A report on Alzheimer's disease Action and Semantical Fluency

A. Julaiha, B. Vasudevan
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Abstract

The goal of this paper is to outline the relationship between onset and evident AD, as well as language functions and domains. With rising mortality and an older population, it is projected that almost 5.3 million individuals in India suffer from Alzheimer's disease. Even mild Alzheimer's disease causes linguistic alterations. Speech analysis is the best option since it accurately represents the speaker's brain function and data gathering is reasonably affordable when compared to brain imaging, blood tests, and other methods. Previously, researchers used the MMSE as one of the sources to detect the early start of Alzheimer's disease. We show that the progression from HA to AD is accompanied by a consistent pattern of speech changes, including an increase in duration and vocalization time, an increase in the number of pauses in speech, an emergence of modification in syllabic production, and reduced speech energy and intensity, resulting in speech disorder. Our planned research will provide a complete analysis of speech alterations in MCI and mild AD when compared to healthy ageing (HA), allowing harmful processes to be detected before clinical manifestations of AD. In the proposed work, we evaluate cognitive functions such as noting silence between words and their inaccuracy, which can play a significant role in recognizing the AD stages through emotional intelligence using a deep learning model. We can also add a cognitive phrase matching test to determine the severity of the Alzheimer's disease comprehension loss (AD) through emotional intelligence.
阿尔茨海默病的行动和语义流畅性报告
本文的目的是概述发病与明显AD之间的关系,以及语言功能和领域。随着死亡率上升和人口老龄化,预计印度有近530万人患有阿尔茨海默病。即使是轻微的阿尔茨海默病也会导致语言改变。语音分析是最好的选择,因为它能准确地代表说话人的大脑功能,而且与脑成像、血液测试和其他方法相比,数据收集的成本相对低廉。此前,研究人员使用MMSE作为检测阿尔茨海默病早期发病的来源之一。我们发现,从HA到AD的发展伴随着一致的语言变化模式,包括持续时间和发声时间的增加,语音停顿次数的增加,音节产生的修饰,以及语音能量和强度的降低,导致语言障碍。我们计划的研究将提供MCI和轻度AD与健康衰老(HA)相比的语言改变的完整分析,允许在AD临床表现之前检测有害过程。在我们提出的工作中,我们评估了认知功能,如注意单词之间的沉默及其不准确性,这可以通过使用深度学习模型的情绪智力在识别AD阶段中发挥重要作用。我们还可以增加一个认知短语匹配测试,通过情商来确定阿尔茨海默病理解能力丧失(AD)的严重程度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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