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Prediction of Acute Coronary Syndromes by Urinary Proteome Analysis
Nay M. Htun
Dianna J. Magliano
Zhen-Yu Zhang
Jasmine Lyons
Thibault Petit
Esther Nkuipou Kenfack
Adela Ramirez-Torres
Constantin von Zur Mühlen
David M. Maahs
Joost P. Schanstra
Claudia Pontillo
Martin Pejchinovski
Janet K. Snell-Bergeon
Christian Delles
Harald Mischak
Jan A. Staessen
Jonathan E. Shaw
Thomas Koeck
Karlheinz Peter
出版
Universität
, 2017
URL
http://books.google.com.hk/books?id=4R2xzwEACAAJ&hl=&source=gbs_api
註釋
Abstract: Identification of individuals who are at risk of suffering from acute coronary syndromes (ACS) may allow to introduce preventative measures. We aimed to identify ACS-related urinary peptides, that combined as a pattern can be used as prognostic biomarker. Proteomic data of 252 individuals enrolled in four prospective studies from Australia, Europe and North America were analyzed. 126 of these had suffered from ACS within a period of up to 5 years post urine sampling (cases). Proteomic analysis of 84 cases and 84 matched controls resulted in the discovery of 75 ACS-related urinary peptides. Combining these to a peptide pattern, we established a prognostic biomarker named Acute Coronary Syndrome Predictor 75 (ACSP75). ACSP75 demonstrated reasonable prognostic discrimination (c-statistic = 0.664), which was similar to Framingham risk scoring (c-statistics = 0.644) in a validation cohort of 42 cases and 42 controls. However, generating by a composite algorithm named Acute Coronary Syndrome Composite Predictor (ACSCP), combining the biomarker pattern ACSP75 with the previously established urinary proteomic biomarker CAD238 characterizing coronary artery disease as the underlying aetiology, and age as a risk factor, further improved discrimination (c-statistic = 0.751) resulting in an added prognostic value over Framingham risk scoring expressed by an integrated discrimination improvement of 0.273 ± 0.048 (P