用于医疗保健的可解释人工智能可视化研究

Subhan Ali, A. Imran, Zenun Kastrati, Sher Muhammad Daudpota
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引用次数: 1

摘要

理解复杂的机器学习和人工智能模型一直是一个挑战,因为这些模型是黑盒子,我们通常不知道模型依赖什么信息来推断。可解释的人工智能(XAI)已经成为一个令人兴奋的新领域,它解释和理解这些机器学习模型,就像人类可以理解和改进它们一样。在过去的几年里,有许多关于医疗保健领域可解释的人工智能的研究文章。在这项工作中,正在使用文献计量学方法研究和分析1687份文件。对同一主题有一定的系统综述,但本研究是第一次使用定量方法分析大量出版物。本研究结果表明,该领域的研究始于2011年,并在随后的几年中有相当多的出版物。我们还确定了被引用最多的期刊和文章。通过专题分析,我们发现了医疗卫生领域中一些重要的专题研究领域。调查结果显示,美国是全球人工智能研究的领导者,其次是中国和加拿大,分别排在第二和第三位。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Visualizing Research on Explainable Artificial Intelligence for Medical and Healthcare
Understanding complex machine learning and artificial intelligence models have always been challenging because these models are black-box, and often we don't know what information models rely upon to infer. Explainable Artificial Intelligence (XAI) has emerged as a new exciting field to explain and understand these machine learning models as humans can understand and improve them. In the past few years, there have been numerous research articles on explainable artificial intelligence for medical and healthcare. 1687 documents are being studied and analysed using bibliometric methods in this work. There are certain systematic reviews on the same topic, but this study is the first of its kind to use a quantitative method to analyze a large number of publications. The results of this study show that the research in this field took pace in 2011, and there have been quite many publications in the following years. We have also identified top-cited journals and articles. Through thematic analysis, we have found some important thematic areas of research in the field of XAI for medical and healthcare. The findings showed that the USA is the global leader in XAI research, followed by China and Canada at second and third place, respectively.
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