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Articles

An evaluation of the effects of a National Health Service Trust merger on the learning and development of staff

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Pages 557-573 | Received 06 Apr 2010, Accepted 25 Aug 2010, Published online: 22 Oct 2010
 

Abstract

Although mergers are increasingly common amongst National Health Trusts in the UK there is limited research on how National Health Service (NHS) mergers influence the learning and development of staff. This paper bridges the gap in the literature, through a case-study of a recent NHS Trust merger. It gives an account of the delivery of human resource development (HRD) post merger as seen through the eyes of staff from across the merged organization. The data were obtained from 21 unstructured interviews, nine group discussions, two focus group discussions and a form of micro-ethnography. In addition, quantitative data were used for triangulation purposes. Findings show that power differentials, cultural clashes and unequal access to training and development amongst staff have resulted in hostility towards the new organization. However, the strong management structures for professional members of staff have facilitated knowledge exchange across boundaries in the merged organization. The paper concludes by suggesting that without senior managers dealing with cultural issues and inequitable development opportunities, a number of unintended consequences of the merger are likely to occur.

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