基于医学发现摘要的自动正畸诊断

Takumi Ohtsuka, Tomoyuki Kajiwara, C. Tanikawa, Yuujin Shimizu, Hajime Nagahara, Takashi Ninomiya
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引用次数: 1

摘要

提出了一种利用自然语言处理实现正畸诊断自动化的方法。用这样的技术来帮助牙医,防止没有经验的牙医出错,减少有经验的牙医的工作量,是值得的。然而,医学发现中的文本长度和风格不一致使得使用深度学习模型进行自动正畸诊断变得困难。在这项研究中,我们利用由经验丰富的牙医以一致的风格编写的医学发现的简短摘要来提高自动诊断的性能。对970个日本医学发现的实验结果表明,摘要持续提高了各种机器学习模型用于自动正畸诊断的性能。虽然BERT是使用该方法获得性能最高的模型,但卷积神经网络获得了最好的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automated Orthodontic Diagnosis from a Summary of Medical Findings
We propose a method to automate orthodontic diagnosis with natural language processing. It is worthwhile to assist dentists with such technology to prevent errors by inexperienced dentists and to reduce the workload of experienced ones. However, text length and style inconsistencies in medical findings make an automated orthodontic diagnosis with deep-learning models difficult. In this study, we improve the performance of automatic diagnosis utilizing short summaries of medical findings written in a consistent style by experienced dentists. Experimental results on 970 Japanese medical findings show that summarization consistently improves the performance of various machine learning models for automated orthodontic diagnosis. Although BERT is the model that gains the most performance with the proposed method, the convolutional neural network achieved the best performance.
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