Discovery of new rheumatoid arthritis biomarkers using SELDI-TOF-MS ProteinChip approach

Dominique deSeny, Marianne Fillet, Marie-Alice Meuwis, Pierre Geurts, Laurence Lutteri, Clio Ribbens, Vincent Bours, Louis Wehenkel, Jacques Piette, Michel Malaise, Marie-Paule Merville
Arthritis and Rheumatism, Volume 52, Number 12, page 3801--3812 - nov 2005
Objective

To identify serum protein biomarkers specific for rheumatoid arthritis (RA), using surface-enhanced laser desorption/ionization time-of-flight mass spectrometry (SELDI-TOF-MS) technology.

Methods

A total of 103 serum samples from patients and healthy controls were analyzed. Thirty-four of the patients had a diagnosis of RA, based on the American College of Rheumatology criteria. The inflammation control group comprised 20 patients with psoriatic arthritis (PsA), 9 with asthma, and 10 with Crohn's disease. The noninflammation control group comprised 14 patients with knee osteoarthritis and 16 healthy control subjects. Serum protein profiles were obtained by SELDI-TOF-MS and compared in order to identify new biomarkers specific for RA. Data were analyzed by a machine learning algorithm called decision tree boosting, according to different preprocessing steps.

Results

The most discriminative mass/charge (m/z) values serving as potential biomarkers for RA were identified on arrays for both patients with RA versus controls and patients with RA versus patients with PsA. From among several candidates, the following peaks were highlighted: m/z values of 2,924 (RA versus controls on H4 arrays), 10,832 and 11,632 (RA versus controls on CM10 arrays), 4,824 (RA versus PsA on H4 arrays), and 4,666 (RA versus PsA on CM10 arrays). Positive results of proteomic analysis were associated with positive results of the anti-cyclic citrullinated peptide test. Our observations suggested that the 10,832 peak could represent myeloid-related protein 8.

Conclusion

SELDI-TOF-MS technology allows rapid analysis of many serum samples, and use of decision tree boosting analysis as the main statistical method allowed us to propose a pattern of protein peaks specific for RA.

See also

The electronic version of this article is available on Arthritis & Rheumatism website.

BibTex references

@Article\{DFMGLRBWPMM05,
  author       = "deSeny, Dominique and Fillet, Marianne and Meuwis, Marie-Alice and Geurts, Pierre and Lutteri, Laurence and Ribbens, Clio and Bours, Vincent and Wehenkel, Louis and Piette, Jacques and Malaise, Michel and Merville, Marie-Paule",
  title        = "Discovery of new rheumatoid arthritis biomarkers using SELDI-TOF-MS ProteinChip approach",
  journal      = "Arthritis and Rheumatism",
  number       = "12",
  volume       = "52",
  pages        = "3801--3812",
  month        = "nov",
  year         = "2005",
  keywords     = "bioinformatics, machine learning",
  url          = "http://www.montefiore.ulg.ac.be/services/stochastic/pubs/2005/DFMGLRBWPMM05"
}

Other publications in the database

» Dominique deSeny
» Marianne Fillet
» Marie-Alice Meuwis
» Pierre Geurts
» Laurence Lutteri
» Clio Ribbens
» Vincent Bours
» Louis Wehenkel
» Michel Malaise
» Marie-Paule Merville