Department of Psychiatry, Djavad Mowafaghian Centre for Brain Health, University of British Columbia, Vancouver, British Columbia, Canada.
Center for Biomedical Image Computing and Analytics, Perelman School of Medicine, University of Pennsylvania, Philadelphia, Pennsylvania, USA.
Hum Brain Mapp. 2022 Oct 15;43(15):4689-4698. doi: 10.1002/hbm.25983. Epub 2022 Jul 5.
The brain-age-gap estimate (brainAGE) quantifies the difference between chronological age and age predicted by applying machine-learning models to neuroimaging data and is considered a biomarker of brain health. Understanding sex differences in brainAGE is a significant step toward precision medicine. Global and local brainAGE (G-brainAGE and L-brainAGE, respectively) were computed by applying machine learning algorithms to brain structural magnetic resonance imaging data from 1113 healthy young adults (54.45% females; age range: 22-37 years) participating in the Human Connectome Project. Sex differences were determined in G-brainAGE and L-brainAGE. Random forest regression was used to determine sex-specific associations between G-brainAGE and non-imaging measures pertaining to sociodemographic characteristics and mental, physical, and cognitive functions. L-brainAGE showed sex-specific differences; in females, compared to males, L-brainAGE was higher in the cerebellum and brainstem and lower in the prefrontal cortex and insula. Although sex differences in G-brainAGE were minimal, associations between G-brainAGE and non-imaging measures differed between sexes with the exception of poor sleep quality, which was common to both. While univariate relationships were small, the most important predictor of higher G-brainAGE was self-identification as non-white in males and systolic blood pressure in females. The results demonstrate the value of applying sex-specific analyses and machine learning methods to advance our understanding of sex-related differences in factors that influence the rate of brain aging and provide a foundation for targeted interventions.
大脑年龄差距估计(brainAGE)量化了基于机器学习模型应用于神经影像学数据所预测的年龄与实际年龄之间的差异,被认为是大脑健康的生物标志物。了解大脑年龄差距估计中的性别差异是迈向精准医学的重要一步。通过将机器学习算法应用于 1113 名健康年轻成年人(54.45%为女性;年龄范围:22-37 岁)的脑结构磁共振成像数据,计算了全球和局部大脑年龄差距估计(分别为 G-brainAGE 和 L-brainAGE)。确定了 G-brainAGE 和 L-brainAGE 中的性别差异。随机森林回归用于确定 G-brainAGE 与与社会人口特征、心理、身体和认知功能相关的非成像测量之间的性别特异性关联。L-brainAGE 显示出性别特异性差异;与男性相比,女性的小脑和脑干的 L-brainAGE 更高,而前额叶皮层和脑岛的 L-brainAGE 更低。尽管 G-brainAGE 的性别差异很小,但 G-brainAGE 与非成像测量之间的关联在性别之间存在差异,除了睡眠质量较差外,这在两性中都很常见。虽然单变量关系较小,但 G-brainAGE 较高的最重要预测因素是男性自认为是非白人,女性是收缩压。研究结果表明,应用性别特异性分析和机器学习方法对于深入了解影响大脑衰老速度的因素中的性别差异具有重要价值,并为有针对性的干预提供了基础。