Crowdsensing: Assessment of Cognitive Fitness Using Machine Learning

Pub Date : 2023-01-01 DOI:10.12720/jait.14.3.559-570
Samin Ahsan Tausif, Aysha Gazi Mouri, Ishfaq Rahman, Nilufar Hossain, H. M. Z. Haque
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Abstract

—The expanded use of smartphones and the Internet of Things have enabled the usage of mobile crowdsensing technologies to improve public health care in clinical sciences. Mobile crowdsensing enlightens a new sensing pattern that can reliably differentiate individuals based on their cognitive fitness. In previous studies on this domain, the visual correlation has not been illustrated between physiological functions and the mental fitness of human beings. Therefore, there exists potential gaps in providing mathematical evidence of correlation between physical activities & cognitive health. Moreover, empirical analysis of autonomous smartphone sensing to assess mental health is yet to be researched on a large scale, showing the correspondence between ubiquitous mobile sensors data and Patient Health Questionnaire-9 (PHQ-9) depression scales. This research systematically collects mobile sensors’ data along with standard PHQ-9 questionnaire data and utilizes traditional machine learning techniques (Supervised and Unsupervised) for performing necessary analysis. Moreover, we have conducted statistical t-tests to find similarities or to differentiate between people of distinct cognitive fitness levels. This research has successfully demonstrated the numerical evidence of correlations between physiological activities and the cognitive fitness of human beings. The Fine-tuned regression models built for the purpose of predicting users’ cognitive fitness score, perform accurately to a certain extent. In this analysis, crowdsensing is perceived to differentiate several people’s cognitive fitness levels comprehensively. Furthermore, our study has addressed a significant insights to assessing people’s mental fitness by relying upon their smartphone usage.
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群体感知:使用机器学习评估认知适应性
——智能手机和物联网的广泛使用使移动人群感知技术能够改善临床科学领域的公共卫生保健。移动众测启发了一种新的感知模式,可以根据个体的认知适应度可靠地区分个体。在这一领域以往的研究中,尚未发现人类生理功能与心理健康之间的视觉相关性。因此,在提供体育活动与认知健康之间相关性的数学证据方面存在潜在的差距。此外,自主智能手机感知评估心理健康的实证分析尚未进行大规模研究,显示无处不在的移动传感器数据与患者健康问卷-9 (PHQ-9)抑郁量表之间存在对应关系。本研究系统地收集移动传感器数据以及标准PHQ-9问卷数据,并利用传统的机器学习技术(有监督和无监督)进行必要的分析。此外,我们还进行了统计t检验,以发现相似之处或区分不同认知健康水平的人。该研究成功地证明了生理活动与人类认知健康之间相关性的数值证据。为预测用户的认知健康得分而建立的微调回归模型有一定的准确性。在本分析中,众测被认为是对几个人认知健康水平的综合区分。此外,我们的研究还提出了一个重要的见解,即通过依赖智能手机的使用来评估人们的心理健康状况。
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