Journal of Intelligent Systems and Internet of Things

Journal DOI

https://doi.org/10.54216/JISIoT

Submit Your Paper

2690-6791ISSN (Online) 2769-786XISSN (Print)

Volume 10 , Issue 2 , PP: 76-89, 2023 | Cite this article as | XML | Html | PDF | Full Length Article

Ant Colony Optimized XGBoost for Early Diabetes Detection: A Hybrid Approach in Machine Learning

A. Yuva Krishna 1 , K. Ravi Kiran 2 , N. Raghavendra Sai 3 , Aditi Sharma 4 * , S. Phani Praveen 5 , Jitendra Pandey 6

  • 1 Department of CSE, PVP Siddhartha Institute of Technology, Vijayawada, A.P, India - (ayk@pvpsiddhartha.ac.in)
  • 2 Department of CSE, Jawaharlal Nehru Technological University, Kakinada, A.P, India - (kravi1189@gmail.com)
  • 3 Department of CSE, Koneru Lakshmaiah Education Foundation, Vaddeswaram, AP, India - (nallagatlaraghavendra@gmail.com)
  • 4 Department of Computer Science and Engineering, Symbiosis Institute of Technology, Symbiosis International University, Pune, India; IEEE Senior Member, Symbiosis International University, Pune, India - (aditi.sharma@ieee.org)
  • 5 Department of CSE, PVP Siddhartha Institute of Technology, Vijayawada, A.P, India - (phani.0713@gmail.com)
  • 6 Department of Computing and Electronic Engineering, Middle East College, Muscat, Oman - (jitendra@mec.edu.om)
  • Doi: https://doi.org/10.54216/JISIoT.100207

    Received: April 19, 2023 Revised: July 19, 2023 Accepted: October 06, 2023
    Abstract

    The primary objective of this research endeavour is to concentrate on the timely detection and prognostication of diabetes and Parkinson's disease through the utilisation of machine learning techniques, specifically the integration of Ant Colony Optimisation (ACO) with the XGBoost algorithm (ACXG). The healthcare issues presented by diabetes and Parkinson's disease underscore the criticality of early detection in order to facilitate effective intervention and enhance patient outcomes. The objective of this work is to establish a connection between the prediction of diabetes and the classification of Parkinson's disease, thereby developing a comprehensive model that improves the prognosis and prevention of these diseases. The project entails the collection and pre-processing of pertinent datasets, afterwards employing a range of classification approaches such as Logistic Regression, Support Vector Machine (SVM), Random Forest, and the innovative ACO-XGBoost model. The results of performance comparisons demonstrate that ACO-XGBoost has superior performance in contrast to conventional approaches. It achieves notable levels of accuracy, precision, recall, F1-score, and AUC, hence establishing its significance as a valuable tool for disease prediction. The incorporation of Ant Colony Optimisation (ACO) with XGBoost (ACXG) showcases the capacity to augment predictive precision and sensitivity, presenting notable progressions in healthcare methodologies. The present study makes a valuable contribution to the advancement of more accurate predictive models, ultimately enhancing the quality of patient care and public health outcomes.

    Keywords :

    Logistic Regression , Support Vector Machine (SVM) , Random Forest , ACO-XGBoost (ACXG)

    References

    [1]    Li, Mingqi, et al. “Diabetes Prediction Based on XGBoost Algorithm.” IOP Conference Series: Materials Science and Engineering, vol. 768, no. 7, IOP Publishing, Mar. 2020, p. 072093. Crossref, https://doi.org/10.1088/1757-899x/768/7/072093.

    [2]    IoT-Based Smart Mask Protection against the Waves of COVID-19, Goar, V.,Sharma, A.,Yadav, N.S.,Chowdhury, S.,Hu, Y.-C.Journal of Ambient Intelligence and Humanized Computingthis link is disabled, 2023, 14(8), pp. 11153–11164

    [3]    Paleczek, Anna, et al. “Artificial Breath Classification Using XGBoost Algorithm for Diabetes Detection.” Sensors, vol. 21, no. 12, June 2021, p. 4187. Crossref, https://doi.org/10.3390/s21124187.

    [4]    N. Alapati et al., "Cardiovascular Disease Prediction using machine learning," 2022 International Conference on Fourth Industrial Revolution Based Technology and Practices (ICFIRTP), Uttarakhand, India, 2022, pp. 60-66, doi: 10.1109/ICFIRTP56122.2022.10059422.

    [5]    Ultrasound Image Noise Reduction and Enhancement Model based on Yellow Saddle Goatfish Optimization Algorithm, Goel, A.,Wasim, J.,Srivastava, P.K. ,Sharma, A. Fusion: Practice and Applicationsthis link is disabled, 2023, 12(2), pp. 8–18

    [6]    Abdurrahman, G., and M. Sintawati. “Implementation of Xgboost for Classification of Parkinson’s Disease.” Journal of Physics: Conference Series, vol. 1538, no. 1, IOP Publishing, May 2020, p. 012024. Crossref, https://doi.org/10.1088/1742-6596/1538/1/012024.

