Automatic and standardized surgical reporting for central nervous system tumors
David Bouget, Mathilde Gajda Faanes, Asgeir Store Jakola, Frederik Barkhof, Hilko Ardon, Lorenzo Bello, Mitchel S. Berger, Shawn L. Hervey-Jumper, Julia Furtner, Albert J. S. Idema, Barbara Kiesel, Georg Widhalm, Rishi Nandoe Tewarie, Emmanuel Mandonnet, Pierre A. Robe

TL;DR
This paper presents an automated, standardized pipeline for postsurgical CNS tumor reporting using advanced segmentation and classification models, improving postoperative evaluation and clinical decision-making.
Contribution
It introduces a comprehensive postsurgical reporting pipeline with new models for segmentation and classification, integrated into an open-source platform, based on multicentric datasets.
Findings
Segmentation Dice scores: 87%, 66%, 70%, 77%.
Classification accuracy: 99.5% for MR sequence, 80% for tumor type.
Pipeline enables robust, automated postsurgical CNS tumor analysis.
Abstract
Magnetic resonance (MR) imaging is essential for evaluating central nervous system (CNS) tumors, guiding surgical planning, treatment decisions, and assessing postoperative outcomes and complication risks. While recent work has advanced automated tumor segmentation and report generation, most efforts have focused on preoperative data, with limited attention to postoperative imaging analysis. This study introduces a comprehensive pipeline for standardized postsurtical reporting in CNS tumors. Using the Attention U-Net architecture, segmentation models were trained for the preoperative (non-enhancing) tumor core, postoperative contrast-enhancing residual tumor, and resection cavity. Additionally, MR sequence classification and tumor type identification for contrast-enhancing lesions were explored using the DenseNet architecture. The models were integrated into a reporting pipeline,…
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