Cuesta Frau, D.; Miró Martínez, P.; Oltra Crespo, S.; Molina Picó, A.; Vargas, B.; González, P.; Mahabala, C.... (2019). Classification of fever patterns using a single extracted entropy feature: A feasibility study based on Sample Entropy. Mathematical Biosciences and Engineering. 17(1):235-249. https://doi.org/10.3934/mbe.2020013
Por favor, use este identificador para citar o enlazar este ítem: http://hdl.handle.net/10251/202186
Título:
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Classification of fever patterns using a single extracted entropy feature: A feasibility study based on Sample Entropy
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Autor:
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Cuesta Frau, David
Miró Martínez, Pau
Oltra Crespo, Sandra
Molina Picó, Antonio
Vargas, Borja
González, Paula
Mahabala, Chakrapani
Pradeepa H. Dakappa
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Entidad UPV:
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Universitat Politècnica de València. Escuela Politécnica Superior de Alcoy - Escola Politècnica Superior d'Alcoi
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Fecha difusión:
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Resumen:
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[EN] Feveris a common symptom of many diseases. Fever temporal patterns can be different depending on the specific pathology. Differentiation of diseases based on multiple mathematical features and visua lobservations has ...[+]
[EN] Feveris a common symptom of many diseases. Fever temporal patterns can be different depending on the specific pathology. Differentiation of diseases based on multiple mathematical features and visua lobservations has been recently studied in the scientific literature. However,the classification of diseases using a single mathematical feature has not been tried yet. The aim of the present study is to assess the feasibility of classifying diseases based on fever patterns using a single mathematical feature, specifically an entropy measure,Sample Entropy.This was an observational study.Analysis was carried out using103 patients, 24 hour continuous tympanic temperature data. Sample Entropy feature was extracted from temperature data of patients. Grouping of diseases (infectious, tuberculosis, non tuberculosis, and dengue fever) was made based on physicians diagnosis and laboratory findings. The quantitative results confirm the feasibility of the approach proposed, with an overall classification accuracy close to 70%, and the capability of finding significant differences for all the classes studied.
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Palabras clave:
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Fever
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Time series classification
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Tuberculosis
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Dengue
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Diagnostic aids
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Sample entropy
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Trace segmentation
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Derechos de uso:
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Reserva de todos los derechos
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Fuente:
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Mathematical Biosciences and Engineering. (issn:
1547-1063
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DOI:
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10.3934/mbe.2020013
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Editorial:
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Springfield MO: American Institute of Mathematical Sciences
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Versión del editor:
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https\\doi.org\10.3934/mbe.2020013
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Código del Proyecto:
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info:eu-repo/grantAgreement/MICINN//PTQ-16-08538//Programa Torres Quevedo/
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Agradecimientos:
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The Spanish researchers were supported by the Torres Quevedo program of the Spanish Ministry of Science, codePTQ¿16¿08538. The Indian researchers were supported by the Kasturba Medical College and Hospitals, Manipal ...[+]
The Spanish researchers were supported by the Torres Quevedo program of the Spanish Ministry of Science, codePTQ¿16¿08538. The Indian researchers were supported by the Kasturba Medical College and Hospitals, Manipal University, Mangaluru, Karnataka, India.
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Tipo:
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Artículo
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