Artificial intelligence in virtual standardized patients: Combining natural language understanding and rule based dialogue management to improve conversational fidelity

计算机科学 忠诚 高保真 分类器(UML) 人工智能 自然语言 自然语言理解 专家系统 自然语言处理 人机交互 工程类 电信 电气工程
作者
Kellen Maicher,Adam Stiff,MD Scholl,Michael White,Eric Fosler‐Lussier,William Schuler,Prashant Serai,Vishal Sunder,Hannah Forrestal,Lexi Mendella,Mahsa Adib,Camille Bratton,Kevin Lee,Douglas R. Danforth
出处
期刊:Medical Teacher [Informa]
卷期号:45 (3): 279-285 被引量:8
标识
DOI:10.1080/0142159x.2022.2130216
摘要

Introduction Advances in natural language understanding have facilitated the development of Virtual Standardized Patients (VSPs) that may soon rival human patients in conversational ability. We describe herein the development of an artificial intelligence (AI) system for VSPs enabling students to practice their history taking skills.Methods Our system consists of (1) Automated Speech Recognition (ASR), (2) hybrid AI for question identification, (3) classifier to choose between the two systems, and (4) automated speech generation. We analyzed the accuracy of the ASR, the two AI systems, the classifier, and student feedback with 620 first year medical students from 2018 to 2021.Results System accuracy improved from ∼75% in 2018 to ∼90% in 2021 as refinements in algorithms and additional training data were utilized. Student feedback was positive, and most students felt that practicing with the VSPs was a worthwhile experience.Conclusion We have developed a novel hybrid dialogue system that enables artificially intelligent VSPs to correctly answer student questions at levels comparable with human SPs. This system allows trainees to practice and refine their history-taking skills before interacting with human patients.
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