[Sophrology: a different tool for infertile couples].

J Gynecol Obstet Biol Reprod (Paris)

UF d'AMP, Maternité Régionale Universitaire, 10, rue du Docteur-Heydenreich, CS 74213, 54042 Nancy Cedex.

Published: December 2006

Because of the high degree of complexity of assisted reproduction techniques (ART), the human and conscious dimensions of infertility problems are often neglected. Different strategies may help infertile couples coping with infertility and related treatments; among these, Caycedian sophrology relies on the cognitive, emotional, and somatic aspects of consciousness. In the present article, the authors report on their experience with sophrologic support for infertile patients by a midwife qualified in caycedian sophrology. Overall, since 1988, 310 couples have benefied from this kind of support, with an average of 10 sophrologic trainings per patient. Whereas some couples consider sophrology as a short time training to better cope with any particular aspect of their infertility treatment, others want to undertake more profound work on their body scheme. The authors wish to call the attention of ART professionals to this kind of medical support for infertile couples, and also to the particular role of midwives with sophrologic competence in an ART center.

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http://dx.doi.org/10.1016/s0368-2315(06)76481-xDOI Listing

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