Routine Outcome Monitoring in Psychotherapy Treatment using
Sentiment-Topic Modelling Approach
- URL: http://arxiv.org/abs/2212.08111v1
- Date: Thu, 8 Dec 2022 20:14:10 GMT
- Title: Routine Outcome Monitoring in Psychotherapy Treatment using
Sentiment-Topic Modelling Approach
- Authors: Noor Fazilla Abd Yusof, Chenghua Lin
- Abstract summary: Continuous monitoring patient's progress can significantly improve the therapy outcomes to an expected change.
Currently, the evaluation system is based on the clinical-rated and self-report questionnaires.
A computational method for measuring and monitoring patient progress over the course of treatment is needed.
- Score: 10.944940802875573
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Despite the importance of emphasizing the right psychotherapy treatment for
an individual patient, assessing the outcome of the therapy session is equally
crucial. Evidence showed that continuous monitoring patient's progress can
significantly improve the therapy outcomes to an expected change. By monitoring
the outcome, the patient's progress can be tracked closely to help clinicians
identify patients who are not progressing in the treatment. These monitoring
can help the clinician to consider any necessary actions for the patient's
treatment as early as possible, e.g., recommend different types of treatment,
or adjust the style of approach. Currently, the evaluation system is based on
the clinical-rated and self-report questionnaires that measure patients'
progress pre- and post-treatment. While outcome monitoring tends to improve the
therapy outcomes, however, there are many challenges in the current method,
e.g. time and financial burden for administering questionnaires, scoring and
analysing the results. Therefore, a computational method for measuring and
monitoring patient progress over the course of treatment is needed, in order to
enhance the likelihood of positive treatment outcome. Moreover, this
computational method could potentially lead to an inexpensive monitoring tool
to evaluate patients' progress in clinical care that could be administered by a
wider range of health-care professionals.
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