Autores/as

  • Alfonso Palmer Pol Facultad de Psicología. Universidad de las Islas Baleares
  • J. J. Montaño Moreno Facultad de Psicología. Universidad de las Islas Baleares
  • A. Calafat Far IREFREA España

DOI:

https://doi.org/10.20882/adicciones.623

Palabras clave:

Resumen

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2000-03-15

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