Effects of Transcranial Direct Current Stimulation on Reward Learning in Subclinical Depression.
NCT ID: NCT03393312
Last Updated: 2024-11-22
Study Results
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Basic Information
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COMPLETED
NA
80 participants
INTERVENTIONAL
2018-02-02
2021-12-01
Brief Summary
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Detailed Description
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One potential way of improving the antidepressant efficacy of tDCS might be to combine it with a reward learning task. There is evidence from rodent and human studies that tDCS enhances activity-dependent synaptic plasticity and behavioural learning and retention (Fritsch et al., 2010; O'Shea et al., 2017; Reis et al., 2009).
In depression, people prioritize the processing of negative information at the cost of positive information and this negative bias is theorized to play a major role in the maintenance of depressive symptoms (Kube, Schwarting, Rozenkrantz, Glombiewski, \& Rief, 2020). Therefore, by having depressed participants learn from reward, and increase their learning/retention via tDCS, this could potentially counteract negative bias and thus increase the antidepressant potential of tDCS.
In an earlier proof-of-concept study in young healthy volunteers (without low mood), we showed that tDCS applied during, but not before, an information-bias learning task increased reward learning rates. Here, we will test for the same effect in young healthy volunteers with subclinical depression. The study will involve online screening, a face-to-face screening session and two tDCS + learning sessions. Task performance will be fitted with a computational reinforcement learning model. Analyses will include both computational and non-computational measures of task behaviour.
Primary hypotheses:
1. Bifrontal compared to sham tDCS applied during the information-bias learning task will increase the learning rate from positive outcomes.
2. Bifrontal compared to sham tDCS applied during the task will increase the percentage of win-driven choices.
3. The effects of bifrontal tDCS will be cognitive state dependent, i.e. the predicted effects will be specific to stimulation applied during but not prior to learning.
Secondary hypothesis:
A growing body of evidence suggests that depression and anxiety are characterised by a reduced ability to adjust learning rates to volatility of action-outcome contingencies (Browning, Behrens, Jocham, O'Reilly, \& Bishop, 2015; Gagne, Zika, Dayan, \& Bishop, 2020; Pulcu \& Browning, 2017). Therefore, we will also investigate whether bifrontal tDCS might increase participants' ability to adjust their learning rates to the volatility context. This is exploratory, since there is no current evidence that tDCS can improve this ability.
Sample size: Our primary goal is to test hypothesis 1 that bifrontal compared to sham tDCS applied during the information-bias learning task will increase the learning rate from positive outcomes. In our previous study in healthy volunteers we observed this effect, which was most pronounced in the losses-volatile condition (paired t-test contrasting bifrontal and sham tDCS in the losses volatile blocks: t(19) = 2.88, p = .009), with an effect size of Cohen's d = 0.522. To detect an effect of this size with a power of 80% and an alpha level of .05 requires 31 participants. To account for a potential overestimation of the effect size we will recruit 40 participants, which should yield a power level of .89 for the effect size observed in our previous study. To keep sample sizes equal across conditions, we will recruit another 40 participants for the offline condition.
Screening: Participants will be asked to fill out a pre-screening online depression questionnaire (Beck Depression Inventory - II (BDI)) and a safety screening form to identify potential contraindications to tDCS. Participants with a BDI score of ≥10 will be invited to a 1-hour screening session. The structured clinical interview (SCID) will be administered and the researcher will interview the participant about their tDCS safety screening questionnaire. If there are no contraindications to tDCS and no indications of current or history of bipolar disorder, the researcher will schedule two tDCS testing sessions.
