The transition from daylight saving time to standard time leads to depressions
The number of people diagnosed with depression at psychiatric hospitals increases immediately after the transition from daylight saving time to standard time—this is the conclusion of a recent register-based study from Denmark.
"The year has 16 months: November, December, January, February, March, April, May, June, July, August, September, October, November, November, November, November," writes the Danish poet Henrik Nordbrandt in a disheartening comment on the month we are about to enter.
And Nordbrandt is not the only one suffering in November. A recently published study documents that the number of people who are diagnosed with depression at psychiatric hospitals in Denmark increases immediately after the transition from daylight saving time to standard time. More specifically, the number of depression diagnoses during the month after the transition from daylight saving time is approximately eight per cent higher than expected based on the development in the number of diagnoses up to the transition.
The study is based on analysis of 185,419 depression diagnoses registered in The Central Psychiatric Research Register between 1995 and 2012.
According to Associate Professor Søren Østergaard from Aarhus University Hospital in Risskov, which is part of The Department of Clinical Medicine at Aarhus University, the increase in depression rates is too pronounced to be coincidental.
Søren D. Østergaard is one of the five researchers behind the study, which is the result of a collaboration between departments of psychiatry and political science at the universities of Aarhus, Copenhagen and Stanford.
"We are relatively certain that it is the transition from daylight saving time to standard time that causes the increase in the number of depression diagnoses and not, for example, the change in the length of the day or bad weather. In fact, we take these phenomena into account in our analyses," says Østergaard.
He also points out that even though the study is based on analysis of relatively severe depressions diagnosed at psychiatric hospitals, there is no reason to believe that the time transition only affects the propensity to develop more severe forms of depression.
"We expect that the entire spectrum of severity is affected by the transition from daylight saving time to standard time, and since depression is a highly prevalent illness, an increase of eight per cent corresponds to many cases", says Østergaard.
The study does not identify the underlying mechanism triggering the marked increase, but the researchers point to some possible causes. In Denmark, the transition from daylight saving time to standard time 'moves' one hour of daylight from the afternoon between 5:00 pm - 6:00 pm to the morning between 7:00 am - 8:00 am.
"We probably benefit less from the daylight in the morning between seven and eight, because many of us are either in the shower, eating breakfast or sitting in a car or bus on the way to work or school. When we get home and have spare time in the afternoon, it is already dark," explains Østergaard.
"Furthermore, the transition to standard time is likely to be associated with a negative psychological effect as it very clearly marks the coming of a period of long, dark and cold days," says Østergaard.
Why are the results of the study important? The researcher from Aarhus University is not in doubt:
"Our results should give rise to increased awareness of depression in the weeks following the transition to standard time. This is especially true for people with a tendency towards depression - as well as their relatives. Furthermore the healthcare professionals who diagnose and treat depression should also take our results into consideration," says Østergaard.
Note: Material may have been edited for length and content. For further information, please contact the cited source.
Hansen BT et al. Daylight savings time transitions and the incidence rate of unipolar depressive episodes. Epidemiology, Published Online October 2016. doi: 10.1097/EDE.0000000000000580
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