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2024 | OriginalPaper | Chapter

Prediction of Abnormality Using IoT and Machine Learning

Authors : B. Kowsalya, D. R. Keerthana Prashanthi, S. Vigneshwaran, P. Poornima

Published in: Advanced Computing

Publisher: Springer Nature Switzerland

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Abstract

Vital signs indicators like temperature, heart rate, and oxygen saturation should be examined periodically, as these are the root cause of any medical diagnosis. Any deviations from the normal range indicate that the person needs an immediate medical check-up and is on the edge of facing some medical issues later. Thus, monitoring these vitals periodically can help patients from the risk of mortality. The goal of this research is to forecast a person’s abnormality using machine learning and IoT (Internet of Things) algorithms for decisiveness. The prototype was built using three sensors, MAX30100 sensor (for SpO2), REES52 heartbeat sensor, and LM35 temperature sensor along with Arduino UNO, and ESP 8266. The bio signal data from these sensors were collected using Arduino UNO, stored in a local PC, and uploaded to the cloud using API protocol in Thingspeak (IoT platform). These data were also retrievable for further diagnosis. Support vector machine (SVM), a machine learning method, is used to predict if a patient is abnormal or not. SVM learns the threshold ranges for each parameter as well as the associated goal value from the datasets.

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Literature
go back to reference Leenen, J.P., et al.: Feasibility of continuous monitoring of vital signs in surgical patients on a general ward: an observational cohort study. BMJ Open 11(2), e042735 (2021)CrossRef Leenen, J.P., et al.: Feasibility of continuous monitoring of vital signs in surgical patients on a general ward: an observational cohort study. BMJ Open 11(2), e042735 (2021)CrossRef
go back to reference Singla, A.: Application Layer in OSI Model. GeeksforGeeks (2021) Singla, A.: Application Layer in OSI Model. GeeksforGeeks (2021)
go back to reference Ozechi, S.: Feature Engineering Techniques (2021) Ozechi, S.: Feature Engineering Techniques (2021)
go back to reference Alsareii, S.A., et al.: Machine learning and internet of things enabled monitoring of post-surgery patients: a pilot study. Sensors 22(4), 1420 (2022)CrossRef Alsareii, S.A., et al.: Machine learning and internet of things enabled monitoring of post-surgery patients: a pilot study. Sensors 22(4), 1420 (2022)CrossRef
go back to reference Balakrishnan, S., Suresh Kumar, K., Ramanathan, L., Muthusundar, S.K.: IoT for health monitoring system based on machine learning algorithm. Wireless Pers. Commun. 124, 189–205 (2022)CrossRef Balakrishnan, S., Suresh Kumar, K., Ramanathan, L., Muthusundar, S.K.: IoT for health monitoring system based on machine learning algorithm. Wireless Pers. Commun. 124, 189–205 (2022)CrossRef
go back to reference Arulananth, T.S., Shilpa, B.: Fingertip based heart beat monitoring system using embedded systems. In: 2017 International conference of Electronics, Communication and Aerospace Technology (ICECA), vol. 2. IEEE (2017) Arulananth, T.S., Shilpa, B.: Fingertip based heart beat monitoring system using embedded systems. In: 2017 International conference of Electronics, Communication and Aerospace Technology (ICECA), vol. 2. IEEE (2017)
go back to reference Patil, H.R., Garge, D.S.: Patient monitoring system. Int. J. Adv. Res. Sci. Eng. 7(03), 23–32 (2018) Patil, H.R., Garge, D.S.: Patient monitoring system. Int. J. Adv. Res. Sci. Eng. 7(03), 23–32 (2018)
