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Real-Time Tissue Classification Using a Novel Optical Needle Probe for Biopsy

Overview
Journal Appl Spectrosc
Specialties Chemistry
Pathology
Date 2024 Feb 19
PMID 38373402
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Abstract

Core needle biopsy is a part of the histopathological process, which is required for cancerous tissue examination. The most common method to guide the needle inside of the body is ultrasound screening, which in greater part is also the only guidance method. Ultrasound screening requires user experience. Furthermore, patient involuntary movements such as breathing might introduce artifacts and blur the screen. Optically enhanced core needle biopsy probe could potentially aid interventional radiologists during this procedure, providing real-time information on tissue properties close to the needle tip, while it is advancing inside of the body. In this study, we used diffuse optical spectroscopy in a custom-made core needle probe for real-time tissue classification. Our aim was to provide initial characteristics of the smart needle probe in the differentiation of tissues and validate the basic purpose of the probe of informing about breaking into a desired organ. We collected optical spectra from rat blood, fat, heart, kidney, liver, lungs, and muscle tissues. Gathered data were analyzed for feature extraction and evaluation of two machine learning-based classifiers: support vector machine and -nearest neighbors. Their performances on training data were compared using subject-independent -fold cross-validation. The best classifier model was chosen and its feasibility for real-time automated tissue recognition and classification was then evaluated. The final model reached nearly 80% of correct real-time classification of rat organs when using the needle probe during real-time classification.

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Steeg K, Krombach G, Friebe M Diagnostics (Basel). 2025; 15(2).

PMID: 39857081 PMC: 11763737. DOI: 10.3390/diagnostics15020197.

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