Search engine for discovering works of Art, research articles, and books related to Art and Culture
ShareThis
Javascript must be enabled to continue!

Predictive Model of Lyme Disease Epidemic Process Using Machine Learning Approach

View through CrossRef
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.
Title: Predictive Model of Lyme Disease Epidemic Process Using Machine Learning Approach
Description:
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.

Related Results

APPLICATION OF INTELLIGENT MULTIAGENT APPROACH TO LYME DISEASE SIMULATION
APPLICATION OF INTELLIGENT MULTIAGENT APPROACH TO LYME DISEASE SIMULATION
ObjectiveThe objective of this research is to develop the model for calculating the forecast of the Lyme disease dynamics what will help to take effective preventive and control me...
Lyme Arthritis of the Pediatric Ankle
Lyme Arthritis of the Pediatric Ankle
Lyme arthritis results from acute inflammation caused by the spirochete Borrelia burgdorferi. The number of cases per year has been rising since 2006, with ...
Tight or Loose: Analysis of the Organization Cognition Process of Epidemic Risk and Policy Selection
Tight or Loose: Analysis of the Organization Cognition Process of Epidemic Risk and Policy Selection
In the context of Disease X risks, how governments and public health authorities make policy choices in response to potential epidemics has become a topic of increasing concern. Th...
Environmental data in epidemic forecasting: Insights from predictive analytics
Environmental data in epidemic forecasting: Insights from predictive analytics
Epidemic forecasting plays a critical role in public health preparedness and response, enabling proactive measures to mitigate the impact of infectious diseases. Environmental data...
Moving-average based index to timely evaluate the current epidemic situation after COVID-19 outbreak
Moving-average based index to timely evaluate the current epidemic situation after COVID-19 outbreak
[ABSTRACT]A pneumonia outbreak caused by a novel coronavirus (COVID-19) occurred in Wuhan, China at the end of 2019 and then spread rapidly to the whole country. A total of 81,498 ...
The Lyme Disease Controversy: An AI-Driven Discourse Analysis of a Quarter Century of Academic Debate and Divides
The Lyme Disease Controversy: An AI-Driven Discourse Analysis of a Quarter Century of Academic Debate and Divides
ABSTRACTThe scientific discourse surrounding Chronic Lyme Disease (CLD) and Post-Treatment Lyme Disease Syndrome (PTLDS) has evolved over the past twenty-five years into a complex ...
An Approach to Machine Learning
An Approach to Machine Learning
The process of automatically recognising significant patterns within large amounts of data is called "machine learning." Throughout the last couple of decades, it has evolved into ...
Analysis and Prediction of Epidemic Prevention and Control by Police Stations Based on Time Series
Analysis and Prediction of Epidemic Prevention and Control by Police Stations Based on Time Series
<p>It has been over two years since the outburst of the COVID-19 pandemic. Currently, China has entered into a normalization stage and police stations are still in the endeav...

Back to Top