Department of Psychiatry, University of Colorado School of Medicine Anschutz Medical Campus, Aurora, Colorado, USA.
Department of Psychology & Neuroscience; Computer and Energy Engineering; University of Colorado Boulder, Boulder, Colorado, USA.
Brain Connect. 2023 Sep;13(7):410-426. doi: 10.1089/brain.2022.0074. Epub 2023 Jul 24.
Callous-unemotional (CU) traits are a youth antisocial phenotype hypothesized to be a result of differences in the integration of multiple brain systems. However, mechanistic insights into these brain systems are a continued challenge. Where prior work describes activation and connectivity, new mechanistic insights into the brain's functional connectome can be derived by removing nodes and quantifying changes in network properties (hereafter referred to as computational lesioning) to characterize connectome resilience and vulnerability. Here, we study the resilience of connectome integration in CU traits by estimating changes in efficiency after computationally lesioning individual-level connectomes. From resting-state data of 86 participants (48% female, age 14.52 ± 1.31) drawn from the Nathan Kline institute's Rockland study, individual-level connectomes were estimated using graphical lasso. Computational lesioning was conducted both sequentially and by targeting global and local hubs. Elastic net regression was applied to determine how these changes explained variance in CU traits. Follow-up analyses characterized modeled node hubs, examined moderation, determined impact of targeting, and decoded the brain mask by comparing regions to meta-analytic maps. Elastic net regression revealed that computational lesioning of 23 nodes, network modularity, and Tanner stage explained variance in CU traits. Hub assignment of selected hubs differed at higher CU traits. No evidence for moderation between simulated lesioning and CU traits was found. Targeting global hubs increased efficiency and targeting local hubs had no effect at higher CU traits. Identified brain mask meta-analytically associated with more emotion and cognitive terms. Although reliable patterns were found across participants, adolescent brains were heterogeneous even for those with a similar CU traits score. Adolescent brain response to simulated lesioning revealed a pattern of connectome resiliency and vulnerability that explains variance in CU traits, which can aid prediction of youth at greater risk for higher CU traits.
冷酷无情(CU)特征是一种青少年反社会表现型,据推测是由于多个大脑系统整合的差异所致。然而,这些大脑系统的机制见解仍然是一个挑战。之前的工作描述了激活和连通性,而通过去除节点并量化网络属性的变化(以下简称计算损伤)来获得大脑功能连接组的新机制见解,可以用来描述连接组的弹性和脆弱性。在这里,我们通过估计计算损伤个体水平连接组后效率的变化来研究 CU 特征中连接组整合的弹性。从 Nathan Kline 研究所的 Rockland 研究中抽取的 86 名参与者(48%为女性,年龄 14.52±1.31)的静息态数据中,使用图形套索估计个体水平的连接组。通过顺序和靶向全局和局部枢纽进行计算损伤。应用弹性网络回归来确定这些变化如何解释 CU 特征的方差。后续分析对建模节点枢纽进行了特征描述,检验了调节作用,确定了靶向的影响,并通过将区域与荟萃分析图谱进行比较来解码大脑掩模。弹性网络回归表明,计算损伤 23 个节点、网络模块性和 Tanner 阶段解释了 CU 特征的方差。选择的枢纽的枢纽分配在更高的 CU 特征中有所不同。未发现模拟损伤与 CU 特征之间存在调节作用的证据。在更高的 CU 特征中,靶向全局枢纽会增加效率,而靶向局部枢纽则没有影响。识别出的大脑掩模与更多的情感和认知术语在元分析上相关。尽管在参与者中发现了可靠的模式,但即使对于具有相似 CU 特征得分的青少年,他们的大脑也是异质的。对模拟损伤的青少年大脑反应揭示了连接组弹性和脆弱性的模式,该模式可以解释 CU 特征的方差,有助于预测具有更高 CU 特征的青少年的风险。