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      유방 초음파에서 인공 지능의 진단적 유용성 = Diagnostic Utility of Artificial Intelligence in Breast Ultrasound

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      https://www.riss.kr/link?id=A108629185

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      다국어 초록 (Multilingual Abstract)

      Breast cancer is the most commonly diagnosed cancer in women and its incidence and the mortality associated with it have increased over the years. Early detection of breast cancer via various imaging modalities can significantly improve the prognosis of patients. Ultrasound is a useful imaging tool for breast lesion characterization due to its acceptable diagnostic performance and non-invasive and real-time capabilities. However, one of the major drawbacks of ultrasound imaging is operator dependence. Artificial intelligence (AI), particularly deep learning, is gaining extensive attention for its excellent performance in image recognition. AI can make a quantitative assessment by recognizing imaging information, thereby improving ultrasound performance in the diagnosis of breast cancer lesions. The use of AI for breast ultrasound in clinical practice is extremely important, as it saves time, reduces radiologist fatigue, and compensates for a lack of experience and skill in some cases. This review article discusses the basic technical knowledge required, the algorithms of AI for breast ultrasound, and the application of AI in image identification, segmentation, extraction, and classification. In addition, we also discuss the future perspectives for the application of AI in breast ultrasound.
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      Breast cancer is the most commonly diagnosed cancer in women and its incidence and the mortality associated with it have increased over the years. Early detection of breast cancer via various imaging modalities can significantly improve the prognosis ...

      Breast cancer is the most commonly diagnosed cancer in women and its incidence and the mortality associated with it have increased over the years. Early detection of breast cancer via various imaging modalities can significantly improve the prognosis of patients. Ultrasound is a useful imaging tool for breast lesion characterization due to its acceptable diagnostic performance and non-invasive and real-time capabilities. However, one of the major drawbacks of ultrasound imaging is operator dependence. Artificial intelligence (AI), particularly deep learning, is gaining extensive attention for its excellent performance in image recognition. AI can make a quantitative assessment by recognizing imaging information, thereby improving ultrasound performance in the diagnosis of breast cancer lesions. The use of AI for breast ultrasound in clinical practice is extremely important, as it saves time, reduces radiologist fatigue, and compensates for a lack of experience and skill in some cases. This review article discusses the basic technical knowledge required, the algorithms of AI for breast ultrasound, and the application of AI in image identification, segmentation, extraction, and classification. In addition, we also discuss the future perspectives for the application of AI in breast ultrasound.

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      참고문헌 (Reference)

      1 Ronneberger O, "U-Net : convolutional networks for biomedical image segmentation" 234-241, 2015

      2 Fujioka T, "The utility of deep learning in breast ultrasonic imaging : a review" 10 : 1055-, 2020

      3 Madani M, "The role of deep learning in advancing breast cancer detection using different imaging modalities : a systematic review" 14 : 5334-, 2022

      4 Badrinarayanan V, "SegNet : a deep convolutional encoder-decoder architecture for image segmentation" 39 : 2481-2495, 2017

      5 Obermeyer Z, "Predicting the future - big data, machine learning, and clinical medicine" 375 : 1216-1219, 2016

      6 Tagliafico AS, "Overview of radiomics in breast cancer diagnosis and prognostication" 49 : 74-80, 2020

      7 Long J, "Fully convolutional networks for semantic segmentation" 3431-3440, 2015

      8 Adachi M, "Detection and diagnosis of breast cancer using artificial intelligence based assessment of maximum intensity projection dynamic contrast-enhanced magnetic resonance images" 10 : 330-, 2020

      9 Yasaka K, "Deep learning with convolutional neural network in radiology" 36 : 257-272, 2018

      10 Angermueller C, "Deep learning for computational biology" 12 : 878-, 2016

      1 Ronneberger O, "U-Net : convolutional networks for biomedical image segmentation" 234-241, 2015

      2 Fujioka T, "The utility of deep learning in breast ultrasonic imaging : a review" 10 : 1055-, 2020

      3 Madani M, "The role of deep learning in advancing breast cancer detection using different imaging modalities : a systematic review" 14 : 5334-, 2022

      4 Badrinarayanan V, "SegNet : a deep convolutional encoder-decoder architecture for image segmentation" 39 : 2481-2495, 2017

