Han Yi, Mu Su-Cheng, Zhang Hai-Dong, Wei Wei, Wu Xing-Yue, Jin Chao-Yuan, Gu Guo-Rong, Xie Bao-Jun, Tong Chao-Yang
Department of Emergency Medicine, Zhongshan Hospital Fudan University, Shanghai 200032, China.
Department of Radiology, Renmin Hospital of Wuhan University, Wuhan 430060, China.
World J Emerg Med. 2022;13(2):91-97. doi: 10.5847/wjem.j.1920-8642.2022.026.
Computed tomography (CT) is a noninvasive imaging approach to assist the early diagnosis of pneumonia. However, coronavirus disease 2019 (COVID-19) shares similar imaging features with other types of pneumonia, which makes differential diagnosis problematic. Artificial intelligence (AI) has been proven successful in the medical imaging field, which has helped disease identification. However, whether AI can be used to identify the severity of COVID-19 is still underdetermined.
Data were extracted from 140 patients with confirmed COVID-19. The severity of COVID-19 patients (severe vs. non-severe) was defined at admission, according to American Thoracic Society (ATS) guidelines for community-acquired pneumonia (CAP). The AI-CT rating system constructed by Hangzhou YITU Healthcare Technology Co., Ltd. was used as the analysis tool to analyze chest CT images.
A total of 117 diagnosed cases were enrolled, with 40 severe cases and 77 non-severe cases. Severe patients had more dyspnea symptoms on admission (12 vs. 3), higher acute physiology and chronic health evaluation (APACHE) II (9 vs. 4) and sequential organ failure assessment (SOFA) (3 vs. 1) scores, as well as higher CT semiquantitative rating scores (4 vs. 1) and AI-CT rating scores than non-severe patients (<0.001). The AI-CT score was more predictive of the severity of COVID-19 (AUC=0.929), and ground-glass opacity (GGO) was more predictive of further intubation and mechanical ventilation (AUC=0.836). Furthermore, the CT semiquantitative score was linearly associated with the AI-CT rating system (Adj =75.5%, <0.001).
AI technology could be used to evaluate disease severity in COVID-19 patients. Although it could not be considered an independent factor, there was no doubt that GGOs displayed more predictive value for further mechanical ventilation.
计算机断层扫描(CT)是一种辅助肺炎早期诊断的非侵入性成像方法。然而,2019冠状病毒病(COVID-19)与其他类型肺炎具有相似的成像特征,这使得鉴别诊断存在问题。人工智能(AI)已被证明在医学成像领域取得成功,有助于疾病识别。然而,AI是否可用于识别COVID-19的严重程度仍未确定。
从140例确诊的COVID-19患者中提取数据。根据美国胸科学会(ATS)社区获得性肺炎(CAP)指南,在入院时定义COVID-19患者的严重程度(重度与非重度)。使用杭州依图医疗科技有限公司构建的AI-CT评分系统作为分析工具来分析胸部CT图像。
共纳入117例确诊病例,其中重度病例40例,非重度病例77例。重度患者入院时呼吸困难症状更多(12例 vs. 3例),急性生理与慢性健康状况评估(APACHE)II评分(9分 vs. 4分)和序贯器官衰竭评估(SOFA)评分(3分 vs. 1分)更高,CT半定量评分(4分 vs. 1分)和AI-CT评分也高于非重度患者(<0.001)。AI-CT评分对COVID-19严重程度的预测性更强(AUC = 0.929),磨玻璃影(GGO)对进一步插管和机械通气的预测性更强(AUC = 0.836)。此外,CT半定量评分与AI-CT评分系统呈线性相关(调整后R² = = 75.5%,<0.001)。
AI技术可用于评估COVID-19患者的疾病严重程度。虽然它不能被视为一个独立因素,但毫无疑问,GGO对进一步机械通气显示出更大的预测价值。