Abstract
Body temperature is usually employed in clinical practice by strict binary thresholding,
aiming to classify patients as having fever or not. In the last years, other approaches based on the
continuous analysis of body temperature time series have emerged. These are not only based on
absolute thresholds but also on patterns and temporal dynamics of these time series, thus providing
promising tools for early diagnosis. The present study applies three time series entropy calculation
methods (Slope Entropy, Approximate Entropy, and Sample Entropy) to body temperature records of
patients with bacterial infections and other causes of fever in search of possible differences that could
be exploited for automatic classification. In the comparative analysis, Slope Entropy proved to be a
stable and robust method that could bring higher sensitivity to the realm of entropy tools applied in
this context of clinical thermometry. This method was able to find statistically significant differences
between the two classes analyzed in all experiments, with sensitivity and specificity above 70% in
most cases.
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Vargas B, Cuesta-Frau D, González-López P, Fernández-Cotarelo MJ, Vázquez-Gómez Ó, Colás A, Varela M. Discriminating Bacterial Infection from Other Causes of Fever Using Body Temperature Entropy Analysis. Entropy (Basel). 2022 Apr 5;24(4):510. doi: 10.3390/e24040510. PMID: 35455174; PMCID: PMC9024484.
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