Department of Neuroscience, University of Rochester Medical Center, United States of America.
Department of Neuroscience, University of Rochester Medical Center, United States of America; School of Nursing, University of Rochester Medical Center, United States of America; Department of Psychiatry, University of Rochester Medical Center, United States of America; Department of Neurology, University of Rochester Medical Center, United States of America; Department of Brain and Cognitive Sciences, University of Rochester, United States of America.
Neuroimage Clin. 2019;22:101788. doi: 10.1016/j.nicl.2019.101788. Epub 2019 Mar 26.
Alzheimer's disease (AD) is associated with a loss of semantic knowledge reflecting brain pathophysiology that begins years before dementia. Identifying early signs of pathophysiology induced dysfunction in the neural systems that access and process words' meaning could therefore help forecast dementia. This article reviews pioneering studies demonstrating that abnormal functional Magnetic Resonance Imaging (fMRI) response patterns elicited in semantic tasks reflect both AD-pathophysiology and the hereditary risk of AD, and also can help forecast cognitive decline. However, to bring current semantic task-based fMRI research up to date with new AD research guidelines the relationship with different types of AD-pathophysiology needs to be more thoroughly examined. We shall argue that new analytic techniques and experimental paradigms will be critical for this. Previous work has relied on specialized tests of specific components of semantic knowledge/processing (e.g. famous name recognition) to reveal coarse AD-related changes in activation across broad brain regions. Recent computational advances now enable more detailed tests of the semantic information that is represented within brain regions during more natural language comprehension. These new methods stand to more directly index how pathophysiology alters neural information processing, whilst using language comprehension as the basis for a more comprehensive examination of semantic brain function. We here connect the semantic pattern information analysis literature up with AD research to raise awareness to potential cross-disciplinary research opportunities.
阿尔茨海默病(AD)与语义知识的丧失有关,反映了大脑病理生理学的变化,这种变化早在痴呆症出现多年前就已经开始了。因此,识别导致单词意义获取和处理的神经系统功能障碍的早期病理生理迹象,可能有助于预测痴呆症。本文回顾了一些开创性的研究,这些研究表明,在语义任务中引起的异常功能磁共振成像(fMRI)反应模式既反映了 AD 的病理生理学,也反映了 AD 的遗传风险,并且还可以帮助预测认知能力下降。然而,为了使当前基于语义任务的 fMRI 研究跟上 AD 新研究指南的步伐,需要更彻底地检查与不同类型的 AD 病理生理学的关系。我们认为,新的分析技术和实验范式将对此至关重要。以前的工作依赖于对语义知识/处理的特定成分(例如,知名人士识别)的专门测试,以揭示大脑区域内激活的与 AD 相关的粗略变化。最近的计算进展现在可以更详细地测试在更自然的语言理解过程中在大脑区域内表示的语义信息。这些新方法更直接地反映了病理生理学如何改变神经信息处理,同时将语言理解作为更全面检查语义大脑功能的基础。我们在这里将语义模式信息分析文献与 AD 研究联系起来,以提高对潜在跨学科研究机会的认识。