Augmented Networks for Faster Brain Metastases Detection in T1-Weighted Contrast-Enhanced 3D MRI
Engin Dikici, Xuan V. Nguyen, Matthew Bigelow, Luciano M. Prevedello

TL;DR
This paper presents an augmented CNN framework for faster detection of brain metastases in 3D MRI, significantly reducing processing time while maintaining high detection sensitivity.
Contribution
The study introduces a novel CNN-based candidate detection method replacing classical image processing, achieving faster processing without sacrificing detection performance.
Findings
Achieved 97.4% sensitivity with fewer candidates
Reduced processing time by 93.5% to 1.9 seconds per dataset
Maintained comparable false-positive rates
Abstract
Early detection of brain metastases (BM) is one of the determining factors for the successful treatment of patients with cancer; however, the accurate detection of small BM lesions (< 15mm) remains a challenging task. We previously described a framework for the detection of small BM in single-sequence gadolinium-enhanced T1-weighted 3D MRI datasets. It combined classical image processing (IP) with a dedicated convolutional neural network, taking approximately 30 seconds to process each dataset due to computation-intensive IP stages. To overcome the speed limitation, this study aims to reformulate the framework via an augmented pair of CNNs (eliminating the IP) to reduce the processing times while preserving the BM detection performance. Our previous implementation of the BM detection algorithm utilized Laplacian of Gaussians (LoG) for the candidate selection portion of the solution. In…
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Taxonomy
TopicsBrain Metastases and Treatment · Brain Tumor Detection and Classification · Glioma Diagnosis and Treatment
