Uthoff Johanna, Nagpal Prashant, Sanchez Rolando, Gross Thomas J, Lee Changhyun, Sieren Jessica C
Department of Biomedical Engineering, University of Iowa, Iowa City, IA, USA.
Department of Radiology, University of Iowa Hospitals and Clinics, Iowa City, IA, USA.
Transl Lung Cancer Res. 2019 Dec;8(6):979-988. doi: 10.21037/tlcr.2019.12.19.
Histoplasmosis pulmonary nodules often present in computed tomography (CT) imaging with characteristics suspicious for lung cancer. This presents a work-up decision issue for clinicians in regions where histoplasmosis is an endemic fungal infection, when a nodule suspicious for lung cancer is detected. We hypothesize the application of radiomic features extracted from pulmonary nodules and perinodular parenchyma could accurately distinguish between suspicious histoplasmosis lung nodules and non-small cell lung cancer (NSCLC).
A retrospective clinical cohort of pulmonary nodules with a confirmed diagnosis of histoplasmosis or NSCLC was collected from the University of Iowa Hospitals and Clincs. Radiomic features were extracted describing characteristics of the nodule and perinodular parenchyma regions and used to build a machine learning tool. These cases were assessed by four expert clinicians who gave a blinded risk prediction for NSCLC. Tool and observer performance were assessed by calculating the area under the curve for the receiver operating characteristic (AUC-ROC) and interclass correlation coefficient (ICC).
A cohort of 71 subjects with confirmed histopathology (40 NSCLC, 31 histoplasmosis) were case-matched based on age, sex, and smoking history. Superior performance (AUC-ROC =0.89) was demonstrated using leave-one-subject out validation in the tool that incorporated radiomics from the nodule and perinodular parenchyma region extended to 100% nodule diameter. Observers had perfect intra-repeatability (ICC =1.0) and demonstrated fair inter-reader variability (ICC =0.52).
Radiomics have potential utility in the challenging task of differentiation between lung cancer and histoplasmosis. Expert clinician readers have high intra-repeatability but demonstrated inter-reader variability which could provide context for a supplemental radiomics-based tool.
组织胞浆菌病肺结节在计算机断层扫描(CT)成像中常表现出疑似肺癌的特征。在组织胞浆菌病为地方性真菌感染的地区,当检测到疑似肺癌的结节时,这给临床医生带来了检查决策问题。我们假设从肺结节和结节周围实质中提取的放射组学特征能够准确区分疑似组织胞浆菌病的肺结节和非小细胞肺癌(NSCLC)。
从爱荷华大学医院和诊所收集了一组经确诊为组织胞浆菌病或NSCLC的肺结节回顾性临床队列。提取描述结节和结节周围实质区域特征的放射组学特征,并用于构建机器学习工具。由四位专家临床医生对这些病例进行评估,他们对NSCLC进行了盲法风险预测。通过计算受试者工作特征曲线下面积(AUC-ROC)和组内相关系数(ICC)来评估工具和观察者的性能。
根据年龄、性别和吸烟史对71名经组织病理学确诊的受试者(40例NSCLC,31例组织胞浆菌病)进行病例匹配。在纳入从结节和结节周围实质区域扩展至100%结节直径的放射组学的工具中,采用留一法验证显示出卓越的性能(AUC-ROC =0.89)。观察者具有完美的组内重复性(ICC =1.0),但组间变异性一般(ICC =0.52)。
放射组学在区分肺癌和组织胞浆菌病这一具有挑战性的任务中具有潜在应用价值。专家临床医生读者具有较高的组内重复性,但表现出组间变异性,这可为基于放射组学的补充工具提供背景信息。