Machine learning-based prediction of invasiveness in lung adenocarcinoma presenting as ground-glass nodules using radiomics and clinical CT features
Mingzhi Lin, Longqian Li, Yiming Hui, Bin Li, Yue Li, ChongRui Li, Zhizhong Zheng, Zhuowen Yang

TL;DR
This study uses machine learning with CT scans and clinical data to predict the invasiveness of lung cancer nodules, improving preoperative decision-making.
Contribution
A novel machine learning framework combining radiomics and clinical CT features to predict lung adenocarcinoma invasiveness in ground-glass nodules.
Findings
The Random Forest model achieved an AUC of 0.854 in training and 0.778 in external validation for predicting invasiveness.
PCA-derived radiomic components and clinical CT features were key predictors in the best-performing model.
The model outperformed clinical-only and LASSO-based radiomics models in predictive accuracy.
Abstract
Lung adenocarcinoma(LA), the predominant histological subtype of lung cancer, frequently manifests as ground-glass nodules (GGNs) on computed tomography. Preoperative discrimination of invasiveness—critical for guiding surgical and therapeutic decisions—remains challenging due to subjective radiological assessment and limited sensitivity of conventional methods. This multicenter study aimed to develop a robust, non-invasive predictive framework integrating radiomics and clinical CT features using machine learning (ML) to stratify GGN-associated LA invasiveness. A retrospective dual-cohort analysis was conducted on 357 patients with pathologically confirmed LA. The primary cohort (n = 312) was randomly divided into a training cohort (n = 249) and a test cohort (n = 63) at an 8:2 ratio. The external validation cohort consisted of 45 patients. Radiomics features (n = 1129) were extracted…
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Taxonomy
TopicsRadiomics and Machine Learning in Medical Imaging · Lung Cancer Diagnosis and Treatment · Advanced X-ray and CT Imaging
