Kong Weiheng, Liu Yujia, Li Wang, Yang Keyi, Yu Lixin, Jiao Guangyu
Department of Pulmonary and Critical Care Medicine, Shengjing Hospital of China Medical University, Shenyang, China.
College of Traditional Chinese Medicine, Liaoning University of Traditional Chinese Medicine, Shenyang, China.
Front Microbiol. 2024 Nov 6;15:1495432. doi: 10.3389/fmicb.2024.1495432. eCollection 2024.
By extracting early chest CT radiomic features of COVID-19 patients, we explored their correlation with laboratory indicators and oxygenation index (PaO/FiO), thereby developed an Artificial Intelligence (AI) model based on radiomic features to predict the deterioration of oxygenation function in COVID-19 patients.
This retrospective study included 384 patients with COVID-19, whose baseline information, laboratory indicators, oxygenation-related parameters, and non-enhanced chest CT images were collected. Utilizing the PaO/FiO stratification proposed by the Berlin criteria, patients were divided into 4 groups, and differences in laboratory indicators among these groups were compared. Radiomic features were extracted, and their correlations with laboratory indicators and the PaO/FiO were analyzed, respectively. Finally, an AI model was developed using the PaO/FiO threshold of less than 200 mmHg as the label, and the model's performance was assessed using the area under the receiver operating characteristic curve (AUC), sensitivity and specificity. Group datas comparison was analyzed using SPSS software, and radiomic features were extracted using Python-based Pyradiomics.
There were no statistically significant differences in baseline characteristics among the groups. Radiomic features showed differences in all 4 groups, while the differences in laboratory indicators were inconsistent, with some PaO/FiO groups showed differences and others not. Regardless of whether laboratory indicators demonstrated differences across different PaO/FiO groups, they could all be captured by radiomic features. Consequently, we chose radiomic features as variables to establish an AI model based on chest CT radiomic features. On the training set, the model achieved an AUC of 0.8137 (95% CI [0.7631-0.8612]), accuracy of 0.7249, sensitivity of 0.6626 and specificity of 0.8208. On the validation set, the model achieved an AUC of 0.8273 (95% CI [0.7475-0.9005]), accuracy of 0.7739, sensitivity of 0.7429 and specificity of 0.8222.
This study found that the early chest CT radiomic features of COVID-19 patients are strongly associated not only with early laboratory indicators but also with the lowest PaO/FiO. Consequently, we developed an AI model based on CT radiomic features to predict deterioration in oxygenation function, which can provide a reliable basis for further clinical management and treatment.
通过提取新型冠状病毒肺炎(COVID-19)患者早期胸部CT的影像组学特征,探讨其与实验室指标及氧合指数(PaO₂/FiO₂)的相关性,进而构建基于影像组学特征的人工智能(AI)模型,以预测COVID-19患者氧合功能恶化情况。
本回顾性研究纳入384例COVID-19患者,收集其基线信息、实验室指标、氧合相关参数及胸部平扫CT图像。根据柏林标准提出的PaO₂/FiO₂分层,将患者分为4组,比较各组实验室指标差异。提取影像组学特征,并分别分析其与实验室指标及PaO₂/FiO₂的相关性。最后,以PaO₂/FiO₂阈值小于200 mmHg作为标签构建AI模型,采用受试者操作特征曲线下面积(AUC)、灵敏度和特异度评估模型性能。采用SPSS软件分析组间数据比较,基于Python的Pyradiomics提取影像组学特征。
各组基线特征无统计学差异。影像组学特征在4组中均有差异,而实验室指标差异不一致,部分PaO₂/FiO₂组有差异,部分无差异。无论不同PaO₂/FiO₂组间实验室指标是否有差异,均可被影像组学特征捕捉。因此,我们选择影像组学特征作为变量,构建基于胸部CT影像组学特征的AI模型。在训练集上,模型的AUC为0.8137(95%CI[0.7631 - 0.8612]),准确率为0.7249,灵敏度为0.6626,特异度为0.8208。在验证集上,模型的AUC为0.8273(95%CI[0.7475 - 0.9005]),准确率为0.7739,灵敏度为0.7429,特异度为0.8222。
本研究发现,COVID-19患者早期胸部CT影像组学特征不仅与早期实验室指标密切相关,还与最低PaO₂/FiO₂密切相关。因此,我们构建了基于CT影像组学特征的AI模型来预测氧合功能恶化情况,可为进一步的临床管理和治疗提供可靠依据。