Development of deep-learning models for a hybrid simulation of auscultation training on standard patients using an ECG-based virtual pathology stethoscope

IF 1.3 4区 工程技术 Q4 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Simulation-Transactions of the Society for Modeling and Simulation International Pub Date : 2023-03-29 DOI:10.1177/00375497231165049
Haben Yhdego, Nahom Kidane, F. McKenzie, M. Audette
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Abstract

Cardiac auscultation (CA), the act of listening to the heart’s sound, is a critical skill that provides valuable information for identifying serious heart diseases. Proficiency in cardiac auscultation requires repeated stethoscope practice and experience in identifying abnormal or irregular cardiac rhythms. However, nowadays, most hospital admissions are short and intensely focused, with fewer opportunities for medical trainees to learn and practice bedside examination skills. It is common practice in many institutions to incorporate standardized patients (SPs) into CA training because these actors are able to represent the patient and convey the symptoms. However, SPs are typically healthy individuals, limiting the kinds of abnormalities that students can hear. In this work, we develop a novel real-time simulation-based method for virtual pathology stethoscope (VPS) detection. The VPS system uses augmented reality (AR) to teach medical students how to perform cardiac examinations by listening to abnormal heart sounds in SPs who are otherwise healthy. A digital stethoscope with two electrodes on the chest piece collects electrocardiogram (ECG) signal data sets from SPs at the four primary auscultation sites. Next, different deep-learning methods are evaluated for classifying the location of the stethoscope by taking advantage of subtle differences in the ECG signals. This study would significantly extend the simulation capabilities of SPs by allowing medical students and trainees to perform realistic CA and hear CA in a clinical environment.
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使用基于心电图的虚拟病理听诊器开发用于标准患者听诊训练混合模拟的深度学习模型
心脏听诊(CA)是一种聆听心脏声音的行为,是一项重要的技能,它为识别严重的心脏病提供了有价值的信息。熟练的心脏听诊需要反复的听诊器练习和识别异常或不规则心律的经验。然而,现在大多数住院时间都很短,而且非常集中,医疗实习生学习和实践床边检查技能的机会很少。在许多机构中,将标准化患者(SPs)纳入CA培训是常见的做法,因为这些参与者能够代表患者并传达症状。然而,SPs通常是健康的个体,限制了学生可以听到的异常类型。在这项工作中,我们开发了一种新的基于实时仿真的虚拟病理听诊器(VPS)检测方法。VPS系统使用增强现实(AR)来教医学生如何通过聆听健康的SPs的异常心音来进行心脏检查。胸片上有两个电极的数字听诊器从四个主要听诊部位的SPs收集心电图(ECG)信号数据集。其次,利用心电信号的细微差异,评估了不同深度学习方法对听诊器位置的分类。通过允许医学生和实习生在临床环境中进行真实的CA和听CA,本研究将显著扩展sp的模拟能力。
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来源期刊
CiteScore
3.50
自引率
31.20%
发文量
60
审稿时长
3 months
期刊介绍: SIMULATION is a peer-reviewed journal, which covers subjects including the modelling and simulation of: computer networking and communications, high performance computers, real-time systems, mobile and intelligent agents, simulation software, and language design, system engineering and design, aerospace, traffic systems, microelectronics, robotics, mechatronics, and air traffic and chemistry, physics, biology, medicine, biomedicine, sociology, and cognition.
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