Accuracy of Artificial Intelligence-Based Automated Quantitative Coronary Angiography Compared to Intravascular Ultrasound: Retrospective Cohort Study

被引:2
|
作者
Moon, In Tae [1 ]
Kim, Sun-Hwa [2 ]
Chin, Jung Yeon [1 ]
Park, Sung Hun [1 ]
Yoon, Chang-Hwan [2 ]
Youn, Tae-Jin [2 ]
Chae, In-Ho [2 ]
Kang, Si-Hyuck [2 ]
机构
[1] Uijeongbu Eulji Univ Hosp, Uijongbu, South Korea
[2] Seoul Natl Univ, Bundang Hosp, 82,Gumi Ro 173 Beon-Gil, Seongnam Si 13620, Gyeonggi Do, South Korea
关键词
artificial intelligence; AI; coronary angiography; coronary stenosis; interventional ultrasonography; coronary; machine learning; angiography; stenosis; automated analysis; computer vision; STENT IMPLANTATION; GUIDANCE; VARIABILITY; DIMENSIONS; CARDIOLOGY; LESIONS; IMPACT; IVUS; TERM;
D O I
10.2196/45299
中图分类号
R5 [内科学];
学科分类号
1002 ; 100201 ;
摘要
Background: An accurate quantitative analysis of coronary artery stenotic lesions is essentialto make optimal clinical decisions. Recent advances in computer vision and machine learning technology have enabled the automated analysis of coronary angiography. Objective: The aim of this paper is to validatethe performance of artificial intelligence-based quantitative coronary angiography (AI-QCA) in comparison with that of intravascular ultrasound (IVUS). Methods: This retrospective study included patients who underwent IVUS-guided coronary intervention at a single tertiary center in Korea. Proximal and distal reference areas, minimal luminal area, percent plaque burden, and lesion length were measured by AI-QCA and human experts using IVUS. First, fully automated QCA analysis was compared with IVUS analysis. Next, we adjusted the proximal and distal margins of AI-QCA to avoid geographic mismatch. Scatter plots, Pearson correlation coefficients, and Bland-Altman were used to analyze the data. Results: A total of 54 significant lesions were analyzed in 47 patients. The proximal and distal reference areas, as well as the minimal luminal area, showed moderate to strong correlation between the 2 modalities (correlation coefficients of 0.57, 0.80, and 0.52, respectively; P <.001). The correlation was weaker for percent area stenosis and lesion length, although statistically significant (correlation coefficients of 0.29 and 0.33, respectively). AI-QCA tended to measure reference vessel areas smaller and lesion lengths shorter than IVUS did. Systemic proportional bias was not observed in Bland-Altman plots. The biggest cause of bias originated from the geographic mismatch of AI-QCA with IVUS. Discrepancies in the proximal or distal lesion margins were observed between the 2 modalities, which were more frequent at the distal margins. After the adjustment of proximal or distal margins, there was a stronger correlation of proximal and distal reference areas between AI-QCA and IVUS (correlation coefficients of 0.70 and 0.83, respectively). Conclusions:AI-QCA showed a moderate to strong correlation compared with IVUS in analyzing coronary lesions with significant stenosis. The main discrepancy was in the perception of the distal margins by AI-QCA, and the correction of margins improved the correlation coefficients. We believe that this novel tool could provide confidence to treating physicians and help in making optimal clinical decisions.
引用
收藏
页数:10
相关论文
共 50 条
  • [21] A case study in applying artificial intelligence-based named entity recognition to develop an automated ophthalmic disease registry
    Macri, Carmelo Z.
    Teoh, Sheng Chieh
    Bacchi, Stephen
    Tan, Ian
    Casson, Robert
    Sun, Michelle T.
    Selva, Dinesh
    Chan, WengOnn
    GRAEFES ARCHIVE FOR CLINICAL AND EXPERIMENTAL OPHTHALMOLOGY, 2023, 261 (11) : 3335 - 3344
  • [22] Study on the use of intravascular ultrasound-guided coronary intravascular lithotripsy compared with rotational atherectomy: a single-center, retrospective study
    Li, Ben
    Li, Jiaxing
    Hu, Guangxin
    Zhang, Shichang
    Ren, Yongkang
    Li, Mingyang
    Li, Yinping
    Jia, Shaobin
    JOURNAL OF INTERNATIONAL MEDICAL RESEARCH, 2024, 52 (12)
  • [23] Reduction of False-Positive Markings on Mammograms: a Retrospective Comparison Study Using an Artificial Intelligence-Based CAD
    Mayo, Ray Cody
    Kent, Daniel
    Sen, Lauren Chang
    Kapoor, Megha
    Leung, Jessica W. T.
