Voxelwise 3D Convolutional and Recurrent Neural Networks for Epilepsy and Depression Diagnostics from Structural and Functional MRI Data

Marina Pominova, Alexey Artemov, M. Sharaev, E. Kondrateva, A. Bernstein, Evgeny Burnaev
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引用次数: 29

Abstract

In the field of psychoneurology, analysis of neuroimaging data aimed at extracting distinctive patterns of pathologies, such as epilepsy and depression, is well known to represent a challenging problem. As the resolution and acquisition rates of modern medical scanners rise, the need to automatically capture complex spatiotemporal patterns in large imaging arrays suggests using automated approaches to pattern recognition in volumetric images, such as training a classification models using deep learning. On the other hand, with typically scarce training data, the choice of a particular neural network architecture remains an unresolved issue. In this work, we evaluate off-the-shelf building blocks of deep voxelwise neural architectures with the goal of learning robust decision rules in computational psychiatry. To this end, we carry out a series of computational experiments, aiming at the recognition of epilepsy and depression on structural (3D) and functional (4D) MRI data. We discover that our investigated models perform on par with computational approaches known in literature, without the need for sophisticated preprocessing and feature extraction.
从结构和功能MRI数据中诊断癫痫和抑郁症的体素三维卷积和循环神经网络
在精神神经病学领域,对神经成像数据的分析旨在提取不同的病理模式,如癫痫和抑郁症,是一个众所周知的具有挑战性的问题。随着现代医学扫描仪的分辨率和采集率的提高,在大型成像阵列中自动捕获复杂时空模式的需求建议使用自动方法对体积图像进行模式识别,例如使用深度学习训练分类模型。另一方面,由于通常缺乏训练数据,特定神经网络架构的选择仍然是一个未解决的问题。在这项工作中,我们评估了深度体素神经架构的现成构建块,目标是学习计算精神病学中的鲁棒决策规则。为此,我们进行了一系列的计算实验,旨在对结构(3D)和功能(4D) MRI数据进行癫痫和抑郁症的识别。我们发现我们研究的模型与文献中已知的计算方法相当,不需要复杂的预处理和特征提取。
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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