Advertisement

Fog-assisted personalized healthcare-support system for remote patients with diabetes

  • Malathi Devarajan
  • V. Subramaniyaswamy
  • V. Vijayakumar
  • Logesh RaviEmail author
Original Research
  • 10 Downloads

Abstract

Diabetes is featured by the high prevalence and low control resulting in high premature mortality rate. Maintaining the blood glucose level can bring considerable medical benefits and reduces the risk of diabetes. In real-time, continuous monitoring of blood glucose level is the major challenge. However, monitoring only glucose level without considering other factors such as ECG and physical activities can mislead to improper medication. Therefore, the ever-growing requirement for omnipresent healthcare system has engaged promising technologies such as the Internet of Things and cloud computing. Utilization of these techniques result with the computational complexity, high latency, and mobility problems. To address the aforesaid issues, we propose an energy efficient fog-assisted healthcare system to maintain the blood glucose level. The J48Graft decision tree is used to predict the risk level of diabetes with higher classification accuracy. By deploying fog computing, an emergency alert is generated immediately for precautionary measures. Experimental results illustrate the improved performance of the proposed system in terms of energy efficiency, prediction accuracy, computational complexity, and latency.

Keywords

Healthcare-support system Internet of Things Fog computing J48Graft classifier Cloud computing Diabetes 

Notes

Acknowledgements

Authors are grateful to the SASTRA Deemed University, Thanjavur, India for the financial support and infrastructural facilities provided to carry out this research.

