Effective Posture Classification Using Statistically Significant Data From Flexible Pressure Sensors

Jungeun Yoon;Aekyeung Moon;Seung Woo Son
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Abstract

Advancements in flexible and printable sensor technologies to overcome the limitations of conventional rigid counterparts offer an excellent opportunity to design various healthcare applications for humans, and their potential flexibility can be used in real-time health monitoring and personalized physical conditions with minimal or no inconvenience. However, managing a large volume of obtained sensor datasets and ensuring accurate predictions can take time and effort. While statistical analysis and the Pearson correlation coefficient can reduce data volume, whether this would lead to losing important information and affect downstream application performance is still being determined. In this article, we use posture classification as an exemplar of timely services in digital healthcare, especially for bedsores or decubitus ulcers. Our sensors, placed under hospital beds, have a thickness of just 0.4 mm and collect pressure data from 28 sensors ( $7 \times 4$ ) at an 8-Hz cycle, categorizing postures into four types from five patients. We then collected sensor data to explore the possibility of using a small number of pressure sensors for patient posture classification. Next, we apply a statistical analysis to the datasets obtained to select the featured sensor data cells and evaluate the performance of posture classification models on various groups of sensors. Our evaluation involves the analysis of reduced datasets through statistical methods and the Pearson correlation coefficient. The classification performance using datasets comprising five featured and 28 sensors are 0.93 and 0.99, respectively. These results suggest comparable performance and the viability of useful classifiers for both the cases. Consequently, comparable posture classification performance can be achieved using only 17.9% of the entire dataset.
利用柔性压力传感器的统计意义数据进行有效的姿势分类
柔性和可印刷传感器技术的进步克服了传统刚性传感器的局限性,为设计各种人类医疗保健应用提供了绝佳的机会,其潜在的灵活性可用于实时健康监测和个性化物理条件,并将不便降至最低或根本没有不便。然而,管理大量获取的传感器数据集并确保准确预测需要花费大量时间和精力。虽然统计分析和皮尔逊相关系数可以减少数据量,但这是否会导致重要信息丢失并影响下游应用性能,目前仍在研究之中。在本文中,我们将姿势分类作为数字医疗及时服务的典范,尤其是针对褥疮或褥疮。我们的传感器放置在医院床下,厚度仅为 0.4 毫米,以 8 Hz 的周期收集来自 28 个传感器(7 美元乘以 4 美元)的压力数据,将五名患者的姿势分为四种类型。然后,我们收集传感器数据,探索使用少量压力传感器进行患者姿势分类的可能性。接下来,我们对所获得的数据集进行统计分析,选出有特色的传感器数据单元,并评估姿势分类模型在不同传感器组上的性能。我们的评估包括通过统计方法和皮尔逊相关系数对缩小的数据集进行分析。使用由 5 个特征传感器和 28 个传感器组成的数据集,分类性能分别为 0.93 和 0.99。这些结果表明,这两种情况下的分类性能相当,而且有用的分类器也是可行的。因此,只需使用整个数据集的 17.9%,就能实现相当的姿态分类性能。
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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