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Efficient automated localization of ECoG electrodes in CT images via shape analysis.

Authors :
Centracchio, Jessica
Sarno, Antonio
Esposito, Daniele
Andreozzi, Emilio
Pavone, Luigi
Di Gennaro, Giancarlo
Bartolo, Marcello
Esposito, Vincenzo
Morace, Roberta
Casciato, Sara
Bifulco, Paolo
Source :
International Journal of Computer Assisted Radiology & Surgery; Apr2021, Vol. 16 Issue 4, p543-554, 12p
Publication Year :
2021

Abstract

Purpose: People with drug-refractory epilepsy are potential candidates for surgery. In many cases, epileptogenic zone localization requires intracranial investigations, e.g., via ElectroCorticoGraphy (ECoG), which uses subdural electrodes to map eloquent areas of large cortical regions. Precise electrodes localization on cortical surface is mandatory to delineate the seizure onset zone. Simple thresholding operations performed on patients' computed tomography (CT) volumes recognize electrodes but also other metal objects (e.g., wires, stitches), which need to be manually removed. A new automated method based on shape analysis is proposed, which provides substantially improved performances in ECoG electrodes recognition. Methods: The proposed method was retrospectively tested on 24 CT volumes of subjects with drug-refractory focal epilepsy, presenting a large number (> 1700) of round platinum electrodes. After CT volume thresholding, six geometric features of voxel clusters (volume, symmetry axes lengths, circularity and cylinder similarity) were used to recognize the actual electrodes among all metal objects via a Gaussian support vector machine (G-SVM). The proposed method was further tested on seven CT volumes from a public repository. Simultaneous recognition of depth and ECoG electrodes was also investigated on three additional CT volumes, containing penetrating depth electrodes. Results: The G-SVM provided a 99.74% mean classification accuracy across all 24 single-patient datasets, as well as on the combined dataset. High accuracies were obtained also on the CT volumes from public repository (98.27% across all patients, 99.68% on combined dataset). An overall accuracy of 99.34% was achieved for the recognition of depth and ECoG electrodes. Conclusions: The proposed method accomplishes automated ECoG electrodes localization with unprecedented accuracy and can be easily implemented into existing software for preoperative analysis process. The preliminary yet surprisingly good results achieved for the simultaneous depth and ECoG electrodes recognition are encouraging. Ethical approval n°NCT04479410 by "IRCCS Neuromed" (Pozzilli, Italy), 30th July 2020. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
18616410
Volume :
16
Issue :
4
Database :
Complementary Index
Journal :
International Journal of Computer Assisted Radiology & Surgery
Publication Type :
Academic Journal
Accession number :
149848184
Full Text :
https://doi.org/10.1007/s11548-021-02325-0