» Articles » PMID: 21044362

Latent Physiological Factors of Complex Human Diseases Revealed by Independent Component Analysis of Clinarrays

Overview
Publisher Biomed Central
Specialty Biology
Date 2010 Nov 4
PMID 21044362
Citations 4
Authors
Affiliations
Soon will be listed here.
Abstract

Background: Diagnosis and treatment of patients in the clinical setting is often driven by known symptomatic factors that distinguish one particular condition from another. Treatment based on noticeable symptoms, however, is limited to the types of clinical biomarkers collected, and is prone to overlooking dysfunctions in physiological factors not easily evident to medical practitioners. We used a vector-based representation of patient clinical biomarkers, or clinarrays, to search for latent physiological factors that underlie human diseases directly from clinical laboratory data. Knowledge of these factors could be used to improve assessment of disease severity and help to refine strategies for diagnosis and monitoring disease progression.

Results: Applying Independent Component Analysis on clinarrays built from patient laboratory measurements revealed both known and novel concomitant physiological factors for asthma, types 1 and 2 diabetes, cystic fibrosis, and Duchenne muscular dystrophy. Serum sodium was found to be the most significant factor for both type 1 and type 2 diabetes, and was also significant in asthma. TSH3, a measure of thyroid function, and blood urea nitrogen, indicative of kidney function, were factors unique to type 1 diabetes respective to type 2 diabetes. Platelet count was significant across all the diseases analyzed.

Conclusions: The results demonstrate that large-scale analyses of clinical biomarkers using unsupervised methods can offer novel insights into the pathophysiological basis of human disease, and suggest novel clinical utility of established laboratory measurements.

Citing Articles

Identifying and mitigating biases in EHR laboratory tests.

Pivovarov R, Albers D, Sepulveda J, Elhadad N J Biomed Inform. 2014; 51:24-34.

PMID: 24727481 PMC: 4194228. DOI: 10.1016/j.jbi.2014.03.016.


Defining a comprehensive verotype using electronic health records for personalized medicine.

Boland M, Hripcsak G, Shen Y, Chung W, Weng C J Am Med Inform Assoc. 2013; 20(e2):e232-8.

PMID: 24001516 PMC: 3861934. DOI: 10.1136/amiajnl-2013-001932.


Exploiting time in electronic health record correlations.

Hripcsak G, Albers D, Perotte A J Am Med Inform Assoc. 2011; 18 Suppl 1:i109-15.

PMID: 22116643 PMC: 3241180. DOI: 10.1136/amiajnl-2011-000463.


Selected proceedings of the 2010 Summit on Translational Bioinformatics.

Mendonca E, Tarczy-Hornoch P BMC Bioinformatics. 2010; 11 Suppl 9:S1.

PMID: 21044356 PMC: 2967739. DOI: 10.1186/1471-2105-11-S9-S1.

References
1.
Troyanskaya O, Cantor M, Sherlock G, Brown P, Hastie T, Tibshirani R . Missing value estimation methods for DNA microarrays. Bioinformatics. 2001; 17(6):520-5. DOI: 10.1093/bioinformatics/17.6.520. View

2.
Kiviniemi V, Kantola J, Jauhiainen J, Hyvarinen A, Tervonen O . Independent component analysis of nondeterministic fMRI signal sources. Neuroimage. 2003; 19(2 Pt 1):253-60. DOI: 10.1016/s1053-8119(03)00097-1. View

3.
OSullivan B, Linden M, Frelinger 3rd A, Barnard M, Spencer-Manzon M, Morris J . Platelet activation in cystic fibrosis. Blood. 2005; 105(12):4635-41. DOI: 10.1182/blood-2004-06-2098. View

4.
Wren T, Bluml S, Tseng-Ong L, Gilsanz V . Three-point technique of fat quantification of muscle tissue as a marker of disease progression in Duchenne muscular dystrophy: preliminary study. AJR Am J Roentgenol. 2007; 190(1):W8-12. DOI: 10.2214/AJR.07.2732. View

5.
Aris R, Merkel P, Bachrach L, Borowitz D, Boyle M, Elkin S . Guide to bone health and disease in cystic fibrosis. J Clin Endocrinol Metab. 2004; 90(3):1888-96. DOI: 10.1210/jc.2004-1629. View