TY - JOUR
T1 - Clinical applications of artificial intelligence in liver imaging
AU - Yamada, Akira
AU - Kamagata, Koji
AU - Hirata, Kenji
AU - Ito, Rintaro
AU - Nakaura, Takeshi
AU - Ueda, Daiju
AU - Fujita, Shohei
AU - Fushimi, Yasutaka
AU - Fujima, Noriyuki
AU - Matsui, Yusuke
AU - Tatsugami, Fuminari
AU - Nozaki, Taiki
AU - Fujioka, Tomoyuki
AU - Yanagawa, Masahiro
AU - Tsuboyama, Takahiro
AU - Kawamura, Mariko
AU - Naganawa, Shinji
N1 - Publisher Copyright:
© 2023, Italian Society of Medical Radiology.
PY - 2023/6
Y1 - 2023/6
N2 - This review outlines the current status and challenges of the clinical applications of artificial intelligence in liver imaging using computed tomography or magnetic resonance imaging based on a topic analysis of PubMed search results using latent Dirichlet allocation. LDA revealed that “segmentation,” “hepatocellular carcinoma and radiomics,” “metastasis,” "fibrosis," and "reconstruction" were current main topic keywords. Automatic liver segmentation technology using deep learning is beginning to assume new clinical significance as part of whole-body composition analysis. It has also been applied to the screening of large populations and the acquisition of training data for machine learning models and has resulted in the development of imaging biomarkers that have a significant impact on important clinical issues, such as the estimation of liver fibrosis, recurrence, and prognosis of malignant tumors. Deep learning reconstruction is expanding as a new technological clinical application of artificial intelligence and has shown results in reducing contrast and radiation doses. However, there is much missing evidence, such as external validation of machine learning models and the evaluation of the diagnostic performance of specific diseases using deep learning reconstruction, suggesting that the clinical application of these technologies is still in development.
AB - This review outlines the current status and challenges of the clinical applications of artificial intelligence in liver imaging using computed tomography or magnetic resonance imaging based on a topic analysis of PubMed search results using latent Dirichlet allocation. LDA revealed that “segmentation,” “hepatocellular carcinoma and radiomics,” “metastasis,” "fibrosis," and "reconstruction" were current main topic keywords. Automatic liver segmentation technology using deep learning is beginning to assume new clinical significance as part of whole-body composition analysis. It has also been applied to the screening of large populations and the acquisition of training data for machine learning models and has resulted in the development of imaging biomarkers that have a significant impact on important clinical issues, such as the estimation of liver fibrosis, recurrence, and prognosis of malignant tumors. Deep learning reconstruction is expanding as a new technological clinical application of artificial intelligence and has shown results in reducing contrast and radiation doses. However, there is much missing evidence, such as external validation of machine learning models and the evaluation of the diagnostic performance of specific diseases using deep learning reconstruction, suggesting that the clinical application of these technologies is still in development.
KW - Artificial intelligence
KW - Latent Dirichlet allocation
KW - Liver imaging
KW - Topic analysis
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U2 - 10.1007/s11547-023-01638-1
DO - 10.1007/s11547-023-01638-1
M3 - Review article
C2 - 37165151
AN - SCOPUS:85159052227
SN - 0033-8362
VL - 128
SP - 655
EP - 667
JO - Radiologia Medica
JF - Radiologia Medica
IS - 6
ER -