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Predicting Age Using Neuroimaging: Innovative Brain Ageing Biomarkers

机译:使用神经影像预测年龄:创新脑老化生物标志物

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The brain changes as we age and these changes are associated with functional deterioration and neurodegenerative disease. It is vital that we better understand individual differences in the brain ageing process; hence, techniques for making individualised predictions of brain ageing have been developed. We present evidence supporting the use of neuroimaging-based ‘brain age’ as a biomarker of an individual’s brain health. Increasingly, research is showing how brain disease or poor physical health negatively impacts brain age. Importantly, recent evidence shows that having an ‘older’-appearing brain relates to advanced physiological and cognitive ageing and the risk of mortality. We discuss controversies surrounding brain age and highlight emerging trends such as the use of multimodality neuroimaging and the employment of ‘deep learning’ methods. Trends Brain age can be predicted in individuals based on neuroimaging data using machine learning approaches to model trajectories of healthy brain ageing. The predicted brain age for a new individual can differ from his or her chronological age; this difference appears to reflect advanced or delayed brain ageing. Brain age has been shown to relate to cognitive ageing and multiple aspects of physiological ageing and to predict the risk of neurodegenerative diseases and mortality in older adults. Various diseases, including HIV, schizophrenia, and diabetes, have been shown to make the brain appear older. Further, brain age is being used to identify possible protective or deleterious factors for brain health as people age. Brain age is being actively developed to combine multiple measures of brain structure and function, capturing increasing amounts of detail on the ageing brain.
机译:大脑随着年龄的增长而变化,这些变化与功能性劣化和神经变性疾病有关。重要的是,我们更好地了解脑老化过程中的个体差异;因此,已经开发出用于使脑老化的个体化预测的技术。我们提出了支持使用基于神经影像动物的“脑年龄”作为个人脑健康的生物标志物的证据。越来越多的研究表明脑疾病或身体健康状况差的产生负面影响。重要的是,最近的证据表明,具有“较旧的出现的大脑”涉及先进的生理和认知老龄化以及死亡率的风险。我们讨论围绕脑年龄的争议,并突出了新兴趋势,如使用多模态度的使用和“深度学习”方法的使用。基于利用机器学习方法的神经影像数据来预测趋势脑年龄可以预测使用机器学习方法来模拟健康脑老化的轨迹。预测的大脑年龄为新人可能与他或她的年龄年龄增长不同;这种差异似乎反映了先进或延迟的脑老化。脑年龄已被证明涉及认知老龄化和生理衰老的多个方面,并预测老年人的神经变性疾病和死亡率的风险。已经证明了各种疾病,包括艾滋病毒,精神分裂症和糖尿病,使大脑出现老化。此外,脑年龄被用于识别人们年龄的脑部健康的可能的保护或有害因素。正在积极开发脑年龄以结合多种脑结构和功能措施,捕获衰老脑中的细节增加。

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