Author:
Krzyściak Wirginia,Szwajca Marta,Śmierciak Natalia,Chrzan Robert,Turek Aleksander,Karcz Paulina,Bryll Amira,Pilecki Maciej,Morava Eva,Ligęzka Anna,Kozicz Tamas,Mazur Paulina,Batko Bogna,Skalniak Anna,Popiela Tadeusz
Abstract
AbstractIdentifying disease predictors through advanced statistical models enables the discovery of treatment targets for schizophrenia. In this study, a multifaceted clinical and laboratory analysis was conducted, incorporating magnetic resonance spectroscopy with immunology markers, psychiatric scores, and biochemical data, on a cohort of 45 patients diagnosed with schizophrenia and 51 healthy controls. The aim was to delineate predictive markers for diagnosing schizophrenia. A logistic regression model was used, as utilized to analyze the impact of multivariate variables on the prevalence of schizophrenia. Utilization of a stepwise algorithm yielded a final model, optimized using Akaike’s information criterion and a logit link function, which incorporated eight predictors (White Blood Cells, Reactive Lymphocytes, Red Blood Cells, Glucose, Insulin, Beck Depression score, Brain Taurine, Creatine and Phosphocreatine concentration). No single factor can reliably differentiate between healthy patients and those with schizophrenia. Therefore, it is valuable to simultaneously consider the values of multiple factors and classify patients using a multivariate model.
Funder
Priority Research Area BioS under the program Excellence Initiative—Research University at the Jagiellonian University in Krakow
Jagiellonian University Medical College Research, Poland
Publisher
Springer Science and Business Media LLC