Paper
13 March 2014 Supervised multi-view canonical correlation analysis: fused multimodal prediction of disease diagnosis and prognosis
Asha Singanamalli, Haibo Wang, George Lee, Natalie Shih, Mark Rosen, Stephen Master, John Tomaszewski, Michael Feldman, Anant Madabhushi
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Abstract
While the plethora of information from multiple imaging and non-imaging data streams presents an opportunity for discovery of fused multimodal, multiscale biomarkers, they also introduce multiple independent sources of noise that hinder their collective utility. The goal of this work is to create fused predictors of disease diagnosis and prognosis by combining multiple data streams, which we hypothesize will provide improved performance as compared to predictors from individual data streams. To achieve this goal, we introduce supervised multiview canonical correlation analysis (sMVCCA), a novel data fusion method that attempts to find a common representation for multiscale, multimodal data where class separation is maximized while noise is minimized. In doing so, sMVCCA assumes that the different sources of information are complementary and thereby act synergistically when combined. Although this method can be applied to any number of modalities and to any disease domain, we demonstrate its utility using three datasets. We fuse (i) 1.5 Tesla (T) magnetic resonance imaging (MRI) features with cerbrospinal fluid (CSF) proteomic measurements for early diagnosis of Alzheimer’s disease (n = 30), (ii) 3T Dynamic Contrast Enhanced (DCE) MRI and T2w MRI for in vivo prediction of prostate cancer grade on a per slice basis (n = 33) and (iii) quantitative histomorphometric features of glands and proteomic measurements from mass spectrometry for prediction of 5 year biochemical recurrence postradical prostatectomy (n = 40). Random Forest classifier applied to the sMVCCA fused subspace, as compared to that of MVCCA, PCA and LDA, yielded the highest classification AUC of 0.82 +/- 0.05, 0.76 +/- 0.01, 0.70 +/- 0.07, respectively for the aforementioned datasets. In addition, sMVCCA fused subspace provided 13.6%, 7.6% and 15.3% increase in AUC as compared with that of the best performing individual view in each of the three datasets, respectively. For the biochemical recurrence dataset, Kaplan-Meier curves generated from classifier prediction in the fused subspace reached the significance threshold (p = 0.05) for distinguishing between patients with and without 5 year biochemical recurrence, unlike those generated from classifier predictions of the individual modalities.
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Asha Singanamalli, Haibo Wang, George Lee, Natalie Shih, Mark Rosen, Stephen Master, John Tomaszewski, Michael Feldman, and Anant Madabhushi "Supervised multi-view canonical correlation analysis: fused multimodal prediction of disease diagnosis and prognosis", Proc. SPIE 9038, Medical Imaging 2014: Biomedical Applications in Molecular, Structural, and Functional Imaging, 903805 (13 March 2014); https://doi.org/10.1117/12.2043762
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Cited by 8 scholarly publications and 1 patent.
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KEYWORDS
Magnetic resonance imaging

Data fusion

Principal component analysis

Canonical correlation analysis

Alzheimer's disease

Simulation of CCA and DLA aggregates

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