Artificial intelligence approaches in healthcare informatics toward advanced computation and analysis

Introduction: Automated Machine Learning or AutoML is a set of approaches and processes to make machine learning accessible for non-experts. AutoML can exhibit optimized enhancement of an existing model or suggest the best models for precise datasets. In the field of computerized Artificial Intellig...

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Main Authors: Priyanka, E.B., Thangavel, S., Mohanasundaram, R, Subramaniam, Shamala
Format: Article
Language:English
Published: Bentham Science Publishers 2024
Online Access:http://psasir.upm.edu.my/id/eprint/112913/
http://psasir.upm.edu.my/id/eprint/112913/1/112913.pdf
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author Priyanka, E.B.
Thangavel, S.
Mohanasundaram, R
Subramaniam, Shamala
author_facet Priyanka, E.B.
Thangavel, S.
Mohanasundaram, R
Subramaniam, Shamala
author_sort Priyanka, E.B.
building UPM Institutional Repository
collection Online Access
description Introduction: Automated Machine Learning or AutoML is a set of approaches and processes to make machine learning accessible for non-experts. AutoML can exhibit optimized enhancement of an existing model or suggest the best models for precise datasets. In the field of computerized Artificial Intelligence (AI), medical experts better utilize AI models with available encrypted information science ability. Methods: This paper aims to characterize and summarize the stage-wise design of Automated Machine Learning (AutoML) analysis e-healthcare platform starting from the sensing layer and transmission to the cloud using IoT (Internet of Things). To support the AutoML concept, the Auto Weka2.0 package, which serves as the open-source software platform, holds the predominant priority for experimental analysis to generate statistical reports. Results: To validate the entire framework, a case study on Glaucoma diagnosis using the AutoML concept is carried out, and its identification of best-fit model configuration rates is also presented. The Auto-ML built-in model possesses a higher influence factor to generate population-level statistics from the available individual patient histories. Conclusion: Further, AutoML is integrated with the Closed-loop Healthcare Feature Store (CHFS) to support data analysts with an automated end-to-end ML pipeline to help clinical experts provide better medical examination through automated mode. © 2024 The Author(s). Published by Bentham Open.
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spelling upm-1129132024-10-28T07:42:30Z http://psasir.upm.edu.my/id/eprint/112913/ Artificial intelligence approaches in healthcare informatics toward advanced computation and analysis Priyanka, E.B. Thangavel, S. Mohanasundaram, R Subramaniam, Shamala Introduction: Automated Machine Learning or AutoML is a set of approaches and processes to make machine learning accessible for non-experts. AutoML can exhibit optimized enhancement of an existing model or suggest the best models for precise datasets. In the field of computerized Artificial Intelligence (AI), medical experts better utilize AI models with available encrypted information science ability. Methods: This paper aims to characterize and summarize the stage-wise design of Automated Machine Learning (AutoML) analysis e-healthcare platform starting from the sensing layer and transmission to the cloud using IoT (Internet of Things). To support the AutoML concept, the Auto Weka2.0 package, which serves as the open-source software platform, holds the predominant priority for experimental analysis to generate statistical reports. Results: To validate the entire framework, a case study on Glaucoma diagnosis using the AutoML concept is carried out, and its identification of best-fit model configuration rates is also presented. The Auto-ML built-in model possesses a higher influence factor to generate population-level statistics from the available individual patient histories. Conclusion: Further, AutoML is integrated with the Closed-loop Healthcare Feature Store (CHFS) to support data analysts with an automated end-to-end ML pipeline to help clinical experts provide better medical examination through automated mode. © 2024 The Author(s). Published by Bentham Open. Bentham Science Publishers 2024 Article PeerReviewed text en cc_by_4 http://psasir.upm.edu.my/id/eprint/112913/1/112913.pdf Priyanka, E.B. and Thangavel, S. and Mohanasundaram, R and Subramaniam, Shamala (2024) Artificial intelligence approaches in healthcare informatics toward advanced computation and analysis. The Open Biomedical Engineering Journal, 18 (1). art. no. e18741207281491. pp. 1-21. ISSN 1874-1207 https://openbiomedicalengineeringjournal.com/VOLUME/18/ELOCATOR/e18741207281491/ 10.2174/0118741207281491240118060019
spellingShingle Priyanka, E.B.
Thangavel, S.
Mohanasundaram, R
Subramaniam, Shamala
Artificial intelligence approaches in healthcare informatics toward advanced computation and analysis
title Artificial intelligence approaches in healthcare informatics toward advanced computation and analysis
title_full Artificial intelligence approaches in healthcare informatics toward advanced computation and analysis
title_fullStr Artificial intelligence approaches in healthcare informatics toward advanced computation and analysis
title_full_unstemmed Artificial intelligence approaches in healthcare informatics toward advanced computation and analysis
title_short Artificial intelligence approaches in healthcare informatics toward advanced computation and analysis
title_sort artificial intelligence approaches in healthcare informatics toward advanced computation and analysis
url http://psasir.upm.edu.my/id/eprint/112913/
http://psasir.upm.edu.my/id/eprint/112913/
http://psasir.upm.edu.my/id/eprint/112913/
http://psasir.upm.edu.my/id/eprint/112913/1/112913.pdf