Furlan Raffaello, Gatti Mauro, Menè Roberto, Shiffer Dana, Marchiori Chiara, Giaj Levra Alessandro, Saturnino Vincenzo, Brunetta Enrico, Dipaola Franca
Department of Biomedical Sciences, Humanitas University, Pieve Emanuele, Milan, Italy.
Internal Medicine, Humanitas Clinical and Research Center, IRCCS, Rozzano, Milan, Italy.
JMIR Med Inform. 2021 Apr 9;9(4):e24073. doi: 10.2196/24073.
Shortage of human resources, increasing educational costs, and the need to keep social distances in response to the COVID-19 worldwide outbreak have prompted the necessity of clinical training methods designed for distance learning. Virtual patient simulators (VPSs) may partially meet these needs. Natural language processing (NLP) and intelligent tutoring systems (ITSs) may further enhance the educational impact of these simulators.
The goal of this study was to develop a VPS for clinical diagnostic reasoning that integrates interaction in natural language and an ITS. We also aimed to provide preliminary results of a short-term learning test administered on undergraduate students after use of the simulator.
We trained a Siamese long short-term memory network for anamnesis and NLP algorithms combined with Systematized Nomenclature of Medicine (SNOMED) ontology for diagnostic hypothesis generation. The ITS was structured on the concepts of knowledge, assessment, and learner models. To assess short-term learning changes, 15 undergraduate medical students underwent two identical tests, composed of multiple-choice questions, before and after performing a simulation by the virtual simulator. The test was made up of 22 questions; 11 of these were core questions that were specifically designed to evaluate clinical knowledge related to the simulated case.
We developed a VPS called Hepius that allows students to gather clinical information from the patient's medical history, physical exam, and investigations and allows them to formulate a differential diagnosis by using natural language. Hepius is also an ITS that provides real-time step-by-step feedback to the student and suggests specific topics the student has to review to fill in potential knowledge gaps. Results from the short-term learning test showed an increase in both mean test score (P<.001) and mean score for core questions (P<.001) when comparing presimulation and postsimulation performance.
By combining ITS and NLP technologies, Hepius may provide medical undergraduate students with a learning tool for training them in diagnostic reasoning. This may be particularly useful in a setting where students have restricted access to clinical wards, as is happening during the COVID-19 pandemic in many countries worldwide.
人力资源短缺、教育成本不断增加,以及为应对全球新冠疫情而保持社交距离的需求,促使人们需要设计适用于远程学习的临床培训方法。虚拟病人模拟器(VPS)可能部分满足这些需求。自然语言处理(NLP)和智能辅导系统(ITS)可能会进一步增强这些模拟器的教育效果。
本研究的目的是开发一种用于临床诊断推理的VPS,该VPS整合了自然语言交互和ITS。我们还旨在提供使用该模拟器后对本科生进行的短期学习测试的初步结果。
我们训练了一个用于问诊的连体长短时记忆网络,并将NLP算法与医学系统命名法(SNOMED)本体相结合,用于生成诊断假设。ITS基于知识、评估和学习者模型的概念构建。为了评估短期学习变化,15名本科医学生在通过虚拟模拟器进行模拟之前和之后,接受了两次相同的测试,测试由多项选择题组成。该测试由22个问题组成;其中11个是核心问题,专门设计用于评估与模拟病例相关的临床知识。
我们开发了一个名为Hepius的VPS,它允许学生从患者的病史、体格检查和检查中收集临床信息,并允许他们使用自然语言制定鉴别诊断。Hepius也是一个ITS,它为学生提供实时的逐步反馈,并建议学生必须复习的特定主题,以填补潜在的知识空白。短期学习测试的结果显示,与模拟前和模拟后的表现相比,平均测试分数(P<.001)和核心问题的平均分数(P<.001)均有所提高。
通过结合ITS和NLP技术,Hepius可能为医学本科生提供一种用于训练他们诊断推理的学习工具。在许多国家新冠疫情期间,学生进入临床病房受到限制的情况下,这可能特别有用。