Industry 4.0 Technologies in Maternal Health Care: Bibliometric Analysis and Research Agenda.

IF 2.1 Q2 PEDIATRICS
Khulekani Sibanda, Patrick Ndayizigamiye, Hossana Twinomurinzi
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引用次数: 0

Abstract

Background: Industry 4.0 (I4.0) technologies have improved operations in health care facilities by optimizing processes, leading to efficient systems and tools to assist health care personnel and patients.

Objective: This study investigates the current implementation and impact of I4.0 technologies within maternal health care, explicitly focusing on transforming care processes, treatment methods, and automated pregnancy monitoring. Additionally, it conducts a thematic landscape mapping, offering a nuanced understanding of this emerging field. Building on this analysis, a future research agenda is proposed, highlighting critical areas for future investigations.

Methods: A bibliometric analysis of publications retrieved from the Scopus database was conducted to examine how the research into I4.0 technologies in maternal health care evolved from 1985 to 2022. A search strategy was used to screen the eligible publications using the abstract and full-text reading. The most productive and influential journals; authors', institutions', and countries' influence on maternal health care; and current trends and thematic evolution were computed using the Bibliometrix R package (R Core Team).

Results: A total of 1003 unique papers in English were retrieved using the search string, and 136 papers were retained after the inclusion and exclusion criteria were implemented, covering 37 years from 1985 to 2022. The annual growth rate of publications was 9.53%, with 88.9% (n=121) of the publications observed in 2016-2022. In the thematic analysis, 4 clusters were identified-artificial neural networks, data mining, machine learning, and the Internet of Things. Artificial intelligence, deep learning, risk prediction, digital health, telemedicine, wearable devices, mobile health care, and cloud computing remained the dominant research themes in 2016-2022.

Conclusions: This bibliometric analysis reviews the state of the art in the evolution and structure of I4.0 technologies in maternal health care and how they may be used to optimize the operational processes. A conceptual framework with 4 performance factors-risk prediction, hospital care, health record management, and self-care-is suggested for process improvement. a research agenda is also proposed for governance, adoption, infrastructure, privacy, and security.

产妇保健中的工业 4.0 技术:文献计量分析与研究议程》。
背景:工业 4.0(I4.0)技术通过优化流程改善了医疗机构的运营,从而产生了高效的系统和工具来帮助医护人员和患者:本研究调查了目前 I4.0 技术在孕产妇医疗保健领域的实施情况和影响,重点关注医疗流程、治疗方法和自动妊娠监测的变革。此外,本研究还绘制了一幅主题景观图,为这一新兴领域提供了细致入微的理解。在这一分析的基础上,提出了未来的研究议程,强调了未来调查的关键领域:对从 Scopus 数据库中检索到的出版物进行了文献计量分析,以研究 I4.0 技术在孕产妇保健方面的研究从 1985 年到 2022 年是如何发展的。采用检索策略,通过摘要和全文阅读筛选符合条件的出版物。使用 Bibliometrix R 软件包(R Core Team)计算了最有成果和最有影响力的期刊;作者、机构和国家对孕产妇保健的影响;以及当前趋势和主题演变:使用检索字符串共检索到 1003 篇英文论文,在执行纳入和排除标准后,保留了 136 篇论文,时间跨度从 1985 年到 2022 年,共 37 年。论文年增长率为 9.53%,其中 88.9%(n=121)的论文发表于 2016-2022 年。在专题分析中,确定了 4 个集群--人工神经网络、数据挖掘、机器学习和物联网。人工智能、深度学习、风险预测、数字健康、远程医疗、可穿戴设备、移动医疗和云计算仍然是2016-2022年的主导研究主题:本文献计量分析回顾了孕产妇医疗保健中 I4.0 技术的演变和结构以及如何利用这些技术优化操作流程方面的最新进展。为改进流程提出了一个包含 4 个性能因素的概念框架--风险预测、医院护理、健康记录管理和自我护理。还提出了治理、采用、基础设施、隐私和安全方面的研究议程。
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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来源期刊
JMIR Pediatrics and Parenting
JMIR Pediatrics and Parenting Medicine-Pediatrics, Perinatology and Child Health
CiteScore
5.00
自引率
5.40%
发文量
62
审稿时长
12 weeks
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