Prediction of 5-year Progression-Free Survival in Advanced Nasopharyngeal Carcinoma with Pretreatment PET/CT using Multi-Modality Deep Learning-based Radiomics
Bingxin Gu, Mingyuan Meng, Lei Bi, Jinman Kim, David Dagan Feng, and, Shaoli Song

TL;DR
This study demonstrates that multi-modality deep learning radiomics models using pretreatment PET/CT images can effectively predict 5-year progression-free survival in advanced nasopharyngeal carcinoma, outperforming traditional radiomics.
Contribution
The paper introduces a novel end-to-end multi-modality deep learning radiomics model that integrates PET and CT data for improved survival prediction in NPC.
Findings
DLR model outperforms conventional radiomics in prognostic accuracy
Multi-modality DLR surpasses single-modality models
DLR signatures effectively stratify patient risk groups
Abstract
Objective: Deep Learning-based Radiomics (DLR) has achieved great success in medical image analysis and has been considered a replacement for conventional radiomics that relies on handcrafted features. In this study, we aimed to explore the capability of DLR for the prediction of 5-year Progression-Free Survival (PFS) in Nasopharyngeal Carcinoma (NPC) using pretreatment PET/CT. Methods: A total of 257 patients (170/87 in internal/external cohorts) with advanced NPC (TNM stage III or IVa) were enrolled. We developed an end-to-end multi-modality DLR model, in which a 3D convolutional neural network was optimized to extract deep features from pretreatment PET/CT images and predict the probability of 5-year PFS. TNM stage, as a high-level clinical feature, could be integrated into our DLR model to further improve the prognostic performance. To compare conventional radiomics and DLR, 1456…
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