LGAIIVMar 10, 2021

BrainNetGAN: Data augmentation of brain connectivity using generative adversarial network for dementia classification

arXiv:2103.08494v325 citations
Originality Synthesis-oriented
AI Analysis

This work addresses the problem of dementia classification for medical diagnosis, but it is incremental as it applies an existing GAN method to a new dataset.

The authors tackled the challenge of classifying dementia by augmenting brain structural connectivity data using BrainNetGAN, a generative adversarial network variant, which improved binary classification performance in the testing set.

Alzheimer's disease (AD) is the most common age-related dementia. It remains a challenge to identify the individuals at risk of dementia for precise management. Brain MRI offers a noninvasive biomarker to detect brain aging. Previous evidence shows that the brain structural change detected by diffusion MRI is associated with dementia. Mounting studies has conceptualised the brain as a complex network, which has shown the utility of this approach in characterising various neurological and psychiatric disorders. Therefore, the structural connectivity shows promise in dementia classification. The proposed BrainNetGAN is a generative adversarial network variant to augment the brain structural connectivity matrices for binary dementia classification tasks. Structural connectivity matrices between separated brain regions are constructed using tractography on diffusion MRI data. The BrainNetGAN model is trained to generate fake brain connectivity matrices, which are expected to reflect latent distribution of the real brain network data. Finally, a convolutional neural network classifier is proposed for binary dementia classification. Numerical results show that the binary classification performance in the testing set was improved using the BrainNetGAN augmented dataset. The proposed methodology allows quick synthesis of an arbitrary number of augmented connectivity matrices and can be easily transferred to similar classification tasks.

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