School of Computing, College of Engineering and Computer Science, The Australian National University, Canberra, Australia.
Department of Health Services Research and Policy, Research School of Population Health, College of Health and Medicine, The Australian National University, Canberra, Australia.
J Med Internet Res. 2022 Apr 8;24(4):e28901. doi: 10.2196/28901.
Monitoring glucose and other parameters in persons with type 1 diabetes (T1D) can enhance acute glycemic management and the diagnosis of long-term complications of the disease. For most persons living with T1D, the determination of insulin delivery is based on a single measured parameter-glucose. To date, wearable sensors exist that enable the seamless, noninvasive, and low-cost monitoring of multiple physiological parameters.
The objective of this literature survey is to explore whether some of the physiological parameters that can be monitored with noninvasive, wearable sensors may be used to enhance T1D management.
A list of physiological parameters, which can be monitored by using wearable sensors available in 2020, was compiled by a thorough review of the devices available in the market. A literature survey was performed using search terms related to T1D combined with the identified physiological parameters. The selected publications were restricted to human studies, which had at least their abstracts available. The PubMed and Scopus databases were interrogated. In total, 77 articles were retained and analyzed based on the following two axes: the reported relations between these parameters and T1D, which were found by comparing persons with T1D and healthy control participants, and the potential areas for T1D enhancement via the further analysis of the found relationships in studies working within T1D cohorts.
On the basis of our search methodology, 626 articles were returned, and after applying our exclusion criteria, 77 (12.3%) articles were retained. Physiological parameters with potential for monitoring by using noninvasive wearable devices in persons with T1D included those related to cardiac autonomic function, cardiorespiratory control balance and fitness, sudomotor function, and skin temperature. Cardiac autonomic function measures, particularly the indices of heart rate and heart rate variability, have been shown to be valuable in diagnosing and monitoring cardiac autonomic neuropathy and, potentially, predicting and detecting hypoglycemia. All identified physiological parameters were shown to be associated with some aspects of diabetes complications, such as retinopathy, neuropathy, and nephropathy, as well as macrovascular disease, with capacity for early risk prediction. However, although they can be monitored by available wearable sensors, most studies have yet to adopt them, as opposed to using more conventional devices.
Wearable sensors have the potential to augment T1D sensing with additional, informative biomarkers, which can be monitored noninvasively, seamlessly, and continuously. However, significant challenges associated with measurement accuracy, removal of noise and motion artifacts, and smart decision-making exist. Consequently, research should focus on harvesting the information hidden in the complex data generated by wearable sensors and on developing models and smart decision strategies to optimize the incorporation of these novel inputs into T1D interventions.
监测 1 型糖尿病(T1D)患者的血糖和其他参数可以改善急性血糖管理,并有助于诊断疾病的长期并发症。对于大多数 T1D 患者来说,胰岛素输注的确定基于一个单一的测量参数——血糖。迄今为止,已经存在可用于无缝、非侵入性和低成本监测多种生理参数的可穿戴传感器。
本次文献综述旨在探讨是否可以使用非侵入性、可穿戴传感器监测的一些生理参数来增强 T1D 管理。
通过对市场上可用设备的全面审查,编制了一份可通过可穿戴传感器监测的生理参数清单。使用与 T1D 相关的搜索词并结合确定的生理参数进行文献检索。选择的出版物仅限于至少有摘要可用的人类研究。查询了 PubMed 和 Scopus 数据库。总共保留了 77 篇文章,并根据以下两个轴进行分析:报告的这些参数与 T1D 之间的关系,通过比较 T1D 患者和健康对照参与者发现;以及通过在 T1D 队列研究中进一步分析发现的关系,为 T1D 增强提供的潜在领域。
根据我们的搜索方法,返回了 626 篇文章,应用排除标准后,保留了 77 篇(12.3%)文章。可通过非侵入性可穿戴设备监测的 T1D 患者的生理参数包括与心脏自主功能、心肺控制平衡和适应性、出汗功能和皮肤温度相关的参数。心脏自主功能测量,特别是心率和心率变异性指数,已被证明在诊断和监测心脏自主神经病变以及潜在预测和检测低血糖方面具有价值。所有确定的生理参数均与糖尿病并发症的某些方面相关,例如视网膜病变、神经病变和肾病,以及大血管疾病,具有早期风险预测能力。然而,尽管它们可以通过现有的可穿戴传感器进行监测,但与使用更传统的设备相比,大多数研究尚未采用这些参数。
可穿戴传感器有可能通过可无创、连续、无缝监测的额外有意义的生物标志物来增强 T1D 检测。然而,在测量准确性、消除噪声和运动伪影以及智能决策方面仍然存在重大挑战。因此,研究应集中在挖掘可穿戴传感器生成的复杂数据中隐藏的信息上,并开发模型和智能决策策略,以优化将这些新输入纳入 T1D 干预措施。