Experimental task: Participants will perform the Information Bias Learning Task developed by (Pulcu \& Browning, 2017). The same task protocol as in our previous study will be used (Overman, Sarrazin, Browning, \& O'Shea, 2021). In short, participants will be asked to press a button to choose between two shapes on each trial. After they choose, the word "win" and "loss" will appear on the screen, each associated with one of the two shapes. The wins and losses are independent of each other, i.e. both can also appear with the same shape. If the chosen shape is associated with a win this leads to a 10 pence financial gain; a loss is minus 10 pence. The cumulative total is shown continuously in the bottom centre of the screen throughout the task. Participants start with a total of £1.50. This task is designed to assess the extent to which participants choices are relatively influenced by win vs. loss outcomes. Participants will perform 6 task blocks of 80 trials. In the first and sixth block ("both volatile blocks"), the wins and losses each have a 75% probability of being associated with one of the shapes. The shape the wins or losses are associated with changes over time. In the second to fifth task blocks, one outcome is associated with one shape in 75% of the trials. The shape the wins or losses are associated with changes over time. The other outcome is associated with both shapes in 50% of the trials. Each participant performs two "wins-volatile" and two "losses-volatile" blocks in alternating order. Half of the participants perform a "win-volatile" block first, and the other half a "loss-volatile" block first.
Testing sessions: Participants will be asked to fill out mood and anxiety questionnaires. At the beginning of the first session the Trait subscale of the State Trait Anxiety Inventory (STAI)(Spielberger, 1983) will be completed. In both sessions, before and after performing the task participants will complete the State subscale of the STAI and the Positive and Negative Affect Scales (PANAS)(Watson, Clark, \& Tellegen, 1988)). The researcher will explain the computerised task, and the participant will get the opportunity to practise the task. The researcher will then set up the tDCS equipment with the anode over the left dorsolateral prefrontal cortex (DLPFC) and the cathode over the right DLPFC, in the F3 and F4 EEG electrode positions. The researcher will briefly test the tDCS to ensure that the participant is comfortable with the stimulation. The participant will perform one ("both volatile") baseline block of the task without tDCS. In the 'online' condition, tDCS will be applied during the task - for a duration of 20 minutes at 2 mA during the second and third task blocks. After the stimulation ends, participants will perform the remaining task blocks 4 and 5 (to test for persistence of any effects post-tDCS), followed by a repeat of the "both volatile" block performed at baseline. In the 'offline' condition, all procedures will be the same except that stimulation will be applied after the baseline ("both volatile") block and before the remaining blocks, while participants sit at rest.
Statistical analysis:
To test hypothesis 1, that bifrontal compared to sham tDCS applied during the task will increase the learning rate from win outcomes, we will run a repeated measures analysis of variance (ANOVA) on the learning rates in the "wins-volatile" and "losses-volatile" blocks, including the within-subject factors tDCS Condition (bifrontal vs. sham), Valence (win vs. loss outcomes), Volatility (wins-volatile vs. losses-volatile blocks) and Time (first vs. second half of the four task blocks). Baseline learning rates for wins and losses in the first task block of the first session will be included as covariates.
First, we will test for an interaction effect between tDCS Condition and Valence. To test our key prediction, we will run a priori planned contrasts of real vs. sham tDCS on win learning rates. Since in our previous study, the tDCS-induced increase in win learning rates was most pronounced in the losses-volatile condition, we will contrast the real-sham win learning rate separately for the losses-volatile and wins-volatile conditions.
To test hypothesis 2 that bifrontal compared to sham tDCS will increase the proportion of win-driven choices, we will run an ANOVA on the proportion of win-driven choices including the factors tDCS Condition, Volatility and Time. We will test for a main effect of tDCS Condition, as well as for an interaction effect between tDCS Condition and Volatility. The interaction effect will be followed up by planned contrasts of bifrontal versus sham tDCS, separately for the wins-volatile condition and the losses-volatile conditions.
