Ho Thao Thi, Park Jongmin, Kim Taewoo, Park Byunggeon, Lee Jaehee, Kim Jin Young, Kim Ki Beom, Choi Sooyoung, Kim Young Hwan, Lim Jae-Kwang, Choi Sanghun
School of Mechanical Engineering, Kyungpook National University, Daegu, Republic of Korea.
Department of Radiology, School of Medicine, Kyungpook National University, Daegu, Republic of Korea.
JMIR Med Inform. 2021 Jan 28;9(1):e24973. doi: 10.2196/24973.
Many COVID-19 patients rapidly progress to respiratory failure with a broad range of severities. Identification of high-risk cases is critical for early intervention.
The aim of this study is to develop deep learning models that can rapidly identify high-risk COVID-19 patients based on computed tomography (CT) images and clinical data.
We analyzed 297 COVID-19 patients from five hospitals in Daegu, South Korea. A mixed artificial convolutional neural network (ACNN) model, combining an artificial neural network for clinical data and a convolutional neural network for 3D CT imaging data, was developed to classify these cases as either high risk of severe progression (ie, event) or low risk (ie, event-free).
Using the mixed ACNN model, we were able to obtain high classification performance using novel coronavirus pneumonia lesion images (ie, 93.9% accuracy, 80.8% sensitivity, 96.9% specificity, and 0.916 area under the curve [AUC] score) and lung segmentation images (ie, 94.3% accuracy, 74.7% sensitivity, 95.9% specificity, and 0.928 AUC score) for event versus event-free groups.
Our study successfully differentiated high-risk cases among COVID-19 patients using imaging and clinical features. The developed model can be used as a predictive tool for interventions in aggressive therapies.
许多新冠肺炎患者会迅速发展为严重程度各异的呼吸衰竭。识别高危病例对于早期干预至关重要。
本研究旨在开发深度学习模型,以基于计算机断层扫描(CT)图像和临床数据快速识别高危新冠肺炎患者。
我们分析了来自韩国大邱市五家医院的297例新冠肺炎患者。开发了一种混合人工卷积神经网络(ACNN)模型,该模型将用于临床数据的人工神经网络和用于三维CT成像数据的卷积神经网络相结合,以将这些病例分类为严重进展的高风险(即事件)或低风险(即无事件)。
使用混合ACNN模型,我们能够通过新型冠状病毒肺炎病变图像(即准确率93.9%、灵敏度80.8%、特异度96.9%以及曲线下面积[AUC]评分为0.916)和肺分割图像(即准确率94.3%、灵敏度74.7%、特异度95.9%以及AUC评分为0.928)在事件组与无事件组之间获得较高的分类性能。
我们的研究利用影像学和临床特征成功区分了新冠肺炎患者中的高危病例。所开发的模型可作为积极治疗干预的预测工具。