A radiomics-based brain network in T1 images: construction, attributes, and applications.
Han LiuZhe MaLijiang WeiZhenpeng ChenYun PengZhicheng JiaoHarrison BaiBin JingPublished in: Cerebral cortex (New York, N.Y. : 1991) (2024)
T1 image is a widely collected imaging sequence in various neuroimaging datasets, but it is rarely used to construct an individual-level brain network. In this study, a novel individualized radiomics-based structural similarity network was proposed from T1 images. In detail, it used voxel-based morphometry to obtain the preprocessed gray matter images, and radiomic features were then extracted on each region of interest in Brainnetome atlas, and an individualized radiomics-based structural similarity network was finally built using the correlational values of radiomic features between any pair of regions of interest. After that, the network characteristics of individualized radiomics-based structural similarity network were assessed, including graph theory attributes, test-retest reliability, and individual identification ability (fingerprinting). At last, two representative applications for individualized radiomics-based structural similarity network, namely mild cognitive impairment subtype discrimination and fluid intelligence prediction, were exemplified and compared with some other networks on large open-source datasets. The results revealed that the individualized radiomics-based structural similarity network displays remarkable network characteristics and exhibits advantageous performances in mild cognitive impairment subtype discrimination and fluid intelligence prediction. In summary, the individualized radiomics-based structural similarity network provides a distinctive, reliable, and informative individualized structural brain network, which can be combined with other networks such as resting-state functional connectivity for various phenotypic and clinical applications.
Keyphrases
- resting state
- functional connectivity
- mild cognitive impairment
- lymph node metastasis
- cognitive decline
- deep learning
- white matter
- contrast enhanced
- magnetic resonance imaging
- convolutional neural network
- magnetic resonance
- high resolution
- brain injury
- multiple sclerosis
- mass spectrometry
- network analysis
- rna seq
- amino acid
- high density