>
Fa   |   Ar   |   En
   short-term tuberculosis incidence rate prediction for europe using machine learning algorithms  
   
نویسنده maipan-uku jamilu yahaya ,cavus nadire ,sekeroglu boran
منبع journal of optimization in industrial engineering - 2023 - دوره : 16 - شماره : 2 - صفحه:213 -219
چکیده    Tuberculosis (tb) remains a significant public health concern in europe, necessitating effective disease management and resource allocation. predicting short-term tb incidence rates using machine learning algorithms offers a data-driven approach to aid policymakers and healthcare professionals in making informed decisions. machine learning (ml) algorithms are essential for prediction tasks due to their ability to establish a relationship for data sequences. in this study, three machine learning algorithms, namely, decision tree (dt), random forest (rf), and artificial neural network (ann), are implemented to predict the tuberculosis incidence rates and to compare the efficacy of ml algorithms for tuberculosis incidence rates prediction for 2025, among europe. even though all models achieved considerable results, dt obtained superior prediction rates for the future tb incidence rate with mse, mae, and r2 of 0.000555, 0.01506, and 0.96430 while rf 0.000882, 0.01781, and 0.94329, and ann 0.000767, 0.02315, and 0.95066. the prediction results showed that a significant decrease in tb incidence rates is expected for 2025 form 49,752 in 2019 to 38,509 in 2025, except finland and malta.
کلیدواژه tuberculosis incidence rates; europe; machine learning; decision tree; random forest; ann
آدرس near east university, turkey, ibrahim badamasi babangida university, department of computer science, nigeria, near east university, turkey
پست الکترونیکی boran359@gmail.com
 
     
   
Authors
  
 
 

Copyright 2023
Islamic World Science Citation Center
All Rights Reserved