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基于CT影像组学预测支气管哮喘患者临床分期的研究

Study on Predicting Clinical Stage of Patients with Bronchial Asthma Based on CT Radiomics.

作者信息

Chen Xiaodong, Wang Xiangyuan, Huang Shangqing, Luo Wenxuan, Luo Zebin, Chen Zipan

机构信息

Radiology Imaging Center, Affiliated Hospital of Guangdong Medical University, Zhanjiang City, People's Republic of China.

Health Management Center, Affiliated Hospital of Guangdong Medical University, Zhanjiang City, People's Republic of China.

出版信息

J Asthma Allergy. 2024 Mar 27;17:291-303. doi: 10.2147/JAA.S448064. eCollection 2024.

Abstract

OBJECTIVE

To explore the value of a new model based on CT radiomics in predicting the staging of patients with bronchial asthma (BA).

METHODS

Patients with BA from 2018 to 2021 were retrospectively analyzed and underwent plain chest CT before treatment. According to the guidelines for the prevention and treatment of BA (2016 edition), they were divided into two groups: acute attack and non-acute attack. The images were processed as follows: using Lung Kit software for image standardization and segmentation, using AK software for image feature extraction, and using R language for data analysis and model construction (training set: test set = 7: 3). The efficacy and clinical effects of the constructed model were evaluated with ROC curve, sensitivity, specificity, calibration curve and decision curve.

RESULTS

A total of 112 patients with BA were enrolled, including 80 patients with acute attack (range: 2-86 years old, mean: 53.89±17.306 years old, males of 33) and 32 patients with non-acute attack (range: 4-79 years old, mean: 57.38±19.223 years old, males of 18). A total of 10 imaging features are finally retained and used to construct model using multi-factor logical regression method. In the training group, the AUC, sensitivity and specificity of the model was 0.881 (95% CI:0.808-0.955), 0.804 and 0.818, separately; while in the test group, it was 0.792 (95% CI:0.608-0.976), 0.792 and 0.80, respectively.

CONCLUSION

The model constructed based on radiomics has a good effect on predicting the staging of patients with BA, which provides a new method for clinical diagnosis of staging in BA patients.

摘要

目的

探讨基于CT影像组学的新模型在预测支气管哮喘(BA)患者分期中的价值。

方法

回顾性分析2018年至2021年的BA患者,治疗前均行胸部平扫CT。根据《支气管哮喘防治指南(2016年版)》将患者分为两组:急性发作组和非急性发作组。图像处理如下:使用Lung Kit软件进行图像标准化和分割,使用AK软件进行图像特征提取,使用R语言进行数据分析和模型构建(训练集:测试集 = 7:3)。采用ROC曲线、灵敏度、特异度、校准曲线和决策曲线评估构建模型的效能和临床效果。

结果

共纳入112例BA患者,其中急性发作组80例(年龄范围:2 - 86岁,平均:53.89±17.306岁,男性33例),非急性发作组32例(年龄范围:4 - 79岁,平均:57.38±19.223岁,男性18例)。最终保留10个影像特征,采用多因素逻辑回归方法构建模型。在训练组中,模型的AUC、灵敏度和特异度分别为0.881(95%CI:0.808 - 0.955)、0.804和0.818;在测试组中,分别为0.792(95%CI:0.608 - 0.976)、0.792和0.80。

结论

基于影像组学构建的模型对BA患者分期预测效果良好,为BA患者分期的临床诊断提供了新方法。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/9695/10982665/f671994593bb/JAA-17-291-g0001.jpg

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