Comparing Open-Access Database and Traditional Intensive Care Studies Using Machine Learning: Bibliometric Analysis Study

被引:4
|
作者
Ke, Yuhe [1 ]
Yang, Rui [2 ]
Liu, Nan [2 ]
机构
[1] Singapore Gen Hosp, Div Anesthesiol & Perioperat Med, Singapore, Singapore
[2] Natl Univ Singapore, Ctr Quantitat Med, Duke NUS Med Sch, 8 Coll Rd, Singapore 169857, Singapore
关键词
BERTopic; critical care; eICU; machine learning; MIMIC; Medical Information Mart for Intensive Care; natural language processing; MEDICINE; QUALITY; SEPSIS; IMPLEMENTATION; METAANALYSES; PROTOCOL; SOCIETY; SCIENCE; ETHICS; TRIALS;
D O I
10.2196/48330
中图分类号
R19 [保健组织与事业(卫生事业管理)];
学科分类号
摘要
Background: Intensive care research has predominantly relied on conventional methods like randomized controlled trials. However, the increasing popularity of open-access, free databases in the past decade has opened new avenues for research, offering fresh insights. Leveraging machine learning (ML) techniques enables the analysis of trends in a vast number of studies. Objective: This study aims to conduct a comprehensive bibliometric analysis using ML to compare trends and research topics in traditional intensive care unit (ICU) studies and those done with open-access databases (OADs). Methods: We used ML for the analysis of publications in the Web of Science database in this study. Articles were categorized into "OAD" and "traditional intensive care" (TIC) studies. OAD studies were included in the Medical Information Mart for (AmsterdamUMCdb), High Time Resolution ICU Dataset (HiRID), and Pediatric Intensive Care database. TIC studies included all other intensive care studies. Uniform manifold approximation and projection was used to visualize the corpus distribution. The BERTopic technique was used to generate 30 topic-unique identification numbers and to categorize topics into 22 topic families. Results: A total of 227,893 records were extracted. After exclusions, 145,426 articles were identified as TIC and 1301 articles as OAD studies. TIC studies experienced exponential growth over the last 2 decades, culminating in a peak of 16,378 articles in 2021, while OAD studies demonstrated a consistent upsurge since 2018. Sepsis, ventilation-related research, and pediatric intensive care were the most frequently discussed topics. TIC studies exhibited broader coverage than OAD studies, suggesting a more extensive research scope. Conclusions: This study analyzed ICU research, providing valuable insights from a large number of publications. OAD studies complement TIC studies, focusing on predictive modeling, while TIC studies capture essential qualitative information. Integrating both approaches in a complementary manner is the future direction for ICU research. Additionally, natural language processing techniques offer a transformative alternative for literature review and bibliometric analysis.
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页数:13
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