Intelligent Multiagent Approach to Morbidity by Ixodes Tick-Born Borreliosis Forecasting
Dmytro Chumachenko, Pavlo Piletskiy, Mariia Sukhorukova1
Copyright : © 2018 Authors. This is an open-access article distributed under the terms of the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited.
The aim of the study is to construct an intelligent multiagent model of the dynamics of the spread of morbidity by Ixodes tick borreliosis. The proposed model allows taking into account heterogeneity of the population, knowledge base of agents, as well as intellectual communications of the modeled population. The intelligent multiagent approach to simulation allows increasing the reliability of the model. This will allow epidemiological experts to take timely and effective anti-epidemic measures to reduce morbidity, which has a high social and economic importance for society.
1. Introduction
2. Materials And Methods
dS/dt = -ΒSI, dI/dt = -ΒSI - γI, dR/dt = γI, (1)
where Β intensity of contacts between individuals,γ is intensity of transferring of individuals to state R.
There are modifications of the SIR model, designed to take into account the characteristics of one or another simulated process. In most cases, they are used to simulate the dynamics of the epidemic process of morbidity. For example, the model SEIR is suitable for modeling the spread of influenza. In it to the above-mentioned groups of modeled individuals of the SIR model one more state is added: "Exposed" – people whose disease is in the incubation period (E) [8]. Then the system of equations describing the increment of the number of sick individuals will be:
dS/dt = B-ΒSI - µS, dE/dt = ΒSI -(ξ + µ)E, dI/dt = ξE - (γ + µ) I, dR/dt = γI - µR, (2)
where В is average birth rate of individuals at simulated area, µ is average death rate of individuals at simulated area, 1/ε is average length of disease incubation period.
The greatest contribution to the development of the simulation of the epidemic process in recent years has been made by population models. Population models are discrete-event models in which all simulated individuals are clearly divided into social groups that are formed taking into account the age of individuals, in detailed models the occupation of the individual can be taken into account. The spread of infection between individuals can occur only within the framework of one "contact" group. Every day in the model, individuals, depending on their social group, form certain contact groups in which a sick individual can be transmitted to a healthy individual [9]. Contact groups are determined by the characteristic structure of society, which will depend on the modeled territory.
Mathematical modeling as an element of monitoring of natural focal infections makes it possible to assess the epidemiological potential of foci in the region and in individual territories, to forecast the trends of the epidemic process and to determine the main priorities and directions in the prevention of Ixodes tick borreliosis. Predicting the spread of this disease will allow to establish the main factors influencing the intensification of the epidemic process of the Ixodes tick borreliosis, and to conduct rational preventive and antiepidemic measures with minimal financial and labor costs.
In this research, the process of developing the forecast is carried out using simulation multiagent approach.
A fundamental difference between the new concept of modeling is the introduction and formalization of sensory connections (variables) between the interacting active elements of the dynamic system. These relationships determine the change in the state and behavior of interacting agents and the system as a whole in the direction of "survival" and achievement of goals in complex situations of agreement and opposition, initial uncertainty, risk and conflict, incomplete and unclear information about the degree of achievement of the goal.
An agent is a software module capable of performing the functions assigned to it by some living or cybernetic organism depending on the functions of another agent and the effects of the active medium.
In accordance with the level of artificial intelligence and way of behavior, agents can be classified into the following main types:
• Reflexive agents characterized by physical and social states; have a simple behavior in the form of reactions to current environmental changes and information from other agents on the "condition-action" product rules;
• Knowledge-oriented agents have a physical, social and cognitive state; their behavior is based on a priori knowledge of the environment, identifying the situation and making a decision to achieve the goal;
• Purposeful trained intellectual agents have a given knowledge base and hierarchy of goals, a bank of behavior models and strategies to achieve the goal in conditions of uncertainty, risk and opposition;
• Self-learning, purposeful agents are able to accumulate knowledge on the basis of a large amount of data and ontology of events in the process of interaction with other agents and the environment, adapt to the situation, choose a strategy for achieving the chosen goal and assess the degree of its achievement;
• Emotionally-motivated agents possess, along with the above-described "abilities" of the preceding classes, the emotional state and psychotype in the models of human behavior.
The behavior of the agent is described as an iterative procedure for processing data on the state of other agents and the environment with the choice of a strategy for targeted actions, and is represented by a sequence of operations in discrete time periods, called timely events.
Each operation corresponds to its algorithmic and its program modules, which provide:
1. perception of information and the accumulation of knowledge about the environment and the environment of interaction or conflict (sensory module);
2. mechanism of interaction and data processing from counterparties;
3. analysis of one's own state and the status of counterparties with the selection or correction of target functions (intelligent module);
4. making autonomous decisions and choosing strategies. The behavior of the agent can be represented by some recursive form that describes the finding and selection at the next step of the transition function from the initial state to the new state in the direction of improving the objective function.
To automate the prediction of the incidence of Ixodes tick borreliosis a software package has been developed using C# programing language, that allows calculating prognosis morbidity based on existing statistical data in real time. In developed model, the configuration of the software package includes data for the period 2006 – 2017. The data for the years include intensive incidence rates per 100,000 population, the population's negotiability for tick bites, the results of studies of ticks removed from humans, the presence of Borrelia and the proportion of ticks infected by Borrelia collected by the flagging method, the numbers of ticks.
To start calculating the forecast, you must enter the years for which data are available, and the number of years for which you need to perform a forecast (Figure. 1).
Then you need to enter the data for each year or select the available values from the database and perform a forecast (Figure. 2).
After entering the data for one year, you need to click on the "Add" button. After filling all the values for each year, you must click "Prediction" to complete the forecast (Figure. 3).
The program complex automatically calculates the forecast, the results of which are displayed in the form of graphs. Pointing the mouse cursor at the point of interest you can see the exact value.
3. Results of Forecasting
As can be seen from the graph (Figure. 5), general trends in the incidence of Lyme disease morbidity and the population's request for medical assistance for ticks by 100,000 people are projected.
Based on the calculated prognosis (Figure. 6), a slight decrease and stabilization of the number of ticks in natural habitats can be expected.
Figure 7 shows the quantity of tick, taken from people.
Figure 8 shows the number of ticks removed from the flag, i.e. with a special analysis of the study area.
As can be seen from Figure 9, there is a lack of a direct relationship between the level of infection by Borrelias in ticks in nature and ticks removed from humans.
4. Estimation of the accuracy of the constructed forecast
5. Conclusions
References