基于设备使用的心脏病学虚拟现实研究的自动分类:文献计量学分析(2010-2022)。

IF 3.9 Q1 CARDIAC & CARDIOVASCULAR SYSTEMS
Akinori Higaki, Yuta Watanabe, Yusuke Akazawa, Toru Miyoshi, Hiroshi Kawakami, Fumiyasu Seike, Haruhiko Higashi, Takayuki Nagai, Kazuhisa Nishimura, Katsuji Inoue, Shuntaro Ikeda, Osamu Yamaguchi
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引用次数: 2

摘要

目前,虚拟现实(VR)构成了数字健康的一个重要方面,有必要概述研究趋势。我们将A类研究分类为医疗保健提供者使用VR设备的研究,将B类研究分类为患者使用该设备的研究。本研究旨在利用自然语言处理(NLP)方法分析每种类型研究的特点。方法与结果:检索2010 - 2022年PubMed中与VR在心血管研究中的相关文献。将研究分类为A类或b类,分析其特征。将研究摘要作为文本挖掘的语料库。一个二元逻辑回归模型被训练成自动将摘要分类为两种研究类型。通过准确度、精密度、召回率、F-1评分和ROC分析的c统计量来评价分类效果。共有171篇文章符合纳入标准,其中120篇(70.2%)为A型研究,51篇(29.8%)为B型研究。A型研究的病例报告比例高于B型研究(18.3%比3.9%,P = 0.01)。对于抽象分类,二元逻辑回归模型的准确率为88%,ROC下面积为0.98。单词“训练”、“3d”和“模拟”是A型研究中最有力的决定因素,而单词“患者”、“焦虑”和“康复”更能说明B型研究。结论:NLP方法揭示了两种类型的心脏科vr相关研究的特点。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Automated categorization of virtual reality studies in cardiology based on the device usage: a bibliometric analysis (2010-2022).

Automated categorization of virtual reality studies in cardiology based on the device usage: a bibliometric analysis (2010-2022).

Automated categorization of virtual reality studies in cardiology based on the device usage: a bibliometric analysis (2010-2022).

Automated categorization of virtual reality studies in cardiology based on the device usage: a bibliometric analysis (2010-2022).

Aims: Currently, virtual reality (VR) constitutes a vital aspect of digital health, necessitating an overview of study trends. We classified type A studies as those in which health care providers utilized VR devices and type B studies as those in which patients employed the devices. This study aimed to analyse the characteristics of each type of studies using natural language processing (NLP) methods.

Methods and results: Literature related to VR in cardiovascular research was searched in PubMed between 2010 and 2022. The characteristics of studies were analysed based on their classification as type A or type B. Abstracts of the studies were used as corpus for text mining. A binary logistic regression model was trained to automatically categorize the abstracts into the two study types. Classification performance was evaluated by accuracy, precision, recall, F-1 score, and c-statistics of the receiver operator curve (ROC) analysis. In total, 171 articles met the inclusion criteria, where 120 (70.2%) were type A studies and 51 (29.8%) were type B studies. Type A studies had a higher proportion of case reports than type B studies (18.3% vs. 3.9%, P = 0.01). As for abstract classification, the binary logistic regression model yielded 88% accuracy and an area under the ROC of 0.98. The words 'training', '3d', and 'simulation' were the most powerful determinants of type A studies, while the words 'patients', 'anxiety', and 'rehabilitation' were more indicative for type B studies.

Conclusions: NLP methods revealed the characteristics of the two types of VR-related research in cardiology.

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