Liu Shuting, Xu Longchun, Xu Guihua, Wang Yunqing, Zhang Guangyu, He Lemin
School of Radiology, Shandong First Medical University & Shandong Academy of Medical Sciences, Taian 271016, China.
The Second Affiliated Hospital of Shandong First Medical University, Taian 271000, China.
J Neurol Sci. 2025 Aug 15;475:123563. doi: 10.1016/j.jns.2025.123563. Epub 2025 Jun 3.
Alzheimer's disease (AD) is a progressive neurodegenerative disorder for which there is currently no cure, and its incidence is on the rise. Early detection is essential for timely intervention and slowing the progression of the disease. While the brain structures of healthy aging individuals change gradually, the aging trajectories in AD patients deviate significantly. Recent advancements in deep learning have enabled the detection of subtle changes in brain structures using neuroimaging data. By developing brain age prediction models based on data from healthy individuals, it is possible to estimate brain age at various stages of AD progression and assess the Brain Age Gap (BAG)-the difference between predicted brain age and chronological age-which holds promise as an early diagnostic biomarker for AD. In recent years, the use of artificial intelligence, particularly deep learning, for brain age prediction has attracted considerable attention. This systematic review provides a comprehensive summary of the current state of research in this field, focusing on the progress and limitations of machine learning techniques for brain age prediction. We place particular emphasis on deep learning methods, addressing data sources, model development, and interpretability. Additionally, we analyze key challenges in the field, including site effects, bias correction, insufficient data, hardware requirements, model accuracy, and clinical applicability. Finally, we offer insights and recommendations for future research directions to address these challenges and further enhance the potential of BAG as a diagnostic tool for AD.
阿尔茨海默病(AD)是一种进行性神经退行性疾病,目前尚无治愈方法,且其发病率正在上升。早期检测对于及时干预和减缓疾病进展至关重要。虽然健康老年人的脑结构会逐渐变化,但AD患者的衰老轨迹却有显著偏差。深度学习的最新进展使得利用神经影像数据检测脑结构的细微变化成为可能。通过基于健康个体的数据开发脑年龄预测模型,可以估计AD进展各阶段的脑年龄,并评估脑年龄差距(BAG)——预测脑年龄与实际年龄之间的差异——这有望成为AD的一种早期诊断生物标志物。近年来,利用人工智能,尤其是深度学习进行脑年龄预测受到了广泛关注。本系统综述全面总结了该领域的当前研究状况,重点关注脑年龄预测机器学习技术的进展和局限性。我们特别强调深度学习方法,涉及数据来源、模型开发和可解释性。此外,我们分析了该领域的关键挑战,包括部位效应、偏差校正、数据不足、硬件要求、模型准确性和临床适用性。最后,我们针对未来研究方向提供见解和建议,以应对这些挑战,并进一步提高BAG作为AD诊断工具的潜力。