Department of Computer Science, University of North Carolina at Charlotte, Charlotte, NC, 28223, USA.
Department of Industrial and Systems Engineering, The State University of New Jersey, Piscataway, NJ, 08854, USA.
Neuroinformatics. 2018 Oct;16(3-4):339-349. doi: 10.1007/s12021-018-9361-5.
Recently released large-scale neuron morphological data has greatly facilitated the research in neuroinformatics. However, the sheer volume and complexity of these data pose significant challenges for efficient and accurate neuron exploration. In this paper, we propose an effective retrieval framework to address these problems, based on frontier techniques of deep learning and binary coding. For the first time, we develop a deep learning based feature representation method for the neuron morphological data, where the 3D neurons are first projected into binary images and then learned features using an unsupervised deep neural network, i.e., stacked convolutional autoencoders (SCAEs). The deep features are subsequently fused with the hand-crafted features for more accurate representation. Considering the exhaustive search is usually very time-consuming in large-scale databases, we employ a novel binary coding method to compress feature vectors into short binary codes. Our framework is validated on a public data set including 58,000 neurons, showing promising retrieval precision and efficiency compared with state-of-the-art methods. In addition, we develop a novel neuron visualization program based on the techniques of augmented reality (AR), which can help users take a deep exploration of neuron morphologies in an interactive and immersive manner.
最近发布的大规模神经元形态学数据极大地方便了神经信息学的研究。然而,这些数据的巨大数量和复杂性给有效的和准确的神经元探索带来了重大挑战。在本文中,我们提出了一个有效的检索框架,基于深度学习和二进制编码的前沿技术来解决这些问题。我们首次为神经元形态学数据开发了一种基于深度学习的特征表示方法,其中首先将 3D 神经元投影到二进制图像中,然后使用无监督的深度神经网络(即堆叠卷积自动编码器(SCAE))学习特征。然后将深度特征与手工制作的特征融合,以进行更准确的表示。考虑到在大型数据库中进行穷举搜索通常非常耗时,我们采用了一种新颖的二进制编码方法将特征向量压缩成短的二进制码。我们的框架在一个包含 58000 个神经元的公共数据集上进行了验证,与最先进的方法相比,表现出了有前景的检索精度和效率。此外,我们还开发了一种基于增强现实(AR)技术的新型神经元可视化程序,可帮助用户以交互和沉浸式的方式深入探索神经元形态。