go back to reference Gunalanans, M.C., Satheesh, A.: Implementation of wireless patient body monitoring system using RTOS. Int. J. Eng. Res. Gen. Sci. 2(6), 202–208 (2014) Gunalanans, M.C., Satheesh, A.: Implementation of wireless patient body monitoring system using RTOS. Int. J. Eng. Res. Gen. Sci. 2(6), 202–208 (2014)
go back to reference Surekha, Y., Akhil, N., Rajesh: Patient monitoring system using IOT. IJIRAE: Int. J. Innov. Res. Adv. Eng. 5, 176–182 (2018) Surekha, Y., Akhil, N., Rajesh: Patient monitoring system using IOT. IJIRAE: Int. J. Innov. Res. Adv. Eng. 5, 176–182 (2018)
go back to reference Bian, J., et al.: Machine learning in real-time internet of things (iot) systems: a survey. IEEE Internet Things J. 9(11), 8364–8386 (2022)CrossRef Bian, J., et al.: Machine learning in real-time internet of things (iot) systems: a survey. IEEE Internet Things J. 9(11), 8364–8386 (2022)CrossRef
go back to reference Menon, S.P., et al.: An intelligent diabetic patient tracking system based on machine learning for E-health applications. Sensors 23(6), 3004 (2023)CrossRef Menon, S.P., et al.: An intelligent diabetic patient tracking system based on machine learning for E-health applications. Sensors 23(6), 3004 (2023)CrossRef
go back to reference Arowolo, M.O., et al.: Machine learning-based IoT system for COVID-19 epidemics. Computing 105(4), 831–847 (2023)CrossRef Arowolo, M.O., et al.: Machine learning-based IoT system for COVID-19 epidemics. Computing 105(4), 831–847 (2023)CrossRef
go back to reference Morita, P.P., Sahu, K.S., Oetomo, A.: Health monitoring using smart home technologies: scoping review. JMIR mHealth and uHealth 11, e37347 (2023)CrossRef Morita, P.P., Sahu, K.S., Oetomo, A.: Health monitoring using smart home technologies: scoping review. JMIR mHealth and uHealth 11, e37347 (2023)CrossRef
go back to reference Sonawani, S., Patil, K., Natarajan, P.: Biomedical signal processing for health monitoring applications: a review. Int. J. Appl. Syst. Stud. 10(1), 44–69 (2023)CrossRef Sonawani, S., Patil, K., Natarajan, P.: Biomedical signal processing for health monitoring applications: a review. Int. J. Appl. Syst. Stud. 10(1), 44–69 (2023)CrossRef
go back to reference Shaik, T., et al.: Remote patient monitoring using artificial intelligence: current state, applications, and challenges. WIREs Data Min. Knowl. Discovery 13(2), e1485 (2023)CrossRef Shaik, T., et al.: Remote patient monitoring using artificial intelligence: current state, applications, and challenges. WIREs Data Min. Knowl. Discovery 13(2), e1485 (2023)CrossRef
go back to reference Bao, Y., Li, H.: Machine learning paradigm for structural health monitoring. Struct. Health Monit. 20(4), 1353–1372 (2021)CrossRef Bao, Y., Li, H.: Machine learning paradigm for structural health monitoring. Struct. Health Monit. 20(4), 1353–1372 (2021)CrossRef
go back to reference Valsalan, P., Baomar, T.A.B., Baabood, A.H.O.: IoT based health monitoring system. J. Crit. Rev. 7(4), 739–743 (2020) Valsalan, P., Baomar, T.A.B., Baabood, A.H.O.: IoT based health monitoring system. J. Crit. Rev. 7(4), 739–743 (2020)
go back to reference Tamilselvi, V., et al.: IoT based health monitoring system. In: 2020 6th International Conference on Advanced Computing and Communication Systems (ICACCS). IEEE (2020) Tamilselvi, V., et al.: IoT based health monitoring system. In: 2020 6th International Conference on Advanced Computing and Communication Systems (ICACCS). IEEE (2020)
