%0 Journal Article
%A Sun, Yuanxin
%A Dong, Hao
%A Jin, Weiqiu
%A Xuan, Haoxiang
%A Yuan, Zheng
%A Käsmann, Lukas
%A Shen, Leilei
%A Wang, Tingting
%A Ye, Xiaodan
%A Zeng, Mengsu
%T Enhancing the intraoperative identification of high-grade patterns in invasive lung adenocarcinoma via radiomics.
%J Translational Lung Cancer Research
%V 14
%N 6
%@ 2218-6751
%C [Erscheinungsort nicht ermittelbar]
%I [Verlag nicht ermittelbar]
%M DKFZ-2025-01433
%P 2145 - 2158
%D 2025
%X High-grade patterns (HGPs) are important for surgical decision-making in patients with invasive lung adenocarcinoma (IAC), but the sensitivity of intraoperative frozen section (FS) is not high. Radiomics has the potential to improve the sensitivity of intraoperative detection. The purpose of the present study was to evaluate the value of combining radiomics with FS analysis for predicting HGPs in patients with clinical T1 (cT1) IAC.Data from a total of 490 patients who were surgically diagnosed with IAC from January 2019 to April 2019 were retrospectively analyzed; the patients were randomly divided into a training set (n=392) and a test set (n=98). The presence of HGPs (micropapillary, solid, and complex glandular patterns) was evaluated according to the final pathology (FP). Radiomics features were extracted from thin-slice computed tomography (CT) images, and feature selection was performed via the mutual information method and least absolute shrinkage and selection operator regression algorithm. The radiomics (R), FS, and radiomics-frozen section (R-FS) models were established to predict the presence of HGPs in FP. The area under the receiver operating characteristic (ROC) curve, the precision-recall curve, the calibration curve, and decision curve analysis were used to evaluate model performances. The permutation importance algorithm (PIA) and local interpretable model-agnostic explanations (LIME) were used to provide interpretations for the R model. Additionally, the predictive performance was compared among tumors with different CT densities.The R and R-FS models outperformed the FS model, with the R-FS model achieving the best area under the curve value of 0.907 (95
%K Radiomics (Other)
%K frozen section (FS) (Other)
%K high-grade pattern (HGP) (Other)
%K lung adenocarcinoma (LUAD) (Other)
%K machine learning (Other)
%K non-high-grade pattern (non-HGP) (Other)
%F PUB:(DE-HGF)16
%9 Journal Article
%$ pmid:40673081
%2 pmc:PMC12261232
%R 10.21037/tlcr-2025-504
%U https://inrepo02.dkfz.de/record/302986