Kim Hyunwoong, Park Seongbeom, Seo Sang Won, Na Duk L, Jang Hyemin, Kim Jun Pyo, Kim Hee Jin, Kang Sung Hoon, Kwak Kichang
BeauBrain Healthcare, Inc, Seoul, South Korea.
CHA University School of Medicine, Seongnam, South Korea.
NPJ Aging. 2025 Jul 29;11(1):70. doi: 10.1038/s41514-025-00260-x.
Physiological brain aging is associated with cognitive impairment and neuroanatomical changes. Brain age prediction of routine clinical 2D brain MRI scans were understudied and often unsuccessful. We developed a novel brain age prediction framework for clinical 2D T1-weighted MRI scans using a deep learning-based model trained with research grade 3D MRI scans mostly from publicly available datasets (N = 8681; age = 51.76 ± 21.74). Our model showed accurate and fast brain age prediction on clinical 2D MRI scans from cognitively unimpaired (CU) subjects (N = 175) with MAE of 2.73 years after age bias correction (Pearson's r = 0.918). Brain age gap of Alzheimer's disease (AD) subjects was significantly greater than CU subjects (p < 0.001) and increase in brain age gap was associated with disease progression in both AD (p < 0.05) and Parkinson's disease (p < 0.01). Our framework can be extended to other MRI modalities and potentially applied to routine clinical examinations, enabling early detection of structural anomalies and improve patient outcome.
生理性脑老化与认知障碍和神经解剖学变化相关。常规临床二维脑磁共振成像(MRI)扫描的脑年龄预测研究不足且常常不成功。我们使用一个基于深度学习的模型,为临床二维T1加权MRI扫描开发了一种新颖的脑年龄预测框架,该模型是用主要来自公开可用数据集(N = 8681;年龄 = 51.76 ± 21.74)的研究级三维MRI扫描进行训练的。我们的模型在认知未受损(CU)受试者(N = 175)的临床二维MRI扫描上显示出准确且快速的脑年龄预测,年龄偏差校正后平均绝对误差(MAE)为2.73岁(皮尔逊相关系数r = 0.918)。阿尔茨海默病(AD)受试者的脑年龄差距显著大于CU受试者(p < 0.001),并且脑年龄差距的增加与AD(p < 0.05)和帕金森病(p < 0.01)的疾病进展相关。我们的框架可以扩展到其他MRI模态,并有可能应用于常规临床检查,从而实现结构异常的早期检测并改善患者预后。