Automated Detection of Regions of Interest for Brain Perfusion MR Images
Svitlana M Alkhimova

TL;DR
This paper introduces a fully automated method for detecting regions of interest in brain perfusion MRI images, improving accuracy and clinical usability in perfusion analysis.
Contribution
The paper presents a novel automated segmentation approach that accurately detects brain perfusion ROIs, handling abnormal anatomy and integrating thresholding, hole filling, and region growing techniques.
Findings
Segmentation results closely match manual expert segmentation.
Detected ROIs are deemed satisfactory for clinical use.
Method is suitable for integration into automatic brain image processing systems.
Abstract
Images with abnormal brain anatomy produce problems for automatic segmentation techniques, and as a result poor ROI detection affects both quantitative measurements and visual assessment of perfusion data. This paper presents a new approach for fully automated and relatively accurate ROI detection from dynamic susceptibility contrast perfusion magnetic resonance and can therefore be applied excellently in the perfusion analysis. In the proposed approach the segmentation output is a binary mask of perfusion ROI that has zero values for air pixels, pixels that represent non-brain tissues, and cerebrospinal fluid pixels. The process of binary mask producing starts with extracting low intensity pixels by thresholding. Optimal low-threshold value is solved by obtaining intensity pixels information from the approximate anatomical brain location. Holes filling algorithm and binary region…
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