Objectives
To verify a differential prediction model based on different lung pathology types utilizing the rimmed sign (RS) and satellite lesion (SL) methods to enhance identification efficiency.
Methods
From January 2015 to October 2023, the clinical data and chest CT images of 3030 patients with lung lesions were analysed. The lesions were divided into three groups: malignant, inflammatory, and benign. The pairwise identification models were constructed separately with (Models1-3) or without (Models1*-3*) rimmed signs and satellite lesions, and the developing and test group were divided by 7:3. Six models were built to distinguish between these groups (Model1 or Model1*: malignant vs. inflammatory; Model2 or Model2*: malignant vs. benign; Model3 or Model3*: inflammatory vs. benign). The curve (AUC) was calculated to evaluate the performance of these models. The Delong test was used to compare the differences between different models.
Results
In the test group, the AUC and Accuracy of Models1-3 and Models1-3* were 0.920/84.8%, 0.990/96.2%, 0.881/76.4%, and 0.900/73.5%, 0.989/90.1%, and 0.869/78.6%, respectively. The Delong test showed no significant difference between Models1-3 and Models1-3* (p > 0.05), Accuracy (T1, T2) > Accuracy (T1*, T2*), Accuracy (T3) < Accuracy (T3*).
Conclusions
The six prediction models in this study effectively differentiated among different types of lung lesions, with the rimmed sign and satellite lesion features improving the accuracy of Model1 and Model2.