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基于区域脑容量特征的阅读障碍深度学习分类。

Deep learning classification of reading disability with regional brain volume features.

机构信息

School of Computing, Clemson University, Clemson, S.C, U.S.A.

Department of Otolaryngology - Head and Neck Surgery, Medical University of South Carolina, Charleston, S.C, U.S.A.

出版信息

Neuroimage. 2023 Jun;273:120075. doi: 10.1016/j.neuroimage.2023.120075. Epub 2023 Apr 11.

Abstract

Developmental reading disability is a prevalent and often enduring problem with varied mechanisms that contribute to its phenotypic heterogeneity. This mechanistic and phenotypic variation, as well as relatively modest sample sizes, may have limited the development of accurate neuroimaging-based classifiers for reading disability, including because of the large feature space of neuroimaging datasets. An unsupervised learning model was used to reduce deformation-based data to a lower-dimensional manifold and then supervised learning models were used to classify these latent representations in a dataset of 96 reading disability cases and 96 controls (mean age: 9.86 ± 1.56 years). A combined unsupervised autoencoder and supervised convolutional neural network approach provided an effective classification of cases and controls (accuracy: 77%; precision: 0.75; recall: 0.78). Brain regions that contributed to this classification accuracy were identified by adding noise to the voxel-level image data, which showed that reading disability classification accuracy was most influenced by the superior temporal sulcus, dorsal cingulate, and lateral occipital cortex. Regions that were most important for the accurate classification of controls included the supramarginal gyrus, orbitofrontal, and medial occipital cortex. The contribution of these regions reflected individual differences in reading-related abilities, such as non-word decoding or verbal comprehension. Together, the results demonstrate an optimal deep learning solution for classification using neuroimaging data. In contrast with standard mass-univariate test results, results from the deep learning model also provided evidence for regions that may be specifically affected in reading disability cases.

摘要

发展性阅读障碍是一种普遍且持久的问题,其机制多样,导致表型异质性。这种机制和表型的变化,以及相对较小的样本量,可能限制了基于神经影像学的阅读障碍准确分类器的发展,包括由于神经影像学数据集的特征空间较大。使用无监督学习模型将基于变形的数据集简化到低维流形,然后使用监督学习模型对 96 例阅读障碍病例和 96 例对照者(平均年龄:9.86±1.56 岁)的这些潜在表示进行分类。联合无监督自动编码器和监督卷积神经网络方法对病例和对照者进行了有效分类(准确率:77%;精度:0.75;召回率:0.78)。通过向体素级图像数据添加噪声来确定对分类准确性有贡献的脑区,结果表明,阅读障碍分类准确性受颞上回、背侧扣带回和外侧枕叶的影响最大。对对照者准确分类最重要的区域包括缘上回、眶额回和内侧枕叶。这些区域的贡献反映了与阅读相关的能力的个体差异,例如非词解码或言语理解。总的来说,这些结果证明了使用神经影像学数据进行分类的最佳深度学习解决方案。与标准的大规模单变量测试结果相比,深度学习模型的结果还为阅读障碍病例中可能受到特定影响的区域提供了证据。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/f6a4/10167676/8cfd3581b7ae/nihms-1896482-f0001.jpg

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