Background
Evidence-based treatments for depression exist but not all patients benefit from them. Efforts to develop predictive models that can assist clinicians in allocating treatments are ongoing, but there are major issues with acquiring the volume and breadth of data needed to train these models. We examined the feasibility, tolerability, patient characteristics, and data quality of a novel protocol for internet-based treatment research in psychiatry that may help advance this field.
Methods
A fully internet-based protocol was used to gather repeated observational data from patient cohorts receiving internet-based cognitive behavioural therapy (iCBT) (N = 600) or antidepressant medication treatment (N = 110). At baseline, participants provided > 600 data points of self-report data, spanning socio-demographics, lifestyle, physical health, clinical and other psychological variables and completed 4 cognitive tests. They were followed weekly and completed another detailed clinical and cognitive assessment at week 4. In this paper, we describe our study design, the demographic and clinical characteristics of participants, their treatment adherence, study retention and compliance, the quality of the data gathered, and qualitative feedback from patients on study design and implementation.
Results
Participant retention was 92% at week 3 and 84% for the final assessment. The relatively short study duration of 4 weeks was sufficient to reveal early treatment effects; there were significant reductions in 11 transdiagnostic psychiatric symptoms assessed, with the largest improvement seen for depression. Most participants (66%) reported being distracted at some point during the study, 11% failed 1 or more attention checks and 3% consumed an intoxicating substance. Data quality was nonetheless high, with near perfect 4-week test retest reliability for self-reported height (ICC = 0.97).
Conclusions
An internet-based methodology can be used efficiently to gather large amounts of detailed patient data during iCBT and antidepressant treatment. Recruitment was rapid, retention was relatively high and data quality was good. This paper provides a template methodology for future internet-based treatment studies, showing that such an approach facilitates data collection at a scale required for machine learning and other data-intensive methods that hope to deliver algorithmic tools that can aid clinical decision-making in psychiatry.
This chapter gives a broad overview of the “habit hypothesis” of obsessive-compulsive disorder (OCD). Most patients with OCD recognize that becoming trapped in seemingly never-ending streams of repetitive ritualistic behaviors defies reason. Importantly, this recognition is not enough to put a halt to these behaviors. It has been proposed that these compulsions are “bad habits”: that external cues trigger an urge to perform a familiar response, which the patient cannot resist. The chapter presents the basics of what habits are, and how they relate to what we call “goal-directed control” over action. Next, an in-depth analysis of a series of empirical investigations that tested this hypothesis will be presented. In the final section, the habit hypothesis of OCD will be put into the broader context of “compulsivity” as a putative trans-diagnostic trait that is relevant for many psychiatric disorders.
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