    [7]    S. P. Praveen, S. Sindhura, P. N. Srinivasu and S. Ahmed, "Combining CNNs and Bi-LSTMs for Enhanced Network Intrusion Detection: A Deep Learning Approach," 2023 3rd International Conference on Computing and Information Technology (ICCIT), Tabuk, Saudi Arabia, 2023, pp. 261-268, doi: 10.1109/ICCIT58132.2023.10273871.

    [8]    Safeguarding Digital Essence: A Sub-band DCT Neural Watermarking Paradigm Leveraging GRNN and CNN for Unyielding Image Protection and Identification Dixit, A., Aggarwal, R.P., Sharma, B.K. , Sharma, A., Journal of Intelligent Systems and Internet of Things, 2023, 10(1), pp. 33–47

    [9]    Zhu, Changsheng, Christian Uwa Idemudia, and Wenfang Feng. "Improved logistic regression model for diabetes prediction by integrating PCA and K-means techniques." Informatics in Medicine Unlocked 17 (2019): 100179.

    [10] Oza, Ami, and Anuja Bokhare. "Diabetes prediction using logistic regression and K-nearest neighbor." Congress on Intelligent Systems: Proceedings of CIS 2021, Volume 2. Singapore: Springer Nature Singapore, 2022.

    [11] Rajendra, Priyanka, and Shahram Latifi. "Prediction of diabetes using logistic regression and ensemble techniques." Computer Methods and Programs in Biomedicine Update 1 (2021): 100032.

    [12] Gupta, Aditya, et al. "NSGA‐II‐XGB: Meta‐heuristic feature selection with XGBoost framework for diabetes prediction." Concurrency and Computation: Practice and Experience 34.21 (2022): e7123.

    [13] Srinivasu, P. N., Shafi, J., Krishna, T. B., Sujatha, C. N., Praveen, S. P., & Ijaz, M. F. (2022). Using recurrent neural networks for predicting type-2 diabetes from genomic and tabular data. Diagnostics, 12(12), 3067.

    [14] Abedallah Zaid Abualkishik. (2021). The Application of Fuzzy Collaborative Intelligence to Detect COVID-19 Minor Symptoms. Journal of Intelligent Systems and Internet of Things, 5 ( 2 ), 97-109.

    [15] Sharma, A., Sharma, C., Sharma, R., Panchal, K.D. (2023). Crime Analysis and Prediction in 7 States of India Using Statistical Software RStudio. In: Goar, V., Kuri, M., Kumar, R., Senjyu, T. (eds) Advances in Information Communication Technology and Computing. Lecture Notes in Networks and Systems, vol 628. Springer, Singapore. https://doi.org/10.1007/978-981-19-9888-1_8

    [16] Nagaraj, P., and P. Deepalakshmi. "Diabetes Prediction Using Enhanced SVM and Deep Neural Network Learning Techniques: An Algorithmic Approach for Early Screening of Diabetes." International Journal of Healthcare Information Systems and Informatics (IJHISI) 16.4 (2021): 1-20.

    [17] Sisodia, Deepti, and Dilip Singh Sisodia. "Prediction of diabetes using classification algorithms." Procedia computer science 132 (2018): 1578-1585.

    [18] Hussain, Arooj, and Sameena Naaz. "Prediction of diabetes mellitus: comparative study of various machine learning models." International Conference on Innovative Computing and Communications: Proceedings of ICICC 2020, Volume 2. Springer Singapore, 2021.

    [19] Joshi, Tejas N., and Pramila M. Chawan. "Logistic regression and svm based diabetes prediction system." International Journal For Technological Research In Engineering 5 (2018): 4347-4350.

    [20] Palimkar, Prajyot, Rabindra Nath Shaw, and Ankush Ghosh. "Machine learning technique to prognosis diabetes disease: Random forest classifier approach." Advanced Computing and Intelligent Technologies: Proceedings of ICACIT 2021. Springer Singapore, 2022.

    [21] S Phani Praveen, V Sathiya Suntharam, S Ravi, U. Harita, Venkata Nagaraju Thatha and D Swapna, “A Novel Dual Confusion and Diffusion Approach for Grey Image Encryption using Multiple Chaotic Maps” International Journal of Advanced Computer Science and Applications(IJACSA), 14(8), 2023. http://dx.doi.org/10.14569/IJACSA.2023.01408106.

    [22] Dutta, Debadri, Debpriyo Paul, and Parthajeet Ghosh. "Analysing feature importances for diabetes prediction using machine learning." 2018 IEEE 9th Annual Information Technology, Electronics and Mobile Communication Conference (IEMCON). IEEE, 2018.

    [23] Sirisha, U., & Bolem, S. C. (2022). Aspect based sentiment & emotion analysis with ROBERTa, LSTM. International Journal of Advanced Computer Science and Applications13(11).

    [24] Sirisha, U., Praveen, S. P., Srinivasu, P. N., Barsocchi, P., & Bhoi, A. K. (2023). Statistical Analysis of Design Aspects of Various YOLO-Based Deep Learning Models for Object Detection. International Journal of Computational Intelligence Systems, 16(1), 126.

