基于变压器的医疗咨询用户查询分类

IF 0.6 4区 计算机科学 Q4 AUTOMATION & CONTROL SYSTEMS
D. A. Lyutkin, D. V. Pozdnyakov, A. A. Soloviev, D. V. Zhukov, M. S. I. Malik, D. I. Ignatov
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引用次数: 0

摘要

摘要 在数字医疗时代,对专业医疗支持的需求与日俱增。本研究提出了一种创新策略,利用 RuBERT 模型对医疗咨询领域的用户咨询进行分类,重点关注专家的专业化。通过利用变换器的功能,我们在不同的数据集上对预训练的 RuBERT 模型进行了微调,从而促进了查询与特定医学专业之间的精确对应。通过使用综合数据集,我们证明了我们的方法性能优越,通过交叉验证和传统的测试与训练数据集分离计算,我们的 Fl 分数超过 91.8%。我们的方法在心脏病学、神经病学和皮肤病学等医学领域显示出卓越的通用性。这种方法通过引导用户向适当的专家寻求及时和有针对性的医疗建议而带来了实际的好处。它还能提高医疗系统的效率,减轻从业人员的负担,提高病人护理质量。总之,我们建议的策略有助于获得特定的医学知识,在数字医疗保健领域提供及时准确的建议。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Transformer-Based Classification of User Queries for Medical Consultancy

Transformer-Based Classification of User Queries for Medical Consultancy

Abstract

The need for skilled medical support is growing in the era of digital healthcare. This research presents an innovative strategy, utilizing the RuBERT model, for categorizing user inquiries in the field of medical consultation with a focus on expert specialization. By harnessing the capabilities of transformers, we fine-tuned the pretrained RuBERT model on a varied dataset, which facilitates precise correspondence between queries and particular medical specialisms. Using a comprehensive dataset, we have demonstrated our approach’s superior performance with an Fl-score of over 91.8%, calculated through both cross-validation and the traditional split of test and train datasets. Our approach has shown excellent generalization across medical domains such as cardiology, neurology and dermatology. This methodology provides practical benefits by directing users to appropriate specialists for prompt and targeted medical advice. It also enhances healthcare system efficiency, reduces practitioner burden, and improves patient care quality. In summary, our suggested strategy facilitates the attainment of specific medical knowledge, offering prompt and precise advice within the digital healthcare field.

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来源期刊
Automation and Remote Control
Automation and Remote Control 工程技术-仪器仪表
CiteScore
1.70
自引率
28.60%
发文量
90
审稿时长
3-8 weeks
期刊介绍: Automation and Remote Control is one of the first journals on control theory. The scope of the journal is control theory problems and applications. The journal publishes reviews, original articles, and short communications (deterministic, stochastic, adaptive, and robust formulations) and its applications (computer control, components and instruments, process control, social and economy control, etc.).
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