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Sustainable and Reliable Healthcare Automation and Digitization Using Machine Learning Techniques


Affiliations
1 Department of IT, S R K R Engg college, Bhimavaram 534 204, Andhra Pradesh, India
2 Department of ECE, S R K R Engg college, Bhimavaram 534 204, Andhra Pradesh, India
3 Department of Electronics and Communication Engineering, Raghu Institute of Technology, Visakhapatnam 531 162, Andhra Pradesh, India
 

Healthcare 4.0 takes significant benefits while aligned with Industry 4.0. Mainly citing the recent and existing pandemic, the need for Industry Internet of Things (IIoT), automation, digitalization, and induction of machine learning techniques for forecasting and prediction have been the technologies to rely on. On these lines, digitization and automation in the healthcare industry have been practical tools to accelerate diagnosis and provide handy second opinions to practitioners. Sustainability in health care has several objectives, like reduced cost and low emission rate, while promising effective outcomes and ease of diagnosis. In this paper, such an attempt has been made to employ deep learning techniques to predict the phase of brain tumors. The deep learning methods help practitioners to correlate patients' status with similar subjects and assess and predict future anomalies due to brain tumors. Popular datasets have been employed for modeling the prediction process. Machine learning has been the most successful tool for handling supervised classification while dealing with complex patterns. The study aims to apply this machine learning technique to classifying images of brains with different types of tumors: meningioma, glioma, and pituitary. The simulation is performed in a python environment, and analysis is carried out using standard metrics.

Keywords

Brain Tumor, Deep Learning, Healthcare 4.0, Industry 4.0, Sustainable Technology.
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  • Dawe R J, Yu L, Schneider J A, Arfanakis K, Bennett D A & Boyle P A, Postmortem brain MRI is related to cognitive decline, independent of cerebral vessel disease in older adults, Neurobiol Aging, 69 (2018) 177–184.
  • Xiao Y, Fonov V, Chakravarty M M, Beriault S, Al Subaie F, Sadikot A, Pike G B, Bertrand G & Collins D L, A dataset of multi-contrast populationaveraged brain MRI atlases of a Parkinson ׳ s disease cohort, Data Brief, 12 (2017) 370–379.
  • Zarinbal M, Fazel Zarandi M H, Turksen I B & Izadi M, A type-2 fuzzy image processing expert system for diagnosing brain tumors, J Med Syst, 39 (2015) 110.
  • Wang H & Fei B, A modified fuzzy C-means classification method using a multiscale diffusion filtering scheme, Med Image Anal, 13 (2019) 193–202.
  • Patel S A & Shah U V, Tumor location and size identification in brain tissues using Fuzzy C- clustering and artificial bee colony algorithm, Int J Eng Dev Res, 2 (2014) 3131–3134.
  • Shanthakumar P & Ganeshkumar P, Performance analysis of classifier for brain tumor detection and diagnosis, Comput Electr Eng, 45 (2015) 302–311.
  • Zarandi M F, Zarinbal M & Izadi M, Systematic image processing for diagnosing brain tumors: A Type-II fuzzy expert system approach, Appl Soft Comput, 11 (2011) 285–294.
  • Anil Kumar B & Rajesh Kumar P, Multi brain tumor classification in MR brain images through transfer learning model, J Appl Sci Comput, 7 (2020) 41–49.
  • Anilkumar B & Rajesh Kumar P, Multi tumor classification in MR brain images through deep feature extraction using CNN and supervised classifier, Int J Emerg Technol, 11 (2020) 83–90.
  • Brindha P G, Kavinraj M, Manivasakam P & Prasanth P, Brain tumor detection from MRI images using deep learning techniques, InIOP Conf Series: Mater Sci Eng, 1055(1) (2021) 012115.
  • Sekhar B V, Udayaraju P, Kumar N U, Sinduri K B, Ramakrishna B, Babu B S & Srinivas M S, Artificial neural network-based secured communication strategy for vehicular ad hoc network, Soft Comput, 13 (2022) 1–3.
  • Sekhar B V, Reddy P P & Varma G P, Performance of secure and robust watermarking using evolutionary computing technique, J Glob inf manag, 25(4) (2017) 61–79.
  • Sekhar B V, Reddy P P & Varma G P, novel technique of image denoising using adaptive haar wavelet transformation, Int Review Comp Soft, 10(10) (2015) 1012–1017.

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  • Sustainable and Reliable Healthcare Automation and Digitization Using Machine Learning Techniques

Abstract Views: 58  |  PDF Views: 51

Authors

B V D S Sekhar
Department of IT, S R K R Engg college, Bhimavaram 534 204, Andhra Pradesh, India
Bh V S Ramakrishnam Raju
Department of IT, S R K R Engg college, Bhimavaram 534 204, Andhra Pradesh, India
N Udaya Kumar
Department of ECE, S R K R Engg college, Bhimavaram 534 204, Andhra Pradesh, India
VVSSS Chakravarthy
Department of Electronics and Communication Engineering, Raghu Institute of Technology, Visakhapatnam 531 162, Andhra Pradesh, India

Abstract


Healthcare 4.0 takes significant benefits while aligned with Industry 4.0. Mainly citing the recent and existing pandemic, the need for Industry Internet of Things (IIoT), automation, digitalization, and induction of machine learning techniques for forecasting and prediction have been the technologies to rely on. On these lines, digitization and automation in the healthcare industry have been practical tools to accelerate diagnosis and provide handy second opinions to practitioners. Sustainability in health care has several objectives, like reduced cost and low emission rate, while promising effective outcomes and ease of diagnosis. In this paper, such an attempt has been made to employ deep learning techniques to predict the phase of brain tumors. The deep learning methods help practitioners to correlate patients' status with similar subjects and assess and predict future anomalies due to brain tumors. Popular datasets have been employed for modeling the prediction process. Machine learning has been the most successful tool for handling supervised classification while dealing with complex patterns. The study aims to apply this machine learning technique to classifying images of brains with different types of tumors: meningioma, glioma, and pituitary. The simulation is performed in a python environment, and analysis is carried out using standard metrics.

Keywords


Brain Tumor, Deep Learning, Healthcare 4.0, Industry 4.0, Sustainable Technology.

References