Shigemoto Yoko, Sato Noriko, Maikusa Norihide, Sone Daichi, Ota Miho, Kimura Yukio, Chiba Emiko, Okita Kyoji, Yamao Tensho, Nakaya Moto, Maki Hiroyuki, Arizono Elly, Matsuda Hiroshi
Department of Radiology, National Center Hospital, National Center of Neurology and Psychiatry, Tokyo 187-8551, Japan.
Center for Evolutionary Cognitive Sciences, Graduate School of Art and Sciences, The University of Tokyo, Tokyo 153-8902, Japan.
J Pers Med. 2023 Feb 26;13(3):419. doi: 10.3390/jpm13030419.
Recent developments in image analysis have enabled an individual's brain network to be evaluated and brain age to be predicted from gray matter images. Our study aimed to investigate the effects of age and sex on single-subject gray matter networks using a large sample of healthy participants. We recruited 812 healthy individuals (59.3 ± 14.0 years, 407 females, and 405 males) who underwent three-dimensional T1-weighted magnetic resonance imaging. Similarity-based gray matter networks were constructed, and the following network properties were calculated: normalized clustering, normalized path length, and small-world coefficients. The predicted brain age was computed using a support-vector regression model. We evaluated the network alterations related to age and sex. Additionally, we examined the correlations between the network properties and predicted brain age and compared them with the correlations between the network properties and chronological age. The brain network retained efficient small-world properties regardless of age; however, reduced small-world properties were observed with advancing age. Although women exhibited higher network properties than men and similar age-related network declines as men in the subjects aged < 70 years, faster age-related network declines were observed in women, leading to no differences in sex among the participants aged ≥ 70 years. Brain age correlated well with network properties compared to chronological age in participants aged ≥ 70 years. Although the brain network retained small-world properties, it moved towards randomized networks with aging. Faster age-related network disruptions in women were observed than in men among the elderly. Our findings provide new insights into network alterations underlying aging.
图像分析领域的最新进展使得能够从灰质图像评估个体的脑网络并预测脑龄。我们的研究旨在使用大量健康参与者样本,调查年龄和性别对单受试者灰质网络的影响。我们招募了812名健康个体(年龄59.3±14.0岁,女性407名,男性405名),他们接受了三维T1加权磁共振成像。构建了基于相似性的灰质网络,并计算了以下网络属性:归一化聚类系数、归一化路径长度和小世界系数。使用支持向量回归模型计算预测脑龄。我们评估了与年龄和性别相关的网络变化。此外,我们检查了网络属性与预测脑龄之间的相关性,并将其与网络属性与实际年龄之间的相关性进行比较。无论年龄如何,脑网络都保留了有效的小世界属性;然而,随着年龄的增长,小世界属性有所降低。虽然在年龄<70岁的受试者中,女性的网络属性高于男性,且与男性的年龄相关网络下降相似,但在女性中观察到更快的年龄相关网络下降,导致70岁及以上参与者的性别差异消失。在70岁及以上的参与者中,与实际年龄相比,脑龄与网络属性的相关性更好。虽然脑网络保留了小世界属性,但随着年龄增长它向随机网络转变。在老年人中,观察到女性的年龄相关网络破坏比男性更快。我们的研究结果为衰老背后的网络变化提供了新的见解。