Abstract:
In this communication, we address the problem of robust classification of proteomic serum samples. We propose coupling classification with the inverse problem methodology...Show MoreMetadata
Abstract:
In this communication, we address the problem of robust classification of proteomic serum samples. We propose coupling classification with the inverse problem methodology. The analytical chain comprising a liquid chromatograph and a mass spectrometer in Selected Reaction Monitoring mode is modelled, integrating an implicit hierarchy. We solve the inverse problem by the means of full-Bayesian statistics, resorting to stochastic sampling algorithms for the numerical computations. We compare our joint Inversion-Classification to state-of-the-art methods (Naïve Bayes, logistic regression, fuzzy c-means) using sequential estimations and show very encouraging results on simulated multi-class data.
Published in: Proceedings 2012 IEEE International Workshop on Genomic Signal Processing and Statistics (GENSIPS)
Date of Conference: 02-04 December 2012
Date Added to IEEE Xplore: 25 April 2013
ISBN Information:
ISSN Information:
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- Index Terms
- Serum Samples ,
- Inverse Problem ,
- Logistic Regression ,
- Simulated Data ,
- Fuzzy C-means ,
- Sequential Estimation ,
- Proteome Samples ,
- Selected Reaction Monitoring Mode ,
- Protein Content ,
- Loss Function ,
- Posterior Probability ,
- Gamma Distribution ,
- Highest Probability ,
- Parameters Of Interest ,
- Bayesian Estimation ,
- Joint Distribution ,
- Peptide Quantification ,
- Distribution Of Categories ,
- Mean Loss ,
- Trace Data ,
- Nuisance Parameters ,
- Degree Of Belief ,
- Intermediate Estimates
- Author Keywords
Keywords assist with retrieval of results and provide a means to discovering other relevant content. Learn more.
- Index Terms
- Serum Samples ,
- Inverse Problem ,
- Logistic Regression ,
- Simulated Data ,
- Fuzzy C-means ,
- Sequential Estimation ,
- Proteome Samples ,
- Selected Reaction Monitoring Mode ,
- Protein Content ,
- Loss Function ,
- Posterior Probability ,
- Gamma Distribution ,
- Highest Probability ,
- Parameters Of Interest ,
- Bayesian Estimation ,
- Joint Distribution ,
- Peptide Quantification ,
- Distribution Of Categories ,
- Mean Loss ,
- Trace Data ,
- Nuisance Parameters ,
- Degree Of Belief ,
- Intermediate Estimates
- Author Keywords