Machine Learning: Predicting Early Outcomes of Antidepressants in Children

Duration: 21 mins Publication Date: 30 Aug 2022 Next Review Date: 30 Aug 2025 DOI: 10.13056/acamh.20847

Description

In this podcast, we are joined by Dr. Paul Croarkin of the Department of Psychiatry and Psychology at the Mayo Clinic Rochester, Minnesota, and Dr. Arjun Athreya of the Department of Molecular Pharmacology and Experimental Therapeutics at the same institution. The focus of this podcast is on the JCPP paper ‘Evidence for machine learning guided early prediction of acute outcomes in the treatment of depressed children and adolescents with antidepressants’.

Learning Objectives

1. Paul and Arjun set the scene by detailing what they looked at in this study, providing us with a summary of the paper, plus sharing insights into the methodology used for the research, before turning to the key findings.
2. Detail what the next steps are, including how the tool could be used to measure a variety of other treatments. Paul and Arjun also comment on how this tool could be applied to extracting response trajectories to Cognitive Behavioural Therapy (CBT).
3. Translational opportunities for their research, including how they envisage their research being translated and what the implications of their findings are for CAMH professionals.

Related Content Links

JCPP

Paper Link

https://doi.org/10.1111/jcpp.13580

About this Lesson

Speakers

Dr. Paul Croarkin

Dr. Paul Croarkin

Professor of Psychiatry and the Research Co-Chair for Child and Adolescent Psychiatry at the Mayo Clinic College of Medicine and Science

The Association for Child and Adolescent Mental Health
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DISCLAIMER: While all transcripts were created by professional transcribers (unless otherwise stated), some may contain mistranslations resulting in inaccurate or nonsensical word combinations, or unintentional language. ACAMH is not responsible and will not be held liable for damages, financial or otherwise, that occur as a result of transcript inaccuracies.
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