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José Luis Pardal-Refoyo
Hospital Universitario de Salamanca.IBSAL, Instituto de Investigación Biomédica de Salamanca.Universidad de Salamanca
España
http://orcid.org/0000-0002-7462-1606
Vol. 11 Núm. 3 (2020), Editorial, Páginas 243-252
DOI: https://doi.org/10.14201/orl.23624
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Resumen

La atención al paciente con patología de las glándulas tiroides y paratiroides es multidisciplinar. La formación y actualización de los conocimientos sobre el diagnós-tico y tratamiento de las patologías de tiroides y paratiroides es una necesidad en todas las especialidades implicadas. Página web del curso ‘Bases de Tiroidología y Paratiroidología en cirugía de tiroides y paratiroides’: http://tiroides.org.es/.

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