Ryu Semin, Kim Seung-Chan, Won Dong-Ok, Bang Chang Seok, Koh Jeong-Hwan, Jeong In Cheol
School of Artificial Intelligence Convergence, Hallym University, Chuncheon, South Korea.
Department of Sport Interaction Science, Sungkyunkwan University, Suwon, South Korea.
Front Physiol. 2022 Feb 14;13:825612. doi: 10.3389/fphys.2022.825612. eCollection 2022.
Disease symptoms often contain features that are not routinely recognized by patients but can be identified through indirect inspection or diagnosis by medical professionals. Telemedicine requires sufficient information for aiding doctors' diagnosis, and it has been primarily achieved by clinical decision support systems (CDSSs) utilizing visual information. However, additional medical diagnostic tools are needed for improving CDSSs. Moreover, since the COVID-19 pandemic, telemedicine has garnered increasing attention, and basic diagnostic tools (e.g., classical examination) have become the most important components of a comprehensive framework. This study proposes a conceptual system, iApp, that can collect and analyze quantified data based on an automatically performed inspection, auscultation, percussion, and palpation. The proposed iApp system consists of an auscultation sensor, camera for inspection, and custom-built hardware for automatic percussion and palpation. Experiments were designed to categorize the eight abdominal divisions of healthy subjects based on the system multi-modal data. A deep multi-modal learning model, yielding a single prediction from multi-modal inputs, was designed for learning distinctive features in eight abdominal divisions. The model's performance was evaluated in terms of the classification accuracy, sensitivity, positive predictive value, and F-measure, using epoch-wise and subject-wise methods. The results demonstrate that the iApp system can successfully categorize abdominal divisions, with the test accuracy of 89.46%. Through an automatic examination of the iApp system, this proof-of-concept study demonstrates a sophisticated classification by extracting distinct features of different abdominal divisions where different organs are located. In the future, we intend to capture the distinct features between normal and abnormal tissues while securing patient data and demonstrate the feasibility of a fully telediagnostic system that can support abnormality diagnosis.
疾病症状通常包含患者无法常规识别的特征,但可通过医学专业人员的间接检查或诊断来识别。远程医疗需要足够的信息来辅助医生诊断,这主要通过利用视觉信息的临床决策支持系统(CDSS)来实现。然而,需要额外的医学诊断工具来改进CDSS。此外,自新冠疫情以来,远程医疗受到越来越多的关注,基本诊断工具(如传统检查)已成为综合框架的最重要组成部分。本研究提出了一个概念系统iApp,它可以基于自动进行的视诊、听诊、叩诊和触诊来收集和分析量化数据。所提出的iApp系统由一个听诊传感器、用于视诊的摄像头以及用于自动叩诊和触诊的定制硬件组成。实验旨在根据该系统的多模态数据对健康受试者的八个腹部区域进行分类。设计了一种深度多模态学习模型,该模型从多模态输入中产生单一预测,用于学习八个腹部区域的独特特征。使用逐轮和逐受试者的方法,从分类准确率、灵敏度、阳性预测值和F值等方面对该模型的性能进行了评估。结果表明,iApp系统能够成功地对腹部区域进行分类,测试准确率为89.46%。通过iApp系统的自动检查,这项概念验证研究通过提取不同腹部区域(不同器官所在位置)的独特特征展示了一种精细的分类方法。未来,我们打算在保护患者数据的同时捕捉正常组织和异常组织之间的独特特征,并证明一个能够支持异常诊断的完全远程诊断系统的可行性。