CVMay 18, 2017

Model-based Catheter Segmentation in MRI-images

arXiv:1705.06712v210 citations
Originality Incremental advance
AI Analysis

This work addresses a critical challenge in clinical workflows for MR-guided interventions, offering an incremental improvement over existing methods.

The paper tackles the problem of accurately segmenting catheters in MRI-guided interventions, achieving a correct identification rate greater than 98% with a mean error of 1.40 mm and reducing outliers to one-fourth compared to state-of-the-art methods.

Accurate and reliable segmentation of catheters in MR-guided interventions remains a challenge, and a step of critical importance in clinical workflows. In this work, under reasonable assumptions, mechanical model based heuristics guide the segmentation process allows correct catheter identification rates greater than 98% (error 2.88 mm), and reduction in outliers to one-fourth compared to the state of the art. Given distal tips, searching towards the proximal ends of the catheters is guided by mechanical models that are estimated on a per-catheter basis. Their bending characteristics are used to constrain the image feature based candidate points. The final catheter trajectories are hybrid sequences of individual points, each derived from model and image features. We evaluate the method on a database of 10 patient MRI scans including 101 manually segmented catheters. The mean errors were 1.40 mm and the median errors were 1.05 mm. The number of outliers deviating more than 2 mm from the gold standard is 7, and the number of outliers deviating more than 3 mm from the gold standard is just 2.

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