Author:
Ludwig Birgit,König Daniel,Kapusta Nestor D.,Blüml Victor,Dorffner Georg,Vyssoki Benjamin
Abstract
Abstract
Methods of suicide have received considerable attention in suicide
research. The common approach to differentiate methods of suicide is the
classification into “violent” versus “non-violent” method. Interestingly,
since the proposition of this dichotomous differentiation, no further
efforts have been made to question the validity of such a classification of
suicides. This study aimed to challenge the traditional separation into
“violent” and “non-violent” suicides by generating a cluster analysis with a
data-driven, machine learning approach. In a retrospective analysis, data on
all officially confirmed suicides (N = 77,894) in Austria between 1970 and
2016 were assessed. Based on a defined distance metric between distributions
of suicides over age group and month of the year, a standard hierarchical
clustering method was performed with the five most frequent suicide methods.
In cluster analysis, poisoning emerged as distinct from all other methods –
both in the entire sample as well as in the male subsample. Violent suicides
could be further divided into sub-clusters: hanging, shooting, and drowning
on the one hand and jumping on the other hand. In the female sample, two
different clusters were revealed – hanging and drowning on the one hand and
jumping, poisoning, and shooting on the other. Our data-driven results in
this large epidemiological study confirmed the traditional dichotomization
of suicide methods into “violent” and “non-violent” methods, but on closer
inspection “violent methods” can be further divided into sub-clusters and a
different cluster pattern could be identified for women, requiring further
research to support these refined suicide phenotypes.
Publisher
Cambridge University Press (CUP)
Subject
Psychiatry and Mental health
Cited by
4 articles.
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