BACKGROUND: Cholesterol efflux capacity (CEC) is a measure of HDL function that, in cell-based studies, has demonstrated an inverse association with cardiovascular disease. The cell-based measure of CEC is complex and low-throughput. We hypothesized that assessment of the lipoprotein proteome would allow for precise, high-throughput CEC prediction. METHODS: After isolating lipoprotein particles from serum, we used LC-MS/MS to quantify 21 lipoprotein-associated proteins. A bioinformatic pipeline was used to identify proteins with univariate correlation to cell-based CEC measurements and generate a multivariate algorithm for CEC prediction (pCE). Using logistic regression, protein coefficients in the pCE model were reweighted to yield a new algorithm predicting coronary artery disease (pCAD). RESULTS: Discovery using targeted LC-MS/MS analysis of 105 training and test samples yielded a pCE model comprising 5 proteins (Spearman r = 0.86). Evaluation of pCE in a case-control study of 231 specimens from healthy individuals and patients with coronary artery disease revealed lower pCE in cases (P = 0.03). Derived within this same study, the pCAD model significantly improved classification (P < 0.0001). Following analytical validation of the multiplexed proteomic method, we conducted a case-control study of myocardial infarction in 137 postmenopausal women that confirmed significant separation of specimen cohorts in both the pCE (P = 0.015) and pCAD (P = 0.001) models. CONCLUSIONS: Development of a proteomic pCE provides a reproducible high-throughput alternative to traditional cell-based CEC assays. The pCAD model improves stratification of case and control cohorts and, with further studies to establish clinical validity, presents a new opportunity for the assessment of cardiovascular health.
BACKGROUND:Cholesterol efflux capacity (CEC) is a measure of HDL function that, in cell-based studies, has demonstrated an inverse association with cardiovascular disease. The cell-based measure of CEC is complex and low-throughput. We hypothesized that assessment of the lipoprotein proteome would allow for precise, high-throughput CEC prediction. METHODS: After isolating lipoprotein particles from serum, we used LC-MS/MS to quantify 21 lipoprotein-associated proteins. A bioinformatic pipeline was used to identify proteins with univariate correlation to cell-based CEC measurements and generate a multivariate algorithm for CEC prediction (pCE). Using logistic regression, protein coefficients in the pCE model were reweighted to yield a new algorithm predicting coronary artery disease (pCAD). RESULTS: Discovery using targeted LC-MS/MS analysis of 105 training and test samples yielded a pCE model comprising 5 proteins (Spearman r = 0.86). Evaluation of pCE in a case-control study of 231 specimens from healthy individuals and patients with coronary artery disease revealed lower pCE in cases (P = 0.03). Derived within this same study, the pCAD model significantly improved classification (P < 0.0001). Following analytical validation of the multiplexed proteomic method, we conducted a case-control study of myocardial infarction in 137 postmenopausal women that confirmed significant separation of specimen cohorts in both the pCE (P = 0.015) and pCAD (P = 0.001) models. CONCLUSIONS: Development of a proteomic pCE provides a reproducible high-throughput alternative to traditional cell-based CEC assays. The pCAD model improves stratification of case and control cohorts and, with further studies to establish clinical validity, presents a new opportunity for the assessment of cardiovascular health.
Authors: Pradeep Natarajan; Tim S Collier; Zhicheng Jin; Asya Lyass; Yiwei Li; Nasrien E Ibrahim; Renata Mukai; Cian P McCarthy; Joseph M Massaro; Ralph B D'Agostino; Hanna K Gaggin; Cory Bystrom; Marc S Penn; James L Januzzi Journal: J Am Coll Cardiol Date: 2019-05-07 Impact factor: 24.094
Authors: Diego Lucero; Anna Wolska; Zahra Aligabi; Sarah Turecamo; Alan T Remaley Journal: Endocrinol Metab Clin North Am Date: 2022-07-08 Impact factor: 4.748
Authors: Mathias Cardner; Mustafa Yalcinkaya; Sandra Goetze; Edlira Luca; Miroslav Balaz; Monika Hunjadi; Johannes Hartung; Andrej Shemet; Nicolle Kränkel; Silvija Radosavljevic; Michaela Keel; Alaa Othman; Gergely Karsai; Thorsten Hornemann; Manfred Claassen; Gerhard Liebisch; Erick Carreira; Andreas Ritsch; Ulf Landmesser; Jan Krützfeldt; Christian Wolfrum; Bernd Wollscheid; Niko Beerenwinkel; Lucia Rohrer; Arnold von Eckardstein Journal: JCI Insight Date: 2020-01-16