Robust Brain Age Estimation Based on sMRI via Nonlinear Age-Adaptive Ensemble Learning



Zhang, Zhaonian, Jiang, Richard, Zhang, Ce, Williams, Bryan ORCID: 0000-0001-5930-287X, Jiang, Ziping, Li, Chang-Tsun, Chazot, Paul, Pavese, Nicola, Bouridane, Ahmed and Beghdadi, Azeddine
(2022) Robust Brain Age Estimation Based on sMRI via Nonlinear Age-Adaptive Ensemble Learning. IEEE TRANSACTIONS ON NEURAL SYSTEMS AND REHABILITATION ENGINEERING, 30. pp. 2146-2156.

Access the full-text of this item by clicking on the Open Access link.

Abstract

Precise prediction on brain age is urgently needed by many biomedical areas including mental rehabilitation prognosis as well as various medicine or treatment trials. People began to realize that contrasting physical (real) age and predicted brain age can help to highlight brain issues and evaluate if patients' brains are healthy or not. Such age prediction is often challenging for single model-based prediction, while the conditions of brains vary drastically over age. In this work, we present an age-adaptive ensemble model that is based on the combination of four different machine learning algorithms, including a support vector machine (SVR), a convolutional neural network (CNN) model, and the popular GoogLeNet and ResNet deep networks. The ensemble model proposed here is nonlinearly adaptive, where age is taken as a key factor in the nonlinear combination of various single-algorithm-based independent models. In our age-adaptive ensemble method, the weights of each model are learned automatically as nonlinear functions over age instead of fixed values, while brain age estimation is based on such an age-adaptive integration of various single models. The quality of the model is quantified by the mean absolute errors (MAE) and spearman correlation between the predicted age and the actual age, with the least MAE and the highest Spearman correlation representing the highest accuracy in age prediction. By testing on the Predictive Analysis Challenge 2019 (PAC 2019) dataset, our novel ensemble model has achieved a MAE down to 3.19, which is a significantly increased accuracy in this brain age competition. If deployed in the real world, our novel ensemble model having an improved accuracy could potentially help doctors to identify the risk of brain diseases more accurately and quickly, thus helping pharmaceutical companies develop drugs or treatments precisely, and potential offer a new powerful tool for researchers in the field of brain science.

Item Type: Article
Uncontrolled Keywords: Brain modeling, Aging, Predictive models, Estimation, Deep learning, Adaptation models, Feature extraction, Brain age, biomarks, ensemble deep learning, mental healthcare, rehabilitation
Divisions: Faculty of Health and Life Sciences
Faculty of Health and Life Sciences > Institute of Life Courses and Medical Sciences
Depositing User: Symplectic Admin
Date Deposited: 01 Nov 2022 16:17
Last Modified: 18 Jan 2023 19:48
DOI: 10.1109/TNSRE.2022.3190467
Open Access URL: https://ieeexplore.ieee.org/document/9828516
Related URLs:
URI: https://livrepository.liverpool.ac.uk/id/eprint/3165948