Τhe multiple temporalities of deep brain stimulation (DBS) in Greece.

Med Health Care Philos

Department of History and Philosophy of Science, University of Athens, Koritsas 31, Moschato, 18345, Athens, Greece.

Published: September 2019

This contribution intends to explore patients' lived experience, with a focus on the temporal dimension. On the basis of a qualitative study that led me to interview persons with Parkinson's disease (PD), caregivers, and medical professionals, I develop an empirical and philosophical investigation of the temporalities surrounding the implementation of deep brain stimulation (DBS) in Greece. I raise the issue of access to DBS medical care, and show how distinct temporalities are implied when the patients face such a matter: that of linear time, linked with the medical discourse, the bureaucratic time linked to administrative and financial hurdles in the implementation and maintenance of DBS, and the technological time of the body/technology fusion. I consider initially the impact of technology and health care settings on the lived experience of patients and the enactment of multiple bodies which are interrelated with the social world. I then expand my analysis in order to show that this experience cannot be a solipsistic one, or specific to one physician/patient relationship. It is fully socially shaped.

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http://dx.doi.org/10.1007/s11019-018-9861-yDOI Listing

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