go back to reference Zhao, R., et al.: Deep learning and its applications to machine health monitoring. Mech. Syst. Signal Process. 115, 213–237 (2019)CrossRef Zhao, R., et al.: Deep learning and its applications to machine health monitoring. Mech. Syst. Signal Process. 115, 213–237 (2019)CrossRef
go back to reference Kaur, P., Kumar, R., Kumar, M.: A healthcare monitoring system using random forest and internet of things (IoT). Multimed. Tools Appl. 78, 19905–19916 (2019)CrossRef Kaur, P., Kumar, R., Kumar, M.: A healthcare monitoring system using random forest and internet of things (IoT). Multimed. Tools Appl. 78, 19905–19916 (2019)CrossRef
go back to reference Ullo, S.L., Sinha, G.R.: Advances in smart environment monitoring systems using IoT and sensors. Sensors 20(11), 3113 (2020)CrossRef Ullo, S.L., Sinha, G.R.: Advances in smart environment monitoring systems using IoT and sensors. Sensors 20(11), 3113 (2020)CrossRef
go back to reference Azimi, M., Eslamlou, A., Pekcan, G.: Data-driven structural health monitoring and damage detection through deep learning: state-of-the-art review. Sensors 20(10), 2778 (2020)CrossRef Azimi, M., Eslamlou, A., Pekcan, G.: Data-driven structural health monitoring and damage detection through deep learning: state-of-the-art review. Sensors 20(10), 2778 (2020)CrossRef
go back to reference Tuli, S., et al.: HealthFog: an ensemble deep learning based smart healthcare system for automatic diagnosis of heart diseases in integrated IoT and fog computing environments. Future Gener. Comput. Syst. 104, 187–200 (2020)CrossRef Tuli, S., et al.: HealthFog: an ensemble deep learning based smart healthcare system for automatic diagnosis of heart diseases in integrated IoT and fog computing environments. Future Gener. Comput. Syst. 104, 187–200 (2020)CrossRef
go back to reference Ghazal, T.M., et al.: IoT for smart cities: machine learning approaches in smart healthcare—A review. Future Internet 13(8), 218 (2021)CrossRef Ghazal, T.M., et al.: IoT for smart cities: machine learning approaches in smart healthcare—A review. Future Internet 13(8), 218 (2021)CrossRef
go back to reference Kumar, R., Pallikonda Rajasekaran, M.: An IoT based patient monitoring system using raspberry Pi. In: 2016 International Conference on Computing Technologies and Intelligent Data Engineering (ICCTIDE’16). IEEE (2016) Kumar, R., Pallikonda Rajasekaran, M.: An IoT based patient monitoring system using raspberry Pi. In: 2016 International Conference on Computing Technologies and Intelligent Data Engineering (ICCTIDE’16). IEEE (2016)
go back to reference Ahmed, M.U., et al.: An overview on the internet of things for health monitoring systems. Internet of Things. IoT Infrastructures: Second International Summit, IoT 360° 2015, Rome, Italy, October 27–29, 2015, Revised Selected Papers, Part I, pp. 429–436 (2016) Ahmed, M.U., et al.: An overview on the internet of things for health monitoring systems. Internet of Things. IoT Infrastructures: Second International Summit, IoT 360° 2015, Rome, Italy, October 27–29, 2015, Revised Selected Papers, Part I, pp. 429–436 (2016)
go back to reference Ani, R., et al.: Iot based patient monitoring and diagnostic prediction tool using ensemble classifier. In: 2017 International Conference on Advances in Computing, Communications and Informatics (ICACCI). IEEE (2017) Ani, R., et al.: Iot based patient monitoring and diagnostic prediction tool using ensemble classifier. In: 2017 International Conference on Advances in Computing, Communications and Informatics (ICACCI). IEEE (2017)
