Abstract 931P
Background
Currently, there is a paucity of validated deep learning methodologies for predicting short-term efficacy in locally advanced nasopharyngeal carcinoma (NPC), both domestically and internationally. Furthermore, advanced techniques such as 2.5D feature extraction and Transformer model establishment remain underexplored in this context.
Methods
MRI images from locally advanced NPC patients diagnosed at two centers between July 2020 and June 2023 were retrospectively collected. Three state-of-the-art (SOTA) models (SegResNet, Unet, and UnetR models) were employed for automatic segmentation of all regions of interest (ROIs), thus generating an automatic segmentation model. Leveraging 2.5D deep learning techniques, tumor image features were extracted and integrated into a transfer learning framework. Subsequently, a Transformer-based model was designed, integrating all individual patient features. Three models were established: a clinical model, a Transformer model, and a fusion model. The predictive performance of these models was evaluated using receiver operating characteristic (ROC) curves, calibration curves, and decision curve analysis (DCA).
Results
Among the three models, the Transformer model demonstrated superior predictive performance in both the testing (AUC = 0.957) and validation cohorts (AUC = 0.893) compared to the clinical model. Moreover, the fusion model generally matched or surpassed the performance of the Transformer model, particularly in the testing cohort with an AUC of 0.874, indicating that the integration of clinical data with advanced machine learning models can enhance predictive capability.
Conclusions
The fusion model, which combines machine learning with clinical factors, exhibits promising efficacy in predicting short-term outcomes in locally advanced NPC patients following synchronous chemoradiotherapy.
Clinical trial identification
Editorial acknowledgement
Funding
Has not received any funding.
Disclosure
All authors have declared no conflicts of interest.
Resources from the same session
917P - Automatic characterization of spatial arrangement of tumor-infiltrating lymphocytes identifies oral cavity squamous cell carcinoma patients with poorer prognosis
Presenter: German Corredor
Session: Poster session 03
918P - Deciphering the molecular drivers behind locoregional progression, intratumoral heterogeneity, and clonal evolution in locally advanced head and neck cancer
Presenter: Gema Bruixola
Session: Poster session 03
919P - Predictive multi-omic signature in locally advanced laryngeal/hypopharyngeal (LH) squamous cell carcinoma (SCC) treated with induction chemotherapy (IC)
Presenter: Paolo Bossi
Session: Poster session 03
920P - Genomic landscape of head and neck cancer in Asia: A comprehensive meta-analysis of 1016 samples
Presenter: Sewanti Limaye
Session: Poster session 03
Resources:
Abstract
921P - Divergent fates: The ambiguous role of M2-like TAMs in oropharyngeal cancer
Presenter: Michael Saerens
Session: Poster session 03
922P - Genomic instability as a biomarker for advanced cancer of the head and neck
Presenter: Filippo Dall'Olio
Session: Poster session 03
923P - Tumor-informed ctDNA assay to predict recurrence in locally advanced SCCHN
Presenter: Natasha Honoré
Session: Poster session 03
924P - Claudin-1 (CLDN1) tight junction protein expression delineates distinct immune infiltrates in ascending (A) vs descending (D) subtypes of nasopharyngeal carcinoma: Potential implications for treatment selection
Presenter: Darren Wan-Teck Lim
Session: Poster session 03
925P - External validation of the CD8 radiomics signature as a prognostic marker in recurrent or metastatic head and neck cancer treated with nivolumab
Presenter: Laville Adrien
Session: Poster session 03
926P - Genetic alteration in olfactory neuroblastoma: Unraveling carcinogenesis mechanisms and chemotherapy resistance through whole exome sequencing analysis
Presenter: Haruhi Furukawa
Session: Poster session 03