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基于数字生物标志物的干预措施:系统评价的系统评价。

Digital Biomarker-Based Interventions: Systematic Review of Systematic Reviews.

机构信息

Health Economics Research Center, University Research and Innovation Center, Óbuda University, Budapest, Hungary.

Doctoral School of Business and Management, Corvinus University of Budapest, Budapest, Hungary.

出版信息

J Med Internet Res. 2022 Dec 21;24(12):e41042. doi: 10.2196/41042.

Abstract

BACKGROUND

The introduction of new medical technologies such as sensors has accelerated the process of collecting patient data for relevant clinical decisions, which has led to the introduction of a new technology known as digital biomarkers.

OBJECTIVE

This study aims to assess the methodological quality and quality of evidence from meta-analyses of digital biomarker-based interventions.

METHODS

This study follows the PRISMA (Preferred Reporting Items for Systematic Reviews and Meta-Analyses) guideline for reporting systematic reviews, including original English publications of systematic reviews reporting meta-analyses of clinical outcomes (efficacy and safety endpoints) of digital biomarker-based interventions compared with alternative interventions without digital biomarkers. Imaging or other technologies that do not measure objective physiological or behavioral data were excluded from this study. A literature search of PubMed and the Cochrane Library was conducted, limited to 2019-2020. The quality of the methodology and evidence synthesis of the meta-analyses were assessed using AMSTAR-2 (A Measurement Tool to Assess Systematic Reviews 2) and GRADE (Grading of Recommendations, Assessment, Development, and Evaluations), respectively. This study was funded by the National Research, Development and Innovation Fund of Hungary.

RESULTS

A total of 25 studies with 91 reported outcomes were included in the final analysis; 1 (4%), 1 (4%), and 23 (92%) studies had high, low, and critically low methodologic quality, respectively. As many as 6 clinical outcomes (7%) had high-quality evidence and 80 outcomes (88%) had moderate-quality evidence; 5 outcomes (5%) were rated with a low level of certainty, mainly due to risk of bias (85/91, 93%), inconsistency (27/91, 30%), and imprecision (27/91, 30%). There is high-quality evidence of improvements in mortality, transplant risk, cardiac arrhythmia detection, and stroke incidence with cardiac devices, albeit with low reporting quality. High-quality reviews of pedometers reported moderate-quality evidence, including effects on physical activity and BMI. No reports with high-quality evidence and high methodological quality were found.

CONCLUSIONS

Researchers in this field should consider the AMSTAR-2 criteria and GRADE to produce high-quality studies in the future. In addition, patients, clinicians, and policymakers are advised to consider the results of this study before making clinical decisions regarding digital biomarkers to be informed of the degree of certainty of the various interventions investigated in this study. The results of this study should be considered with its limitations, such as the narrow time frame.

INTERNATIONAL REGISTERED REPORT IDENTIFIER (IRRID): RR2-10.2196/28204.

摘要

背景

传感器等新医疗技术的引入加速了相关临床决策患者数据的收集过程,由此引入了一种称为数字生物标志物的新技术。

目的

本研究旨在评估基于数字生物标志物干预措施的荟萃分析的方法学质量和证据质量。

方法

本研究遵循 PRISMA(系统评价和荟萃分析的首选报告项目)报告系统评价的指南,包括报告临床结局(疗效和安全性终点)的基于数字生物标志物干预措施与无数字生物标志物的替代干预措施的原始英语出版物。本研究排除了不测量客观生理或行为数据的成像或其他技术。对 PubMed 和 Cochrane 图书馆进行了文献检索,仅限于 2019-2020 年。使用 AMSTAR-2(评估系统评价的测量工具 2)和 GRADE(推荐评估、制定和评估分级)分别评估荟萃分析的方法学和证据综合质量。本研究由匈牙利国家研究、开发和创新基金资助。

结果

最终分析纳入了 25 项研究,共 91 项报告结果;1 项(4%)、1 项(4%)和 23 项(92%)研究的方法学质量分别为高、低和极低。多达 6 项临床结局(7%)具有高质量证据,80 项结局(88%)具有中等质量证据;5 项结局(5%)的确定性水平较低,主要归因于偏倚风险(91/91,93%)、不一致性(91/91,30%)和不精确性(91/91,30%)。心脏设备可改善死亡率、移植风险、心脏心律失常检测和中风发生率,具有高质量证据,但报告质量低。计步器的高质量综述报告了中等质量的证据,包括对身体活动和 BMI 的影响。没有发现高质量证据和高质量研究。

结论

该领域的研究人员今后应考虑使用 AMSTAR-2 标准和 GRADE 标准来开展高质量研究。此外,在做出与数字生物标志物相关的临床决策时,建议患者、临床医生和决策者考虑本研究的结果,以了解本研究中调查的各种干预措施的确定性程度。应考虑本研究的结果及其局限性,例如时间范围较窄。

国际注册报告标识符(IRRID):RR2-10.2196/28204。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/0f96/9813819/f4a23dab7886/jmir_v24i12e41042_fig1.jpg

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