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Survival Prediction Model of Renal Transplantation using Deep Neural Network

机译:深神经网络肾移植存活预测模型

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The objectives of this paper are to explore ways to parallelize and distribute deep learning in multi-core and distributed settings. We have heuristically improved the training parameter setting by a Deep Neural Network (DNN) using quad-core CPU and Graphical Processing Unit (GPU) and develop a setting to improve training performances. Along with that, a Parallel Phase Neural network model (PHNNM) has been proposed for the prediction of the long-term survival of liver patients who undergo liver transplantation (LT). We made survival analysis of 13 years in the prediction of liver patients after LT and trained the liver transplantation system to follow up data of 13 years separately using a multilayer perceptron PHNNM model with proper selection of data attributes in conjunction with evaluating the survival probabilities of such data. This paper proved that our prediction model is suitable for the long-term prognosis of survival of patients after LT. The promising results are shown, in combination with the computational performances in terms of CPU and GPU.
机译:本文的目标是探讨在多核和分布式设置中并行化和分发深度学习的方法。我们使用四核CPU和图形处理单元(GPU)启发式改进了深度神经网络(DNN)的培训参数设置,并开发了一个设置以改善训练性能。除此之外,已经提出了平行相位神经网络模型(PHNNM),用于预测经过肝移植(LT)的肝脏患者的长期存活。我们在LT激发肝移植系统后预测肝脏移植系统的预测到13年的生存分析,以便使用多层的Perceptron PHNNM模型跟进13年的数据,并结合评估此类的生存概率进行适当的数据属性。数据。本文证明,我们的预测模型适用于患者的生存期后的长期预后。在CPU和GPU方面结合计算性能,显示了有希望的结果。

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