Psilocybin based therapy for cancer related distress, a systematic review and meta analysis

Authors: Camile Bahi

arXiv: 1910.05176v1 - DOI (q-bio.QM)
33 pages, 3 figures, 6 tables

Abstract: Background : depression and anxiety are common in patients with cancer, classical antidepressant has no proven efficacy on this type of distress compared to placebo. A Psilocybin (serotoninergic hallucinogen) based therapy appear to give promising results among recent studies. Aims : to examine if a Psilocybin based therapy could be considered for patients with cancer related depression and anxiety and to assume it's safety. To sum up Heffter institute work, as the main institute working on this topic. Method : following PRISMA (Preferred Reporting Items for Systematic reviews and Meta Analyses) guidelines, a systematic review was conducted, for quantitative and qualitative studies about psilocybin for treating cancer related depression and anxiety. Pubmed and the Heffter institute databases have been reached for this purpose, separating studies in types : qualitative or quantitative. We studied the effects on cancer related depression and anxiety separately and investigated the psychological and neurobiological mechanisms. Results : the four studies included a total of 105 randomized patients, meta analysis on depression and anxiety with pooled Peto odds ratio showed a significant superiority of Psilocybin over placebo. The substance appeared to be safe for this type of patients. Surprising psychological mechanisms hypothesis have been found out. Conclusion : psilocybin appear to be potentially useful as a treatment for cancer related depression and anxiety. Future research should verify these findings on wider population and eventually seek a way to apply therapy to non hospitalized (ambulatory) patients. Keywords : psilocybin, depression, anxiety, review, meta-analysis

Submitted to arXiv on 10 Oct. 2019

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