References

  1. Abawajy JH, Hassan MM (2017) Federated internet of things and cloud computing pervasive patient health monitoring system. IEEE Commun Mag 55(1):48–53CrossRefGoogle Scholar
  2. Adeyemo OO, Adeyeye TO, Ogunbiyi D (2015) Comparative study of ID3/C4.5 decision tree and multilayer perceptron algorithms for the prediction of typhoid fever. Afr J Comput ICT 8(1):103–112Google Scholar
  3. Ahmad M, Amin MB, Hussain S, Kang BH, Cheong T, Lee S (2016) Health Fog: a novel framework for health and wellness applications. J Supercomput 72(10):3677–3695CrossRefGoogle Scholar
  4. Ahmad A, Khan M, Paul A, Din S, Rathore MM, Jeon G, Choi GS (2018) Toward modeling and optimization of features selection in big data based social Internet of Things. Future Gener Comput Syst 82:715–726CrossRefGoogle Scholar
  5. Arunkumar S, Vairavasundaram S, Ravichandran KS, Ravi L (2019) RIWT and QR factorization based hybrid robust image steganography using block selection algorithm for IoT devices. J Intell Fuzzy Syst.  https://doi.org/10.3233/JIFS-169984 Google Scholar
  6. Asaithambi S, Rajappa M, Ravi L (2019) Optimization and control of CMOS analog integrated circuits for cyber-physical systems using hybrid grey wolf optimization algorithm. J Intell Fuzzy Syst.  https://doi.org/10.3233/JIFS-169981 Google Scholar
  7. Babar M, Rahman A, Arif F, Jeon G (2018) Energy-harvesting based on internet of things and big data analytics for smart health monitoring. Sustain Comput Inf Syst 20:155–164Google Scholar
  8. Bonomi F, Milito R, Zhu J, Addepalli S (2012) Fog computing and its role in the internet of things. In: Proceedings of the first edition of the MCC workshop on mobile cloud computing. ACM, pp 13–16Google Scholar
  9. Bonomi F, Milito R, Natarajan P, Zhu J (2014) Fog computing: a platform for internet of things and analytics. Big data and Internet of Things: a roadmap for smart environments. Springer International Publishing, New York, pp 169–186Google Scholar
  10. Chehri A, Mouftah H, Jeon G (2010) A smart network architecture for e-health applications. Intelligent interactive multimedia systems and services. Springer, Berlin, pp 157–166Google Scholar
  11. Devarajan M, Ravi L (2018) Intelligent cyber-physical system for an efficient detection of Parkinson disease using fog computing. Multimed Tools Appl.  https://doi.org/10.1007/s11042-018-6898-0 Google Scholar
  12. Devarajan M, Fatima NS, Vairavasundaram S, Ravi L (2019) Swarm intelligence clustering ensemble based point of interest recommendation for social cyber-physical systems. J Intell Fuzzy Syst.  https://doi.org/10.3233/JIFS-169991 Google Scholar
  13. Dziak D, Jachimczyk B, Kulesza WJ (2016) Wirelessly interfacing objects and subjects of healthcare system–IoT approach. Elektronika ir Elektrotechnika 22(3):66–73CrossRefGoogle Scholar
  14. Dziak D, Jachimczyk B, Kulesza WJ (2017) IoT-based information system for healthcare application: design methodology approach. Appl Sci 7(6):596CrossRefGoogle Scholar
  15. Ghanavati S, Abawajy JH, Izadi D, Alelaiwi AA (2017) Cloud-assisted IoT-based health status monitoring framework. Clust Comput 1843:1–11Google Scholar
  16. Gia TN, Jiang M, Rahmani AM, Westerlund T, Liljeberg P, Tenhunen H (2015) Fog computing in healthcare internet of things: a case study on ecg feature extraction. In: Computer and information technology; ubiquitous computing and communications; dependable, autonomic and secure computing; pervasive intelligence and computing (CIT/IUCC/DASC/PICOM), 2015 IEEE international conference on IEEE, pp 356–363Google Scholar
  17. Gia TN, Dhaou IB, Ali M, Rahmani AM, Westerlund T, Liljeberg P, Tenhunen H (2018) Energy efficient fog-assisted IoT system for monitoring diabetic patients with cardiovascular disease. Future Gener Comput Syst 93:198Google Scholar
  18. Hassan MM, Lin K, Yue X, Wan J (2017) A multimedia healthcare data sharing approach through cloud-based body area network. Future Gener Comput Syst 66:48–58CrossRefGoogle Scholar
  19. Hayashi Y, Tanaka Y, Takagi T, Saito T, Iiduka H, Kikuchi H, Bologna G, Mitra S (2016) Recursive-rule extraction algorithm with J48graft and applications to generating credit scores. J Artif Intell Soft Comput Res 6(1):35–44CrossRefGoogle Scholar
  20. Jagadeeswari V, Subramaniyaswamy V, Logesh R, Vijayakumar V (2018) A study on medical Internet of Things and big data in personalized healthcare system. Health Inf Sci Syst 6(1):14CrossRefGoogle Scholar
  21. Jangiti S, Sri Ram E, Ravi L, Sriram VS (2019) Scalable hybrid and ensemble heuristics for economic virtual resource allocation in cloud and fog cyber-physical systems. J Intell Fuzzy Syst.  https://doi.org/10.3233/JIFS-179004 Google Scholar
