Padhye Nikhil, Rios Denise, Fay Vaunette, Hanneman Sandra K
Cizik School of Nursing, The University of Texas Health Science Center at Houston, Houston, TX 77030, USA.
Entropy (Basel). 2022 Aug 15;24(8):1127. doi: 10.3390/e24081127.
This study examined the association between pressure injuries and complexity of abdominal temperature measured in residents of a nursing facility. The temperature served as a proxy measure for skin thermoregulation. Refined multiscale sample entropy and bubble entropy were used to measure the irregularity of the temperature time series measured over two days at 1-min intervals. Robust summary measures were derived for the multiscale entropies and used in predictive models for pressure injuries that were built with adaptive lasso regression and neural networks. Both types of entropies were lower in the group of participants with pressure injuries (n=11) relative to the group of non-injured participants (n=15). This was generally true at the longer temporal scales, with the effect peaking at scale τ=22 min for sample entropy and τ=23 min for bubble entropy. Predictive models for pressure injury on the basis of refined multiscale sample entropy and bubble entropy yielded 96% accuracy, outperforming predictions based on any single measure of entropy. Combining entropy measures with a widely used risk assessment score led to the best prediction accuracy. Complexity of the abdominal temperature series could therefore serve as an indicator of risk of pressure injury.
本研究调查了护理机构居民中压力性损伤与腹部温度测量复杂性之间的关联。该温度作为皮肤温度调节的替代指标。使用精细多尺度样本熵和气泡熵来测量以1分钟间隔在两天内测得的温度时间序列的不规则性。为多尺度熵得出了稳健的汇总指标,并将其用于通过自适应套索回归和神经网络构建的压力性损伤预测模型。与未受伤参与者组(n = 15)相比,压力性损伤参与者组(n = 11)的两种熵类型均较低。在较长的时间尺度上通常如此,样本熵在时间尺度τ = 22分钟时效应达到峰值,气泡熵在时间尺度τ = 23分钟时效应达到峰值。基于精细多尺度样本熵和气泡熵的压力性损伤预测模型的准确率为96%,优于基于任何单一熵测量的预测。将熵测量与广泛使用的风险评估分数相结合可实现最佳预测准确率。因此,腹部温度序列的复杂性可作为压力性损伤风险的指标。