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基于 CT 放射组学预测潜在的严重新型冠状病毒病 2019 患者:一项回顾性研究。

Prediction of potential severe coronavirus disease 2019 patients based on CT radiomics: A retrospective study.

机构信息

Department of Radiology, Zhongnan Hospital of Wuhan University, Wuhan, China.

GE Healthcare, Shanghai, China.

出版信息

Med Phys. 2022 Sep;49(9):5886-5898. doi: 10.1002/mp.15841. Epub 2022 Jul 28.

Abstract

PURPOSE

Coronavirus disease 2019 (COVID-19) is a recently declared worldwide pandemic. Triaging of patients into severe and non-severe could further help in targeted management. "Potential severe patients" is a category of patients who did not have severe symptoms at their initial diagnosis, but eventually progressed to be severe patients and are easily overlooked in the early stage. This work aimed to develop and evaluate a CT-based radiomics signature for the prediction of these potential severe COVID-19 patients.

METHODS

One hundred fifty COVID-19 patients were enrolled and randomly divided into cross-validation and independent test sets. First, their clinical characteristics were screened using the univariate and multivariate logistic regression step by step. Then, radiomics features were extracted from the lesions on their chest CT images. Subsequently, the inter- and intra-class correlation coefficients (ICC) analysis, minimum-redundancy maximum-relevance (mRMR) selection, and the least absolute shrinkage and selection operator (LASSO) algorithm were used step by step for feature selection and construction of a radiomics signature. Finally, the screened clinical risk factors and constructed radiomics signature were combined for the combined model and Radiomics+Clinics nomogram construction. The predictive performance of the Radiomics and Combined models were evaluated and compared using receiver operating characteristic curve (ROC) analysis, Hosmer-Lemeshow test and Delong test.

RESULTS

Clinical characteristics analysis resulted in the screening of five clinical risk factors. The combination of ICC, mRMR, and LASSO methods resulted in the selection of ten radiomics features, which made up of the radiomics signature. The differences in the radiomics signature between the potential severe and non-severe groups in cross-validation set and test sets were both p < 0.001. All Radiomics and Combined models showed a very good predictive performance with the accuracy and AUC of nearly or above 0.9. Additionally, we found no significant difference in the predictive performance between these two models.

CONCLUSIONS

A CT-based radiomics signature for the prediction of potential severe COVID-19 patients was constructed and evaluated. Constructed Radiomics and Combined model showed good feasibility and accuracy. The Radiomics+Clinical nomogram, acted as a useful tool, may assist clinicians to better identify potential severe cases to target their management in the COVID-19 pandemic prevention and control.

摘要

目的

新型冠状病毒病 2019(COVID-19)是一种最近宣布的全球大流行疾病。对患者进行严重程度和非严重程度的分诊可以进一步帮助进行有针对性的管理。“潜在严重患者”是一类在初始诊断时没有严重症状,但最终发展为严重患者的患者,在早期很容易被忽视。本研究旨在开发和评估一种基于 CT 的放射组学特征,用于预测这些潜在的严重 COVID-19 患者。

方法

纳入了 150 例 COVID-19 患者,并将其随机分为交叉验证集和独立测试集。首先,使用单变量和多变量逻辑回归逐步筛选他们的临床特征。然后,从他们胸部 CT 图像上的病变中提取放射组学特征。随后,逐步进行组内和组间相关系数(ICC)分析、最小冗余最大相关性(mRMR)选择和最小绝对收缩和选择算子(LASSO)算法,以进行特征选择和构建放射组学特征。最后,将筛选出的临床危险因素和构建的放射组学特征结合起来,构建联合模型和放射组学+临床列线图。使用接受者操作特征曲线(ROC)分析、Hosmer-Lemeshow 检验和 Delong 检验来评估和比较放射组学和联合模型的预测性能。

结果

临床特征分析筛选出 5 个临床危险因素。ICC、mRMR 和 LASSO 方法的结合筛选出了 10 个放射组学特征,这些特征构成了放射组学特征。在交叉验证集和测试集中,潜在严重组和非严重组之间的放射组学特征差异均 p < 0.001。所有放射组学和联合模型均表现出非常好的预测性能,准确率和 AUC 均接近或高于 0.9。此外,我们发现这两种模型的预测性能没有显著差异。

结论

构建并评估了一种基于 CT 的放射组学特征,用于预测潜在严重 COVID-19 患者。构建的放射组学和联合模型具有良好的可行性和准确性。放射组学+临床列线图作为一种有用的工具,可帮助临床医生更好地识别潜在的严重病例,以便在 COVID-19 大流行的防控中对其进行针对性管理。

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