[1989年至2023年在MRI中使用人工智能的研究趋势:使用文本挖掘的分析]。

Yohei Kamikawa, Masataka Yamaguchi, Tomoaki Shiroo, Yasufumi Kondo, Yukito Yoshida
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引用次数: 0

摘要

目的:虽然近年来在磁共振成像(MRI)领域应用人工智能的研究领域迅速扩大,但全面了解这些研究领域的手段有限。本研究的目的是可视化MRI领域中与人工智能相关的研究领域,并了解其研究趋势。方法:利用PubMed数据库,提取1989年1月1日至2023年12月31日MRI领域的人工智能文章标题,建立提取词表,绘制词出现相对频率图,绘制共现网络图,考察词的出现频率以及频率和特征词随时间的变化。结果:提取标题2870篇。出现频率最高的单词是“深度学习”(deep learning),从2019年到2023年出现了1170次。此外,深度学习是共现性最强的词(Jaccard系数从2019年到2023年为0.48)。在与器官相关的词汇中,“大脑”、“前列腺”、“乳房”的出现频率呈上升趋势。结论:近年来,MRI领域与人工智能相关的研究领域已经成为涉及深度学习的一个蓬勃发展的领域。此外,在此期间,在诊断领域也进行了许多研究。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
[Research Trends Using Artificial Intelligence in the MRI from 1989 to 2023: Analysis Using Text Mining].

Purpose: Although the research areas applying artificial intelligence in the field of magnetic resonance imaging (MRI) have been expanding rapidly in recent years, the means to comprehensively understand these research areas have been limited. The purpose of this study was to visualize the research areas related to artificial intelligence in the field of MRI, and to understand the trend of research.

Methods: Using PubMed database, we extracted article titles applying artificial intelligence in the MRI field from January 1, 1989 to December 31, 2023, created an extracted word list, graphs showing the relative frequency of occurrences of words, and drew a co-occurrence network diagram to investigate the frequency of appearance of words and changes in frequency and characteristic words over time.

Results: The number of extracted titles was 2870. The most frequently appearing word was "deep learning" (1170 times from 2019 to 2023). Furthermore, deep learning was the word with the strongest co-occurrence (Jaccard coefficient 0.48 from 2019 to 2023). Regarding words related to organs, there was an increasing trend in the appearance frequency of the brain, prostate, and breast.

Conclusion: In recent years, the research area related to artificial intelligence in the field of MRI has become a thriving area involving deep learning. In addition, there were many studies in the diagnostic area throughout the period.

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