Vrijmoeth, Hedwig D. ;
van de Schoor, Freek ;
Hovius, Joppe W. .
BMJ-BRITISH MEDICAL JOURNAL, 2020, 369
[32]   Fundamental processes in the evolutionary ecology of Lyme borreliosis [J].
Kurtenbach, Klaus ;
Hanincova, Klara ;
Tsao, Jean I. ;
Margos, Gabriele ;
Fish, Durland ;
Ogden, Nicholas H. .
NATURE REVIEWS MICROBIOLOGY, 2006, 4 (09) :660-669
[33]   Modelling the seasonality of Lyme disease risk and the potential impacts of a warming climate within the heterogeneous landscapes of Scotland [J].
Li, Sen ;
Gilbert, Lucy ;
Harrison, Paula A. ;
Rounsevell, Mark D. A. .
JOURNAL OF THE ROYAL SOCIETY INTERFACE, 2016, 13 (116)
[34]  
Lindgren E., 2006, Lyme borreliosis in Europe: influences of climate and climate change, epidemiology, ecology and adaptation measures
[35]   Containing a large bioterrorist smallpox attack: a computer simulation approach [J].
Longini, Ira M., Jr. ;
Halloran, M. Elizabeth ;
Nizam, Azhar ;
Yang, Yang ;
Xu, Shufu ;
Burke, Donald S. ;
Cummings, Derek A. T. ;
Epstein, Joshua M. .
INTERNATIONAL JOURNAL OF INFECTIOUS DISEASES, 2007, 11 (02) :98-108
[36]   Impact of biodiversity and seasonality on Lyme-pathogen transmission [J].
Lou, Yijun ;
Wu, Jianhong ;
Wu, Xiaotian .
THEORETICAL BIOLOGY AND MEDICAL MODELLING, 2014, 11
[37]  
Mac Stephen, 2021, CMAJ Open, V9, pE1005, DOI 10.9778/cmajo.20210024
[38]   The economic burden of Lyme disease and the cost-effectiveness of Lyme disease interventions: A scoping review [J].
Mac, Stephen ;
da Silva, Sara R. ;
Sander, Beate .
PLOS ONE, 2019, 14 (01)
[39]   Modeling transmission dynamics of lyme disease: Multiple vectors, seasonality, and vector mobility [J].
Nguyen, Aileen ;
Mahaffy, Joseph ;
Vaidya, Naveen K. .
INFECTIOUS DISEASE MODELLING, 2019, 4 :28-43
[40]  
Nguyen D., P 7 INT C SERV SYST, DOI [10.1109/icsssm.2010.5530215, DOI 10.1109/ICSSSM.2010.5530215]