Optimizing Health Pattern Recognition Particle Swarm Optimization Approach for Enhanced Neural Network Performance

Keywords: Health pattern recognition, fuzzy C-means, particle swarm optimization, hyperparameter optimization, health clusters, optimization algorithms

Abstract

Health pattern recognition is vital for advancing personalized healthcare interventions. This research introduces a synergistic approach, combining Fuzzy C-Means clustering with Particle Swarm Optimization (PSO), to optimize the hyperparameters of an Artificial Neural Network (ANN) and enhance health pattern recognition. Leveraging key features such as 'Smoker,' 'BMI,' and 'GenHlth,' Fuzzy C-Means reveals distinctive health clusters, providing nuanced insights into diverse health profiles within the dataset. Subsequently, the PSO algorithm systematically optimizes critical ANN hyperparameters, significantly decreasing the training loss to 0.004. This reduction underscores the effectiveness of the optimization process, indicating improved learning and predictive capabilities of the ANN. The proposed methodology not only refines health pattern recognition but also holds promise for personalized healthcare analytics. The identified clusters offer actionable insights for tailored interventions, addressing specific health profiles within the population. This research contributes to the evolving landscape of healthcare analytics by integrating advanced clustering and optimization techniques, paving the way for more effective and individualized healthcare strategies.

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Author Biographies

Mohammad A. Assaad, Department of Informatics and Software Engineering, Faculty of Engineering, Cihan University-Erbil, Kurdistan Region, Iraq

Mohammad A.  Assaad is an Assistant Professor, Specialized in Computer Science-Artificial Intelligence. He holds a PhD in Computer Science. Teaching experience that exceeds twenty years in several Syrian public and private universities. Supervising many masters and doctoral students. He published more than twenty-five scientific articles in local and international Journals. 

 

Ghazi H. Shakah, Department of Software Engineering, Ajloun National University, Jordan

Ghazi H. SHakah is a Professor in the Department of Computer Science at Ajloun National University (Jordan) since June 2013. He received his PhD degree in Computer Science at Belarusian State University (Belarus), and his M.Sc. degree in Applied Mathematics from Belarusian University, His research interests include Multi-agent systems, artificial intelligence, and Mobile Computing.

References

S. Mistry, L. Wang, Y. Islam and F. A. J. Osei. A comprehensive study on healthcare datasets using AI techniques. Cancers (Basel), vol. 11, p. 3146, 2022.

S. Williams, H. L. Horsfall, J. P. Funnell, J. G. Hanrahan, D. Z. Khan, W. Muirhead, D. Stoyanov and H. J. Marcus. Artificial Intelligence in brain tumor surgery-an emerging paradigm. Cancers (Basel), vol. 13, p. 5010, 2021.

R. Mahesa and E. P. Wibowo. Optimization of Fuzzy c-Means Clustering Using Particle Swarm Optimization in Brain Tumor Image Segmentation. Journal of Theoretical and Applied Information Technology, vol. 98, pp. 3056-3066, 2020.

A. Pandey, R. Gupta and R. Dubey. Improved brain tumor detection using fuzzy rules with image filtering for tumor identification. International Research Journal of Engineering and Technology (IRJET), vol. 9, no. 5, pp. 202-207, 2018.

R. Siringoringo and J. Jamaluddin. Initializing the fuzzy c-means cluster center with particle swarm optimization for sentiment clustering. Journal of Physics: Conference Series, vol. 1361, 012002, 2018.

American Cancer Society. Brain and Spinal Cord Tumor in Adults Early Detection, Diagnosis, and Staging. cancer. org|1.800.227.2345. Available from: https://www.cancer.org/cancer/types/brain-spinal-cord-tumors-adults/causesrisksprevention/ risk-factors.html

S. Roy, S. Sadhu, S. K. Bandyopadhyay, D. Bhattacharyya and T. H. Kim. Brain tumor classification using Adaptive neurofuzzy inference system from MRI. International Journal of Bio- Science and Bio-Technology, vol. 3, pp. 203-218, 2021.

A. E. Francis. Time Processing of Brain’s Electrical Signals using Normalized Constant-Correlation Function to Diagnose Brain Lesions. In: Cihan University-Erbil Conferences, 3rd International Conference on Communication Engineering and Computer Science (CIC-COCOS’19), 2019.

S. N. Nerurkar. Brain tumor detection using image segmentation. International Journal of Engineering Research in Computer Science and Engineering (IJERCSE), vol. 4, no. 4, pp. 64-70, 2017.

Q. Wu, P. Li, Z. Chen and T. Zong. A clustering-optimized segmentation algorithm and application on food quality detection. Scientific Reports, 13, p. 9069, 2023.

M. Assaad, R. Boné and H. Cardot. A new boosting algorithm for improved time-series forecasting with recurrent neural networks. Information Fusion, vol. 9, pp. 41-55, 2008.

M. Xu, L. Cao, D. Lu, Z. Hu and Y. Yue. Application of swarm intelligence optimization algorithms in image processing: A comprehensive review of analysis, synthesis, and optimization. Biomimetics, vol. 8, p. 235, 2023.

Z. Xiao, R. Huang, Y. Ding, T. Lan, R. Dong, Z. Qin, X. Zhang and W. Wang. A Deep Learning-based Segmentation Method forBrain Tumor in MR Images. In: IEEE 6th International Conference on Computational Advances in Bio and Medical Sciences (ICCABS), 2016.

R. Sharmila and K. S. Joseph. Brain tumor detection of MR image using naïve Bayes classifier and support vector machine. International Journal of Scientific Research in Computer Science, Engineering and Information Technology, vol. 3, no. 3, pp. 690- 695, 2018.

J.N. Wright. CNS injuries in abusive head trauma. American Journal of Roentgenology, vol. 208, pp. 991-1001, 2017.

Published
2024-09-15
How to Cite
1.
Assaad M, Shakah G. Optimizing Health Pattern Recognition Particle Swarm Optimization Approach for Enhanced Neural Network Performance. cuesj [Internet]. 15Sep.2024 [cited 26Jan.2025];8(2):76-3. Available from: https://journals.cihanuniversity.edu.iq/index.php/cuesj/article/view/1198
Section
Research Article