Neural Network Prediction Model to Explore Complex Nonlinear Behavior in Dynamic Biological Networkopen access
- Authors
- Alsharaiah, M.A.; Baniata, L.H.; Al, Adwan O.; Alghanam, O.A.; Abu-Shareha, A.A.; Alzboon, L.; Mustafa, N.; Baniata, M.
- Issue Date
- Jun-2022
- Publisher
- International Association of Online Engineering
- Keywords
- Artificial neural feed forward network; Back propagation; Cyclin; Degradation; Ordinary differential equations model (ode’s); Organism; Prediction; Progression process; Synthesis
- Citation
- International Journal of Interactive Mobile Technologies, v.16, no.12, pp.32 - 51
- Journal Title
- International Journal of Interactive Mobile Technologies
- Volume
- 16
- Number
- 12
- Start Page
- 32
- End Page
- 51
- URI
- https://scholarworks.bwise.kr/gachon/handle/2020.sw.gachon/85126
- DOI
- 10.3991/ijim.v16i12.30467
- ISSN
- 1865-7923
- Abstract
- Organism network systems provide a biological data with high complex level. Besides, these data reflect the complex activities in organisms that identifies nonlinear behavior as well. Hence, mathematical modelling methods such as Ordinary Differential Equations model (ODE’s) are becoming significant tools to predict, and expose implied knowledge and data. Unfortunately, the aforementioned approaches face some of cons such as the scarcity and the vagueness in the biological knowledge to expect the protein concentrations measurements. So, the main object of this research presents a computational model such as a neural Feed Forward Network model using Back Propagation algorithm to engage with imprecise and missing biological knowledge to provide more insight about biological systems in organisms. Therefore, the model predicts protein concentration and illustrates the nonlinear behavior for the biological dynamic behavior in precise form. Also, the desired results are matched with recent ODE’s model and it provides precise results in simpler form than ODEs. © 2022. International Journal of Interactive Mobile Technologies. All Rights Reserved.
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