Hybrid Deep Learning Model For Diagnosis Of Covid-19 Using Ct Scans And Clinical/Demographic Data

Parnian Afshar, Shahin Heidarian, F. Naderkhani, M. Rafiee, A. Oikonomou, K. Plataniotis, Arash Mohammadi
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引用次数: 6

Abstract

The unprecedented COVID-19 pandemic has been remarkably impacting the world and influencing a broad aspect of people’s lives since its first emergence in late 2019. The highly contagious nature of the COVID-19 has raised the necessity of developing deep learning-based diagnostic tools to identify the infected cases in the early stages. Recently, we proposed a fully-automated framework based on Capsule Networks, referred to as the CT-CAPS, to distinguish COVID-19 infection from normal and Community Acquired Pneumonia (CAP) cases using chest Computed Tomography (CT) scans. Although CT scans can provide a comprehensive illustration of the lung abnormalities, COVID-19 lung manifestations highly overlap with the CAP findings making their identification challenging even for experienced radiologists. Here, the CT-CAPS is augmented with a wide range of clinical/demographic data, including patients’ gender, age, weight and symptoms. More specifically, we propose a hybrid deep learning model that utilizes both clinical/demographic data and CT scans to classify COVID-19 and non-COVID cases using a Random Forest Classifier. The proposed hybrid model specifies the most important predictive factors increasing the explainability of the model. The experimental results show that the proposed hybrid model improves the CT-CAPS performance, achieving accuracy of 90.8%, sensitivity of 94.5% and specificity of 86.0%.
使用Ct扫描和临床/人口统计数据诊断Covid-19的混合深度学习模型
自2019年底首次出现以来,前所未有的COVID-19大流行给世界带来了巨大影响,并影响了人们生活的广泛方面。新型冠状病毒感染症(COVID-19)具有高度传染性,因此需要开发基于深度学习的诊断工具,以便在早期阶段识别感染病例。最近,我们提出了一个基于胶囊网络的全自动框架,称为CT- caps,通过胸部计算机断层扫描(CT)来区分COVID-19感染与正常和社区获得性肺炎(CAP)病例。尽管CT扫描可以提供肺部异常的全面说明,但COVID-19肺部表现与CAP发现高度重叠,即使对经验丰富的放射科医生来说,识别它们也很困难。CT-CAPS增加了广泛的临床/人口统计数据,包括患者的性别、年龄、体重和症状。更具体地说,我们提出了一种混合深度学习模型,该模型利用临床/人口统计数据和CT扫描,使用随机森林分类器对COVID-19和非COVID-19病例进行分类。提出的混合模型明确了最重要的预测因素,增加了模型的可解释性。实验结果表明,所提出的混合模型提高了CT-CAPS的性能,准确率为90.8%,灵敏度为94.5%,特异性为86.0%。
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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