Department of Radiology, Key Laboratory of Cancer Prevention and Therapy, Tianjin Medical University Cancer Institute & Hospital, National Clinical Research Center for Cancer, Huan-Hu-Xi Road, Ti-Yuan-Bei, He Xi District, Tianjin , Tianjin, 300060, People's Republic of China.
Artificial Intelligence and Biomedical Image Analysis Lab, School of Engineering, Westlake University, Hangzhou, People's Republic of China.
Eur Radiol. 2023 Jul;33(7):4734-4745. doi: 10.1007/s00330-023-09432-3. Epub 2023 Feb 1.
This study aimed to develop and validate a predicting model for the histologic classification of solid lung lesions based on preoperative contrast-enhanced CT.
A primary dataset of 1012 patients from Tianjin Medical University Cancer Institute and Hospital (TMUCIH) was randomly divided into a development cohort (708) and an internal validation cohort (304). Patients from the Second Hospital of Shanxi Medical University (SHSMU) were set as an external validation cohort (212). Two clinical factors (age, gender) and twenty-one characteristics on contrast-enhanced CT were used to construct a multinomial multivariable logistic regression model for the classification of seven common histologic types of solid lung lesions. The area under the receiver operating characteristic curve was used to assess the diagnostic performance of the model in the development and validation cohorts, separately.
Multivariable analysis showed that two clinical factors and twenty-one characteristics on contrast-enhanced CT were predictive in lung lesion histologic classification. The mean AUC of the proposed model for histologic classification was 0.95, 0.94, and 0.92 in the development, internal validation, and external validation cohort, respectively. When determining the malignancy of lung lesions based on histologic types, the mean AUC of the model was 0.88, 0.86, and 0.90 in three cohorts.
We demonstrated that by utilizing both clinical and CT characteristics on contrast-enhanced CT images, the proposed model could not only effectively stratify histologic types of solid lung lesions, but also enabled accurate assessment of lung lesion malignancy. Such a model has the potential to avoid unnecessary surgery for patients and to guide clinical decision-making for preoperative treatment.
• Clinical and CT characteristics on contrast-enhanced CT could be used to differentiate histologic types of solid lung lesions. • Predicting models using preoperative contrast-enhanced CT could accurately assessment of tumor malignancy based on predicted histologic types.
本研究旨在建立并验证一个基于术前增强 CT 的实性肺病变组织学分类预测模型。
本研究纳入了来自天津医科大学肿瘤医院(TMUCIH)的 1012 例患者的原始数据集,将其随机分为开发队列(708 例)和内部验证队列(304 例)。山西医科大学第二医院(SHSMU)的患者被设为外部验证队列(212 例)。该研究使用两个临床因素(年龄、性别)和 21 个增强 CT 特征来构建一个用于七种常见实性肺病变组织学类型分类的多变量多变量逻辑回归模型。采用受试者工作特征曲线下面积(AUC)评估模型在开发和验证队列中的诊断性能。
多变量分析表明,两个临床因素和增强 CT 上的 21 个特征对肺病变组织学分类具有预测价值。所提出的模型用于组织学分类的平均 AUC 在开发、内部验证和外部验证队列中分别为 0.95、0.94 和 0.92。当根据组织学类型确定肺病变的恶性程度时,模型的平均 AUC 在三个队列中分别为 0.88、0.86 和 0.90。
我们证明,通过利用增强 CT 图像上的临床和 CT 特征,所提出的模型不仅可以有效地对实性肺病变的组织学类型进行分层,还可以准确评估肺病变的恶性程度。该模型有可能避免对患者进行不必要的手术,并为术前治疗的临床决策提供指导。
• 增强 CT 上的临床和 CT 特征可用于区分实性肺病变的组织学类型。
• 使用术前增强 CT 建立的预测模型可以根据预测的组织学类型准确评估肿瘤的恶性程度。