三维脑数据分析的深度学习交互式可视化

Huang Li, S. Fang, J. Goñi, A. Saykin, Li Shen
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引用次数: 1

摘要

由于有多个隐藏层和大量的特征和权重组合,深度学习模型很难理解,甚至更难与之交互。在本文中,我们描述了一个可视化分析平台,以帮助理解和交互人类大脑图像数据的深度学习过程。使用脑连接组网络数据集训练用于阿尔茨海默病(AD)诊断的分类器。将脑图像的3D渲染集成到深度神经网络的交互可视化过程中,将应用程序的上下文信息带入分析框架。采用反向传播算法跟踪隐藏层中每个节点捕获的图像特征。我们的研究结果表明,交互式可视化不仅可以帮助理解深度学习过程,而且还为领域专家提供了一个互动和辅助学习过程的平台,这可能会提高分析的可解释性和准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Interactive Visualization of Deep Learning for 3D Brain Data Analysis
With multiple hidden layers and massive combinations of features and weights, deep learning models are hard to understand, and even more difficult to interact with. In this paper we describe a visual analytics platform to help with the understanding of and interaction with the deep learning process of human brain image data. A brain connectome network dataset is used to train a classifier for the diagnosis of Alzheimer's Disease (AD). 3D rendering of brain images is integrated into the interactive visualization process of a deep neural network to bring contextual information of the application to the analysis framework. A backpropagation algorithm is applied to track the image features that are captured by each node in the hidden layers. Our results demonstrate that interactive visualization can not only help the understanding of the deep learning process, but also provide a platform for domain experts to interact with and assist in the learning process, which can potentially enhance the interpretability and accuracy of the analysis.
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