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The Role of Artificial Intelligence in the Prediction of Functional Maturation of Arteriovenous Fistula

机译:人工智能在动静脉瘘功能成熟预测中的作用

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摘要

>Objective: 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.>Materials and Methods: A prospective database of 266 individuals over a four-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 area under the curve for each output matrix at best sensitivity and at 1-specificity with the log-rank test p<0.01. ANN classification identified age, artery and vein diameter to influence FM with an accuracy of (>89%). AI has the ability of predicting with a high grade of accuracy FM and recognising patterns that influence it.>Conclusion: AI is a replicable tool that could remain up to date and flexible to ongoing deep learning with further data feed ensuring substantial enhancement in its accuracy. AI could serve as a clinical decision-making tool and its application in vascular access requires further evaluation.
机译:>目的:本研究的目的是检验虚拟人工智能(AI)在预测功能性成熟(FM)和自体放射性脑动静脉瘘(RCAVF)形成的因素的模式识别中的应用。 >材料和方法:我们使用一个前瞻性数据库,该数据库在四年时间内具有n = 10个变量的266个个体,用于训练,验证和测试人工神经网络(ANN)。构建了人工神经网络以创建预测模型并评估变量对FM端点的影响。>结果:在检测FM时,训练,验证,测试和每个输出矩阵上所有数据的总体准确性分别为86.4%,82.5%,77.5%和84.5%。结果与每个输出矩阵在最佳灵敏度和1特异度下的曲线下面积相对应,对数秩检验p <0.01。 ANN分类确定了年龄,动脉和静脉直径,以(> 89%)的精度影响FM。 AI能够以较高的准确度进行FM预测,并能够识别影响FM的模式。>结论:AI是可复制的工具,可以保持最新状态,并可以通过进一步的数据馈送灵活地进行正在进行的深度学习确保大幅提高其准确性。 AI可以作为临床决策工具,其在血管通路中的应用需要进一步评估。

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