Shetty Ashish, Delanerolle Gayathri, Zeng Yutian, Shi Jian Qing, Ebrahim Rawan, Pang Joanna, Hapangama Dharani, Sillem Martin, Shetty Suchith, Shetty Balakrishnan, Hirsch Martin, Raymont Vanessa, Majumder Kingshuk, Chong Sam, Goodison William, O'Hara Rebecca, Hull Louise, Pluchino Nicola, Shetty Naresh, Elneil Sohier, Fernandez Tacson, Brownstone Robert M, Phiri Peter
University College London Hospitals NHS Foundation Trust, London, United Kingdom.
Nuffield Department of Primary Care Health Sciences, University of Oxford, Oxford, United Kingdom.
Front Digit Health. 2022 Nov 2;4:850601. doi: 10.3389/fdgth.2022.850601. eCollection 2022.
Pain is a silent global epidemic impacting approximately a third of the population. Pharmacological and surgical interventions are primary modes of treatment. Cognitive/behavioural management approaches and interventional pain management strategies are approaches that have been used to assist with the management of chronic pain. Accurate data collection and reporting treatment outcomes are vital to addressing the challenges faced. In light of this, we conducted a systematic evaluation of the current digital application landscape within chronic pain medicine.
The primary objective was to consider the prevalence of digital application usage for chronic pain management. These digital applications included mobile apps, web apps, and chatbots.
We conducted searches on PubMed and ScienceDirect for studies that were published between 1st January 1990 and 1st January 2021.
Our review included studies that involved the use of digital applications for chronic pain conditions. There were no restrictions on the country in which the study was conducted. Only studies that were peer-reviewed and published in English were included. Four reviewers had assessed the eligibility of each study against the inclusion/exclusion criteria. Out of the 84 studies that were initially identified, 38 were included in the systematic review.
The AMSTAR guidelines were used to assess data quality. This assessment was carried out by 3 reviewers. The data were pooled using a random-effects model.
Before data collection began, the primary outcome was to report on the standard mean difference of digital application usage for chronic pain conditions. We also recorded the type of digital application studied (e.g., mobile application, web application) and, where the data was available, the standard mean difference of pain intensity, pain inferences, depression, anxiety, and fatigue.
38 studies were included in the systematic review and 22 studies were included in the meta-analysis. The digital interventions were categorised to web and mobile applications and chatbots, with pooled standard mean difference of 0.22 (95% CI: -0.16, 0.60), 0.30 (95% CI: 0.00, 0.60) and -0.02 (95% CI: -0.47, 0.42) respectively. Pooled standard mean differences for symptomatologies of pain intensity, depression, and anxiety symptoms were 0.25 (95% CI: 0.03, 0.46), 0.30 (95% CI: 0.17, 0.43) and 0.37 (95% CI: 0.05, 0.69), respectively. A sub-group analysis was conducted on pain intensity due to the heterogeneity of the results ( = 82.86%; = 0.02). After stratifying by country, we found that digital applications were more likely to be effective in some countries (e.g., United States, China) than others (e.g., Ireland, Norway).
The use of digital applications in improving pain-related symptoms shows promise, but further clinical studies would be needed to develop more robust applications.
https://www.crd.york.ac.uk/prospero/, identifier: CRD42021228343.
疼痛是一种悄无声息的全球性流行病,影响着约三分之一的人口。药物和手术干预是主要的治疗方式。认知/行为管理方法和介入性疼痛管理策略已被用于辅助慢性疼痛的管理。准确的数据收集和治疗结果报告对于应对所面临的挑战至关重要。有鉴于此,我们对慢性疼痛医学领域当前的数字应用情况进行了系统评估。
主要目的是考量用于慢性疼痛管理的数字应用的使用普及率。这些数字应用包括移动应用程序、网络应用程序和聊天机器人。
我们在PubMed和ScienceDirect上搜索了1990年1月1日至2021年1月1日期间发表的研究。
我们的综述纳入了涉及将数字应用用于慢性疼痛病症的研究。对研究开展所在的国家没有限制。仅纳入经过同行评审并以英文发表的研究。四名评审员根据纳入/排除标准评估了每项研究的合格性。在最初识别出的84项研究中,38项被纳入系统综述。
采用AMSTAR指南评估数据质量。此项评估由3名评审员进行。数据使用随机效应模型进行汇总。
在数据收集开始前,主要结果是报告用于慢性疼痛病症的数字应用的标准平均差。我们还记录了所研究的数字应用的类型(如移动应用程序、网络应用程序),以及在可获取数据的情况下,疼痛强度、疼痛推断、抑郁、焦虑和疲劳的标准平均差。
38项研究被纳入系统综述,22项研究被纳入荟萃分析。数字干预措施分为网络和移动应用程序以及聊天机器人,其汇总标准平均差分别为0.22(95%置信区间:-0.16, 0.60)、0.30(95%置信区间:0.00, 0.60)和-0.02(95%置信区间:-0.47, 0.42)。疼痛强度、抑郁和焦虑症状的症状汇总标准平均差分别为0.25(95%置信区间:0.03, 0.46)、0.30(95%置信区间:0.17, 0.43)和0.37(95%置信区间:0.05, 0.69)。由于结果存在异质性(I² = 82.86%;P = 0.02),对疼痛强度进行了亚组分析。按国家分层后,我们发现数字应用在某些国家(如美国、中国)比其他国家(如爱尔兰、挪威)更有可能有效。
使用数字应用改善与疼痛相关的症状显示出前景,但需要进一步的临床研究来开发更强大的应用程序。