Suh et al. evaluated CT radiomics for predicting Spread Through Air Spaces (STAS) in early-stage lung adenocarcinoma using preoperative CT scans. They retrospectively analyzed 521 patients (550 lesions) who underwent surgical resection. To build a predictive model, they extracted radiomics features from CT images using **AVIEW Research** software for semi-automated 3D tumor segmentation, ensuring precision by excluding large vessels and bronchioles. A radiomics score (Rad-score) was developed from selected features and combined with conventional clinical variables (e.g., lesion type, solid portion size) to create a comprehensive prediction model. Results showed that the combined model outperformed conventional clinical models, achieving higher AUC values in predicting STAS, particularly in temporal validation datasets. High Rad-scores were also associated with lower recurrence-free survival, indicating a poorer prognosis. This study highlights radiomics' added predictive value for STAS, with AVIEW aiding in accurate segmentation for robust preoperative assessment and potentially more personalized surgical planning.