Brain Connectivity Laboratory, Department of Neuroscience and Neurorehabilitation, IRCCS San Raffaele Roma, Rome, Italy.
Department of Theoretical and Applied Sciences, eCampus University, Novedrate, Como, Italy.
Alzheimers Dement. 2022 Dec;18(12):2699-2706. doi: 10.1002/alz.12645. Epub 2022 Apr 7.
Dementia in its various forms represents one of the most frightening emergencies for the aging population. Cognitive decline-including Alzheimer's disease (AD) dementia-does not develop in few days; disease mechanisms act progressively for several years before clinical evidence.
A preclinical stage, characterized by measurable cognitive impairment, but not overt dementia, is represented by mild cognitive impairment (MCI), which progresses to-or, more accurately, is already in a prodromal form of-AD in about half cases; people with MCI are therefore considered the population at risk for AD deserving special attention for validating screening methods.
Graph analysis tools, combined with machine learning methods, represent an interesting probe to identify the distinctive features of physiological/pathological brain aging focusing on functional connectivity networks evaluated on electroencephalographic data and neuropsychological/imaging/genetic/metabolic/cerebrospinal fluid/blood biomarkers.
On clinical data, this innovative approach for early diagnosis might provide more insight into pathophysiological processes underlying degenerative changes, as well as toward a personalized risk evaluation for pharmacological, nonpharmacological, and rehabilitation treatments.
痴呆症有多种形式,是老龄化人口面临的最可怕的急症之一。认知能力下降,包括阿尔茨海默病(AD)痴呆,并非在几天内发生;在出现临床症状之前,疾病机制已经逐渐作用了数年。
在疾病的早期阶段,认知能力已经出现了可测量的损伤,但尚未出现明显的痴呆,这一阶段被称为轻度认知障碍(MCI)。在大约一半的病例中,MCI 会进展为 AD,或者更准确地说,MCI 已经处于 AD 的前驱阶段。因此,MCI 患者被认为是 AD 的高危人群,值得特别关注,以验证筛查方法。
图表分析工具结合机器学习方法,代表了一种有趣的探索,可以确定生理/病理大脑老化的独特特征,重点是评估脑电图数据和神经心理学/影像学/遗传学/代谢学/脑脊液/血液生物标志物的功能连接网络。
基于临床数据,这种用于早期诊断的创新方法可能会深入了解退行性变化背后的病理生理过程,并针对药物治疗、非药物治疗和康复治疗进行个性化的风险评估。