1. Prediction, pattern recognition and modelling of complications post-endovascular infra renal aneurysm repair by artificial intelligence.
- Author
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Kordzadeh A, Hanif MA, Ramirez MJ, Railton N, Prionidis I, and Browne T
- Subjects
- Aged, Aged, 80 and over, Aortic Aneurysm, Abdominal diagnostic imaging, Aortic Aneurysm, Abdominal mortality, Blood Vessel Prosthesis, Blood Vessel Prosthesis Implantation instrumentation, Blood Vessel Prosthesis Implantation mortality, Decision Trees, Endoleak diagnosis, Endoleak etiology, Endoleak mortality, Endovascular Procedures instrumentation, Endovascular Procedures mortality, Female, Foreign-Body Migration diagnosis, Foreign-Body Migration etiology, Foreign-Body Migration mortality, Graft Occlusion, Vascular diagnosis, Graft Occlusion, Vascular etiology, Graft Occlusion, Vascular mortality, Humans, Male, Middle Aged, Postoperative Complications etiology, Postoperative Complications mortality, Prospective Studies, Risk Assessment, Risk Factors, Support Vector Machine, Time Factors, Treatment Outcome, Aortic Aneurysm, Abdominal surgery, Artificial Intelligence, Blood Vessel Prosthesis Implantation adverse effects, Endovascular Procedures adverse effects, Pattern Recognition, Automated, Postoperative Complications diagnosis
- Abstract
Objectives: The study evaluates the plausibility and applicability of prediction, pattern recognition and modelling of complications post-endovascular aneurysm repair (EVAR) by artificial intelligence for more accurate surveillance in practice., Methods: A single-centre prospective data collection on ( n = 250) EVAR cases with n = 26 preoperative attributes (factors) on endpoint of endoleak (types I-VI), occlusion, migration and mortality over a 13-year period was conducted. In addition to the traditional statistical analysis, data was subjected to machine learning algorithm through artificial neural network. The predictive accuracy (specificity and -1 sensitivity) on each endpoint is presented with percentage and receiver operative curve. The pattern recognition and model classification were conducted using discriminate analysis, decision tree, logistic regression, naive Bayes and support vector machines, and the best fit model was deployed for pattern recognition and modelling., Results: The accuracy of the training, validation and predictive ability of artificial neural network in detection of endoleak type I was 95, 96 and 94%, type II (94, 83, 90 and 82%) and type III was 96, 94 and 96%, respectively. Endpoints are associated with increase in weights through predictive modeling that were not detected through statistical analytics. The overall accuracy of the model was >86%., Conclusion: The study highlights the applicability, accuracy and reliability of artificial intelligence in the detection of adverse outcomes post-EVAR for an accurate surveillance stratification.
- Published
- 2021
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