Exploring the statistical and computational analysis of sleep stages across different age groups

Vikas Dilliwar, Mridu Sahu
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Abstract

Sleep is a crucial part of a healthy life and good sleep may depend on various factors such as sleep duration, sleep efficiency, sleep architecture, sleep latency, sleep fragmentation, etc. Poor sleep quality may lead to the cause of many diseases and disorders. The present work is based on the study and analysis of the polysomnography (PSG) datasets, collected from 82 subjects including 45 females and 37 males. The present work measures sleep stages including Rapid Eye Movement (REM or R), wakefulness (W), Stage-1, Stage-2, and Stage-3/4 of the subjects with age groups of 20–39, 40–59, 60–79, and 80–100 years. This research investigates the average sleeping time percentage in each age group and focuses on the changes in sleep patterns. Furthermore, this investigation employs statistical measures including median, variance, and standard deviation to comprehensively understand the variability of sleep quality and sleep parameters within each age group. The T-tests and ANOVA tests within specific sleep stages for each age group have been measured to determine the significance of age-related variations in sleep parameters. The results appear valid regardless of age and may provide valuable information about the impact on sleep quality. Also, the algorithm has been implemented in a multi-core computing platform with a parallel processing approach and reduced the 96% computation time. The analysis of the present work provides essential information regarding sleep in different age groups, potentially useful for maintaining sleep quality with age.

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探索不同年龄段睡眠阶段的统计和计算分析
睡眠是健康生活的重要组成部分,良好的睡眠可能取决于多种因素,如睡眠时间、睡眠效率、睡眠结构、睡眠潜伏期、睡眠片段等。睡眠质量差可能导致多种疾病和失调。本研究基于对多导睡眠图(PSG)数据集的研究和分析,数据集收集自 82 名受试者,包括 45 名女性和 37 名男性。本研究测量了 20-39 岁、40-59 岁、60-79 岁和 80-100 岁年龄组受试者的睡眠阶段,包括快速眼动(REM 或 R)、觉醒(W)、阶段-1、阶段-2 和阶段-3/4。本研究调查了各年龄组的平均睡眠时间百分比,并重点关注睡眠模式的变化。此外,本次调查还采用了中位数、方差和标准差等统计方法,以全面了解各年龄组睡眠质量和睡眠参数的变化情况。在每个年龄组的特定睡眠阶段内进行 T 检验和方差分析检验,以确定与年龄有关的睡眠参数变化的显著性。无论年龄如何,结果似乎都是有效的,并可提供有关睡眠质量影响的宝贵信息。此外,该算法是在多核计算平台上通过并行处理方法实现的,减少了 96% 的计算时间。本研究的分析提供了有关不同年龄组睡眠的重要信息,可能有助于随着年龄的增长保持睡眠质量。
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