Sedentary behavior health outcomes and identifying the uncertain behavior patterns in adult

Q4 Engineering
D.B. Shanmugam, J. Dhilipan
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引用次数: 0

Abstract

Uncertain sedentary behavior has evolved as a new health concern in recent periods. Being inactive for long periods is a significant risk factor among all the adult age groups, especially over-reliance on vehicles for mobility. Sensors are making it easier to monitor seating habits throughout the active period. However, experts are divided on the most appropriate objective metrics for capturing the cumulative information of sedentary time throughout the day. Due to discrepancies in measuring methods, data processing techniques, and the absence of fundamental outcome indicators like cumulative sedentary period, evaluating the several research studies sedentary patterns was unrealistic. In this research study, a novel design was suggested with adaptive computations, namely, fleeting granularity, to differentiate instances of daily human activities. Multivariate transitory information is acquired from sophisticated units (essential cells). Our proposed scalable algorithms can identify Frequent Behavior Patterns (FBPs) with a timeframe estimate by employing collected widespread multivariate data (fleeting granularity). It has been evidenced that the applicability of the example by differentiating proof computations on two certifiable datasets. The assessment of the relationships, accuracy, and applicability of sedentary factors is the primary subject of this research.
成人久坐行为的健康结果及不确定行为模式的识别
近来,不确定的久坐行为已演变为一个新的健康问题。在所有成年年龄组中,长时间不活动是一个重要的风险因素,尤其是过度依赖交通工具。传感器可以更容易地监控整个活动期间的座位习惯。然而,专家们在捕捉一天中久坐时间累积信息的最合适的客观指标上存在分歧。由于测量方法、数据处理技术的差异,以及缺乏基本的结果指标,如累积久坐时间,评估几项研究的久坐模式是不现实的。在这项研究中,提出了一种新的设计,即自适应计算,即稍纵即逝的粒度,以区分人类日常活动的实例。从复杂的单位(基本细胞)获得多变量瞬时信息。我们提出的可扩展算法可以通过使用收集到的广泛的多变量数据(稍纵即逝的粒度)来识别具有时间框架估计的频繁行为模式(fbp)。通过区分两个可证明数据集上的证明计算,证明了示例的适用性。评估久坐因素的关系、准确性和适用性是本研究的主要主题。
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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来源期刊
CiteScore
0.70
自引率
0.00%
发文量
102
审稿时长
8 weeks
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