Department of Medical Imaging, Beijing Jishuitan Hospital Guizhou Hospital, Guizhou Province, China.
Eur Rev Med Pharmacol Sci. 2023 Jun;27(12):5869-5877. doi: 10.26355/eurrev_202306_32826.
The aim of this study was to summarize the computed tomography (CT) chest scanning results of COVID-19 patients, and to assess the value of artificial intelligence (AI) dynamics and quantitative analysis of lesion volume change for the evaluation of the disease outcome.
First chest CT and reexamination imaging data of 84 patients diagnosed with COVID-19 who were treated at Jiangshan Hospital of Guiyang, Guizhou Province from February 4, 2020, to February 22, 2020, were retrospectively analyzed. Distribution, location, and nature of lesions were analyzed according to the characteristics of CT imaging and COVID-19 diagnosis and treatment guidelines. Based on the results of the analysis, patients were divided into the group without abnormal pulmonary imaging, the early group, the rapid progression group, and the dissipation group. AI software was used to dynamically measure the lesion volume in the first examination and in the cases with more than two reexaminations.
There were statistically significant differences in the age of patients between the groups (p<0.01). The first chest CT examination of the lung without abnormal imaging findings mainly occurred in young adults. Early and rapid progression was more common in the elderly, with a median age of 56 years. The ratio of the lesion to the total lung volume was 3.7 (1.4, 5.3) ml 0.1%, 15.4 (4.5, 36.8) ml 0.3%, 115.0 (44.5, 183.3) ml 3.33%, 32.6 (8.7, 98.0) ml 1.22% in the non-imaging group, early group, rapid progression group, and dissipation group, respectively. Pairwise comparison between the four groups was statistically significant (p<0.001). AI measured the total volume of pneumonia lesions and the proportion of the total volume of pneumonia lesions to predict the receiver operating characteristic (ROC) curve from early development to rapid progression, with a sensitivity of 92.10%, 96.83%, specificity of 100%, 80.56%, and the area under the curve of 0.789.
Accurate measurement of lesion volume and volume changes by AI technology is helpful in assessing the severity and development trend of the disease. The increase in the lesion volume proportion indicates that the disease has entered a rapid progression period and is aggravated.
本研究旨在总结 COVID-19 患者的计算机断层扫描(CT)胸部扫描结果,并评估人工智能(AI)对病变体积变化的动态定量分析在评估疾病结局方面的价值。
回顾性分析 2020 年 2 月 4 日至 2020 年 2 月 22 日贵州省贵阳市江山医院收治的 84 例 COVID-19 患者的首次胸部 CT 和复查影像学资料。根据 CT 影像学和 COVID-19 诊断和治疗指南的特点,分析病变的分布、位置和性质。基于分析结果,将患者分为无肺部影像异常组、早期组、快速进展组和消散组。AI 软件用于动态测量首次检查和两次以上复查的病变体积。
各组患者的年龄差异有统计学意义(p<0.01)。无肺部影像学异常的首次胸部 CT 检查主要发生在年轻人中。早期和快速进展在老年人中更为常见,中位年龄为 56 岁。病变与全肺容积的比值分别为 3.7(1.4,5.3)ml 0.1%、15.4(4.5,36.8)ml 0.3%、115.0(44.5,183.3)ml 3.33%、32.6(8.7,98.0)ml 1.22%在无影像学组、早期组、快速进展组和消散组中。四组间两两比较差异均有统计学意义(p<0.001)。AI 测量肺炎病变的总容积和肺炎病变总容积的比例,预测从早期发展到快速进展的受试者工作特征(ROC)曲线,灵敏度分别为 92.10%、96.83%、特异性为 100%、80.56%,曲线下面积为 0.789。
AI 技术准确测量病变体积和体积变化有助于评估疾病的严重程度和发展趋势。病变体积比例的增加表明疾病已进入快速进展期,病情加重。