TY - JOUR
T1 - A pilot study on colonic mucosal tissues by fluorescence spectroscopy technique
T2 - Discrimination by principal component analysis (PCA) and artificial neural network (ANN) analysis
AU - Kamath, Sudha D.
AU - D'souza, Claretta S.
AU - Mathew, Stanley
AU - George, Sajan D.
AU - Santhosh, C.
AU - Mahato, K. K.
PY - 2008/6
Y1 - 2008/6
N2 - Pulsed laser-induced autofluorescence spectra of pathologically certified normal and malignant colonic mucosal tissues were recorded at 325 nm excitation. The spectra were analysed using three different methods for discrimination purposes. First, all the spectra were subjected to the principal component analysis (PCA) and the discrimination between normal and malignant cases were achieved using parameters like, spectral residuals, Mahatanobis distance and scores of factors. Second, to understand the changes in tissue composition between the two classes (normal, and malignant), difference spectrum was constructed by subtracting mean spectrum of calibration set samples from simulated mean of all spectra of any one class (normal/malignant) and in third, artificial neural network (ANN) analysis was carried out on the same set of spectral data by training the network with spectral features like, mean, median, spectral residual, energy, standard deviation, number of peaks for different thresholds (100,250 and 500) after carrying out 1 st-order differentiation of the training set samples and discrimination between normal and malignant conditions were achieved. The specificity and sensitivity were determined in PCA and ANN analyses and they were found to be 100 and 91.3% in PCA, and 100 and 93.47% in ANN, respectively.
AB - Pulsed laser-induced autofluorescence spectra of pathologically certified normal and malignant colonic mucosal tissues were recorded at 325 nm excitation. The spectra were analysed using three different methods for discrimination purposes. First, all the spectra were subjected to the principal component analysis (PCA) and the discrimination between normal and malignant cases were achieved using parameters like, spectral residuals, Mahatanobis distance and scores of factors. Second, to understand the changes in tissue composition between the two classes (normal, and malignant), difference spectrum was constructed by subtracting mean spectrum of calibration set samples from simulated mean of all spectra of any one class (normal/malignant) and in third, artificial neural network (ANN) analysis was carried out on the same set of spectral data by training the network with spectral features like, mean, median, spectral residual, energy, standard deviation, number of peaks for different thresholds (100,250 and 500) after carrying out 1 st-order differentiation of the training set samples and discrimination between normal and malignant conditions were achieved. The specificity and sensitivity were determined in PCA and ANN analyses and they were found to be 100 and 91.3% in PCA, and 100 and 93.47% in ANN, respectively.
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U2 - 10.1002/cem.1154
DO - 10.1002/cem.1154
M3 - Article
AN - SCOPUS:53649106246
SN - 0886-9383
VL - 22
SP - 408
EP - 416
JO - Journal of Chemometrics
JF - Journal of Chemometrics
IS - 6
ER -