An Edge-Assisted and Smart System for Real-Time Pain Monitoring

Emad Kasaeyan Naeini, Sina Shahhosseini, A. Subramanian, Tingjue Yin, A. Rahmani, N. Dutt
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引用次数: 20

Abstract

In the healthcare sector, there is a strong demand for accurate objective pain assessment as a key for effective pain management. Real-time and accurate objective pain assessment help hospital staffs and caregivers decide the proper dosage of pain medication to be provided to a patient in a timely manner. The state-of-the-art automatic and objective pain assessment techniques in the literature can be classified into two main categories: physiological-based and behavioral-based. The first-class monitors the changes in patients' physiological data such as Electrocardiography (ECG), Electromyography (EMG), Photoplethysmography (PPG) to identify autonomic nervous system reactions to pain, while the second class utilizes behavioral reactions to pain such as techniques using computer vision-based techniques by extracting features from patients' head poses and facial expressions. Recent pain monitoring systems have become multi-modal meaning that they deploy a combination of both approaches to improve pain monitoring accuracy. Although such complex models are highly accurate in pain monitoring, they are more computationally intensive imposing feasibility limitations to implement them on wearable devices in terms of energy efficiency (battery life) as well as computation latency. A smart and self-aware system capable of adaptively making a decision at run-time in response to the changes in pain level and context can minimize energy consumption by dynamically offloading tasks to the gateway devices at the edge layer. For this reason, in this paper, a self-aware system is proposed for the continuous assessment of pain intensity at the edge layer. Using the BioVid heat pain dataset, our approach demonstrates a promising reduction in terms of energy consumption with a negligible accuracy loss compared with its non-adaptive counterpart.
一种用于实时疼痛监测的边缘辅助智能系统
在医疗保健部门,对准确客观的疼痛评估的强烈需求是有效疼痛管理的关键。实时、准确、客观的疼痛评估有助于医院工作人员和护理人员及时决定向患者提供适当的止痛药剂量。文献中最先进的自动和客观疼痛评估技术可分为两大类:基于生理的和基于行为的。第一类是通过监测患者的生理数据变化,如心电图(ECG)、肌电图(EMG)、光电体积脉搏图(PPG)来识别自主神经系统对疼痛的反应,而第二类是利用基于计算机视觉的技术,通过从患者的头部姿势和面部表情中提取特征,从而对疼痛进行行为反应。最近的疼痛监测系统已经成为多模态,这意味着它们部署了两种方法的组合,以提高疼痛监测的准确性。虽然这种复杂的模型在疼痛监测方面非常准确,但它们的计算量更大,在能源效率(电池寿命)和计算延迟方面,在可穿戴设备上实施它们的可行性受到限制。智能和自我感知系统能够在运行时自适应地做出决策,以响应疼痛级别和上下文的变化,可以通过将任务动态地卸载到边缘层的网关设备来最大限度地减少能耗。为此,本文提出了一种自我感知系统,用于边缘层疼痛强度的连续评估。使用BioVid热痛数据集,我们的方法表明,与非自适应方法相比,我们的方法在能源消耗方面有很大的减少,而且精度损失可以忽略不计。
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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