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An Inception-Based Architecture for Haemodialysis Time Series Classification

机译:基于初始概念的血液透析时间序列分类体系结构

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Classifying haemodialysis sessions, on the basis of the evolution of specific clinical variables over time, allows the physician to identify patients that are being treated inefficiently, and that may need additional monitoring or corrective interventions. In this paper, we propose a deep learning approach to clinical time series classification, in the haemodialysis domain. Specifically, grounding on our previous experience in adopting convolutional neural networks on haemodialysis time series, we have defined an inception-based architecture, able to exploit kernels of different sizes in parallel. The proposed architecture has outperformed the results obtained by resorting both to a more standard convolutional neural network, and to the state of the art approach ROCKET, since we reached higher accuracy values, coupled with a good Matthews Correlation Coefficient.
机译:根据特定临床变量随时间的演变,对血液透析过程进行分类,使医生能够识别治疗效率低下、可能需要额外监测或纠正干预的患者。在本文中,我们提出了一种血液透析领域临床时间序列分类的深度学习方法。具体来说,基于我们之前在血液透析时间序列上采用卷积神经网络的经验,我们定义了一个基于初始阶段的架构,能够并行利用不同大小的内核。由于我们达到了更高的精度值,再加上良好的马修斯相关系数,因此所提出的体系结构比采用更标准的卷积神经网络和最先进的火箭方法得到的结果要好。

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