Natural Language-Driven Dialogue Systems for Support in Physical Medicine and Rehabilitation

Q3 Social Sciences
Vladislav Kaverinsky, Kyrylo Malakhov
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引用次数: 0

Abstract

This paper presents a natural language-driven dialogue system designed to support healthcare professionals and students in the field of physical medicine and rehabilitation. The system seamlessly integrates concepts from intelligent information systems, data mining, ontologies, and human-computer interaction, employing at its core a rule-based dialogue mechanism. The system harnesses the power of ontology-based graph knowledge, underscoring its domain-specific efficacy. This article delves into the automated knowledge base formation, utilising Python scripts to translate EBSCO’s dataset of articles on physical medicine and rehabilitation into an OWL ontology. This methodology ensures adaptability to the ever-evolving landscape of medical insights. The system’s approach to natural language processing encompasses text preprocessing, semantic category discernment, andSPARQL query creation, providing 26 predefined categories. As an innovation in performance optimisation, the system integrates a strategy to cache precomputed responses using a PostgreSQL database, which aids in resource conservation and reduction in query execution latency. The system’s user engagement avenues are further detailed, showcasing a Telegram bot and an API, enhancing accessibility and user experience. In essence, this article illuminates an advanced, efficient dialogue system for physical medicine and rehabilitation, synthesising multiple computational paradigms, and standing as a beacon for healthcare practitioners and students alike.
自然语言驱动的对话系统为物理医学和康复提供支持
本文介绍了一个自然语言驱动的对话系统,旨在为物理医学和康复领域的医护人员和学生提供支持。该系统无缝集成了智能信息系统、数据挖掘、本体论和人机交互等概念,其核心是基于规则的对话机制。该系统利用了基于本体的图式知识的力量,突出了其特定领域的功效。本文深入探讨了自动知识库的形成,利用 Python 脚本将 EBSCO 的物理医学和康复文章数据集转化为 OWL 本体。这种方法确保了对不断发展的医学见解的适应性。该系统的自然语言处理方法包括文本预处理、语义类别识别和 SPARQL 查询创建,提供 26 个预定义类别。作为性能优化方面的一项创新,该系统整合了一种使用 PostgreSQL 数据库缓存预计算响应的策略,这有助于节约资源和减少查询执行延迟。文章还进一步详细介绍了该系统的用户参与途径,展示了 Telegram 机器人和应用程序接口,从而增强了可访问性和用户体验。从本质上讲,这篇文章为物理医学和康复阐明了一种先进、高效的对话系统,综合了多种计算范式,是医疗从业人员和学生的指路明灯。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
South African Computer Journal
South African Computer Journal Social Sciences-Education
CiteScore
1.30
自引率
0.00%
发文量
10
审稿时长
24 weeks
期刊介绍: The South African Computer Journal is specialist ICT academic journal, accredited by the South African Department of Higher Education and Training SACJ publishes research articles, viewpoints and communications in English in Computer Science and Information Systems.
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