Pascarella Angelo, Manzo Lucia, Ferlazzo Edoardo
Department of Medical and Surgical Sciences, Magna Græcia University of Catanzaro, Italy; Regional Epilepsy Centre, Great Metropolitan "Bianchi-Melacrino-Morelli Hospital", Reggio Calabria, Italy.
Regional Epilepsy Centre, Great Metropolitan "Bianchi-Melacrino-Morelli Hospital", Reggio Calabria, Italy.
Seizure. 2025 May;128:74-82. doi: 10.1016/j.seizure.2024.07.001. Epub 2024 Jul 2.
Brain aging is associated with a decline in cognitive performance, motor function and sensory perception, even in the absence of neurodegeneration. The underlying pathophysiological mechanisms remain incompletely understood, though alterations in neurogenesis, neuronal senescence and synaptic plasticity are implicated. Recent years have seen advancements in neurophysiological techniques such as electroencephalography (EEG), magnetoencephalography (MEG), event-related potentials (ERP) and transcranial magnetic stimulation (TMS), offering insights into physiological and pathological brain aging. These methods provide real-time information on brain activity, connectivity and network dynamics. Integration of Artificial Intelligence (AI) techniques promise as a tool enhancing the diagnosis and prognosis of age-related cognitive decline. Our review highlights recent advances in these electrophysiological techniques (focusing on EEG, ERP, TMS and TMS-EEG methodologies) and their application in physiological and pathological brain aging. Physiological aging is characterized by changes in EEG spectral power and connectivity, ERP and TMS parameters, indicating alterations in neural activity and network function. Pathological aging, such as in Alzheimer's disease, is associated with further disruptions in EEG rhythms, ERP components and TMS measures, reflecting underlying neurodegenerative processes. Machine learning approaches show promise in classifying cognitive impairment and predicting disease progression. Standardization of neurophysiological methods and integration with other modalities are crucial for a comprehensive understanding of brain aging and neurodegenerative disorders. Advanced network analysis techniques and AI methods hold potential for enhancing diagnostic accuracy and deepening insights into age-related brain changes.
脑老化与认知能力、运动功能和感觉知觉的下降有关,即使在没有神经退行性变的情况下也是如此。尽管神经发生、神经元衰老和突触可塑性的改变与之相关,但其潜在的病理生理机制仍未完全明了。近年来,脑电图(EEG)、脑磁图(MEG)、事件相关电位(ERP)和经颅磁刺激(TMS)等神经生理学技术取得了进展,为生理和病理性脑老化提供了深入了解。这些方法提供了关于脑活动、连通性和网络动力学的实时信息。人工智能(AI)技术的整合有望成为一种增强对年龄相关认知衰退的诊断和预后的工具。我们的综述重点介绍了这些电生理技术(重点是EEG、ERP、TMS和TMS - EEG方法)的最新进展及其在生理和病理性脑老化中的应用。生理老化的特征在于EEG频谱功率和连通性、ERP和TMS参数的变化,表明神经活动和网络功能的改变。病理性老化,如在阿尔茨海默病中,与EEG节律、ERP成分和TMS测量的进一步破坏有关,反映了潜在的神经退行性过程。机器学习方法在分类认知障碍和预测疾病进展方面显示出前景。神经生理方法的标准化以及与其他模式的整合对于全面理解脑老化和神经退行性疾病至关重要。先进的网络分析技术和AI方法在提高诊断准确性和加深对年龄相关脑变化的认识方面具有潜力。