Abstract

PurposeIn image-guided surgery for glioma removal, neurosurgeons usually plan the resection on images acquired before surgery and use them for guidance during the subsequent intervention. However, after the surgical procedure has begun, the preplanning images become unreliable due to the brain shift phenomenon, caused by modifications of anatomical structures and imprecisions in the neuronavigation system. To obtain an updated view of the resection cavity, a solution is to collect intraoperative data, which can be additionally acquired at different stages of the procedure in order to provide a better understanding of the resection. A spatial mapping between structures identified in subsequent acquisitions would be beneficial. We propose here a fully automated segmentation-based registration method to register ultrasound (US) volumes acquired at multiple stages of neurosurgery.MethodsWe chose to segment sulci and falx cerebri in US volumes, which remain visible during resection. To automatically segment these elements, first we trained a convolutional neural network on manually annotated structures in volumes acquired before the opening of the dura mater and then we applied it to segment corresponding structures in different surgical phases. Finally, the obtained masks are used to register US volumes acquired at multiple resection stages.ResultsOur method reduces the mean target registration error (mTRE) between volumes acquired before the opening of the dura mater and during resection from 3.49 mm (± 1.55 mm) to 1.36 mm (± 0.61 mm). Moreover, the mTRE between volumes acquired before opening the dura mater and at the end of the resection is reduced from 3.54 mm (± 1.75 mm) to 2.05 mm (± 1.12 mm).ConclusionThe segmented structures demonstrated to be good candidates to register US volumes acquired at different neurosurgical phases. Therefore, our solution can compensate brain shift in neurosurgical procedures involving intraoperative US data.

Highlights

  • In brain surgery for tumor removal, neurosurgeons usually plan the intervention on pre-surgical images

  • We focus on intraoperative 3D ultrasound used in neurosurgical procedures

  • The reference landmarks are taken in the volumes acquired before resection and are utilized as references to select the corresponding landmarks in US volumes acquired during and after tumor removal

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Summary

Introduction

In brain surgery for tumor removal, neurosurgeons usually plan the intervention on pre-surgical images. After resection starts, the preplanning data become even more unreliable due to the brain shift phenomenon: Structures observed in preplanning images don’t remain in the same conformation and position during tumor removal [4]. The probability that pathological elements are missed increases, reducing the survival rates of the operated patients [5, 6]. To overcome this problem, intraoperative images can be acquired [7]: They provide an updated view of the ongoing procedure and compensate the brain shift effects. A solution is represented by intraoperative magnetic resonance imaging (iMRI) [8]. We focus on intraoperative 3D ultrasound used in neurosurgical procedures

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