Method for stereotactic biopsy guidance based on analysis of OCT images in two polarization channels
DOI:
https://doi.org/10.31224/osf.io/3er45Keywords:
biopsy guidance, brain imaging, machine learning, optical coherence tomographyAbstract
The study aimed to create a machine learning method for differentiating diagnostically valued tumorous tissue from diagnostically “non-valued” non-tumorous tissues in the human brain, using cross-polarization optical coherence tomography (CP OCT) in order to provide guidance for stereotactic biopsies. A method of feature extraction from OCT data in two orthogonal polarization channels has been proposed and a classification algorithm for the resulting feature vectors has been created. If used for stereotactic biopsy guidance, the proposed approach could decrease the number of excised diagnostically non-valued samples and minimize the invasiveness of the procedure and the risk of excessive bleeding.Downloads
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Posted
2020-08-28