Developing Brain Institute, Children's National Hospital, Washington, United States.
Elife. 2023 May 15;12:e80878. doi: 10.7554/eLife.80878.
Recent advances in functional magnetic resonance imaging (fMRI) have helped elucidate previously inaccessible trajectories of early-life prenatal and neonatal brain development. To date, the interpretation of fetal-neonatal fMRI data has relied on linear analytic models, akin to adult neuroimaging data. However, unlike the adult brain, the fetal and newborn brain develops extraordinarily rapidly, far outpacing any other brain development period across the life span. Consequently, conventional linear computational models may not adequately capture these accelerated and complex neurodevelopmental trajectories during this critical period of brain development along the prenatal-neonatal continuum. To obtain a nuanced understanding of fetal-neonatal brain development, including nonlinear growth, for the first time, we developed quantitative, systems-wide representations of brain activity in a large sample (>500) of fetuses, preterm, and full-term neonates using an unsupervised deep generative model called variational autoencoder (VAE), a model previously shown to be superior to linear models in representing complex resting-state data in healthy adults. Here, we demonstrated that nonlinear brain features, that is, latent variables, derived with the VAE pretrained on rsfMRI of human adults, carried important individual neural signatures, leading to improved representation of prenatal-neonatal brain maturational patterns and more accurate and stable age prediction in the neonate cohort compared to linear models. Using the VAE decoder, we also revealed distinct functional brain networks spanning the sensory and default mode networks. Using the VAE, we are able to reliably capture and quantify complex, nonlinear fetal-neonatal functional neural connectivity. This will lay the critical foundation for detailed mapping of healthy and aberrant functional brain signatures that have their origins in fetal life.
最近,功能磁共振成像(fMRI)的进展有助于阐明以前无法触及的早期产前和新生儿大脑发育轨迹。迄今为止,胎儿-新生儿 fMRI 数据的解释依赖于类似于成人神经影像学数据的线性分析模型。然而,与成人大脑不同,胎儿和新生儿的大脑发育速度非常快,远远超过整个生命周期中的任何其他大脑发育阶段。因此,传统的线性计算模型可能无法充分捕捉到在产前-新生儿连续体这一关键大脑发育时期的这些加速和复杂的神经发育轨迹。为了首次获得对胎儿-新生儿大脑发育的细微理解,包括非线性生长,我们使用一种称为变分自动编码器(VAE)的无监督深度生成模型,在一个包含 500 多个胎儿、早产儿和足月新生儿的大样本中,对大脑活动进行了定量的、全面的表示,该模型以前在表示健康成年人的复杂静息状态数据方面优于线性模型。在这里,我们证明了非线性大脑特征,即 VAE 从成人 rsfMRI 中预训练得出的潜在变量,携带重要的个体神经特征,与线性模型相比,这导致对产前-新生儿大脑成熟模式的更好表示以及对新生儿队列的更准确和更稳定的年龄预测。使用 VAE 解码器,我们还揭示了跨越感觉和默认模式网络的独特功能脑网络。使用 VAE,我们能够可靠地捕获和量化复杂的、非线性的胎儿-新生儿功能神经连接。这将为详细绘制起源于胎儿期的健康和异常功能脑特征奠定关键基础。