Abstract

BackgroundHyperspectral imaging (HSI) is a promising non-contact approach to tissue diagnostics, generating large amounts of raw data for whose processing computer vision (i.e. deep learning) is particularly suitable. Aim of this proof of principle study was the classification of hyperspectral (HS)-reflectance values into the human-oral tissue types fat, muscle and mucosa using deep learning methods. Furthermore, the tissue-specific hyperspectral signatures collected will serve as a representative reference for the future assessment of oral pathological changes in the sense of a HS-library.MethodsA total of about 316 samples of healthy human-oral fat, muscle and oral mucosa was collected from 174 different patients and imaged using a HS-camera, covering the wavelength range from 500 nm to 1000 nm. HS-raw data were further labelled and processed for tissue classification using a light-weight 6-layer deep neural network (DNN).ResultsThe reflectance values differed significantly (p < .001) for fat, muscle and oral mucosa at almost all wavelengths, with the signature of muscle differing the most. The deep neural network distinguished tissue types with an accuracy of > 80% each.ConclusionOral fat, muscle and mucosa can be classified sufficiently and automatically by their specific HS-signature using a deep learning approach. Early detection of premalignant-mucosal-lesions using hyperspectral imaging and deep learning is so far represented rarely in in medical and computer vision research domain but has a high potential and is part of subsequent studies.

Highlights

  • Hyperspectral imaging (HSI) is a promising non-contact approach to tissue diagnostics, generating large amounts of raw data for whose processing computer vision is suitable

  • Since we believe that the differentiation of pathological tissue changes, similar to the assessment of blood parameters, is only possible on the basis of a “healthy” standard, the aim of this study was, for the first time, to create a representative HSI data collection of healthy human fat, muscle and oral mucosa, which will serve as a reference library for the assessment of pathological tissue conditions by processing their spectral characteristics with deep learning methods

  • Detailed information on mean values, standard deviations and individual significances are available on request

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Summary

Introduction

Hyperspectral imaging (HSI) is a promising non-contact approach to tissue diagnostics, generating large amounts of raw data for whose processing computer vision (i.e. deep learning) is suitable Aim of this proof of principle study was the classification of hyperspectral (HS)-reflectance values into the human-oral tissue types fat, muscle and mucosa using deep learning methods. Since we believe that the differentiation of pathological tissue changes, similar to the assessment of blood parameters, is only possible on the basis of a “healthy” standard, the aim of this study was, for the first time, to create a representative HSI data collection of healthy human fat, muscle and oral mucosa, which will serve as a reference library for the assessment of pathological tissue conditions by processing their spectral characteristics with deep learning methods

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