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Analysis of AI techniques for healthcare data with implementation of a classification model using support vector machine

Journal of physics. Conference series, 2021-05, Vol.1913 (1), p.12136 [Peer Reviewed Journal]

Published under licence by IOP Publishing Ltd ;2021. This work is published under http://creativecommons.org/licenses/by/3.0/ (the “License”). Notwithstanding the ProQuest Terms and Conditions, you may use this content in accordance with the terms of the License. ;ISSN: 1742-6588 ;EISSN: 1742-6596 ;DOI: 10.1088/1742-6596/1913/1/012136

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  • Title:
    Analysis of AI techniques for healthcare data with implementation of a classification model using support vector machine
  • Author: Jaiswal, P G ; Gaikwad, M ; Gaikwad, N
  • Subjects: Artificial intelligence ; classification ; Data analysis ; Decision analysis ; Diagnosis ; Domains ; Health care ; healthcare ; Machine learning ; natural language processing ; supervised learning ; support vector machine ; Support vector machines ; Unstructured data ; unsupervised learning
  • Is Part Of: Journal of physics. Conference series, 2021-05, Vol.1913 (1), p.12136
  • Description: Abstract Artificial intelligence (AI) is imposed to impersonate human cognitive functions. AI Techniques are most popular across healthcare. The motive behind implementing an AI system is to make the system more fast and efficient. Now, AI can assist medical physician for fast and accurate diagnosis of diseases. When the time of deployment of the AI system will come then, systems need to be ‘trained’ for a huge amount of data will be generated from different clinical performance data. Now a day’s data is available in a structured, unstructured and, semi-structured format. For supporting, retrieving results and knowledge from this data, its analysis using different AI techniques are available. This includes machine learning methods for structured data and unsupervised learning for unstructured data which is useful for retrieving features when the outcome for some subjects is missing. In this paper different conventional machine learning techniques used in healthcare, domains is analyzed using different data types. Also, a comparison of different methods used in Artificial intelligence fiction in the healthcare domain is explored. A flow from clinical data creation, through NLP data enhancement and Machine learning data analysis for making clinical diagnosis decisions and its predictions are discussed and implementation using a support vector machine (SVM) on the healthcare dataset consisting of the patient questionnaire isdone.
  • Publisher: Bristol: IOP Publishing
  • Language: English
  • Identifier: ISSN: 1742-6588
    EISSN: 1742-6596
    DOI: 10.1088/1742-6596/1913/1/012136
  • Source: IOP Publishing Free Content
    IOPscience (Open Access)
    GFMER Free Medical Journals
    ProQuest Central

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