2017
DOI: 10.21577/0103-5053.20170159
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Principal Component Analysis with Linear and Quadratic Discriminant Analysis for Identification of Cancer Samples Based on Mass Spectrometry

Abstract: Mass spectrometry (MS) is a powerful technique that can provide the biochemical signature of a wide range of biological materials such as cells and biofluids. However, MS data usually has a large range of variables which may lead to difficulties in discriminatory analysis and may require high computational cost. In this paper, principal component analysis with linear discriminant analysis (PCA-LDA) and quadratic discriminant analysis (PCA-QDA) were applied for discrimination between healthy control and cancer … Show more

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Cited by 40 publications
(55 citation statements)
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References 40 publications
(79 reference statements)
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“…In PCA‐LDA or PCA‐QDA, the PCA scores T are used as input variables to a linear or quadratic discriminant classifier. PCA‐LDA ( L ik ) and PCA‐QDA ( Q ik ) classification scores are calculated in a non‐Bayesian form as follows :Lik=)(tit¯knormalTboldCpooled1boldtitrueboldtfalse¯kQik=)(tit¯knormalTboldCk1boldtitrueboldtfalse¯kwhere t i represents the PCA scores for sample i ; t¯k the mean PCA scores array for class k ; C pooled the pooled covariance matrix between the classes; and C k the variance‐covariance matrix for class k .…”
Section: Methodsmentioning
confidence: 99%
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“…In PCA‐LDA or PCA‐QDA, the PCA scores T are used as input variables to a linear or quadratic discriminant classifier. PCA‐LDA ( L ik ) and PCA‐QDA ( Q ik ) classification scores are calculated in a non‐Bayesian form as follows :Lik=)(tit¯knormalTboldCpooled1boldtitrueboldtfalse¯kQik=)(tit¯knormalTboldCk1boldtitrueboldtfalse¯kwhere t i represents the PCA scores for sample i ; t¯k the mean PCA scores array for class k ; C pooled the pooled covariance matrix between the classes; and C k the variance‐covariance matrix for class k .…”
Section: Methodsmentioning
confidence: 99%
“…In PCA-LDA or PCA-QDA, the PCA scores T are used as input variables to a linear or quadratic discriminant classifier. PCA-LDA (L ik ) and PCA-QDA (Q ik ) classification scores are calculated in a non-Bayesian form as follows [7,8]:…”
Section: Methodsmentioning
confidence: 99%
“…After these decompositions, the scores matrix from PARAFAC and Tucker3 are used as input variables for LDA and QDA algorithms. LDA and QDA classification scores can be calculated in a non-Bayesian form using the Mahalanobis distance as follows [10,11]:…”
Section: Theorymentioning
confidence: 99%
“…Discriminant analysis (DA) is a supervised classification technique employed for differentiating classes based on a Mahalanobis distance calculation [10,11]. DA can be divided into linear discriminant analysis (LDA) or quadratic discriminant analysis (QDA).…”
Section: Introductionmentioning
confidence: 99%
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