    [25] Ashish Patel,Richa Mishra ,Aditi Sharma. (2023). Maize Plant Leaf Disease Classification Using Supervised Machine Learning Algorithms. Fusion: Practice and Applications, 13 ( 2 ), 08-21.

    [26] Sirisha, U., Chandana, B. S., & Harikiran, J. (2023). NAM-YOLOV7: An Improved YOLOv7 Based on Attention Model for Animal Death Detection. Traitement du Signal40(2).

    [27] S. P. Praveen, S. Sindhura, A. Madhuri and D. A. Karras, "A Novel Effective Framework for Medical Images Secure Storage Using Advanced Cipher Text Algorithm in Cloud Computing," 2021 IEEE International Conference on Imaging Systems and Techniques (IST), Kaohsiung, Taiwan, 2021, pp. 1-4, doi: 10.1109/IST50367.2021.9651475.

    [28] Gajender Kumar,Vinod Patidar,Prolay Biswas,Mukta Patel,Chaur Singh Rajput,Anita Venugopal,Aditi Sharma. (2023). IOT enabled Intelligent featured imaging Bone Fractured Detection System. Journal of Intelligent Systems and Internet of Things, 9 ( 2 ), 08-22.

    [29] Mahmoud A. Zaher,Nashaat K. ElGhitany. (2021). Intelligent System for Body Fat Percentage Prediction. Journal of Intelligent Systems and Internet of Things, 5 ( 2 ), 62-71.

    [30] Elizabeth Mayorga Aldaz,Roberto Aguilar Berrezueta,Neyda Hernandez Bandera. (2023). An Intelligent Schizophrenia Detection based on the Fusion of Multivariate Electroencephalography Signals. Fusion: Practice and Applications, 13 ( 2 ), 42-51.

    [31] C. Anuradha, D. Swapna, B. Thati, V. N. Sree and S. P. Praveen, "Diagnosing for Liver Disease Prediction in Patients Using Combined Machine Learning Models," 2022 4th International Conference on Smart Systems and Inventive Technology (ICSSIT), Tirunelveli, India, 2022, pp. 889-896, doi: 10.1109/ICSSIT53264.2022.9716312.

    [32] B. Narasimha Swamy,Rajeswari Nakka,Aditi Sharma,S. Phani Praveen,Venkata Nagaraju Thatha,Kumar Gautam. (2023). An Ensemble Learning Approach for detection of Chronic Kidney Disease (CKD). Journal of Intelligent Systems and Internet of Things, 10 ( 2 ), 38-48.

    [33] Krishna, T., Praveen, S. P., Ahmed, S., & Srinivasu, P. N. (2022). Software-driven secure framework for mobile healthcare applications in IoMT. Intelligent Decision Technologies, (Preprint), 1-14.

    Cite This Article As :
    Yuva, A.. , Ravi, K.. , Raghavendra, N.. , Sharma, Aditi. , Phani, S.. , Pandey, Jitendra. Ant Colony Optimized XGBoost for Early Diabetes Detection: A Hybrid Approach in Machine Learning. Journal of Intelligent Systems and Internet of Things, vol. , no. , 2023, pp. 76-89. DOI: https://doi.org/10.54216/JISIoT.100207
    Yuva, A. Ravi, K. Raghavendra, N. Sharma, A. Phani, S. Pandey, J. (2023). Ant Colony Optimized XGBoost for Early Diabetes Detection: A Hybrid Approach in Machine Learning. Journal of Intelligent Systems and Internet of Things, (), 76-89. DOI: https://doi.org/10.54216/JISIoT.100207
    Yuva, A.. Ravi, K.. Raghavendra, N.. Sharma, Aditi. Phani, S.. Pandey, Jitendra. Ant Colony Optimized XGBoost for Early Diabetes Detection: A Hybrid Approach in Machine Learning. Journal of Intelligent Systems and Internet of Things , no. (2023): 76-89. DOI: https://doi.org/10.54216/JISIoT.100207
    Yuva, A. , Ravi, K. , Raghavendra, N. , Sharma, A. , Phani, S. , Pandey, J. (2023) . Ant Colony Optimized XGBoost for Early Diabetes Detection: A Hybrid Approach in Machine Learning. Journal of Intelligent Systems and Internet of Things , () , 76-89 . DOI: https://doi.org/10.54216/JISIoT.100207
    Yuva A. , Ravi K. , Raghavendra N. , Sharma A. , Phani S. , Pandey J. [2023]. Ant Colony Optimized XGBoost for Early Diabetes Detection: A Hybrid Approach in Machine Learning. Journal of Intelligent Systems and Internet of Things. (): 76-89. DOI: https://doi.org/10.54216/JISIoT.100207
    Yuva, A. Ravi, K. Raghavendra, N. Sharma, A. Phani, S. Pandey, J. "Ant Colony Optimized XGBoost for Early Diabetes Detection: A Hybrid Approach in Machine Learning," Journal of Intelligent Systems and Internet of Things, vol. , no. , pp. 76-89, 2023. DOI: https://doi.org/10.54216/JISIoT.100207