TY - JOUR
T1 - Applications of artificial intelligence in interventional oncology
T2 - An up-to-date review of the literature
AU - Matsui, Yusuke
AU - Ueda, Daiju
AU - Fujita, Shohei
AU - Fushimi, Yasutaka
AU - Tsuboyama, Takahiro
AU - Kamagata, Koji
AU - Ito, Rintaro
AU - Yanagawa, Masahiro
AU - Yamada, Akira
AU - Kawamura, Mariko
AU - Nakaura, Takeshi
AU - Fujima, Noriyuki
AU - Nozaki, Taiki
AU - Tatsugami, Fuminari
AU - Fujioka, Tomoyuki
AU - Hirata, Kenji
AU - Naganawa, Shinji
N1 - Publisher Copyright:
© The Author(s) 2024.
PY - 2024
Y1 - 2024
N2 - Interventional oncology provides image-guided therapies, including transarterial tumor embolization and percutaneous tumor ablation, for malignant tumors in a minimally invasive manner. As in other medical fields, the application of artificial intelligence (AI) in interventional oncology has garnered significant attention. This narrative review describes the current state of AI applications in interventional oncology based on recent literature. A literature search revealed a rapid increase in the number of studies relevant to this topic recently. Investigators have attempted to use AI for various tasks, including automatic segmentation of organs, tumors, and treatment areas; treatment simulation; improvement of intraprocedural image quality; prediction of treatment outcomes; and detection of post-treatment recurrence. Among these, the AI-based prediction of treatment outcomes has been the most studied. Various deep and conventional machine learning algorithms have been proposed for these tasks. Radiomics has often been incorporated into prediction and detection models. Current literature suggests that AI is potentially useful in various aspects of interventional oncology, from treatment planning to post-treatment follow-up. However, most AI-based methods discussed in this review are still at the research stage, and few have been implemented in clinical practice. To achieve widespread adoption of AI technologies in interventional oncology procedures, further research on their reliability and clinical utility is necessary. Nevertheless, considering the rapid research progress in this field, various AI technologies will be integrated into interventional oncology practices in the near future.
AB - Interventional oncology provides image-guided therapies, including transarterial tumor embolization and percutaneous tumor ablation, for malignant tumors in a minimally invasive manner. As in other medical fields, the application of artificial intelligence (AI) in interventional oncology has garnered significant attention. This narrative review describes the current state of AI applications in interventional oncology based on recent literature. A literature search revealed a rapid increase in the number of studies relevant to this topic recently. Investigators have attempted to use AI for various tasks, including automatic segmentation of organs, tumors, and treatment areas; treatment simulation; improvement of intraprocedural image quality; prediction of treatment outcomes; and detection of post-treatment recurrence. Among these, the AI-based prediction of treatment outcomes has been the most studied. Various deep and conventional machine learning algorithms have been proposed for these tasks. Radiomics has often been incorporated into prediction and detection models. Current literature suggests that AI is potentially useful in various aspects of interventional oncology, from treatment planning to post-treatment follow-up. However, most AI-based methods discussed in this review are still at the research stage, and few have been implemented in clinical practice. To achieve widespread adoption of AI technologies in interventional oncology procedures, further research on their reliability and clinical utility is necessary. Nevertheless, considering the rapid research progress in this field, various AI technologies will be integrated into interventional oncology practices in the near future.
KW - Ablation
KW - Artificial intelligence
KW - Embolization
KW - Interventional radiology
KW - Machine learning
KW - Oncology
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U2 - 10.1007/s11604-024-01668-3
DO - 10.1007/s11604-024-01668-3
M3 - Review article
C2 - 39356439
AN - SCOPUS:85205593241
SN - 1867-1071
JO - Japanese Journal of Radiology
JF - Japanese Journal of Radiology
ER -