论文标题
识别fMRI数据阅读障碍的大脑基础的视觉解释
Visual Explanation for Identification of the Brain Bases for Dyslexia on fMRI Data
论文作者
论文摘要
心理健康,神经发育和学习障碍的大脑成像与机器学习相结合,仅基于患者的大脑激活来识别患者,并最终确定从较小的数据样本到较大的特征。但是,机器学习分类算法在神经功能数据上的成功仅限于数十名参与者的更均匀数据集。最近,较大的大脑成像数据集已允许仅根据神经功能特征对大脑状态和临床组进行深入学习技术的应用。深度学习技术为医疗保健应用中的分类提供了有用的工具,包括结构3D脑图像的分类。最近的方法改善了较大功能性脑成像数据集的分类性能,但它们无法提供有关基础条件的诊断见解,也无法提供为分类提供信息的神经特征的解释。我们通过利用许多网络可视化技术来应对这一挑战,以表明,使用负责学习高级功能的卷积神经网络层中的此类技术,我们能够为专家支持的洞察力提供有意义的图像,以对所分类状态进行专家支持的见解。我们的结果不仅表明仅凭大脑成像对发育阅读障碍的准确分类,而且还提供了匹配当代神经科学知识所涉及的功能的自动可视化,这表明视觉解释确实有助于揭示所分类疾病的神经碱性基础。
Brain imaging of mental health, neurodevelopmental and learning disorders has coupled with machine learning to identify patients based only on their brain activation, and ultimately identify features that generalize from smaller samples of data to larger ones. However, the success of machine learning classification algorithms on neurofunctional data has been limited to more homogeneous data sets of dozens of participants. More recently, larger brain imaging data sets have allowed for the application of deep learning techniques to classify brain states and clinical groups solely from neurofunctional features. Deep learning techniques provide helpful tools for classification in healthcare applications, including classification of structural 3D brain images. Recent approaches improved classification performance of larger functional brain imaging data sets, but they fail to provide diagnostic insights about the underlying conditions or provide an explanation from the neural features that informed the classification. We address this challenge by leveraging a number of network visualization techniques to show that, using such techniques in convolutional neural network layers responsible for learning high-level features, we are able to provide meaningful images for expert-backed insights into the condition being classified. Our results show not only accurate classification of developmental dyslexia from the brain imaging alone, but also provide automatic visualizations of the features involved that match contemporary neuroscientific knowledge, indicating that the visual explanations do help in unveiling the neurological bases of the disorder being classified.