English

Radiomics Boosts Deep Learning Model for IPMN Classification

Image and Video Processing 2023-09-13 v1 Computer Vision and Pattern Recognition

Abstract

Intraductal Papillary Mucinous Neoplasm (IPMN) cysts are pre-malignant pancreas lesions, and they can progress into pancreatic cancer. Therefore, detecting and stratifying their risk level is of ultimate importance for effective treatment planning and disease control. However, this is a highly challenging task because of the diverse and irregular shape, texture, and size of the IPMN cysts as well as the pancreas. In this study, we propose a novel computer-aided diagnosis pipeline for IPMN risk classification from multi-contrast MRI scans. Our proposed analysis framework includes an efficient volumetric self-adapting segmentation strategy for pancreas delineation, followed by a newly designed deep learning-based classification scheme with a radiomics-based predictive approach. We test our proposed decision-fusion model in multi-center data sets of 246 multi-contrast MRI scans and obtain superior performance to the state of the art (SOTA) in this field. Our ablation studies demonstrate the significance of both radiomics and deep learning modules for achieving the new SOTA performance compared to international guidelines and published studies (81.9\% vs 61.3\% in accuracy). Our findings have important implications for clinical decision-making. In a series of rigorous experiments on multi-center data sets (246 MRI scans from five centers), we achieved unprecedented performance (81.9\% accuracy).

Keywords

Cite

@article{arxiv.2309.05857,
  title  = {Radiomics Boosts Deep Learning Model for IPMN Classification},
  author = {Lanhong Yao and Zheyuan Zhang and Ugur Demir and Elif Keles and Camila Vendrami and Emil Agarunov and Candice Bolan and Ivo Schoots and Marc Bruno and Rajesh Keswani and Frank Miller and Tamas Gonda and Cemal Yazici and Temel Tirkes and Michael Wallace and Concetto Spampinato and Ulas Bagci},
  journal= {arXiv preprint arXiv:2309.05857},
  year   = {2023}
}

Comments

10 pages, MICCAI MLMI 2023

R2 v1 2026-06-28T12:18:41.711Z