“…However, the traditional imaging modalities for judging benign and malignant nodules are greatly influenced by the subjective impact of the diagnostic physician, and when the nodules are too small or the imaging characteristics are not obvious, the diagnostic accuracy will significantly decrease. Several studies have shown that compared to traditional CT signs, radiomics has a higher accuracy in differentiating benign and malignant GGNs and predicting the pathological classification of GGN-type lung adenocarcinoma ( 7 , 9 ). In this study, a computer-based model was established to analyze GGNs to predict the invasion and instability of GGN-type lung adenocarcinoma.…”