Supervised Regularized Canonical Correlation Analysis: integrating histologic and proteomic measurements for predicting biochemical recurrence following prostate surgery
Multimodal data, especially imaging and non-imaging data, is being routinely acquired in the context of disease diagnostics; however, computational challenges have limited the ability to quantitatively integrate imaging and non-imaging data channels with different dimensionalities and scales. To the best of our knowledge relatively few attempts have been made to quantitatively fuse such data to construct classifiers and none have attempted to quantitatively combine histology (imaging) and proteomic (non-imaging) measurements for making diagnostic and prognostic predictions. The objective of this work is to create a common subspace to simultaneously accommodate both the imaging and non-imaging data (and hence data corresponding to different scales and dimensionalities), called a metaspace. This metaspace can be used to build a meta-classifier that produces better classification results than a classifier that is based on a single modality alone. Canonical Correlation Analysis (CCA) and Regularized CCA (RCCA) are statistical techniques that extract correlations between two modes of data to construct a homogeneous, uniform representation of heterogeneous data channels. In this paper, we present a novel modification to CCA and RCCA, Supervised Regularized Canonical Correlation Analysis (SRCCA), that (1) enables the quantitative integration of data from multiple modalities using a feature selection scheme, (2) is regularized, and (3) is computationally cheap. We leverage this SRCCA framework towards the fusion of proteomic and histologic image signatures for identifying prostate cancer patients at the risk of 5 year biochemical recurrence following radical prostatectomy.
%0 Journal Article
%1 golugula_supervised_2011
%A Golugula, Abhishek
%A Lee, George
%A Master, Stephen
%A Feldman, Michael
%A Tomaszewski, John
%A Speicher, David
%A Madabhushi, Anant
%D 2011
%J BMC Bioinformatics
%K Multinomial, eigenvalue, selection variable
%N 1
%P 483
%R 10.1186/1471-2105-12-483
%T Supervised Regularized Canonical Correlation Analysis: integrating histologic and proteomic measurements for predicting biochemical recurrence following prostate surgery
%U http://www.biomedcentral.com/1471-2105/12/483/abstract
%V 12
%X Multimodal data, especially imaging and non-imaging data, is being routinely acquired in the context of disease diagnostics; however, computational challenges have limited the ability to quantitatively integrate imaging and non-imaging data channels with different dimensionalities and scales. To the best of our knowledge relatively few attempts have been made to quantitatively fuse such data to construct classifiers and none have attempted to quantitatively combine histology (imaging) and proteomic (non-imaging) measurements for making diagnostic and prognostic predictions. The objective of this work is to create a common subspace to simultaneously accommodate both the imaging and non-imaging data (and hence data corresponding to different scales and dimensionalities), called a metaspace. This metaspace can be used to build a meta-classifier that produces better classification results than a classifier that is based on a single modality alone. Canonical Correlation Analysis (CCA) and Regularized CCA (RCCA) are statistical techniques that extract correlations between two modes of data to construct a homogeneous, uniform representation of heterogeneous data channels. In this paper, we present a novel modification to CCA and RCCA, Supervised Regularized Canonical Correlation Analysis (SRCCA), that (1) enables the quantitative integration of data from multiple modalities using a feature selection scheme, (2) is regularized, and (3) is computationally cheap. We leverage this SRCCA framework towards the fusion of proteomic and histologic image signatures for identifying prostate cancer patients at the risk of 5 year biochemical recurrence following radical prostatectomy.
@article{golugula_supervised_2011,
abstract = {Multimodal data, especially imaging and non-imaging data, is being routinely acquired in the context of disease diagnostics; however, computational challenges have limited the ability to quantitatively integrate imaging and non-imaging data channels with different dimensionalities and scales. To the best of our knowledge relatively few attempts have been made to quantitatively fuse such data to construct classifiers and none have attempted to quantitatively combine histology (imaging) and proteomic (non-imaging) measurements for making diagnostic and prognostic predictions. The objective of this work is to create a common subspace to simultaneously accommodate both the imaging and non-imaging data (and hence data corresponding to different scales and dimensionalities), called a metaspace. This metaspace can be used to build a meta-classifier that produces better classification results than a classifier that is based on a single modality alone. Canonical Correlation Analysis (CCA) and Regularized CCA (RCCA) are statistical techniques that extract correlations between two modes of data to construct a homogeneous, uniform representation of heterogeneous data channels. In this paper, we present a novel modification to CCA and RCCA, Supervised Regularized Canonical Correlation Analysis (SRCCA), that (1) enables the quantitative integration of data from multiple modalities using a feature selection scheme, (2) is regularized, and (3) is computationally cheap. We leverage this SRCCA framework towards the fusion of proteomic and histologic image signatures for identifying prostate cancer patients at the risk of 5 year biochemical recurrence following radical prostatectomy.},
added-at = {2017-01-09T13:57:26.000+0100},
author = {Golugula, Abhishek and Lee, George and Master, Stephen and Feldman, Michael and Tomaszewski, John and Speicher, David and Madabhushi, Anant},
biburl = {https://www.bibsonomy.org/bibtex/2fa10fdf54c7d09852b1d9c1dcc26ea97/yourwelcome},
copyright = {2011 Golugula et al; licensee BioMed Central Ltd.},
doi = {10.1186/1471-2105-12-483},
interhash = {e61c068885d83e2e9acc40d408d5cab2},
intrahash = {fa10fdf54c7d09852b1d9c1dcc26ea97},
issn = {1471-2105},
journal = {BMC Bioinformatics},
keywords = {Multinomial, eigenvalue, selection variable},
language = {en},
month = dec,
number = 1,
pages = 483,
shorttitle = {Supervised {Regularized} {Canonical} {Correlation} {Analysis}},
timestamp = {2017-01-09T14:01:11.000+0100},
title = {Supervised {Regularized} {Canonical} {Correlation} {Analysis}: integrating histologic and proteomic measurements for predicting biochemical recurrence following prostate surgery},
url = {http://www.biomedcentral.com/1471-2105/12/483/abstract},
urldate = {2012-09-25},
volume = 12,
year = 2011
}