go back to reference Sarmah, S.S.: An efficient IoT-based patient monitoring and heart disease prediction system using deep learning modified neural network. IEEE Access 8, 135784–135797 (2020)CrossRef Sarmah, S.S.: An efficient IoT-based patient monitoring and heart disease prediction system using deep learning modified neural network. IEEE Access 8, 135784–135797 (2020)CrossRef
go back to reference Anisyah, U.: Sistem pemantauan detak jantung dan saturasi oksigen (SPO2) menggunakan sensor MAX30100 dengan aplikasi Telegram berbasis internet of things (2022) Anisyah, U.: Sistem pemantauan detak jantung dan saturasi oksigen (SPO2) menggunakan sensor MAX30100 dengan aplikasi Telegram berbasis internet of things (2022)
go back to reference Nivedan, V., Kannusamy, R.: Weather monitoring system using IoT with Arduino Ethernet Shield. Int. J. Res. Appl. Sci. Eng. Technol. 7(1), 2321–9653 (2019)CrossRef Nivedan, V., Kannusamy, R.: Weather monitoring system using IoT with Arduino Ethernet Shield. Int. J. Res. Appl. Sci. Eng. Technol. 7(1), 2321–9653 (2019)CrossRef
go back to reference Nallakaruppan, M.K., Senthil Kumaran, U.: IoT based machine learning techniques for climate predictive analysis. Int. J. Recent Technol. Eng. 5, 171–175 (2019) Nallakaruppan, M.K., Senthil Kumaran, U.: IoT based machine learning techniques for climate predictive analysis. Int. J. Recent Technol. Eng. 5, 171–175 (2019)
go back to reference Shukla, P.M., Deshmukh, S.S., Aishwarya, N., Anand, D.M.: Tipre3 Patior Salus Reporting System Shukla, P.M., Deshmukh, S.S., Aishwarya, N., Anand, D.M.: Tipre3 Patior Salus Reporting System
go back to reference Anbumani, S., et al.: An intelligent patient tele-monitoring system using android technology. Int. J. Res. Eng. Technol. 4(02), 477–482 (2015)CrossRef Anbumani, S., et al.: An intelligent patient tele-monitoring system using android technology. Int. J. Res. Eng. Technol. 4(02), 477–482 (2015)CrossRef
go back to reference Silva, B.M.C., et al.: Mobile-health: a review of current state in 2015. J. Biomed. Inform. 56, 265–272 (2015)CrossRef Silva, B.M.C., et al.: Mobile-health: a review of current state in 2015. J. Biomed. Inform. 56, 265–272 (2015)CrossRef
go back to reference Modi, D., et al.: Android based patient monitoring system. Int. J. Technol. Res. Eng. 1(9) (2014) Modi, D., et al.: Android based patient monitoring system. Int. J. Technol. Res. Eng. 1(9) (2014)
go back to reference Da, X., Li, W.H., Li, S.: Internet of things in industries: a survey. IEEE Trans. Ind. Inform. 10(4), 2233–2243 (2014)CrossRef Da, X., Li, W.H., Li, S.: Internet of things in industries: a survey. IEEE Trans. Ind. Inform. 10(4), 2233–2243 (2014)CrossRef
go back to reference Jain, N.P., Preeti, N.J., Trupti, P.A.: An embedded, GSM based, multiparameter, realtime patient monitoring system and control—An implementation for ICU patients. In: 2012 World Congress on Information and Communication Technologies. IEEE (2012) Jain, N.P., Preeti, N.J., Trupti, P.A.: An embedded, GSM based, multiparameter, realtime patient monitoring system and control—An implementation for ICU patients. In: 2012 World Congress on Information and Communication Technologies. IEEE (2012)
go back to reference Sundaram, P.: Patient monitoring system using android technology. Int. J. Comput. Sci. Mob. Comput. 2(5), 191–201 (2013) Sundaram, P.: Patient monitoring system using android technology. Int. J. Comput. Sci. Mob. Comput. 2(5), 191–201 (2013)
Metadata
Title
Prediction of Abnormality Using IoT and Machine Learning
Authors
B. Kowsalya
D. R. Keerthana Prashanthi
S. Vigneshwaran
P. Poornima
Copyright Year
2024
DOI
https://doi.org/10.1007/978-3-031-56703-2_13

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