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可穿戴传感器作为术前评估工具:综述。

Wearable Sensors as a Preoperative Assessment Tool: A Review.

机构信息

School of Computing, University of Leeds, Leeds LS2 9JT, UK.

School of Medicine, University of Leeds, Leeds LS2 9JT, UK.

出版信息

Sensors (Basel). 2024 Jan 12;24(2):482. doi: 10.3390/s24020482.

Abstract

Surgery is a common first-line treatment for many types of disease, including cancer. Mortality rates after general elective surgery have seen significant decreases whilst postoperative complications remain a frequent occurrence. Preoperative assessment tools are used to support patient risk stratification but do not always provide a precise and accessible assessment. Wearable sensors (WS) provide an accessible alternative that offers continuous monitoring in a non-clinical setting. They have shown consistent uptake across the perioperative period but there has been no review of WS as a preoperative assessment tool. This paper reviews the developments in WS research that have application to the preoperative period. Accelerometers were consistently employed as sensors in research and were frequently combined with photoplethysmography or electrocardiography sensors. Pre-processing methods were discussed and missing data was a common theme; this was dealt with in several ways, commonly by employing an extraction threshold or using imputation techniques. Research rarely processed raw data; commercial devices that employ internal proprietary algorithms with pre-calculated heart rate and step count were most commonly employed limiting further feature extraction. A range of machine learning models were used to predict outcomes including support vector machines, random forests and regression models. No individual model clearly outperformed others. Deep learning proved successful for predicting exercise testing outcomes but only within large sample-size studies. This review outlines the challenges of WS and provides recommendations for future research to develop WS as a viable preoperative assessment tool.

摘要

手术是许多疾病(包括癌症)的常用一线治疗方法。虽然普通择期手术后的死亡率已经显著下降,但术后并发症仍然经常发生。术前评估工具用于支持患者的风险分层,但并不总是提供精确和可及的评估。可穿戴传感器 (WS) 提供了一种替代方法,可在非临床环境中进行连续监测。它们在围手术期得到了一致的应用,但尚未对 WS 作为术前评估工具进行综述。本文回顾了 WS 在术前阶段应用的研究进展。加速度计一直被用作传感器在研究中,并且经常与光电容积脉搏波或心电图传感器结合使用。讨论了预处理方法,并且缺失数据是一个常见的主题;这以几种方式处理,通常采用提取阈值或使用插补技术。研究很少对原始数据进行处理;最常使用采用内部专有算法并预先计算心率和步数的商业设备,从而限制了进一步的特征提取。使用了一系列机器学习模型来预测结果,包括支持向量机、随机森林和回归模型。没有单个模型明显优于其他模型。深度学习在预测运动试验结果方面取得了成功,但仅在大型样本量研究中。本综述概述了 WS 的挑战,并为未来将 WS 开发为可行的术前评估工具的研究提供了建议。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/7e24/10820534/fbb870884049/sensors-24-00482-g004.jpg

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