Herramientas tecnológicas para la medición y registro de movimiento objetivo de la hiperactividad

  1. Sempere Tortosa, Mireia L. 1
  2. Fernández Carrasco, Francisco 1
  3. García Fernández, José Manuel 1
  4. Cantó Díez, Tomás J.
  1. 1 Universitat d'Alacant
    info

    Universitat d'Alacant

    Alicante, España

    ROR https://ror.org/05t8bcz72

Revista:
Revista de Discapacidad, Clínica y Neurociencias: (RDCN)

ISSN: 2341-2526

Any de publicació: 2018

Volum: 5

Número: 1

Pàgines: 82-98

Tipus: Article

DOI: 10.14198/DCN.2018.5.1.06 DIALNET GOOGLE SCHOLAR lock_openRUA editor

Altres publicacions en: Revista de Discapacidad, Clínica y Neurociencias: (RDCN)

Resum

In the absence of any condition that unambiguously determines the existence of ADHD, the diagnosis is clinical, and is determined by the observation and information provided by parents and teachers. This is highly subjective and leads to disparate results, largely due to the lack of agreement in the evaluation instruments and procedures. Thus, the inaccuracy of the diagnosis of ADHD, based on subjective criteria, together with the fact that hyperactivity is one of the main symptoms of this disorder, cause that, for more than a decade, several studies have been carried out to record objective measures of movements in the subjects. This paper reviews different technologies available in the market that allow the recording and measurement of the movement of a human body in order to facilitate obtaining an objective measurement of movement that supports the diagnosis of ADHD. Three different technologies are reviewed: video systems; motion capture systems based on sensors or markers; and depth map systems, describing the advantages and disadvantages of each one of them to support the diagnosis of ADHD.

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