Significant work has been done towards deep learning (DL) models for automatic lung and lesion segmentation and classification of COVID-19 on chest CT data. However, comprehensive visualization systems focused on supporting the dual visual+DL diagnosis of COVID-19 are non-existent. We present COVID-view, a visualization application specially tailored for radiologists to diagnose COVID-19 from chest CT data. The system incorporates a complete pipeline of automatic lungs segmentation, localization/ isolation of lung abnormalities, followed by visualization, visual and DL analysis, and measurement/quantification tools. Our system combines the traditional 2D workflow of radiologists with newer 2D and 3D visualization techniques with DL support for a more comprehensive diagnosis. COVID-view incorporates a novel DL model for classifying the patients into positive/negative COVID-19 cases, which acts as a reading aid for the radiologist using COVID-view and provides the attention heatmap as an explainable DL for the model output. We designed and evaluated COVID-view through suggestions, close feedback and conducting case studies of real-world patient data by expert radiologists who have substantial experience diagnosing chest CT scans for COVID-19, pulmonary embolism, and other forms of lung infections. We present requirements and task analysis for the diagnosis of COVID-19 that motivate our design choices and results in a practical system which is capable of handling real-world patient cases.
翻译:在胸腔CT数据方面,对COVID-19的自动肺部和损伤分解和分类(DL)模型进行了深入学习(DL)模型;然而,没有综合性可视化系统,侧重于支持对COVID-19的双视+DL诊断;我们提供了COVID视图,这是专门为放射学家设计的用于从胸腔CT数据中诊断COVID-19案例的可视化应用软件;该系统包含一个完整的自动肺分解管道、肺异常地方化/隔离,随后是可视化选择、视觉和DL分析以及测量/量化工具;我们的系统将射线师传统的2D工作流程与新2D和3D视觉化技术结合起来,支持对COVID-19的双重视觉诊断;我们提供了一个新的DL模型,用于利用COVID视图对射线师进行阅读帮助,为模型输出提供我们关注度DL进行解释;我们设计和评价了CVID-D的传统的2D工作流程和3D可视化技术与D对更全面诊断的支持;CVID的观点包括了将病人分为真实/NVD的档案分析,通过实际的档案分析,并进行CRisal-cal-Cx的样本分析。