Conducta suicida y los parámetros acústicos de la voz y el habla. Revisión sistemática
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Resumen
El suicidio es un problema de salud a nivel mundial. Si bien existe literatura que ha abordado distintas perspectivas de la conducta y riesgo suicida, se requiere ahondar en nuevos métodos que permitan su valoración. Es por ello que se buscó evaluar a través de la literatura la utilidad de las medidas de voz y de habla en la detección y seguimiento de la conducta suicida. Esto se realizó mediante una búsqueda de literatura científica en diferentes bases de datos. Dentro de los resultados obtenidos fue posible observar que las tareas más utilizadas para evaluar voz y habla en la conducta y riesgo suicida, son las de libre expresión como la entrevista y la lectura de texto. La evidencia muestra un vínculo entre los parámetros acústicos de la voz y del habla y el riesgo suicida; también su utilidad en el seguimiento de ésta.
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Referencias
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