Detection of brain tumor margins using optical coherence tomography
Conference Paper
-
- Overview
-
- Research
-
- Identity
-
- Additional Document Info
-
- View All
-
Overview
abstract
-
In brain cancer surgery, it is critical to achieve extensive resection without compromising adjacent healthy, non-cancerous regions. Various technological advances have made major contributions in imaging, including intraoperative magnetic imaging (MRI) and computed tomography (CT). However, these technologies have pros and cons in providing quantitative, real-time and three-dimensional (3D) continuous guidance in brain cancer detection. Optical Coherence Tomography (OCT) is a non-invasive, label-free, cost-effective technique capable of imaging tissue in three dimensions and real time. The purpose of this study is to reliably and efficiently discriminate between non-cancer and cancer-infiltrated brain regions using OCT images. To this end, a mathematical model for quantitative evaluation known as the Blind End-Member and Abundances Extraction method (BEAE). This BEAE method is a constrained optimization technique which extracts spatial information from volumetric OCT images. Using this novel method, we are able to discriminate between cancerous and non-cancerous tissues and using logistic regression as a classifier for automatic brain tumor margin detection. Using this technique, we are able to achieve excellent performance using an extensive cross-validation of the training dataset (sensitivity 92.91%25 and specificity 98.15%25) and again using an independent, blinded validation dataset (sensitivity 92.91%25 and specificity 86.36%25). In summary, BEAE is well-suited to differentiate brain tissue which could support the guiding surgery process for tissue resection. © 2018 SPIE.
publication date
published in
Research
keywords
-
Brain Cancer; Image-guided surgery; Machine Learning; Optical Coherence Tomography; Quadratic Optimization Brain; Computer aided diagnosis; Constrained optimization; Cost effectiveness; Diseases; Learning systems; Magnetic levitation vehicles; Magnetic resonance imaging; Medical imaging; Optical tomography; Quadratic programming; Surgery; Tumors; Brain cancer; Constrained optimization techniques; Image guided surgery; Intraoperative magnetic imaging; Quadratic optimization; Quantitative evaluation; Technological advances; Threedimensional (3-d); Computerized tomography
Identity
Digital Object Identifier (DOI)
Additional Document Info
start page
end page
volume