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Technology trends and applications of deep learning in ultrasonography: image quality enhancement, diagnostic support, and improving workflow efficiency

In this review of the most recent applications of deep learning to ultrasound imaging, the architectures of deep learning networks are briefly explained for the medical imaging applications of classification, detection, segmentation, and generation. Ultrasonography applications for image processing...

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Autores principales: Yi, Jonghyon, Kang, Ho Kyung, Kwon, Jae-Hyun, Kim, Kang-Sik, Park, Moon Ho, Seong, Yeong Kyeong, Kim, Dong Woo, Ahn, Byungeun, Ha, Kilsu, Lee, Jinyong, Hah, Zaegyoo, Bang, Won-Chul
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Korean Society of Ultrasound in Medicine 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7758107/
https://www.ncbi.nlm.nih.gov/pubmed/33152846
http://dx.doi.org/10.14366/usg.20102
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author Yi, Jonghyon
Kang, Ho Kyung
Kwon, Jae-Hyun
Kim, Kang-Sik
Park, Moon Ho
Seong, Yeong Kyeong
Kim, Dong Woo
Ahn, Byungeun
Ha, Kilsu
Lee, Jinyong
Hah, Zaegyoo
Bang, Won-Chul
author_facet Yi, Jonghyon
Kang, Ho Kyung
Kwon, Jae-Hyun
Kim, Kang-Sik
Park, Moon Ho
Seong, Yeong Kyeong
Kim, Dong Woo
Ahn, Byungeun
Ha, Kilsu
Lee, Jinyong
Hah, Zaegyoo
Bang, Won-Chul
author_sort Yi, Jonghyon
collection PubMed
description In this review of the most recent applications of deep learning to ultrasound imaging, the architectures of deep learning networks are briefly explained for the medical imaging applications of classification, detection, segmentation, and generation. Ultrasonography applications for image processing and diagnosis are then reviewed and summarized, along with some representative imaging studies of the breast, thyroid, heart, kidney, liver, and fetal head. Efforts towards workflow enhancement are also reviewed, with an emphasis on view recognition, scanning guide, image quality assessment, and quantification and measurement. Finally some future prospects are presented regarding image quality enhancement, diagnostic support, and improvements in workflow efficiency, along with remarks on hurdles, benefits, and necessary collaborations.
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spelling pubmed-77581072021-01-05 Technology trends and applications of deep learning in ultrasonography: image quality enhancement, diagnostic support, and improving workflow efficiency Yi, Jonghyon Kang, Ho Kyung Kwon, Jae-Hyun Kim, Kang-Sik Park, Moon Ho Seong, Yeong Kyeong Kim, Dong Woo Ahn, Byungeun Ha, Kilsu Lee, Jinyong Hah, Zaegyoo Bang, Won-Chul Ultrasonography Special Review of Artifical Intelligence (Part 1) In this review of the most recent applications of deep learning to ultrasound imaging, the architectures of deep learning networks are briefly explained for the medical imaging applications of classification, detection, segmentation, and generation. Ultrasonography applications for image processing and diagnosis are then reviewed and summarized, along with some representative imaging studies of the breast, thyroid, heart, kidney, liver, and fetal head. Efforts towards workflow enhancement are also reviewed, with an emphasis on view recognition, scanning guide, image quality assessment, and quantification and measurement. Finally some future prospects are presented regarding image quality enhancement, diagnostic support, and improvements in workflow efficiency, along with remarks on hurdles, benefits, and necessary collaborations. Korean Society of Ultrasound in Medicine 2021-01 2020-09-14 /pmc/articles/PMC7758107/ /pubmed/33152846 http://dx.doi.org/10.14366/usg.20102 Text en Copyright © 2021 Korean Society of Ultrasound in Medicine (KSUM) This is an Open Access article distributed under the terms of the Creative Commons Attribution Non-Commercial License (http://creativecommons.org/licenses/by-nc/4.0/) which permits unrestricted noncommercial use, distribution, and reproduction in any medium, provided the original work is properly cited.
spellingShingle Special Review of Artifical Intelligence (Part 1)
Yi, Jonghyon
Kang, Ho Kyung
Kwon, Jae-Hyun
Kim, Kang-Sik
Park, Moon Ho
Seong, Yeong Kyeong
Kim, Dong Woo
Ahn, Byungeun
Ha, Kilsu
Lee, Jinyong
Hah, Zaegyoo
Bang, Won-Chul
Technology trends and applications of deep learning in ultrasonography: image quality enhancement, diagnostic support, and improving workflow efficiency
title Technology trends and applications of deep learning in ultrasonography: image quality enhancement, diagnostic support, and improving workflow efficiency
title_full Technology trends and applications of deep learning in ultrasonography: image quality enhancement, diagnostic support, and improving workflow efficiency
title_fullStr Technology trends and applications of deep learning in ultrasonography: image quality enhancement, diagnostic support, and improving workflow efficiency
title_full_unstemmed Technology trends and applications of deep learning in ultrasonography: image quality enhancement, diagnostic support, and improving workflow efficiency
title_short Technology trends and applications of deep learning in ultrasonography: image quality enhancement, diagnostic support, and improving workflow efficiency
title_sort technology trends and applications of deep learning in ultrasonography: image quality enhancement, diagnostic support, and improving workflow efficiency
topic Special Review of Artifical Intelligence (Part 1)
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7758107/
https://www.ncbi.nlm.nih.gov/pubmed/33152846
http://dx.doi.org/10.14366/usg.20102
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