Department of Biomedical Engineering, Faculty of Environment and Life, Beijing University of Technology, Beijing 100124, China.
Intelligent Physiological Measurement and Clinical Translation, Beijing International Base for Scientific and Technological Cooperation, Beijing University of Technology, Beijing 100124, China.
Sensors (Basel). 2023 Mar 30;23(7):3622. doi: 10.3390/s23073622.
Machine learning (ML) has transformed neuroimaging research by enabling accurate predictions and feature extraction from large datasets. In this study, we investigate the application of six ML algorithms (Lasso, relevance vector regression, support vector regression, extreme gradient boosting, category boost, and multilayer perceptron) to predict brain age for middle-aged and older adults, which is a crucial area of research in neuroimaging. Despite the plethora of proposed ML models, there is no clear consensus on how to achieve better performance in brain age prediction for this population. Our study stands out by evaluating the impact of both ML algorithms and image modalities on brain age prediction performance using a large cohort of cognitively normal adults aged 44.6 to 82.3 years old (N = 27,842) with six image modalities. We found that the predictive performance of brain age is more reliant on the image modalities used than the ML algorithms employed. Specifically, our study highlights the superior performance of T1-weighted MRI and diffusion-weighted imaging and demonstrates that multi-modality-based brain age prediction significantly enhances performance compared to unimodality. Moreover, we identified Lasso as the most accurate ML algorithm for predicting brain age, achieving the lowest mean absolute error in both single-modality and multi-modality predictions. Additionally, Lasso also ranked highest in a comprehensive evaluation of the relationship between BrainAGE and the five frequently mentioned BrainAGE-related factors. Notably, our study also shows that ensemble learning outperforms Lasso when computational efficiency is not a concern. Overall, our study provides valuable insights into the development of accurate and reliable brain age prediction models for middle-aged and older adults, with significant implications for clinical practice and neuroimaging research. Our findings highlight the importance of image modality selection and emphasize Lasso as a promising ML algorithm for brain age prediction.
机器学习 (ML) 通过从大型数据集进行准确预测和特征提取,改变了神经影像学研究。在这项研究中,我们调查了六种 ML 算法(套索、相关性向量回归、支持向量回归、极端梯度提升、类别提升和多层感知器)在预测中年和老年人脑龄中的应用,这是神经影像学研究的一个关键领域。尽管提出了许多 ML 模型,但对于如何在该人群的脑龄预测中获得更好的性能,尚无明确共识。我们的研究通过使用一个包含认知正常的 44.6 至 82.3 岁的成年人(N = 27842)的大型队列和六个图像模态来评估 ML 算法和图像模态对脑龄预测性能的影响,这一点很突出。我们发现,脑龄的预测性能更依赖于使用的图像模态,而不是使用的 ML 算法。具体来说,我们的研究强调了 T1 加权 MRI 和弥散加权成像的优越性能,并表明基于多模态的脑龄预测显著优于单模态。此外,我们确定套索是预测脑龄最准确的 ML 算法,在单模态和多模态预测中均实现了最低的平均绝对误差。此外,在对 BrainAGE 与五个常提到的 BrainAGE 相关因素之间的关系的综合评估中,套索的排名也最高。值得注意的是,我们的研究还表明,当计算效率不是问题时,集成学习优于套索。总的来说,我们的研究为中年和老年人的准确和可靠的脑龄预测模型的开发提供了有价值的见解,对临床实践和神经影像学研究具有重要意义。我们的研究结果强调了选择图像模态的重要性,并突出了套索作为脑龄预测的有前途的 ML 算法。