Department of Psychosis Studies, Institute of Psychiatry, Psychology and Neuroscience, King's College London, UK.
Department of Psychosis Studies, Institute of Psychiatry, Psychology and Neuroscience, King's College London, UK.
EBioMedicine. 2021 Oct;72:103600. doi: 10.1016/j.ebiom.2021.103600. Epub 2021 Oct 4.
The rise of machine learning has unlocked new ways of analysing structural neuroimaging data, including brain age prediction. In this state-of-the-art review, we provide an introduction to the methods and potential clinical applications of brain age prediction. Studies on brain age typically involve the creation of a regression machine learning model of age-related neuroanatomical changes in healthy people. This model is then applied to new subjects to predict their brain age. The difference between predicted brain age and chronological age in a given individual is known as 'brain-age gap'. This value is thought to reflect neuroanatomical abnormalities and may be a marker of overall brain health. It may aid early detection of brain-based disorders and support differential diagnosis, prognosis, and treatment choices. These applications could lead to more timely and more targeted interventions in age-related disorders.
机器学习的兴起为分析结构神经影像学数据(包括预测大脑年龄)提供了新的方法。在这篇综述中,我们介绍了预测大脑年龄的方法和潜在临床应用。大脑年龄的研究通常涉及创建一个回归机器学习模型,以反映健康人群中与年龄相关的神经解剖变化。然后将该模型应用于新的受试者,以预测他们的大脑年龄。给定个体的预测大脑年龄与实际年龄之间的差异称为“大脑年龄差距”。该值被认为反映了神经解剖学的异常,可能是大脑整体健康的一个标志物。它可能有助于早期发现基于大脑的疾病,并支持鉴别诊断、预后和治疗选择。这些应用可能会导致在与年龄相关的疾病中进行更及时和更有针对性的干预。