Title :
Model Based Inversion for Deriving Maps of Histological Parameters Characteristic of Cancer From Ex-Vivo Multispectral Images of the Colon
Author :
Claridge, Ela ; Hidovic-Rowe, Dzena
Author_Institution :
Sch. of Comput. Sci., Univ. of Birmingham, Birmingham, UK
Abstract :
A model-based inversion method was used to obtain quantitative estimates of histological parameters from multispectral images of the colon and to examine their potential for discriminating between normal and pathological tissues. Pixel-wise estimates of the mucosal blood volume fraction, density of the scattering particles and thickness were derived using a two-stage method. In the first (forward) stage reflectance spectra corresponding to given instances of the parameter values were computed using Monte Carlo simulation of photon propagation through a multi-layered tissue. In the second (inversion) stage the parameter values were obtained via optimization using an iterated conditional modes algorithm based on Discrete Markov Random Fields. The method was validated on computer generated data contaminated with noise giving a mean normalized root mean square deviation (NRMSD) of 2.04. Validation on ex vivo images demonstrated that parametric maps show gross correspondence with histological features of mucosa characteristic of cancerous, precancerous and noncancerous colon lesions. The key signs of abnormality were shown to be the increase in the blood volume fraction and decrease in the density of scattering particles.
Keywords :
Markov processes; Monte Carlo methods; biological tissues; biomedical optical imaging; blood; cancer; iterative methods; light scattering; medical image processing; optimisation; random processes; Monte Carlo simulation; cancerous colon lesions; deriving maps; discrete Markov random fields; ex-vivo multispectral images; forward stage reflectance spectra; histological features; histological parameter characteristics; iterated conditional modes algorithm; model-based inversion method; mucosa characteristics; mucosal blood volume fraction; multilayered tissue; noise; noncancerous colon lesions; normalized root mean square deviation; optimization; parametric maps; pathological tissues; photon propagation; pixel-wise estimation; precancerous colon lesions; scattering particle density; two-stage method; Blood; Cancer; Colon; Optical imaging; Reflectivity; Scattering; Vectors; Colon cancer; Discrete Markov Random Field (DMRF); Monte Carlo simulation; diffuse reflectance model; inverse problems; multispectral imaging;
Journal_Title :
Medical Imaging, IEEE Transactions on
DOI :
10.1109/TMI.2013.2290697