Kordzadeh_Sadeghi-Esfahlani_2019.pdf (952.72 kB)
Download fileThe Role of Artificial Intelligence in the Prediction of Functional Maturation of Arteriovenous Fistula
journal contribution
posted on 2023-07-26, 14:33 authored by Ali Kordzadeh, Shabnam Sadeghi EsfahlaniObjective: The aim of this study is to examine the application of virtual artificial intelligence (AI) in the prediction of functional maturation (FM) and pattern recognition of factors in autogenous radiocephalic arteriovenous fistula (RCAVF) formation.
Material and Methods: A prospective database of 266 individuals over a 4four-year period with n=10 variables, were used to train, validate and test an artificial neural network (ANN). The ANN was constructed to create a predictive model and evaluate the impact of variables on the endpoint of FM.
Results: The overall accuracy of the training, validation,
testing and all data on each output matrix at detecting FM
was 86.4%, 82.5%, 77.5% and 84.5%, respectively. The
results corresponded with their AUC for each output matrix
at best sensitivity and at 1-specificty with the log-rank test p<0.01. ANN classification identified age, artery and vein diameter to influence FM with an accuracy of (>89%). Artificial intelligence has the ability to predict with a high grade of accuracy FM and recognizing patterns that influence it with a high grade of accuracy.
Conclusion: AI is a replicable tool that could remain up-to-date and flexible too for ongoing deep learning with further data feed ensuring substantial enhancement in its accuracy with the further data feed. It AI could serve as a clinical decisionmaking tool and its application.
History
Refereed
- Yes
Volume
12Issue number
1Page range
44-49Publication title
Annals of Vascular DiseasesISSN
1881-6428External DOI
Publisher
Editorial Committee of Annals of Vascular DiseasesFile version
- Published version
Language
- eng