Automatic Detection and Segmentation of Postoperative Cerebellar Damage Based on Normalization
Silu Zhang, Stuart McAfee, Zoltan Patay, Matthew Scoggins

TL;DR
This paper presents an automated method for detecting and measuring cerebellar damage in postoperative MRI scans, improving reliability over manual labeling and existing normalization techniques.
Contribution
The authors develop a robust algorithm that automates cerebellar damage detection using normalization and segmentation, specifically tailored for postoperative scans.
Findings
Superior performance in damage detection across various scenarios
Validated on 153 patient scans with expert inspection
Effective in both real and simulated postoperative cases
Abstract
Surgical resection is a common procedure in the treatment of pediatric posterior fossa tumors. However, surgical damage is often unavoidable and its association with postoperative complications is not well understood. A reliable localization and measure of cerebellar damage is fundamental to study the relationship between the damaged cerebellar regions and postoperative neurological outcomes. Existing cerebellum normalization methods are not reliable on postoperative scans, therefore current approaches to measure surgical damage rely on manual labelling. In this work, we develop a robust algorithm to automatically detect and measure cerebellum damage due to surgery using postoperative 3D T1 magnetic resonance imaging. In our proposed approach, normal brain tissues are first segmented using a Bayesian algorithm customized for postoperative scans. Next, the cerebellum is isolated by…
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Taxonomy
TopicsGlioma Diagnosis and Treatment · Medical Imaging and Analysis · Medical Image Segmentation Techniques
