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Clinical application of a novel automatic algorithm for actigraphy-based activity and rest period identification to accurately determine awake and asleep ambulatory blood pressure parameters and cardiovascular risk

机译:一种新颖的基于动作描记活动和休息时间识别的自动算法的临床应用,以准确确定清醒和睡眠中的非卧床血压参数和心血管疾病的风险

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This paper reports the results of a study designed to determine whether there are statistically significant differences between the values of ambulatory blood pressure monitoring (ABPM) parameters obtained using different methods-fixed schedule, diary, and automatic algorithm based on actigraphy-of defining the main activity and rest periods, and to determine the clinical relevance of such differences. We studied 233 patients (98 men/135 women), 61.29 ± .83 yrs of age (mean ± SD). Statistical methods were used to measure agreement in the diagnosis and classification of subjects within the context of ABPM and cardiovascular disease risk assessment. The results show that there are statistically significant differences both at the group and individual levels. Those at the individual level have clinically significant implications, as they can result in a different classification, and, therefore, different diagnosis and treatment for individual subjects. The use of an automatic algorithm based on actigraphy can lead to better individual treatment by correcting the accuracy problems associated with the fixed schedule on patients whose actual activity/rest routine differs from the fixed schedule assumed, and it also overcomes the limitations and reliability issues associated with the use of diaries. (Author correspondence: cristina.crespo@oit.edu)
机译:本文报告了一项研究结果,该研究旨在确定使用不同方法(固定时间表,日记和基于书法的自动算法)获得的动态血压监测(ABPM)参数值之间是否存在统计上的显着差异,活动和休息时间,并确定这种差异的临床相关性。我们研究了233名患者(98名男性/ 135名女性),年龄61.29±.83岁(平均±SD)。在ABPM和心血管疾病风险评估的背景下,使用统计方法来测量受试者诊断和分类的一致性。结果表明,在小组和个人层面上,统计上都有显着差异。个体水平的个体具有临床意义,因为它们可以导致不同的分类,因此对个体个体的诊断和治疗也不同。使用基于书法的自动算法,可以通过纠正与实际活动/休息程序与假定的固定时间表不同的患者的固定时间表相关的准确性问题,来导致更好的个性化治疗,并且还克服了相关的局限性和可靠性问题使用日记。 (作者来信:cristina.crespo@oit.edu)

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