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The Marker State Space (MSS) Method for Classifying Clinical Samples
Authors
A Porter
A Prat
+44 more
AA Alizadeh
BB Haab
BB Haab
Brian B. Haab
Brian P. Fallon
Bryan Curnutte
C Lombardi
Christopher J. Langmead
CY Wang
D Bergsma
EF Cook
G Kloppel
H Zhang
J Hoggatt
JA Koziol
JA Ludwig
JC Manimala
K Bouwman
K Maupin
K Partyka
Katie Partyka
Kevin A. Maupin
KS Goonetilleke
L Breiman
M Lukes
MH Gail
NB La Thangue
R Etzioni
R Orchekowski
Randall E. Brand
RO Dillman
S Baek
S Chen
S Dudoit
S Hakomori
S Varambally
Sunguk Choi
T Yue
T Yue
T Yue
TA Alonzo
Waibhav Tembe
William C. S. Cho
YM Wu
Publication date
1 January 2013
Publisher
'Public Library of Science (PLoS)'
Doi
Cite
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on
PubMed
Abstract
The development of accurate clinical biomarkers has been challenging in part due to the diversity between patients and diseases. One approach to account for the diversity is to use multiple markers to classify patients, based on the concept that each individual marker contributes information from its respective subclass of patients. Here we present a new strategy for developing biomarker panels that accounts for completely distinct patient subclasses. Marker State Space (MSS) defines "marker states" based on all possible patterns of high and low values among a panel of markers. Each marker state is defined as either a case state or a control state, and a sample is classified as case or control based on the state it occupies. MSS was used to define multi-marker panels that were robust in cross validation and training-set/test-set analyses and that yielded similar classification accuracy to several other classification algorithms. A three-marker panel for discriminating pancreatic cancer patients from control subjects revealed subclasses of patients based on distinct marker states. MSS provides a straightforward approach for modeling highly divergent subclasses of patients, which may be adaptable for diverse applications. © 2013 Fallon et al
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