Title :
Multi-modal data fusion schemes for integrated classification of imaging and non-imaging biomedical data
Author :
Tiwari, Pallavi ; Viswanath, Satish ; Lee, George ; Madabhushi, Anant
Author_Institution :
Dept. of Biomed. Eng., Rutgers Univ., Piscataway, NJ, USA
fDate :
March 30 2011-April 2 2011
Abstract :
With a wide array of multi-modal, multi-protocol, and multi-scale biomedical data available for disease diagnosis and prognosis, there is a need for quantitative tools to combine such varied channels of information, especially imaging and non-imaging data (e.g. spectroscopy, proteomics). The major problem in such quantitative data integration lies in reconciling the large spread in the range of dimensionalities and scales across the different modalities. The primary goal of quantitative data integration is to build combined meta-classifiers; however these efforts are thwarted by challenges in (1) homogeneous representation of the data channels, (2) fusing the attributes to construct an integrated feature vector, and (3) the choice of learning strategy for training the integrated classifier. In this paper, we seek to (a) define the characteristics that guide the 4 independent methods for quantitative data fusion that use the idea of a meta-space for building integrated multi-modal, multi-scale meta-classifiers, and (b) attempt to understand the key components which allowed each method to succeed. These methods include (1) Generalized Embedding Concatenation (GEC), (2) Consensus Embedding (CE), (3) Semi-Supervised Multi-Kernel Graph Embedding (SeSMiK), and (4) Boosted Embedding Combination (BEC). In order to evaluate the optimal scheme for fusing imaging and non-imaging data, we compared these 4 schemes for the problems of combining (a) multi-parametric MRI with spectroscopy for prostate cancer (CaP) diagnosis in vivo, and (b) histological image with proteomic signatures (obtained via mass spectrometry) for predicting prognosis in CaP patients. The kernel combination approach (SeSMiK) marginally outperformed the embedding combination schemes. Additionally, intelligent weighting of the data channels (based on their relative importance) appeared to outperform unweighted strategies. All 4 strategies easily outperformed a naïve decision fusion approach, suggestin- - g that data integration methods will play an important role in the rapidly emerging field of integrated diagnostics and personalized healthcare.
Keywords :
biomedical MRI; cancer; image classification; image fusion; integration; mass spectroscopy; medical image processing; operating system kernels; proteomics; boosted embedding combination; consensus embedding; data integration; data integration methods; disease diagnosis; embedding combination schemes; generalized embedding concatenation; histological image; homogeneous representation; integrated feature vector; integrated image classification; kernel combination approach; mass spectrometry; meta-classifiers; multimodal data fusion schemes; multiparametric MRI; multiprotocol; nonimaging biomedical data; personalized healthcare; prognosis; prostate cancer; proteomic signatures; semisupervised multikernel graph embedding; Feature extraction; Kernel; Magnetic resonance imaging; Prostate cancer; Proteomics; Spectroscopy; Consensus Embedding; GFF; Kernel combination; SeSMiK; data fusion; prostate cancer;
Conference_Titel :
Biomedical Imaging: From Nano to Macro, 2011 IEEE International Symposium on
Conference_Location :
Chicago, IL
Print_ISBN :
978-1-4244-4127-3
Electronic_ISBN :
1945-7928
DOI :
10.1109/ISBI.2011.5872379