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基于结构磁共振成像的精神分裂症分类:自动编码器和3D卷积神经网络结合多种预处理技术的应用

Structural MRI-Based Schizophrenia Classification Using Autoencoders and 3D Convolutional Neural Networks in Combination with Various Pre-Processing Techniques.

作者信息

Vyškovský Roman, Schwarz Daniel, Churová Vendula, Kašpárek Tomáš

机构信息

Faculty of Medicine, Institute of Biostatistics and Analyses, Masaryk University, Kamenice 3, 625 00 Brno, Czech Republic.

Department of Psychiatry, University Hospital Brno, Masaryk University, Jihlavska 20, 625 00 Brno, Czech Republic.

出版信息

Brain Sci. 2022 May 9;12(5):615. doi: 10.3390/brainsci12050615.

DOI:10.3390/brainsci12050615
PMID:35625002
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC9139344/
Abstract

Schizophrenia is a severe neuropsychiatric disease whose diagnosis, unfortunately, lacks an objective diagnostic tool supporting a thorough psychiatric examination of the patient. We took advantage of today's computational abilities, structural magnetic resonance imaging, and modern machine learning methods, such as stacked autoencoders (SAE) and 3D convolutional neural networks (3D CNN), to teach them to classify 52 patients with schizophrenia and 52 healthy controls. The main aim of this study was to explore whether complex feature extraction methods can help improve the accuracy of deep learning-based classifiers compared to minimally preprocessed data. Our experiments employed three commonly used preprocessing steps to extract three different feature types. They included voxel-based morphometry, deformation-based morphometry, and simple spatial normalization of brain tissue. In addition to classifier models, features and their combination, other model parameters such as network depth, number of neurons, number of convolutional filters, and input data size were also investigated. Autoencoders were trained on feature pools of 1000 and 5000 voxels selected by Mann-Whitney tests, and 3D CNNs were trained on whole images. The most successful model architecture (autoencoders) achieved the highest average accuracy of 69.62% (sensitivity 68.85%, specificity 70.38%). The results of all experiments were statistically compared (the Mann-Whitney test). In conclusion, SAE outperformed 3D CNN, while preprocessing using VBM helped SAE improve the results.

摘要

精神分裂症是一种严重的神经精神疾病,遗憾的是,其诊断缺乏客观的诊断工具来支持对患者进行全面的精神检查。我们利用当今的计算能力、结构磁共振成像以及现代机器学习方法,如堆叠自动编码器(SAE)和3D卷积神经网络(3D CNN),来训练它们对52例精神分裂症患者和52名健康对照进行分类。本研究的主要目的是探讨与经过最少预处理的数据相比,复杂特征提取方法是否有助于提高基于深度学习的分类器的准确性。我们的实验采用了三个常用的预处理步骤来提取三种不同类型的特征。它们包括基于体素的形态学测量、基于变形的形态学测量以及脑组织的简单空间归一化。除了分类器模型、特征及其组合外,还研究了其他模型参数,如网络深度、神经元数量、卷积滤波器数量和输入数据大小。自动编码器在通过曼-惠特尼检验选择的1000个体素和5000个体素的特征池上进行训练,3D CNN在全图像上进行训练。最成功的模型架构(自动编码器)达到了最高平均准确率69.62%(灵敏度68.85%,特异性70.38%)。对所有实验结果进行了统计学比较(曼-惠特尼检验)。总之,SAE的表现优于3D CNN,而使用基于体素的形态学测量(VBM)进行预处理有助于SAE提高结果。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/c15f/9139344/cd1c539578a4/brainsci-12-00615-g001.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/c15f/9139344/cd1c539578a4/brainsci-12-00615-g001.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/c15f/9139344/cd1c539578a4/brainsci-12-00615-g001.jpg

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