    Watanabe, Alyssa T.
    JOURNAL OF DIGITAL IMAGING, 2019, 32 (04) : 618 - 624
  • [24] Evaluation of an artificial intelligence-based clinical trial matching system in Chinese patients with hepatocellular carcinoma: a retrospective study
    Kunyuan Wang
    Hao Cui
    Yun Zhu
    Xiaoyun Hu
    Chang Hong
    Yabing Guo
    Lingyao An
    Qi Zhang
    Li Liu
    BMC Cancer, 24
  • [25] Evaluation of an artificial intelligence-based clinical trial matching system in Chinese patients with hepatocellular carcinoma: a retrospective study
    Wang, Kunyuan
    Cui, Hao
    Zhu, Yun
    Hu, Xiaoyun
    Hong, Chang
    Guo, Yabing
    An, Lingyao
    Zhang, Qi
    Liu, Li
    BMC CANCER, 2024, 24 (01)
  • [26] Performance of an artificial intelligence-based diagnostic support tool for early gastric cancers: Retrospective study
    Ishioka, Mitsuaki
    Osawa, Hiroyuki
    Hirasawa, Toshiaki
    Kawachi, Hiroshi
    Nakano, Kaoru
    Fukushima, Noriyoshi
    Sakaguchi, Mio
    Tada, Tomohiro
    Kato, Yusuke
    Shibata, Junichi
    Ozawa, Tsuyoshi
    Tajiri, Hisao
    Fujisaki, Junko
    DIGESTIVE ENDOSCOPY, 2023, 35 (04) : 483 - 491
  • [27] Artificial Intelligence-based quantification of atherosclerotic plaque and stenosis from coronary computed tomography angiography using a novel method
    Lin, Andrew
    Manral, Nipun
    McElhinney, Priscilla
    Killekar, Aditya
    Matsumoto, Hidenari
    Kwiecinski, Jacek
    Pieszko, Konrad
    Razipour, Aryabod
    Grodecki, Kajetan
    Park, Caroline
    Doris, Mhairi
    Kwan, Alan C.
    Han, Donghee
    Kuronama, Keiichiro
    Tomasino, Guadalupe Flores
    Tzolos, Evangelos
    Shanbhag, Aakash
    Goeller, Markus
    Marwan, Mohamed
    Cadet, Sebastien
    Achenbach, Stephan
    Nicholls, Stephen J.
    Wong, Dennis T.
    Berman, Daniel S.
    Dweck, Marc
    Newby, David E.
    Williams, Michelle C.
    Slomka, Piotr J.
    Dey, Damini
    MEDICAL IMAGING 2022: PHYSICS OF MEDICAL IMAGING, 2022, 12031
  • [28] Accuracy and efficiency of an artificial intelligence-based pulmonary broncho-vascular three-dimensional reconstruction system supporting thoracic surgery: Retrospective and prospective validation study
    Li, Xiang
    Zhang, Shanyuan
    Luo, Xiang
    Gao, Guangming
    Luo, Xiangfeng
    Wang, Shansi
    Li, Shaolei
    Zhao, Dachuan
    Wang, Yaqi
    Cui, Xinrun
    Liu, Bing
    Tao, Ye
    Xiao, Bufan
    Tang, Lei
    Yan, Shi
    Wu, Nan
    EBIOMEDICINE, 2023, 87
  • [29] Effects of an artificial intelligence-based exercise program on pain intensity and disability in patients with neck pain compared with group exercise therapy: A cohort study
    Annika, Griefahn
    Rica, Hartmann
    Florian, Avermann
    Christoff, Zalpour
    Kerstin, Luedtke
    JOURNAL OF BODYWORK AND MOVEMENT THERAPIES, 2025, 42 : 1031 - 1038
  • [30] Intravascular ultrasound radiofrequency analysis after optimal coronary stenting with initial quantitative coronary angiography guidance: an ATHEROREMO sub-study
    Sarno, Giovanna
    Garg, Scot
    Gomez-Lara, Josep
    Garcia, Hector M. Garcia
    Ligthart, Jurgen
    Bruining, Nico
    Onuma, Yoshinobu
    Witberg, Karen
    van Geuns, Robert-Jar
    de Boer, Sanneke
    Wykrzykowska, Joanna
    Schultz, Carl
    Duckers, Henricus J.
    Regar, Evelyn
    de Jaegere, Peter
    de Feyter, Pim
    van Es, Gerrit Anne
    Boersma, Eric
    van der Giessen, Wim
    Serruys, Patrick W.
    EUROINTERVENTION, 2011, 6 (08) : 977 - 984