使用监督比较机器学习模型和扫描路径表征预测神经认知障碍

V. Vinayak, Mohan Paliwal, A. J, J. C.
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引用次数: 0

摘要

痴呆症已成为世界范围内一个紧迫的公共卫生问题,受影响的个体数量正在稳步增加。作为一种综合征,它的特点是认知能力下降,其范围超出了正常的生物衰老,这是由多种大脑紊乱和疾病引起的。阿尔茨海默病是痴呆症最常见的形式,它构成了痴呆症病例的大多数。除了对身体和心理造成影响外,由于需要广泛的护理,痴呆症也是家庭和整个社会的重大经济负担。一个潜在的方法来理解个人的认知表现与痴呆症是使用扫描路径表征。扫描路径是眼球运动的视觉表现,是由一组有序的注视由扫视连接而成。通过分析这些模式,研究人员旨在更好地了解痴呆症患者的视觉行为,并有可能开发出更有效的治疗方案。为了实现这一目标,提出的监督比较机器学习模型利用扫描路径表示来提供对痴呆症的更全面的理解。通过探索患有这种疾病的个体的视觉行为,该模型旨在为在跟踪测试中使用监督机器学习算法提供见解,以便使用扫描路径表示更好地对痴呆症患者进行分类。这篇研究论文旨在为对抗痴呆症的全球挑战做出贡献,并提供对这种疾病更细致入微的理解。
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Prediction of Neuro Cognitive Disorders using Supervised Comparative Machine Learning Model & Scanpath Representations
Dementia has become a pressing public health issue worldwide, with the number of affected individuals steadily increasing. As a syndrome, it is characterized by a decline in cognitive performance that extends beyond normal biological aging, caused by a diverse range of brain disorders and diseases. Alzheimer’s disease is the most prevalent form of dementia, and it constitutes the majority of dementia cases. In addition to its physical and psychological impacts, dementia is also a significant economic burden on families and society at large, given the extensive care required. One potential approach to understanding the cognitive performance of individuals with dementia is the use of scan path representations. A scan path is a visual representation of eye movements and is created by an ordered set of fixations connected by saccades. By analyzing these patterns, researchers aim to better understand the visual behaviors of people with dementia and potentially develop more effective treatment options. To achieve this goal, the proposed supervised comparative machine learning model utilizes scan path representations to provide a more comprehensive understanding of dementia. By exploring the visual behaviors of individuals with the condition, the model aims to provide insights into the use of supervised machine learning algorithms in trail making tests to better classify the dementia patients using their scanpath representations. This research paper aims to contribute to the ongoing efforts to combat the global challenge of dementia and provide a more nuanced understanding of the condition.
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