      5 Obermeyer Z, "Predicting the future - big data, machine learning, and clinical medicine" 375 : 1216-1219, 2016

      6 Tagliafico AS, "Overview of radiomics in breast cancer diagnosis and prognostication" 49 : 74-80, 2020

      7 Long J, "Fully convolutional networks for semantic segmentation" 3431-3440, 2015

      8 Adachi M, "Detection and diagnosis of breast cancer using artificial intelligence based assessment of maximum intensity projection dynamic contrast-enhanced magnetic resonance images" 10 : 330-, 2020

      9 Yasaka K, "Deep learning with convolutional neural network in radiology" 36 : 257-272, 2018

      10 Angermueller C, "Deep learning for computational biology" 12 : 878-, 2016

      11 Zhang Q, "Deep learning based classification of breast tumors with shear-wave elastography" 72 : 150-157, 2016

      12 Chartrand G, "Deep learning : a primer for radiologists" 37 : 2113-2131, 2017

      13 LeCun Y, "Deep learning" 521 : 436-444, 2015

      14 Kornecki A, "Current status of breast ultrasound" 62 : 31-40, 2011

      15 Eghtedari M, "Current status and future of BI-RADS in multimodality imaging, from the AJR special series on radiology reporting and data systems" 216 : 860-873, 2021

      16 Becker AS, "Classification of breast cancer in ultrasound imaging using a generic deep learning analysis software : a pilot study" 91 : 20170576-, 2018

      17 Siegel RL, "Cancer statistics, 2018" 68 : 7-30, 2018

      18 Rodriguez-Ruiz A, "Can we reduce the workload of mammographic screening by automatic identification of normal exams with artificial intelligence? A feasibility study" 29 : 4825-4832, 2019

      19 Hooley RJ, "Breast ultrasonography : state of the art" 268 : 642-659, 2013

      20 Hsu SM, "Breast tumor classification using different features of quantitative ultrasound parametric images" 14 : 623-633, 2019

      21 Hu Y, "Automatic tumor segmentation in breast ultrasound images using a dilated fully convolutional network combined with an active contour model" 46 : 215-228, 2019

      22 Ciritsis A, "Automatic classification of ultrasound breast lesions using a deep convolutional neural network mimicking human decision-making" 29 : 5458-5468, 2019

      23 Kumar V, "Automated and real-time segmentation of suspicious breast masses using convolutional neural network" 13 : e0195816-, 2018

      24 Hosny A, "Artificial intelligence in radiology" 18 : 500-510, 2018

      25 Lei YM, "Artificial intelligence in medical imaging of the breast" 11 : 600557-, 2021

      26 Pesapane F, "Artificial intelligence in medical imaging : threat or opportunity? Radiologists again at the forefront of innovation in medicine" 2 : 35-, 2018

      27 Brunetti N, "Artificial intelligence in breast ultrasound : from diagnosis to prognosis-a rapid review" 13 : 58-, 2022

      28 Wu GG, "Artificial intelligence in breast ultrasound" 11 : 19-26, 2019

      29 Le EPV, "Artificial intelligence in breast imaging" 74 : 357-366, 2019

      30 Sechopoulos I, "Artificial intelligence for breast cancer detection in mammography and digital breast tomosynthesis : state of the art" 72 : 214-225, 2021

      31 최지혜 ; 강봉주 ; 백지은 ; 이현실 ; 김성헌, "Application of computer-aided diagnosis in breast ultrasound interpretation: improvements in diagnostic performance according to reader experience" 대한초음파의학회 37 (37): 217-225, 2018

      32 Al-Antari MA, "A fully integrated computer-aided diagnosis system for digital X-ray mammograms via deep learning detection, segmentation, and classification" 117 : 44-54, 2018

      33 Han S, "A deep learning framework for supporting the classification of breast lesions in ultrasound images" 62 : 7714-7728, 2017

      34 Park HJ, "A computer-aided diagnosis system using artificial intelligence for the diagnosis and characterization of breast masses on ultrasound : added value for the inexperienced breast radiologist" 98 : e14146-, 2019

      35 Akkus Z, "A Survey of deep-learning applications in ultrasound : artificial intelligence-powered ultrasound for improving clinical workflow" 16 (16): 1318-1328, 2019

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