Application of artificial intelligence in carotid endarterectomy and carotid artery stenting: A systematic review

被引:0
作者
Greatbatch, Connor [1 ]
Arnott, Madeleine [2 ]
Robertson, Cameron [1 ]
机构
[1] Royal Hobart Hosp, Tasmanian Vasc Surg Unit, 48 Liverpool St, Hobart, Tas 7000, Australia
[2] Princess Alexandra Hosp, Vasc Surg Unit, Brisbane, Qld, Australia
关键词
Artificial intelligence; machine learning; carotid endarterectomy; carotid artery stenting; carotid artery stenosis; PREDICTION; NETWORK; RISKS;
D O I
10.1177/17085381251331394
中图分类号
R6 [外科学];
学科分类号
1002 ; 100210 ;
摘要
Objectives Carotid stenosis plays a significant role in stroke burden. Surgical intervention in the form of carotid endarterectomy or carotid artery stenting is an important stroke risk reduction strategy. Careful patient selection with identification of high-risk individuals is crucial to operative planning given perioperative risks including stroke, myocardial infarction, and death. Machine learning (ML) is a subset of artificial intelligence (AI) consisting of mathematical algorithms that can learn from datasets to perform particular tasks. These algorithms offer a tool for prediction of patient outcomes by analysis of preoperative data leading to improved patient selection. This systematic review aims to assess the use of artificial intelligence in risk stratification for carotid endarterectomy and carotid artery stenting.Methods PubMed, Web of Knowledge, EMBASE, and the Cochrane Library were systematically searched to identify any articles utilising artificial intelligence in predicting surgical outcomes in carotid endarterectomy or carotid artery stenting. After duplicate removal, all studies underwent independent title and abstract screening followed by quality assessment using the PROBAST tool. Data extraction was then carried out for synthesis and comparison of study outcomes including accuracy, area under receiver operator curve (AUC), sensitivity, and specificity.Results After duplicate processing, a total of 100 articles underwent title and abstract screening resulting in 11 clinical studies published between 2008 and 2023 that fit eligibility criteria. Surgical outcomes assessed included haemodynamic instability, shunt requirement, hyperperfusion syndrome, stroke, myocardial infarction, and death. Artificial intelligence models were able to accurately predict major adverse cardiovascular events (AUC 0.84), postoperative haemodynamic instability (AUC 0.86), shunt requirement (AUC 0.87), and postoperative hyperperfusion syndrome (AUC 0.95). However, many studies had a high risk of bias due to lack of external validation.Conclusion This systematic review highlights the potential application of machine learning in prediction of surgical outcomes in carotid artery intervention. However, use of these tools in a clinical setting requires further robust study with use of external validation and larger patient datasets.
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页数:8
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共 39 条
[11]  
Cheng CA, 2017, IEEE ENG MED BIO, P2566, DOI 10.1109/EMBC.2017.8037381
[12]   The Society for Vascular Surgery Vascular Quality Initiative [J].
Cronenwett, Jack L. ;
Kraiss, Larry W. ;
Cambria, Richard P. .
JOURNAL OF VASCULAR SURGERY, 2012, 55 (05) :1529-1537
[13]   Multidelay MR Arterial Spin Labeling Perfusion Map for the Prediction of Cerebral Hyperperfusion After Carotid Endarterectomy [J].
Fan, Xiaoyuan ;
Lai, Zhichao ;
Lin, Tianye ;
Li, Kang ;
Hou, Bo ;
You, Hui ;
Wei, Juan ;
Qu, Jianxun ;
Liu, Bao ;
Zuo, Zhentao ;
Feng, Feng .
JOURNAL OF MAGNETIC RESONANCE IMAGING, 2023, 58 (04) :1245-1255
[14]   Predicting radiocephalic arteriovenous fistula success with machine learning [J].
Heindel, Patrick ;
Dey, Tanujit ;
Feliz, Jessica D. ;
Hentschel, Dirk M. ;
Bhatt, Deepak L. ;
Al-Omran, Mohammed ;
Belkin, Michael ;
Ozaki, C. Keith ;
Hussain, Mohamad A. .
NPJ DIGITAL MEDICINE, 2022, 5 (01)
[15]   Extensions of the External Validation for Checking Learned Model Interpretability and Generalizability [J].
Ho, Sung Yang ;
Phua, Kimberly ;
Wong, Limsoon ;
Bin Goh, Wilson Wen .
PATTERNS, 2020, 1 (08)
[16]   Predicting ischemic stroke after carotid artery stenting based on proximal calcification and the jellyfish sign [J].
Ichinose, Nobuhiko ;
Hama, Seiji ;
Tsuji, Toshio ;
Soh, Zu ;
Hayashi, Hideaki ;
Kiura, Yoshihiro ;
Sakamoto, Shigeyuki ;
Okazaki, Takahito ;
Ishii, Daizo ;
Shinagawa, Katsuhiro ;
Kurisu, Kaoru .
JOURNAL OF NEUROSURGERY, 2018, 128 (05) :1280-1288
[17]   Prediction of persistent hemodynamic depression after carotid angioplasty and stenting using artificial neural network model [J].
Jeon, Jin Pyeong ;
Kim, Chulho ;
Oh, Byoung-Doo ;
Kim, Sun Jeong ;
Kim, Yu-Seop .
CLINICAL NEUROLOGY AND NEUROSURGERY, 2018, 164 :127-131
[18]   Prediction of abdominal aortic aneurysm growth by artificial intelligence taking into account clinical, biologic, morphologic, and biomechanical variables [J].
Kontopodis, Nikolaos ;
Klontzas, Michail ;
Tzirakis, Konstantinos ;
Charalambous, Stavros ;
Marias, Kostas ;
Tsetis, Dimitrios ;
Karantanas, Apostolos ;
Ioannou, Christos, V .
VASCULAR, 2023, 31 (03) :409-416
[19]   Artificial Intelligence for Hip Fracture Detection and Outcome Prediction: A Systematic Review and Meta-analysis [J].
Lex, Johnathan R. ;
Di Michele, Joseph ;
Koucheki, Robert ;
Pincus, Daniel ;
Whyne, Cari ;
Ravi, Bheeshma .
JAMA NETWORK OPEN, 2023, 6 (03) :E233391
[20]   Predicting Major Adverse Cardiovascular Events Following Carotid Endarterectomy Using Machine Learning [J].
Li, Ben ;
Verma, Raj ;
Beaton, Derek ;
Tamim, Hani ;
Hussain, Mohamad A. ;
Hoballah, Jamal J. ;
Lee, Douglas S. ;
Wijeysundera, Duminda N. ;
de Mestral, Charles ;
Mamdani, Muhammad ;
Al-Omran, Mohammed .
JOURNAL OF THE AMERICAN HEART ASSOCIATION, 2023, 12 (20)