  22. Jeon G, Anisetti M, Lee J, Bellandi V, Damiani E, Jeong J (2009) Concept of linguistic variable-based fuzzy ensemble approach: application to interlaced HDTV sequences. IEEE Trans Fuzzy Syst 17(6):1245–1258CrossRefGoogle Scholar
  23. Jeon G, Anisetti M, Wang L, Damiani E (2016) Locally estimated heterogeneity property and its fuzzy filter application for deinterlacing. Inf Sci 354:112–130CrossRefGoogle Scholar
  24. Kalmegh S (2015) Analysis of WEKA data mining algorithm REPTree, simple CART and RandomTree for classification of Indian news. Int J Innov Sci Eng Technol 2(2):438–446Google Scholar
  25. Kiran MS, Rajalakshmi P, Bharadwaj K, Acharyya A (2014) Adaptive rule engine based IoT enabled remote health care data acquisition and smart transmission system. In: Internet of Things (WF-IoT), 2014 IEEE world forum on IEEE, pp 253–258Google Scholar
  26. Logesh R, Subramaniyaswamy V (2017) Learning recency and inferring associations in location based social network for emotion induced point-of-interest recommendation. J Inf Sci Eng 33(6):1629–1647Google Scholar
  27. Logesh R, Subramaniyaswamy V (2019) Exploring hybrid recommender systems for personalized travel applications. Cognitive informatics and soft computing. Springer, Singapore, pp 535–544CrossRefGoogle Scholar
  28. Logesh R, Subramaniyaswamy V, Vijayakumar V, Li X (2018a) Efficient user profiling based intelligent travel recommender system for individual and group of users. Mob Netw Appl.  https://doi.org/10.1007/s11036-018-1059-2 Google Scholar
  29. Logesh R, Subramaniyaswamy V, Vijayakumar V, Gao XZ, Indragandhi V (2018b) A hybrid quantum-induced swarm intelligence clustering for the urban trip recommendation in smart city. Future Gener Comput Syst 83:653–673CrossRefGoogle Scholar
  30. Logesh R, Subramaniyaswamy V, Malathi D, Sivaramakrishnan N, Vijayakumar V (2019) Enhancing recommendation stability of collaborative filtering recommender system through bio-inspired clustering ensemble method. Neural Comput Appl.  https://doi.org/10.1007/s00521-018-3891-5 Google Scholar
  31. Luo S, Ren B (2016) The monitoring and managing application of cloud computing based on Internet of Things. Comput Methods Prog Biomed 130:154–161CrossRefGoogle Scholar
  32. Maillo J, Ramírez S, Triguero I, Herrera F (2017) kNN-IS: an iterative spark-based design of the k-nearest neighbors classifier for big data. Knowl Based Syst 117:3–15CrossRefGoogle Scholar
  33. Malathi D, Logesh R, Subramaniyaswamy V, Vijayakumar V, Sangaiah AK (2019) Hybrid reasoning-based privacy-aware disease prediction support system. Comput Electr Eng 73:114–127CrossRefGoogle Scholar
  34. Mathers CD, Loncar D (2006) Projections of global mortality and burden of disease from 2002 to 2030. PLoS Med 3(11):e442CrossRefGoogle Scholar
  35. Natarajan S, Vairavasundaram S, Ravi L (2019) Optimized fuzzy-based group recommendation with parallel computation. J Intell Fuzzy Syst.  https://doi.org/10.3233/JIFS-169977 Google Scholar
  36. Panigrahi R, Borah S (2018) Rank allocation to J48 group of decision tree classifiers using binary and multiclass intrusion detection datasets. Proced Comput Sci 132:323–332CrossRefGoogle Scholar
  37. Pinjari H, Paul A, Jeon G, Rho S (2018) Context-driven mobile learning using fog computing. In: 2018 international conference on platform technology and service (PlatCon), IEEE, pp 1–6Google Scholar
  38. Rathore MM, Ahmad A, Paul A, Rho S (2016a) Urban planning and building smart cities based on the internet of things using big data analytics. Comput Netw 101:63–80CrossRefGoogle Scholar
  39. Rathore MM, Ahmad A, Paul A, Wan J, Zhang D (2016b) Real-time medical emergency response system: exploiting IoT and big data for public health. J Med Syst 40(12):283CrossRefGoogle Scholar
  40. Rathore MM, Paul A, Ahmad A, Jeon G (2017) IoT-based big data: from smart city towards next generation super city planning. Int J Semant Web Inf Syst (IJSWIS) 13(1):28–47CrossRefGoogle Scholar
  41. Ravi L, Vairavasundaram S (2016) A collaborative location based travel recommendation system through enhanced rating prediction for the group of users. Comput Intell Neurosci 2016:1291358CrossRefGoogle Scholar
  42. Ravi L, Vairavasundaram S, Palani S, Devarajan M (2019) Location-based personalized recommender system in the internet of cultural things. J Intell Fuzzy Syst.  https://doi.org/10.3233/JIFS-169973 Google Scholar
  43. Robinson RT, Harris ND, Ireland RH, Lee S, Newman C, Heller SR (2003) Mechanisms of abnormal cardiac repolarization during insulin-induced hypoglycemia. Diabetes 52(6):1469–1474CrossRefGoogle Scholar
  44. Sajid A, Abbas H (2016) Data privacy in cloud-assisted healthcare systems: state of the art and future challenges. J Med Syst 40(6):155CrossRefGoogle Scholar
