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出生时的白质连接组可准确预测 2 岁时的认知能力。

White matter connectomes at birth accurately predict cognitive abilities at age 2.

机构信息

Department of Psychiatry, UNC Chapel Hill, Chapel Hill, NC, 27599, USA.

Department of Computer Science, College of Charleston, Charleston, SC, 29424, USA.

出版信息

Neuroimage. 2019 May 15;192:145-155. doi: 10.1016/j.neuroimage.2019.02.060. Epub 2019 Feb 27.

Abstract

Cognitive ability is an important predictor of mental health outcomes that is influenced by neurodevelopment. Evidence suggests that the foundational wiring of the human brain is in place by birth, and that the white matter (WM) connectome supports developing brain function. It is unknown, however, how the WM connectome at birth supports emergent cognition. In this study, a deep learning model was trained using cross-validation to classify full-term infants (n = 75) as scoring above or below the median at age 2 using WM connectomes generated from diffusion weighted magnetic resonance images at birth. Results from this model were used to predict individual cognitive scores. We additionally identified WM connections important for classification. The model was also evaluated in a separate set of preterm infants (n = 37) scanned at term-age equivalent. Findings revealed that WM connectomes at birth predicted 2-year cognitive score group with high accuracy in both full-term (89.5%) and preterm (83.8%) infants. Scores predicted by the model were strongly correlated with actual scores (r = 0.98 for full-term and r = 0.96 for preterm). Connections within the frontal lobe, and between the frontal lobe and other brain areas were found to be important for classification. This work suggests that WM connectomes at birth can accurately predict a child's 2-year cognitive group and individual score in full-term and preterm infants. The WM connectome at birth appears to be a useful neuroimaging biomarker of subsequent cognitive development that deserves further study.

摘要

认知能力是心理健康结果的重要预测指标,受神经发育影响。有证据表明,人类大脑的基础布线在出生时就已经形成,而白质(WM)连接组支持大脑功能的发展。然而,目前尚不清楚出生时的 WM 连接组如何支持新兴认知。在这项研究中,使用交叉验证训练了一个深度学习模型,以使用出生时的弥散加权磁共振成像生成的 WM 连接组来分类足月婴儿(n=75)在 2 岁时的得分高于或低于中位数。该模型的结果用于预测个体认知分数。我们还确定了对分类重要的 WM 连接。该模型还在另一组在足月年龄等效时扫描的早产儿(n=37)中进行了评估。研究结果表明,在足月(89.5%)和早产儿(83.8%)中,出生时的 WM 连接组可以高精度地预测 2 岁的认知评分组。模型预测的分数与实际分数高度相关(足月时 r=0.98,早产儿时 r=0.96)。发现额叶内以及额叶与大脑其他区域之间的连接对于分类很重要。这项工作表明,出生时的 WM 连接组可以准确预测足月和早产儿 2 岁时的儿童认知组和个体分数。出生时的 WM 连接组似乎是后续认知发展的有用神经影像学生物标志物,值得进一步研究。

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