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A Bayesian network approach to feature selection in mass spectrometry data
Authors:Karl W Kuschner  Dariya I Malyarenko  William E Cooke  Lisa H Cazares  OJ Semmes  Eugene R Tracy
Affiliation:(1) Department of Physics, The College of William and Mary, Williamsburg, VA, USA;(2) Center for Biomedical Proteomics, Eastern Virginia Medical School, Norfolk, VA, USA
Abstract:

Background  

Time-of-flight mass spectrometry (TOF-MS) has the potential to provide non-invasive, high-throughput screening for cancers and other serious diseases via detection of protein biomarkers in blood or other accessible biologic samples. Unfortunately, this potential has largely been unrealized to date due to the high variability of measurements, uncertainties in the distribution of proteins in a given population, and the difficulty of extracting repeatable diagnostic markers using current statistical tools. With studies consisting of perhaps only dozens of samples, and possibly hundreds of variables, overfitting is a serious complication. To overcome these difficulties, we have developed a Bayesian inductive method which uses model-independent methods of discovering relationships between spectral features. This method appears to efficiently discover network models which not only identify connections between the disease and key features, but also organizes relationships between features--and furthermore creates a stable classifier that categorizes new data at predicted error rates.
Keywords:
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