UroAnalisysSystem UroSystemTests: Un sistema de información para mejorar la gestión de las pruebas de análisis de orina
Resumen
Actualmente, hospitales en Huila-Colombia necesitan sistemas de información hospitalaria para garantizar la integridad y disponibilidad de la información de pacientes; además, tener disponible la información de pacientes en línea. Aunque, los sistemas son necesarios para muchas actividades, los hospitales del Huila no cuentan con sistemas de información. En consecuencia, personal de salud utiliza métodos no estructurados para acceder a los datos; que ocasiona la toma de decisiones inadecuadas. Por lo tanto, este trabajo presenta el diseño e implementación de un sistema de información para optimizar el proceso de gestión de pruebas de análisis de orina en hospitales del Huila, que mejore el acceso a la información. El sistema implementado utiliza el estándar HL7-FHIR, sobre plataformas Open-Source, y basado en la Web, escalable y compatible con otros sistemas de información hospitalaria. Finalmente, la solución propuesta minimiza tiempos de acceso y gestión de las pruebas integrales realizadas por el equipo médicos.
Citas
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