Influence of atlas-choice on age and time effects in large-scale brain networks in the context of healthy aging

P. F. Deschwanden, Alba López Piñeiro, Isabel Hotz, Brigitta Malagurski, S. Mérillat, Lutz Jäncke
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Abstract

Abstract Introduction: There is accumulating cross-sectional evidence of decreased within-network resting-state functional connectivity (RSFC) and increased between-network RSFC when comparing older to younger samples, but results from longitudinal studies with healthy aging samples are sparse and less consistent. Some of the variability might occur due to differences in network definition and the fact that most atlases were trained on young adult samples. Applying these atlases to older cohorts implies the generalizability of network definitions to older individuals. However, because age is linked to a less segregated network architecture, this assumption might not be valid. To account for this, the Atlas55+ (A55) was recently published. The A55 was trained on a sample of people over the age of 55, making the network solutions suitable for studies on the aging process. Here, we want to compare the A55 to the popular Yeo-Krienen atlas to investigate whether and to what extent differences in network definition influence longitudinal changes of RSFC. For this purpose, the following networks were investigated: the occipital network (ON, “visual network”), the pericentral network (PN, “somatomotor network”), the medial frontoparietal network (M-FPN, “default network”), the lateral frontoparietal network (L-FPN, “control network”), and the midcingulo-insular network (M-CIN, “salience network”). Methods: Analyses were performed using longitudinal data from cognitively healthy older adults (N = 228, mean age at baseline = 70.8 years) with five measurement points over 7 years. To define the five networks, we used different variants of the two atlases. The spatial overlap of the networks was quantified using the dice similarity coefficient (DSC). RSFC trajectories within networks were estimated with latent growth curve models. Models of varying complexity were calculated, ranging from a linear model without interindividual variability in intercept and slope to a quadratic model with variability in intercept and slope. In addition, regressions were calculated in the models to explain the potential variance in the latent factors by baseline age, sex, and education. Finally, the regional homogeneity and the silhouette coefficient were computed, and the spin test and Wilcoxon-Mann-Whitney test were used to evaluate how well the atlases fit the data. Results: Median DSC across all comparisons was 0.67 (range: 0.20–0.93). The spatial overlap was higher for primary processing networks in comparison to higher-order networks and for intra-atlas comparisons versus inter-atlas comparisons. Three networks (ON, PN, M-FPN) showed convergent shapes of trajectories (linear vs. quadratic), whereas the other two networks (L-FPN, M-CIN) showed differences in change over time depending on the atlas used. The 95% confidence intervals of the estimated time and age effects overlapped in most cases, so that differences were mainly evident regarding the p-value. The evaluation of the fit of the atlases to the data indicates that the Yeo-Krienen atlas is more suitable for our dataset, although it was not trained on a sample of older individuals. Conclusions: The atlas choice affects the estimated average RSFC in some networks, which highlights the importance of this methodological decision for future studies and calls for careful interpretation of already published results. Ultimately, there is no standard about how to operationalize networks. However, future studies may use and compare multiple atlases to assess the impact of network definition on outcomes. Ideally, the fit of the atlases to the data should be assessed, and heuristics such as “similar age range” or “frequently used” should be avoided when selecting atlases. Further, the validity of the networks should be evaluated by computing their associations with behavioral measures.
图集选择对健康老龄化背景下大规模大脑网络的年龄和时间效应的影响
摘要 引言:越来越多的横断面证据表明,与年轻样本相比,老年样本的网络内静息状态功能连通性(RSFC)降低,而网络间 RSFC 增加。造成这种差异的部分原因可能是网络定义的不同,以及大多数图谱都是在年轻成人样本上进行训练的。将这些图谱应用于老年群体,意味着网络定义可以推广到老年个体。然而,由于年龄与分离程度较低的网络结构有关,这一假设可能并不成立。为此,最近发布了 Atlas55+(A55)。A55 是在 55 岁以上的样本中进行训练的,因此网络解决方案适用于有关衰老过程的研究。在此,我们希望将 A55 与流行的 Yeo-Krienen 地图集进行比较,以研究网络定义的差异是否以及在多大程度上影响 RSFC 的纵向变化。为此,我们对以下网络进行了研究:枕叶网络(ON,"视觉网络")、中央周围网络(PN,"躯体运动网络")、内侧额顶网络(M-FPN,"默认网络")、外侧额顶网络(L-FPN,"控制网络")以及中脑岛网络(M-CIN,"显著性网络")。研究方法我们使用认知健康的老年人(228 人,基线平均年龄 70.8 岁)的纵向数据进行了分析,这些老年人在 7 年中有 5 个测量点。为了定义这五个网络,我们使用了两个地图集的不同变体。使用骰子相似系数(DSC)对网络的空间重叠进行量化。网络内的 RSFC 轨迹通过潜在增长曲线模型进行估算。计算的模型具有不同的复杂性,从截距和斜率不存在个体间差异的线性模型到截距和斜率存在差异的二次模型。此外,还计算了模型中的回归,以解释基线年龄、性别和教育程度等潜在因素的潜在差异。最后,计算了区域同质性和剪影系数,并使用自旋检验和威尔科森-曼-惠特尼检验来评估图谱与数据的拟合程度。结果:所有比较的 DSC 中位数为 0.67(范围:0.20-0.93)。初级加工网络的空间重叠率高于高阶网络,图谱内比较的空间重叠率高于图谱间比较的空间重叠率。三个网络(ON、PN、M-FPN)显示出趋同的轨迹形状(线性与二次方),而另外两个网络(L-FPN、M-CIN)则显示出随时间变化的差异,这取决于所使用的地图集。在大多数情况下,估计的时间和年龄效应的 95% 置信区间是重叠的,因此差异主要体现在 p 值上。对地图集与数据拟合程度的评估表明,Yeo-Krienen 地图集更适合我们的数据集,尽管该地图集没有在老年人样本中进行过训练。结论地图集的选择会影响某些网络中的平均 RSFC 估算值,这凸显了这一方法决策对未来研究的重要性,并要求对已发表的结果进行仔细解读。归根结底,如何操作网络并没有标准。不过,未来的研究可以使用并比较多个地图集,以评估网络定义对结果的影响。理想情况下,应评估图集与数据的契合度,在选择图集时应避免 "年龄范围相似 "或 "经常使用 "等启发式方法。此外,应通过计算网络与行为测量的关联来评估网络的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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