Identification of gastric cancer patients by serum protein profiling

MPA Ebert, J Meuer, JC Wiemer… - Journal of proteome …, 2004 - ACS Publications
MPA Ebert, J Meuer, JC Wiemer, HU Schulz, MA Reymond, U Traugott, P Malfertheiner…
Journal of proteome research, 2004ACS Publications
Using surface-enhanced laser desorption ionization mass spectrometry (SELDI/TOF− MS)
and ProteinChip technology, coupled with a pattern-matching algorithm and serum samples,
we screened for protein patterns to differentiate gastric cancer patients from noncancer
patients. A classifier ensemble, consisting of 50 decision trees, correctly classified all gastric
cancers and all controls of a training set (100% sensitivity and 100% specificity). Eight of 9
stage I gastric cancers (88.9% sensitivity for stage I) were correctly classified. In addition, 28 …
Using surface-enhanced laser desorption ionization mass spectrometry (SELDI/TOF−MS) and ProteinChip technology, coupled with a pattern-matching algorithm and serum samples, we screened for protein patterns to differentiate gastric cancer patients from noncancer patients. A classifier ensemble, consisting of 50 decision trees, correctly classified all gastric cancers and all controls of a training set (100% sensitivity and 100% specificity). Eight of 9 stage I gastric cancers (88.9% sensitivity for stage I) were correctly classified. In addition, 28 sera from gastric cancer patients taken in different hospitals were correctly classified (100% sensitivity). Furthermore, all 11 control sera obtained from patients without gastric cancer (100% specificity) were classified correctly and 29 of 30 healthy blood-donors were classified as noncancerous. ProteinChip technology in conjunction with bioinformatics allows the highly sensitive and specific recognition of gastric cancer patients.
Keywords: Proteomics • diagnosis • stomach • SELDI
ACS Publications