Towards multi-modal anatomical landmark detection for ultrasound-guided brain tumor resection with contrastive learning
Soorena Salari, Amirhossein Rasoulian, Hassan Rivaz, Yiming Xiao

TL;DR
This paper introduces a contrastive learning framework for detecting corresponding anatomical landmarks between MRI and ultrasound scans in neurosurgery, addressing the challenge of inter-modal landmark detection with promising accuracy improvements.
Contribution
The study presents the first contrastive learning approach for inter-modal MRI-US landmark detection, leveraging joint CNNs to improve accuracy in neurosurgical applications.
Findings
Mean landmark detection accuracy of 5.88 mm
Outperforms traditional SIFT features significantly
Validated on the public RESECT database
Abstract
Homologous anatomical landmarks between medical scans are instrumental in quantitative assessment of image registration quality in various clinical applications, such as MRI-ultrasound registration for tissue shift correction in ultrasound-guided brain tumor resection. While manually identified landmark pairs between MRI and ultrasound (US) have greatly facilitated the validation of different registration algorithms for the task, the procedure requires significant expertise, labor, and time, and can be prone to inter- and intra-rater inconsistency. So far, many traditional and machine learning approaches have been presented for anatomical landmark detection, but they primarily focus on mono-modal applications. Unfortunately, despite the clinical needs, inter-modal/contrast landmark detection has very rarely been attempted. Therefore, we propose a novel contrastive learning framework to…
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Taxonomy
TopicsMedical Imaging and Analysis · Medical Image Segmentation Techniques · Advanced Neural Network Applications
MethodsContrastive Learning · Focus
