Reflections on measuring disordered thoughts as expressed via language
Permanent link
https://hdl.handle.net/10037/30581Date
2023-02-06Type
Journal articleTidsskriftartikkel
Peer reviewed
Author
Elvevåg, BritaAbstract
Thought disorder, as inferred from disorganized and incoherent speech, is an important part of the clinical
presentation in schizophrenia. Traditional measurement approaches essentially count occurrences of certain
speech events which may have restricted their usefulness. Applying speech technologies in assessment can help
automate traditional clinical rating tasks and thereby complement the process. Adopting these computational
approaches affords clinical translational opportunities to enhance the traditional assessment by applying such
methods remotely and scoring various parts of the assessment automatically. Further, digital measures of language may help detect subtle clinically significant signs and thus potentially disrupt the usual manner by which
things are conducted. If proven beneficial to patient care, methods where patients’ voice are the primary data
source could become core components of future clinical decision support systems that improve risk assessment.
However, even if it is possible to measure thought disorder in a sensitive, reliable and efficient manner, there
remain many challenges to then translate into a clinically implementable tool that can contribute towards
providing better care. Indeed, embracing technology - notably artificial intelligence - requires vigorous standards for reporting underlying assumptions so as to ensure a trustworthy and ethical clinical science.
Publisher
ElsevierCitation
Elvevåg. Reflections on measuring disordered thoughts as expressed via language. Psychiatry Research. 2023;322Metadata
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