Mathematical model for prediction of Tuberculosis in Nigeria using hybrid fractional differential equations and artificial neural network methods

In this paper, we developed a hybrid Fractional Order Differential Equation (FODE) and Artificial Neural Network (ANN) Model to study the transmission dynamics of Tuberculosis (TB) in Nigeria. The data used for the analysis were obtained from the TB report by the World Health Organisation (WHO) TB D...

Full description

Saved in:
Bibliographic Details
Main Authors: Samson Linus Manu, Shikaa Samuel, Taparki Richard, Eshi Priebe Dovi
Format: Article
Language:English
Published: Elsevier 2025-06-01
Series:Franklin Open
Subjects:
Online Access:http://www.sciencedirect.com/science/article/pii/S2773186325000386
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1849423659561648128
author Samson Linus Manu
Shikaa Samuel
Taparki Richard
Eshi Priebe Dovi
author_facet Samson Linus Manu
Shikaa Samuel
Taparki Richard
Eshi Priebe Dovi
author_sort Samson Linus Manu
collection DOAJ
description In this paper, we developed a hybrid Fractional Order Differential Equation (FODE) and Artificial Neural Network (ANN) Model to study the transmission dynamics of Tuberculosis (TB) in Nigeria. The data used for the analysis were obtained from the TB report by the World Health Organisation (WHO) TB Data Base, Nigeria Dash Board, from the years 2010–-2020. For the comparative analysis in this work, two approaches were presented: a system of four FODEs for the TB model formulated in the Caputo sense, and the Hybrid FODE-ANN framework. These FODEs were discretized, and the parameter values were numerically estimated using the Grünwald-Letnikov method while the Hybrid FODE-ANN framework features a NN architecture with one input layer, 15 hidden layers of 100 neurons each, and a hyperbolic tangent (tanh) activation function. Training of the NN involves minimizing a loss function combining data fit and system constraints, optimized using the Adam and L-BFGS algorithms, achieving a high degree of accuracy with an MSE of 6.005×10−6. The result of FODEs shows an R-square estimation accuracy of 0.9968 but was not sufficiently reliable for predictions. Key findings using the Hybrid FODE-ANN framework reveal a steady decline in the susceptible population, reflecting continuous exposure to TB, and an increasing transmission rate, as estimated by the model. Predictions for the exposed, infected, and recovered compartments fit the observed data, with notable exponential growth in infections and recoveries post-2020. Fractional-order parameters, dynamically estimated during training, demonstrate the dynamical behaviour of TB progression under the hybrid framework. These results highlight the urgent need for enhanced TB control measures in Nigeria, including scaled-up vaccination programs, early diagnosis, isolation protocols, public health awareness, and targeted interventions for high-risk groups.
format Article
id doaj-art-6521bddffbbb48dfa16941564f1e0cb6
institution Kabale University
issn 2773-1863
language English
publishDate 2025-06-01
publisher Elsevier
record_format Article
series Franklin Open
spelling doaj-art-6521bddffbbb48dfa16941564f1e0cb62025-08-20T03:30:32ZengElsevierFranklin Open2773-18632025-06-011110024810.1016/j.fraope.2025.100248Mathematical model for prediction of Tuberculosis in Nigeria using hybrid fractional differential equations and artificial neural network methodsSamson Linus Manu0Shikaa Samuel1Taparki Richard2Eshi Priebe Dovi3Corresponding author.; Department of Mathematics and Statistics Taraba State University, P.M.B 1167, Jalingo, Taraba state, NigeriaDepartment of Mathematics and Statistics Taraba State University, P.M.B 1167, Jalingo, Taraba state, NigeriaDepartment of Mathematics and Statistics Taraba State University, P.M.B 1167, Jalingo, Taraba state, NigeriaDepartment of Mathematics and Statistics Taraba State University, P.M.B 1167, Jalingo, Taraba state, NigeriaIn this paper, we developed a hybrid Fractional Order Differential Equation (FODE) and Artificial Neural Network (ANN) Model to study the transmission dynamics of Tuberculosis (TB) in Nigeria. The data used for the analysis were obtained from the TB report by the World Health Organisation (WHO) TB Data Base, Nigeria Dash Board, from the years 2010–-2020. For the comparative analysis in this work, two approaches were presented: a system of four FODEs for the TB model formulated in the Caputo sense, and the Hybrid FODE-ANN framework. These FODEs were discretized, and the parameter values were numerically estimated using the Grünwald-Letnikov method while the Hybrid FODE-ANN framework features a NN architecture with one input layer, 15 hidden layers of 100 neurons each, and a hyperbolic tangent (tanh) activation function. Training of the NN involves minimizing a loss function combining data fit and system constraints, optimized using the Adam and L-BFGS algorithms, achieving a high degree of accuracy with an MSE of 6.005×10−6. The result of FODEs shows an R-square estimation accuracy of 0.9968 but was not sufficiently reliable for predictions. Key findings using the Hybrid FODE-ANN framework reveal a steady decline in the susceptible population, reflecting continuous exposure to TB, and an increasing transmission rate, as estimated by the model. Predictions for the exposed, infected, and recovered compartments fit the observed data, with notable exponential growth in infections and recoveries post-2020. Fractional-order parameters, dynamically estimated during training, demonstrate the dynamical behaviour of TB progression under the hybrid framework. These results highlight the urgent need for enhanced TB control measures in Nigeria, including scaled-up vaccination programs, early diagnosis, isolation protocols, public health awareness, and targeted interventions for high-risk groups.http://www.sciencedirect.com/science/article/pii/S2773186325000386Mathematical modelTuberculosis predictionHybrid fractional differential equationsArtificial Neural Network Methods
spellingShingle Samson Linus Manu
Shikaa Samuel
Taparki Richard
Eshi Priebe Dovi
Mathematical model for prediction of Tuberculosis in Nigeria using hybrid fractional differential equations and artificial neural network methods
Franklin Open
Mathematical model
Tuberculosis prediction
Hybrid fractional differential equations
Artificial Neural Network Methods
title Mathematical model for prediction of Tuberculosis in Nigeria using hybrid fractional differential equations and artificial neural network methods
title_full Mathematical model for prediction of Tuberculosis in Nigeria using hybrid fractional differential equations and artificial neural network methods
title_fullStr Mathematical model for prediction of Tuberculosis in Nigeria using hybrid fractional differential equations and artificial neural network methods
title_full_unstemmed Mathematical model for prediction of Tuberculosis in Nigeria using hybrid fractional differential equations and artificial neural network methods
title_short Mathematical model for prediction of Tuberculosis in Nigeria using hybrid fractional differential equations and artificial neural network methods
title_sort mathematical model for prediction of tuberculosis in nigeria using hybrid fractional differential equations and artificial neural network methods
topic Mathematical model
Tuberculosis prediction
Hybrid fractional differential equations
Artificial Neural Network Methods
url http://www.sciencedirect.com/science/article/pii/S2773186325000386
work_keys_str_mv AT samsonlinusmanu mathematicalmodelforpredictionoftuberculosisinnigeriausinghybridfractionaldifferentialequationsandartificialneuralnetworkmethods
AT shikaasamuel mathematicalmodelforpredictionoftuberculosisinnigeriausinghybridfractionaldifferentialequationsandartificialneuralnetworkmethods
AT taparkirichard mathematicalmodelforpredictionoftuberculosisinnigeriausinghybridfractionaldifferentialequationsandartificialneuralnetworkmethods
AT eshipriebedovi mathematicalmodelforpredictionoftuberculosisinnigeriausinghybridfractionaldifferentialequationsandartificialneuralnetworkmethods