Volume 21 , Issue 2 , PP: 75-83, 2023 | Cite this article as | XML | Html | PDF | Full Length Article
A. Bermúdez del Sol 1 * , Edison Sotalin Nivela 2 , Edwin Miranda Solis 3 , Yasser H. Elawady 4
Doi: https://doi.org/10.54216/IJNS.210207
Because of its far-reaching effects, diabetes remains a major health problem on a worldwide scale. It's a metabolic illness that causes hyperglycemia and a host of other health issues, including cardiovascular disease, renal failure, and neuropathy. Many scientists have spent time and energy over the years trying to develop a reliable diabetes prediction model. Researchers are forced to adopt big data analytics and machine learning (ML)-based methodologies since there are still major open research concerns in this area owing to a lack of acceptable data sets and prediction techniques. This study seeks solutions by way of an examination of healthcare predictive analytics. The major purpose of this research was to explore the potential applications of big data analytics and machine learning-based approaches in the field of diabetes. In this study, we used the neutrosophic AHP as a feature selection method. The neutrosophic AHP is used to compute the importance of features, then apply the machine learning methods to these features. This study applied logistic regression, support vector machine (SVM), and random forest (RF) to predict the disease of diabetes.
Machine Learning , Diabetes Disease , Neutrosophic, Random Forest , Support Vector Machine , Feature Selection.  ,
[1] M. K. Hasan, M. A. Alam, D. Das, E. Hossain, and M. Hasan, “Diabetes prediction using ensembling of different machine learning classifiers,” IEEE Access, vol. 8, pp. 76516–76531, 2020.
[2] S. Larabi-Marie-Sainte, L. Aburahmah, R. Almohaini, and T. Saba, “Current techniques for diabetes prediction: review and case study,” Appl. Sci., vol. 9, no. 21, p. 4604, 2019.
[3] N. S. El_Jerjawi and S. S. Abu-Naser, “Diabetes prediction using artificial neural network,” 2018.
[4] M. Komi, J. Li, Y. Zhai, and X. Zhang, “Application of data mining methods in diabetes prediction,” in 2017 2nd international conference on image, vision and computing (ICIVC), IEEE, 2017, pp. 1006–1010.
[5] J. Li et al., “Feature selection: A data perspective,” ACM Comput. Surv., vol. 50, no. 6, pp. 1–45, 2017.
[6] D. Sisodia and D. S. Sisodia, “Prediction of diabetes using classification algorithms,” Procedia Comput. Sci., vol. 132, pp. 1578–1585, 2018.
[7] S. I. Ayon and M. M. Islam, “Diabetes prediction: a deep learning approach,” Int. J. Inf. Eng. Electron. Bus., vol. 12, no. 2, p. 21, 2019.
[8] A. Mujumdar and V. Vaidehi, “Diabetes prediction using machine learning algorithms,” Procedia Comput. Sci., vol. 165, pp. 292–299, 2019.
[9] N. Nai-Arun and R. Moungmai, “Comparison of classifiers for the risk of diabetes prediction,” Procedia Comput. Sci., vol. 69, pp. 132–142, 2015.
[10] T. N. Joshi and P. P. M. Chawan, “Diabetes prediction using machine learning techniques,” Ijera, vol. 8, no. 1, pp. 9–13, 2018.
[11] N. Jayanthi, B. V. Babu, and N. S. Rao, “Survey on clinical prediction models for diabetes prediction,” J. Big Data, vol. 4, pp. 1–15, 2017.
[12] B. Mahesh, “Machine learning algorithms-a review,” Int. J. Sci. Res. (IJSR).[Internet], vol. 9, pp. 381–386, 2020.
[13] G. Bonaccorso, Machine learning algorithms. Packt Publishing Ltd, 2017.
[14] M. Attya, M. K. El-Sayed, A. Sakr, and H. Ahmed, “An evaluation framework for selecting cloud service provider in neutrosophic environment and Modified Generative Adversarial Network,” IJCI. Int. J. Comput. Inf., vol. 10, no. 1, pp. 78–89, 2023.
[15] Shimaa Said , Mahmoud M. Ibrahim , Mahmoud M. Ismail, An Integrated Multi-Criteria Decision-Making Approach for Identification and Ranking Solar Drying Barriers under Single-Valued Triangular Neutrosophic Sets (SVTNSs), Neutrosophic and Information Fusion, Vol. 2 , No. 1 , (2023) : 35-49 (Doi : https://doi.org/10.54216/NIF.020103).
[16] F. Yiğit, “A Three-Stage Fuzzy Neutrosophic Sets-Based Methodology for Training Assignment,” Available SSRN 4341819, 2023.
[17] A. Aliahmadi and H. Nozari, “Evaluation of security metrics in AIoT and blockchain-based supply chain by Neutrosophic decision-making method,” in Supply Chain Forum: An International Journal, Taylor & Francis, 2023, pp. 31–42.
[18] S. Ray, “A quick review of machine learning algorithms,” in 2019 International conference on machine learning, big data, cloud and parallel computing (COMITCon), IEEE, 2019, pp. 35–39.
[19] A. Singh, N. Thakur, and A. Sharma, “A review of supervised machine learning algorithms,” in 2016 3rd International Conference on Computing for Sustainable Global Development (INDIACom), Ieee, 2016, pp. 1310–1315.
[20] M. Fatima and M. Pasha, “Survey of machine learning algorithms for disease diagnostic,” J. Intell. Learn. Syst. Appl., vol. 9, no. 01, p. 1, 2017.
[21] V. K. Ayyadevara, “Pro machine learning algorithms,” Apress Berkeley, CA, USA, 2018.
[22] G. Chandrashekar and F. Sahin, “A survey on feature selection methods,” Comput. Electr. Eng., vol. 40, no. 1, pp. 16–28, 2014.
[23] J. Miao and L. Niu, “A survey on feature selection,” Procedia Comput. Sci., vol. 91, pp. 919–926, 2016.
[24] V. Kumar and S. Minz, “Feature selection: a literature review,” SmartCR, vol. 4, no. 3, pp. 211–229, 2014.
[25] B. Venkatesh and J. Anuradha, “A review of feature selection and its methods,” Cybern. Inf. Technol., vol. 19, no. 1, pp. 3–26, 2019.
[26] K. Kira and L. A. Rendell, “A practical approach to feature selection,” in Machine learning proceedings 1992, Elsevier, 1992, pp. 249–256.
[27] Ahmed M. Ali, A Multi-Criteria Decision-Making Approach for Piston Material Selection under Single-Valued Trapezoidal Neutrosophic Sets, Neutrosophic and Information Fusion, Vol. 2 , No. 1 , (2023) : 23-43 (Doi : https://doi.org/10.54216/NIF.020102)
[28] F. A. Alzahrani, N. Ghorui, K. H. Gazi, B. C. Giri, A. Ghosh, and S. P. Mondal, “Optimal Site Selection for Women University Using Neutrosophic Multi-Criteria Decision Making Approach,” Buildings, vol. 13, no. 1, p. 152, 2023.
[29] Mona Mohamed, Financial Risks Appraisal based on Dynamic Appraisal Framework, Neutrosophic and Information Fusion, Vol. 2 , No. 1 , (2023) : 50-58 (Doi : https://doi.org/10.54216/NIF.020104)