  45. Sankar H, Subramaniyaswamy V, Vijayakumar V, Arun Kumar S, Logesh R, Umamakeswari A (2019) Intelligent sentiment analysis approach using edge computing-based deep learning technique. Softw Pract Exp.  https://doi.org/10.1002/spe.2687 Google Scholar
  46. Sarkar S, Chatterjee S, Misra S, Kudupudi R (2017) Privacy-aware blind cloud framework for advanced healthcare. IEEE Commun Lett 21(11):2492–2495CrossRefGoogle Scholar
  47. Selvan NS, Vairavasundaram S, Ravi L (2019) Fuzzy ontology-based personalized recommendation for internet of medical things with linked open data. J Intell Fuzzy Syst.  https://doi.org/10.3233/JIFS-169967 Google Scholar
  48. Sharma V, Song F, You I, Atiquzzaman M (2017) Energy efficient device discovery for reliable communication in 5G-based IoT and BSNs using unmanned aerial vehicles. J Netw Comput Appl 97:79–95CrossRefGoogle Scholar
  49. Shi J, Wu J, Anisetti M, Damiani E, Jeon G (2017) An interval type-2 fuzzy active contour model for auroral oval segmentation. Soft Comput 21(9):2325–2345CrossRefGoogle Scholar
  50. Subramaniyaswamy V, Logesh R (2017) Adaptive KNN based recommender system through mining of user preferences. Wirel Pers Commun 97(2):2229–2247CrossRefGoogle Scholar
  51. Subramaniyaswamy V, Logesh R, Abejith M, Umasankar S, Umamakeswari A (2017a) Sentiment analysis of tweets for estimating criticality and security of events. J Organ End User Comput (JOEUC) 29(4):51–71CrossRefGoogle Scholar
  52. Subramaniyaswamy V, Logesh R, Chandrashekhar M, Challa A, Vijayakumar V (2017b) A personalised movie recommendation system based on collaborative filtering. Int J High Perform Comput Netw 10(1–2):54–63CrossRefGoogle Scholar
  53. Subramaniyaswamy V, Logesh R, Indragandhi V (2018a) Intelligent sports commentary recommendation system for individual cricket players. Int J Adv Intell Paradig 10(1–2):103–117. https://doi.org/10.1504/IJAIP.2018.089492CrossRefGoogle Scholar
  54. Subramaniyaswamy V, Manogaran G, Logesh R, Vijayakumar V, Chilamkurti N, Malathi D, Senthilselvan N (2018b) An ontology-driven personalized food recommendation in IoT-based healthcare system. J Supercomput.  https://doi.org/10.1007/s11227-018-2331-8 Google Scholar
  55. Vairavasundaram S, Varadharajan V, Vairavasundaram I, Ravi L (2015) Data mining-based tag recommendation system: an overview. Wiley Interdiscip Rev Data Min Knowl Discov 5(3):87–112CrossRefGoogle Scholar
  56. Vedanthan R, Fuster V, Fischer A (2012) Sudden cardiac death in low-and middle-income countries. Glob Heart 7(4):353–360CrossRefGoogle Scholar
  57. Vijayakumar V, Malathi D, Subramaniyaswamy V, Saravanan P, Logesh R (2018) Fog computing-based intelligent healthcare system for the detection and prevention of mosquito-borne diseases. Comput Hum Behav.  https://doi.org/10.1016/j.chb.2018.12.009 Google Scholar
  58. Wang H, Wang Z, Domingo-Ferrer J (2017) Anonymous and secure aggregation scheme in fog-based public cloud computing. Future Gener Comput Syst 78:712CrossRefGoogle Scholar
  59. Wang J, Wu J, Wu Z, Anisetti M, Jeon G (2018) Bayesian method application for color demosaicking. Opt Eng 57(5):053102Google Scholar
  60. Wu J, Anisetti M, Wu W, Damiani E, Jeon G (2016) Bayer demosaicking with polynomial interpolation. IEEE Trans. Image Process 25(11):5369–5382MathSciNetCrossRefzbMATHGoogle Scholar
  61. Wu T, Wu F, Redouté JM, Yuce MR (2017) An autonomous wireless body area network implementation towards IoT connected healthcare applications. IEEE Access 5:11413–11422CrossRefGoogle Scholar
  62. Yang G, Xie L, Mäntysalo M, Zhou X, Pang Z, Da Xu L, Zheng LR (2014) A health-IoT platform based on the integration of intelligent packaging, unobtrusive bio-sensor, and intelligent medicine box. IEEE Trans Ind Inf 10(4):2180–2191CrossRefGoogle Scholar
  63. Yannuzzi M, Milito R, Serral-Gracià R, Montero D, Nemirovsky M (2014) Key ingredients in an IoT recipe: fog computing, cloud computing, and more fog computing. In: 2014 IEEE 19th international workshop on computer aided modeling and design of communication links and networks (CAMAD). IEEE, pp 325–329Google Scholar
  64. Yaqoob I, Ahmed E, ur Rehman MH, Ahmed AIA, Al-garadi MA, Imran M, Guizani M (2017) The rise of ransomware and emerging security challenges in the Internet of Things. Comput Netw 129:444–458CrossRefGoogle Scholar

Copyright information

© Springer-Verlag GmbH Germany, part of Springer Nature 2019

Authors and Affiliations

  • Malathi Devarajan
    • 1
  • V. Subramaniyaswamy
    • 1
  • V. Vijayakumar
    • 2
  • Logesh Ravi
    • 1
    Email author
  1. 1.School of ComputingSASTRA Deemed UniversityThanjavurIndia
  2. 2.School of Computing Science and EngineeringVellore Institute of TechnologyChennaiIndia

Personalised recommendations