Original Study

Open Access

|

Peer-reviewed

Efficacy of Cognitive-Behaviour Therapy in Treating Mixed Anxiety and Depression: A Case Study

Kamble J , Singh. R

DIP: 18.02.013/20160102

DOI: 10.25215/2455/0102013

Received: February 22, 2016; Revision Received: April 20, 2016; Accepted: June 25, 2016

Abstract

The aim of this case study was to assess the effectiveness of cognitive-behavioral therapy in the treatment of mixed anxiety-depression disorder. The client was a 35 yrs. old male, suffering from mixed anxiety and depression symptoms as diagnosed by the Psychiatrist. The assessment comprised of Hamilton anxiety scale and Beck depression inventory. The therapeutic program consisted of 12 sessions. The result showed that Cognitive-behavior therapy was effective in reducing anxiety and depression.

The authors profoundly appreciate all the people who have successfully contributed to ensuring this paper in place. Their contributions are acknowledged however their names cannot be mentioned.

The author declared no conflict of interest.

This is an Open Access Research distributed under the terms of the Creative Commons Attribution License (www.creativecommons.org/licenses/by/2.0), which permits unrestricted use, distribution, and reproduction in any Medium, provided the original work is properly cited.

Responding Author Information

Kamble J @ mailto:jyotikamble1987@gmail.com

Related Content
Efficacy of Cognitive-Behaviour Therapy in Treating Mixed Anxiety and Depression: A Case Study

Total Download: 0 | Total View: 425

PlumX Matrix

Plum Analytics uses research metrics to help answer the questions and tell the stories about research. Research metrics that immediately measure awareness and interest give us new ways to uncover and tell the stories of research.

Dimensions Matrix

Dimensions is a next-generation linked research information system that makes it easier to find and access the most relevant information, analyze the academic and broader outcomes of research, and gather insights to inform future strategy. (digital science)

Article Overview

ISSN 2348-5396

ISSN 2349-3429

DIP: 18.02.013/20160102

DOI: 10.25215/2455/0102013

Published in

Volume 01, Issue 2, April - June, 2016

  • 0Downloads
  • 0Citations
  • 425Views
  • 0Likes
How to Cite
Print
Share
Make a Submission