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基于机器学习的急性肾损伤研究的文献计量学和可视化分析。

Bibliometric and visual analysis of machine learning-based research in acute kidney injury worldwide.

机构信息

State Key Laboratory of Kidney Diseases, Department of Nephrology, Chinese People's Liberation Army General Hospital, Chinese People's Liberation Army Institute of Nephrology, National Clinical Research Center of Kidney Diseases, Beijing, China.

Medical Big Data Research Center, Chinese People's Liberation Army General Hospital, Beijing, China.

出版信息

Front Public Health. 2023 Mar 17;11:1136939. doi: 10.3389/fpubh.2023.1136939. eCollection 2023.

Abstract

BACKGROUND

Acute kidney injury (AKI) is a serious clinical complication associated with adverse short-term and long-term outcomes. In recent years, with the rapid popularization of electronic health records and artificial intelligence machine learning technology, the detection rate and treatment of AKI have been greatly improved. At present, there are many studies in this field, and a large number of articles have been published, but we do not know much about the quality of research production in this field, as well as the focus and trend of current research.

METHODS

Based on the Web of Science Core Collection, studies reporting machine learning-based AKI research that were published from 2013 to 2022 were retrieved and collected after manual review. VOSviewer and other software were used for bibliometric visualization analysis, including publication trends, geographical distribution characteristics, journal distribution characteristics, author contributions, citations, funding source characteristics, and keyword clustering.

RESULTS

A total of 336 documents were analyzed. Since 2018, publications and citations have increased dramatically, with the United States (143) and China (101) as the main contributors. Regarding authors, Bihorac, A and Ozrazgat-Baslanti, T from the Kansas City Medical Center have published 10 articles. Regarding institutions, the University of California (18) had the most publications. Approximately 1/3 of the publications were published in Q1 and Q2 journals, of which Scientific Reports (19) was the most prolific journal. Tomašev et al.'s study that was published in 2019 has been widely cited by researchers. The results of cluster analysis of co-occurrence keywords suggest that the construction of AKI prediction model related to critical patients and sepsis patients is the research frontier, and XGBoost algorithm is also popular.

CONCLUSION

This study first provides an updated perspective on machine learning-based AKI research, which may be beneficial for subsequent researchers to choose suitable journals and collaborators and may provide a more convenient and in-depth understanding of the research basis, hotspots and frontiers.

摘要

背景

急性肾损伤(AKI)是一种严重的临床并发症,与不良的短期和长期结局相关。近年来,随着电子病历和人工智能机器学习技术的快速普及,AKI 的检测率和治疗水平有了很大提高。目前,该领域有很多研究,发表了大量文章,但我们对该领域的研究成果质量以及当前研究的重点和趋势了解甚少。

方法

基于 Web of Science 核心合集,检索并人工筛选了 2013 年至 2022 年发表的基于机器学习的 AKI 研究的文章。使用 VOSviewer 等软件进行了文献计量可视化分析,包括出版物趋势、地域分布特征、期刊分布特征、作者贡献、引文、资金来源特征和关键词聚类。

结果

共分析了 336 篇文献。自 2018 年以来,出版物和引文数量大幅增加,主要贡献者为美国(143 篇)和中国(101 篇)。在作者方面,堪萨斯城医疗中心的 Bihorac,A 和 Ozrazgat-Baslanti,T 发表了 10 篇文章。在机构方面,加利福尼亚大学(18 篇)发表的文献最多。大约有 1/3 的出版物发表在 Q1 和 Q2 期刊上,其中最具影响力的期刊是 Scientific Reports(19 篇)。Tomašev 等人 2019 年发表的研究被研究人员广泛引用。共现关键词聚类分析的结果表明,构建与危重症患者和脓毒症患者相关的 AKI 预测模型是研究前沿,XGBoost 算法也很流行。

结论

本研究首次提供了基于机器学习的 AKI 研究的最新视角,这可能有助于后续研究人员选择合适的期刊和合作者,并可能提供更方便和深入的了解研究基础、热点和前沿。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/1f8d/10063840/32ef3ad0dfd2/fpubh-11-1136939-g0001.jpg

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