Abstract 1454P
Background
Immunotherapy (IT) with single-agent immune-checkpoint inhibitors (ICI) is standard treatment in all comers mNSCLC patients (pts) with PD-L1 expression >50%. However, inter- and intratumoral heterogeneity of PD-L1 expression limits its predictive value. Radiomics has the potential to integrate imaging and biological data thus recapitulating tumor tissue heterogeneity. We used a machine learning approach to test computed tomography (CT) tumor radiomic features in terms of predictive value of immunotherapy response.
Methods
We retrospectively analyzed radiological and clinical data of 190 pts who received first-line immunotherapy with Pembrolizumab (P) for non-oncogene addicted mNSCLC with PDL1>50% treated at our Institution from 2017 to 2022. Baseline contrast-enhanced CT (CECT) imaging of the primary tumor was contoured to isolate a polygonal region of interest (ROI) enclosing the whole tumor volume and the peripheral tumor area (3mm thickness). After thresholding and filtration of images, radiomic analysis was conducted to isolate 107 radiomic features of mean grey level (GL) values within the ROIs. Median progression-free survival (PFS) was calculated from start of IT to first evidence of progression or death. A machine learning approach with cross-validation (Orange Data Mining Software) was applied to select the best radiomic features in terms of PFS predictive value.
Results
After pre-processing of CECT imaging, 78 eligible pts were finally included in the radiomic analysis. Median PFS was 5 months. In the whole series, 33% and 22% of pts were classified as hyper-responders (PFS>24 months) and hyper-progressive (PFS<1 month), respectively. PDL1 expression level (50-75% vs >75%) was not predictive of PFS at univariate analysis (3 vs 5 months, p 0.147). After machine learning selection with 10-fold cross validation, 30 out of total 107 radiomic features were extracted to best predict PFS (9 vs 2 months, p <0.005).
Conclusions
Preliminary results of this exploratory analysis indicate that as predictive PFS factors, radiomic features outperform common clinico-pathological factors including PD-L1 expression even at thresholds >75% and >90%. Validation of these results is warranted.
Clinical trial identification
Editorial acknowledgement
Legal entity responsible for the study
The authors.
Funding
Has not received any funding.
Disclosure
All authors have declared no conflicts of interest.
Resources from the same session
1443P - Patient-reported outcomes (PROs) with cemiplimab plus chemotherapy (CEMI + CHEMO) for first-line treatment of advanced non-small cell lung cancer (aNSCLC): PD-L1 level subgroups in EMPOWER-Lung 3
Presenter: Miranda Gogishvili
Session: Poster session 20
1444P - Sintilimab with two cycles nab-paclitaxel / platinum as first line therapy for advanced squamous non-small-cell lung cancer: The final analysis and biomarker results
Presenter: Huijuan Wang
Session: Poster session 20
1445P - A randomized phase III trial on Pembrolizumab Alone versUs pembrolizumab-chemotherapy in first LInE NSCLC (PAULIEN), results of the interim analysis
Presenter: Ilias Houda
Session: Poster session 20
1447P - IMscin001 part 2 updated results: Efficacy, safety, immunogenicity and patient-reported outcomes (PROs) from the randomised phase III study of atezolizumab (atezo) subcutaneous (SC) vs intravenous (IV) in patients with locally advanced or metastatic non-small cell lung cancer (NSCLC)
Presenter: Mauricio Burotto
Session: Poster session 20
1449P - The preliminary data from a single-arm, open-label, multicenter phase II clinical trial: KN046 combined with axitinib as first-line (1L) treatment for NSCLC
Presenter: Yuanyuan Zhao
Session: Poster session 20
1450P - Addition of bevacizumab to first-line chemoimmunotherapy in NSCLC with liver metastases
Presenter: Matthieu Roulleaux Dugage
Session: Poster session 20
1451P - Identifying long-term responders to immune checkpoint blockade: Potential utility of serum proteomic profiling in metastatic non-small cell lung cancer
Presenter: Rafael Bach Mora
Session: Poster session 20