Endocrine pulse identification using penalized methods and a minimum set of assumptions

Author:

Vis Daniel J.1,Westerhuis Johan A.1,Hoefsloot Huub C. J.1,Pijl Hanno2,Roelfsema Ferdinand2,van der Greef Jan3,Smilde Age K.1

Affiliation:

1. BioSystems Data Analysis group, Swammerdam Institute for Life Science, University of Amsterdam, Amsterdam;

2. Leiden University Medical Center, Department of Endocrinology and Metabolic Diseases, Leiden, The Netherlands

3. TNO Quality of Life, Zeist; and

Abstract

The detection of hormone secretion episodes is important for understanding normal and abnormal endocrine functioning, but pulse identification from hormones measured with short interval sampling is challenging. Furthermore, to obtain useable results, the model underlying hormone secretion and clearance must be augmented with restrictions based on biologically acceptable assumptions. Here, using the assumption that there are only a few time points at which a hormone is secreted, we used a modern penalized nonlinear least-squares setup to select the number of secretion events. We did not assume a particular shape or frequency distribution for the secretion pulses. Our pulse identfication method, VisPulse, worked well with luteinizing hormone (LH), cortisol, growth hormone, or testosterone. In particular, applying our modeling strategy to previous LH data revealed a good correlation between the modeled and measured LH hormone concentrations, the estimated secretion pattern was sparse, and the small and structureless residuals indicated a proper model with a good fit. We benchmarked our method to AutoDecon, a commonly used hormone secretion model, and performed releasing hormone infusion experiments. The results of these experiments confirmed that our method is accurate and outperforms AutoDecon, especially for detecting silent periods and small secretion events, suggesting a high-secretion event resolution. Method validation using (releasing hormone) infusion data revealed sensitivities and selectivities of 0.88 and 0.95 and of 0.69 and 0.91 for VisPulse and AutoDecon, respectively.

Publisher

American Physiological Society

Subject

Physiology (medical),Physiology,Endocrinology, Diabetes and Metabolism

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