Using Latent Class Mixture Models to Define Sepsis Endotypes

Langbeschreibung
Severe sepsis is associated with high mortality and is a common problem in the United States. Recently, studies have shown that efforts focused on lowering cytokine levels improve survival. The aim of this work is to define sepsis endotypes using longitudinal cytokine measurements. Sepsis endotypes were defined using latent class mixture models. Latent class mixture models were modeled using a natural log transformation of the actual time measurements. No other covariates were modeled and a parameterized link function using a basis of I-splines was chosen over a linear transformation to increase flexibility in the latent class trajectories. The number of latent classes were determined by a combination of the lowest BIC and clinical significance. After creating models for a variety of subsets derived from the source population, it was determined that mortality within a particular trajectory class is not only dependent upon the baseline cytokine value, but also dependent upon the rate of decent after baseline. A class with high baseline cytokine values that decrease quickly has lower mortality rates than classes who do not decline quickly.
Samantha J. Taylor is a Biostatistician at the University of Pittsburgh's Department of Critical Care Medicine. She holds a Master's Degree in Biostatistics from the University of Pittsburgh. Taylor is a member of the Delta Omega Honor Society and has received the Gertrude M. Cox award from the American Statistical Association.
ISBN-13:
9783330088030
Veröffentl:
2017
Erscheinungsdatum:
16.05.2017
Seiten:
52
Autor:
Samantha J. Taylor
Gewicht:
96 g
Format:
220x150x4 mm
Sprache:
Englisch

35,90 €*

Lieferzeit: Print on Demand - Lieferbar innerhalb von 3-5 Werktageni
Alle Preise inkl. MwSt. | zzgl. Versand