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Advisor(s)
Abstract(s)
Modeling of medical data often requires the inclusion of non-linear forms of the predictors and, the Generalized
Additive Models (GAMs) can provide an excellent fit in the presence of non-linear relationships and significant noise in
the predictor variables. The accurate assessment of QT interval is of paramount importance since its prolongation (LQTS)
is a life threatening condition. The QT interval is affected by heart rate and gender and may be adjusted to improve the
detection of patients at increased risk. Bazett's formula is the most commonly used QT correction formula, and takes into
account only the heart rate assessed by the RR interval, and cut-of values of corrected QT are defined according to gender.
In this work we analyzed relevance of QRS, together with gender and RR to explain QT length using GAMs. Results
showed that QRS and gender are significant to non-pathological QT modelling.
Description
Conferência realizada em Rhodes, Grécia, de 23-28 de setembro de 2019.
Keywords
Pedagogical Context
Citation
Publisher
AIP Publishing