Guangzhou Women and Children's Medical Center, Guangzhou, 510623, Guangdong, China.
Medical Big Data Center, Guangdong Provincial People's Hospital/Guangdong Academy of Medical Sciences, Guangzhou, 510080, Guangdong, China.
Brain Struct Funct. 2023 Sep;228(7):1771-1784. doi: 10.1007/s00429-023-02686-z. Epub 2023 Aug 21.
Early identification and intervention of abnormal brain development individual subjects are of great significance, especially during the earliest and most active stage of brain development in children aged under 3. Neuroimage-based brain's biological age has been associated with health, ability, and remaining life. However, the existing brain age prediction models based on neuroimage are predominantly adult-oriented. Here, we collected 658 T1-weighted MRI scans from 0 to 3 years old healthy controls and developed an accurate brain age prediction model for young children using deep learning techniques with high accuracy in capturing age-related changes. The performance of the deep learning-based model is comparable to that of the SVR-based model, showcasing remarkable precision and yielding a noteworthy correlation of 91% between the predicted brain age and the chronological age. Our results demonstrate the accuracy of convolutional neural network (CNN) brain-predicted age using raw T1-weighted MRI data with minimum preprocessing necessary. We also applied our model to children with low birth weight, premature delivery history, autism, and ADHD, and discovered that the brain age was delayed in children with extremely low birth weight (less than 1000 g) while ADHD may cause accelerated aging of the brain. Our child-specific brain age prediction model can be a valuable quantitative tool to detect abnormal brain development and can be helpful in the early identification and intervention of age-related brain disorders.
早期识别和干预异常脑发育个体具有重要意义,尤其是在儿童 3 岁以下大脑发育的最早和最活跃阶段。基于神经影像学的大脑生物年龄与健康、能力和剩余寿命有关。然而,现有的基于神经影像学的大脑年龄预测模型主要是针对成年人的。在这里,我们收集了 658 名 0 至 3 岁健康对照组的 T1 加权 MRI 扫描,并使用深度学习技术开发了一种针对幼儿的高精度大脑年龄预测模型,该模型能够高精度地捕捉与年龄相关的变化。基于深度学习的模型的性能与基于 SVR 的模型相当,展现出显著的精度,并在预测大脑年龄和实际年龄之间产生了 91%的显著相关性。我们的研究结果证明了使用原始 T1 加权 MRI 数据和最小预处理的卷积神经网络(CNN)预测大脑年龄的准确性。我们还将我们的模型应用于出生体重低、早产史、自闭症和注意力缺陷多动障碍的儿童,发现极低出生体重(小于 1000 克)的儿童大脑年龄延迟,而 ADHD 可能导致大脑加速衰老。我们的儿童特异性大脑年龄预测模型可以作为一种有价值的定量工具来检测异常的大脑发育,并有助于早期识别和干预与年龄相关的大脑障碍。