CUDA Optimized Neural Network Predicts Blood Glucose Control from Quantified Joint Mobility and Anthropometrics

Sterling Ramroach, A. Dhanoo, B. Cockburn, A. Joshi
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Abstract

Neural network training entails heavy computation with obvious bottlenecks. The Compute Unified Device Architecture (CUDA) programming model allows us to accelerate computation by passing the processing workload from the CPU to the graphics processing unit (GPU). In this paper, we leveraged the power of Nvidia GPUs to parallelize all of the computation involved in training, to accelerate a backpropagation feed-forward neural network with one hidden layer using CUDA and C++. This optimized neural network was tasked with predicting the level of glycated hemoglobin (HbA1c) from non-invasive markers. The rate of increase in the prevalence of Diabetes Mellitus has resulted in an urgent need for early detection and accurate diagnosis. However, due to the invasiveness and limitations of conventional tests, alternate means are being considered. Limited Joint Mobility (LJM) has been reported as an indicator for poor glycemic control. LJM of the fingers is quantified and its link to HbA1c is investigated along with other potential non-invasive markers of HbA1c. We collected readings of 33 potential markers from 120 participants at a clinic in south Trinidad. Our neural network achieved 95.65% accuracy on the training and 86.67% accuracy on the testing set for male participants and 97.73% and 66.67% accuracy on the training and testing sets for female participants. Using 960 CUDA cores from a Nvidia GeForce GTX 660, our parallelized neural network was trained 50 times faster on both subsets, than its corresponding CPU implementation on an Intel® Core™ i7-3630QM 2.40 GHz CPU.
CUDA优化神经网络预测血糖控制量化关节活动和人体测量
神经网络训练计算量大,瓶颈明显。计算统一设备架构(CUDA)编程模型允许我们通过将处理工作负载从CPU传递到图形处理单元(GPU)来加速计算。在本文中,我们利用Nvidia gpu的强大功能来并行化训练中涉及的所有计算,使用CUDA和c++加速具有一个隐藏层的反向传播前馈神经网络。该优化的神经网络的任务是通过无创标记物预测糖化血红蛋白(HbA1c)水平。随着糖尿病患病率的上升,人们迫切需要对其进行早期发现和准确诊断。然而,由于常规检查的侵入性和局限性,正在考虑其他方法。据报道,关节活动受限(LJM)是血糖控制不良的一个指标。手指LJM被量化,并与其他潜在的非侵入性HbA1c标志物一起研究其与HbA1c的联系。我们从特立尼达南部一家诊所的120名参与者中收集了33种潜在标记物的读数。我们的神经网络在男性参与者的训练集和测试集上的准确率分别为95.65%和86.67%,在女性参与者的训练集和测试集上的准确率分别为97.73%和66.67%。使用Nvidia GeForce GTX 660的960个CUDA内核,我们的并行神经网络在两个子集上的训练速度比在Intel®Core™i7-3630QM 2.40 GHz CPU上的相应CPU实现快50倍。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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