Hunger

Paul Robinson; Finn Skårderud; Bente Sommerfeldt

Springer International Publishing

1

2019

en

9783319951218

iLEIO | PCs Apple App Store Android no Google Play

This work presents the adaptation of mentalization-based therapy for use in Eating Disorders (MBT-ED). The book starts with a presentation of the theoretical concept of mentalization and describes eating disorders from this perspective. This is followed by a discussion of the place of MBT-ED in eating disorders practice. MBT is first presented as the original model for borderline personality disorder, and then the model is further developed to address specific symptoms found in eating disorders, such as body image disturbance, restriction and purging. The original MBT model consists of outpatient treatment combined with individual and group psychotherapy, and psychoeducation in groups. The book then looks at supervision and training, and how an eating disorders team can develop a mentalizing focus. It goes on to describe the training required for practitioners to deliver individual and group MBT-ED and to supervise therapy. Lastly, it examines the implementation of the approach in different clinical settings, including inpatient services, and how management can be involved in negotiating barriers and taking advantage of enablers in the system. The authors have conducted a pilot randomized controlled trial and qualitative research in MBT-ED and have extensive experience in providing and supervising this novel therapy. MBT-ED is one of the few therapies for eating disorders that links theory of mind, and attachment and psychodynamic therapies and as such will be of great theoretical interest to a wide variety of clinicians and researchers.
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Acesso Perpétuo nao permitido

Leitura online: um utilizador por sessão (sem simultaneidade)
Leitura offline (com a APP): máximo de 2 dispositivos em simultâneo