Hu Bin, Xia Wei, Piao Sirong, Xiong Ji, Tang Ying, Yu Hong, Tao Guangyu, Sun Linlin, Shen Minhui, Wagh Ajay, Jaykel Timothy J, Zhang Ding, Li Yuxin, Zhu Li
Department of Radiology, Huashan Hospital, Fudan University, Shanghai, China.
Institute of Functional and Molecular Medical Imaging, Fudan University, Shanghai, China.
Transl Lung Cancer Res. 2023 Aug 30;12(8):1790-1801. doi: 10.21037/tlcr-23-389. Epub 2023 Aug 22.
Chest computed tomography (CT) is a critical tool in the diagnosis of pulmonary cryptococcosis as approximately 30% of normal immunity individuals may not exhibit any significant symptoms or laboratory findings. Pulmonary cryptococcosis granuloma and lung adenocarcinoma can appear similar on noncontrast chest CT. This study evaluates the use of an integrated model that was developed based on radiomic features combined with demographic and radiological features to differentiate pulmonary cryptococcosis nodules from lung adenocarcinomas.
Preoperative chest CT images for 215 patients with solid pulmonary nodules with histopathologically confirmed lung adenocarcinoma and cryptococcosis infection were collected from two clinical centers (108 cases in the training set and 107 cases in the test set divided by the different hospitals). Radiomics models were constructed based on nodular lesion volume (LV), 5-mm extended lesion volume (ELV), and perilesion volume (PLV). A demoradiological model was constructed using logistic regression based on demographic information (age, sex) and 12 radiological features (location, number, shape and specific imaging signs). Both models were used to build an integrated model, the performance of which was assessed using the test set. A junior and a senior radiologist evaluated the nodules. Receiver operating characteristic (ROC) curve analysis was conducted, and areas under the curve (AUCs), sensitivity (SEN), and specificity (SPE) of the models were calculated and compared.
Among the radiomics models, AUCs of the LV, ELV, and PLV were 0.558, 0.757, and 0.470, respectively. Age, lesion number, and lobular sign were identified as independent discriminative features providing an AUC of 0.77 in the demoradiological model (SEN 0.815, SPE 0.642). The integrated model achieved the highest AUC of 0.801 (SEN 0.759, SPE 0.755), which was significantly higher than that obtained by a junior radiologist (AUC =0.689, P=0.024) but showed no significant difference from that of the senior radiologist (AUC =0.784, P=0.388).
An integrated model with radiomics and demoradiological features improves discrimination of cryptococcosis granulomas from solid adenocarcinomas on noncontrast CT. This model may be an effective strategy for machine complementation to discrimination by radiologists, and whole-lung automated recognition methods might dominate in the future.
胸部计算机断层扫描(CT)是诊断肺隐球菌病的关键工具,因为约30%免疫功能正常的个体可能没有任何明显症状或实验室检查结果。肺隐球菌病肉芽肿和肺腺癌在非增强胸部CT上可能表现相似。本研究评估了一种基于影像组学特征结合人口统计学和放射学特征开发的综合模型,用于区分肺隐球菌病结节和肺腺癌。
从两个临床中心收集了215例经组织病理学证实为肺腺癌和隐球菌感染的实性肺结节患者的术前胸部CT图像(训练集108例,测试集107例,按不同医院划分)。基于结节病变体积(LV)、5毫米扩展病变体积(ELV)和病变周围体积(PLV)构建影像组学模型。使用基于人口统计学信息(年龄、性别)和12个放射学特征(位置、数量、形状和特定影像征象)的逻辑回归构建人口统计学放射学模型。两个模型都用于构建综合模型,并使用测试集评估其性能。一名初级和一名高级放射科医生对结节进行评估。进行受试者操作特征(ROC)曲线分析,计算并比较模型的曲线下面积(AUC)、灵敏度(SEN)和特异度(SPE)。
在影像组学模型中,LV、ELV和PLV的AUC分别为0.558、0.757和0.470。年龄、病变数量和小叶征被确定为独立的鉴别特征,在人口统计学放射学模型中的AUC为0.77(SEN 0.815,SPE 0.642)。综合模型的AUC最高,为0.801(SEN 0.759,SPE 0.755),显著高于初级放射科医生的结果(AUC =0.689,P=0.024),但与高级放射科医生的结果无显著差异(AUC =0.784,P=0.388)。
具有影像组学和人口统计学放射学特征的综合模型可提高非增强CT上隐球菌病肉芽肿与实性腺癌的鉴别能力。该模型可能是一种有效的机器辅助策略,可辅助放射科医生进行鉴别,未来全肺自动识别方法可能占据主导地位。