| Literature DB >> 33099008 |
Loredana Bellantuono1, Luca Marzano1, Marianna La Rocca2, Dominique Duncan2, Angela Lombardi3, Tommaso Maggipinto1, Alfonso Monaco4, Sabina Tangaro5, Nicola Amoroso6, Roberto Bellotti7.
Abstract
In recent years, several studies have demonstrated that machine learning and deep learning systems can be very useful to accurately predict brain age. In this work, we propose a novel approach based on complex networks using 1016 T1-weighted MRI brain scans (in the age range 7-64years). We introduce a structural connectivity model of the human brain: MRI scans are divided in rectangular boxes and Pearson's correlation is measured among them in order to obtain a complex network model. Brain connectivity is then characterized through few and easy-to-interpret centrality measures; finally, brain age is predicted by feeding a compact deep neural network. The proposed approach is accurate, robust and computationally efficient, despite the large and heterogeneous dataset used. Age prediction accuracy, in terms of correlation between predicted and actual age r=0.89and Mean Absolute Error MAE =2.19years, compares favorably with results from state-of-the-art approaches. On an independent test set including 262 subjects, whose scans were acquired with different scanners and protocols we found MAE =2.52. The only imaging analysis steps required in the proposed framework are brain extraction and linear registration, hence robust results are obtained with a low computational cost. In addition, the network model provides a novel insight on aging patterns within the brain and specific information about anatomical districts displaying relevant changes with aging.Entities:
Keywords: ABIDE; Age prediction; Brain; Centrality measures; Complex networks; Deep learning; MRI
Year: 2020 PMID: 33099008 DOI: 10.1016/j.neuroimage.2020.117458
Source DB: PubMed Journal: Neuroimage ISSN: 1053-8119 Impact factor: 6.556