Using machine learning methods in problems with large amounts of data

This article explores the use of artificial intelligence in medicine, in particular in radiology, pathology, drug development. The usefulness of robotic assistants in the medical field is revealed, including machine learning in medical science, as well as routing in hospitals. It also discusses such...

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Main Authors: Kuimova Olga, Kukartsev Vladislav, Stupin Artem, Markevich Ekaterina, Apanasenko Stanislav
Format: Article
Language:English
Published: EDP Sciences 2021-01-01
Series:SHS Web of Conferences
Online Access:https://www.shs-conferences.org/articles/shsconf/pdf/2021/27/shsconf_icsr2021_00080.pdf
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spelling doaj-5954bb9f3b05495e93aae116e1490e7a2021-08-02T08:02:20ZengEDP SciencesSHS Web of Conferences2261-24242021-01-011160008010.1051/shsconf/202111600080shsconf_icsr2021_00080Using machine learning methods in problems with large amounts of dataKuimova Olga0Kukartsev VladislavStupin Artem1Markevich Ekaterina2Apanasenko Stanislav3Reshetnev Siberian State University of Science and TechnologyReshetnev Siberian State University of Science and TechnologySiberian Federal UniversityReshetnev Siberian State University of Science and TechnologyThis article explores the use of artificial intelligence in medicine, in particular in radiology, pathology, drug development. The usefulness of robotic assistants in the medical field is revealed, including machine learning in medical science, as well as routing in hospitals. It also discusses such machine learning methods as classification methods, regression restoration methods, clustering methods. As a result, based on what is considered in this article, it is concluded that manual processing becomes more complicated and impossible with a large amount of data. There is a need for automatic processing that can transform modern medicine. And also, conclusions were made about how accurately the deep learning mechanisms can provide a more accurate result in the processing and classification of images compared to the results obtained at the human level. It became clear that deep learning not only aids in the selection and extraction of characteristics, but also has the potential to measure predictive target audiences and provide proactive predictions to help clinicians go a long way.https://www.shs-conferences.org/articles/shsconf/pdf/2021/27/shsconf_icsr2021_00080.pdf
collection DOAJ
language English
format Article
sources DOAJ
author Kuimova Olga
Kukartsev Vladislav
Stupin Artem
Markevich Ekaterina
Apanasenko Stanislav
spellingShingle Kuimova Olga
Kukartsev Vladislav
Stupin Artem
Markevich Ekaterina
Apanasenko Stanislav
Using machine learning methods in problems with large amounts of data
SHS Web of Conferences
author_facet Kuimova Olga
Kukartsev Vladislav
Stupin Artem
Markevich Ekaterina
Apanasenko Stanislav
author_sort Kuimova Olga
title Using machine learning methods in problems with large amounts of data
title_short Using machine learning methods in problems with large amounts of data
title_full Using machine learning methods in problems with large amounts of data
title_fullStr Using machine learning methods in problems with large amounts of data
title_full_unstemmed Using machine learning methods in problems with large amounts of data
title_sort using machine learning methods in problems with large amounts of data
publisher EDP Sciences
series SHS Web of Conferences
issn 2261-2424
publishDate 2021-01-01
description This article explores the use of artificial intelligence in medicine, in particular in radiology, pathology, drug development. The usefulness of robotic assistants in the medical field is revealed, including machine learning in medical science, as well as routing in hospitals. It also discusses such machine learning methods as classification methods, regression restoration methods, clustering methods. As a result, based on what is considered in this article, it is concluded that manual processing becomes more complicated and impossible with a large amount of data. There is a need for automatic processing that can transform modern medicine. And also, conclusions were made about how accurately the deep learning mechanisms can provide a more accurate result in the processing and classification of images compared to the results obtained at the human level. It became clear that deep learning not only aids in the selection and extraction of characteristics, but also has the potential to measure predictive target audiences and provide proactive predictions to help clinicians go a long way.
url https://www.shs-conferences.org/articles/shsconf/pdf/2021/27/shsconf_icsr2021_00080.pdf
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