Hernández Santa Cruz Jose Francisco
Independent Researcher, Jr. Chardin 162 San Borja, Lima, 15037, Peru.
Intell Based Med. 2021;5:100027. doi: 10.1016/j.ibmed.2021.100027. Epub 2021 Feb 18.
The novel coronavirus outbreak of 2019 reached pandemic status in March 2020. Since then, many countries have joined efforts to fight the COVID-19 pandemic. A central task for governments is the rapid and effective identification of COVID-19 positive patients. While many molecular tests currently exist, not all hospitals have immediate access to these. However, CT scans, which are readily available at most hospitals, offer an additional method to diagnose COVID-19. As a result, hospitals lacking molecular tests can benefit from it as a way of mitigating said shortage. Furthermore, radiologists have come to achieve accuracy levels over 80% on identifying COVID-19 cases by CT scan image analysis. This paper adds to the existing literature a model based on ensemble methods and 2-stage transfer learning to detect COVID-19 cases based on CT scan images, relying on a simple architecture, yet complex enough model definition, to attain a competitive performance. The proposed model achieved an accuracy of 86.70%, an F1 score of 85.86% and an AUC of 90.82%, proving capable of assisting radiologists with COVID-19 diagnosis. Code developed for this research can be found in the following repository: https://github.com/josehernandezsc/COVID19Net.
2019年新型冠状病毒爆发于2020年3月达到大流行状态。自那时以来,许多国家共同努力抗击新冠疫情。政府的一项核心任务是快速有效地识别新冠病毒检测呈阳性的患者。虽然目前有许多分子检测方法,但并非所有医院都能立即获得这些检测手段。然而,大多数医院都具备的CT扫描提供了另一种诊断新冠病毒的方法。因此,缺乏分子检测手段的医院可以从中受益,以此缓解检测手段短缺的问题。此外,放射科医生通过CT扫描图像分析识别新冠病例的准确率已超过80%。本文在现有文献的基础上增加了一种基于集成方法和两阶段迁移学习的模型,用于基于CT扫描图像检测新冠病例,该模型依赖于一个简单的架构,但模型定义足够复杂,以实现具有竞争力的性能。所提出的模型准确率达到86.70%,F1分数为85.86%,AUC为90.82%,证明能够协助放射科医生进行新冠病毒诊断。本研究开发的代码可在以下存储库中找到:https://github.com/josehernandezsc/COVID19Net。