To compare the effect of online versus offline bifrontal tDCS on the win learning rate and the proportion of win-driven choices (hypothesis 3), we will run ANOVAs on the combined dataset (online and offline condition), adding the factor "Stimulation Time" (before vs. during task performance). For learning rates, we will test for a main effect of Stimulation Time and/or an interaction between Stimulation Time and tDCS Condition and/or Valence. Follow-up ANOVAs will separate the data by Stimulation Time and analyse each dataset as described for Hypothesis 1 above, to test for an effect of tDCS on win learning rates. The effect in each condition (whether significant or not) will be quantified and contrasted across the two Stimulation Time conditions, to test the hypothesis that online but not offline tDCS will increase win learning rates. The same analysis approach will be used for the proportion of win-driven choices.
Regarding our secondary hypothesis that online bifrontal compared to sham tDCS might improve participants' ability to adjust their learning rate to the volatility context, we will conduct exploratory analyses, using ANOVA to test the effect of tDCS on the difference in win and loss learning rates between volatile and stable blocks (i.e. dependent variables will be: Win delta LR (win learning rate in wins-volatile blocks minus win learning rate in losses-volatile blocks) and Loss delta LR (loss learning rate in losses volatile blocks minus loss learning rate in wins volatile blocks). We will test for an interaction between Stimulation Time and tDCS Condition on Win and Loss delta LRs. This will be followed up by planned contrasts within and between the online and offline tDCS Conditions, as described above for hypothesis 3.
Conditions
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Study Design
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RANDOMIZED
CROSSOVER
OTHER
TRIPLE
Study Groups
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Bifrontal tDCS
20 minutes of 2 mA transcranial direct current stimulation (tDCS), with the anode placed over the left dorsolateral prefrontal cortex and the cathode placed over the right dorsolateral prefrontal cortex (F3 and F4 according to the 10/20 international EEG system, respectively).
The stimulation will be applied before or during task performance, depending on the condition assignment.
Transcranial direct current stimulation (tDCS)
Electric current
Sham tDCS
Participants receive 20 minutes of sham tDCS, with the anode placed over the left dorsolateral prefrontal cortex and the cathode placed over the right dorsolateral prefrontal cortex (F3 and F4 according to the 10/20 international EEG system, respectively). In sham tDCS, stimulation starts with 8s fade in followed by 30s direct current followed by 5s fade out followed by 870s without any stimulation.
The stimulation will be applied before or during task performance, depending on the condition assignment.
Transcranial direct current stimulation (tDCS)
Electric current
Interventions
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Transcranial direct current stimulation (tDCS)
Electric current
Eligibility Criteria
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Inclusion Criteria
* Participant has a score of \>9 on Beck's Depression Inventory II (BDI-II)
* Fluent English-speaking
* Right-handed
Exclusion Criteria
* Personal or family history of epileptic fits or seizures
* Family history of extreme mood fluctuations or bipolar disorder
* Currently pregnant or current likelihood of becoming pregnant
* Significant suicidal ideation or depression requiring immediate clinical referral
18 Years
45 Years
ALL
Yes
Sponsors
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Medical Research Council
OTHER_GOV
University of Oxford
OTHER
Responsible Party
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DrJacintaO'Shea
Principal Investigator
Principal Investigators
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Jacinta O'Shea, PhD
Role: PRINCIPAL_INVESTIGATOR
University of Oxford
Locations
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FMRIB Centre, John Radcliffe Hospital, University of Oxford
Oxford, , United Kingdom
Countries
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References
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Browning M, Behrens TE, Jocham G, O'Reilly JX, Bishop SJ. Anxious individuals have difficulty learning the causal statistics of aversive environments. Nat Neurosci. 2015 Apr;18(4):590-6. doi: 10.1038/nn.3961. Epub 2015 Mar 2.
Fritsch B, Reis J, Martinowich K, Schambra HM, Ji Y, Cohen LG, Lu B. Direct current stimulation promotes BDNF-dependent synaptic plasticity: potential implications for motor learning. Neuron. 2010 Apr 29;66(2):198-204. doi: 10.1016/j.neuron.2010.03.035.
Gagne C, Zika O, Dayan P, Bishop SJ. Impaired adaptation of learning to contingency volatility in internalizing psychopathology. Elife. 2020 Dec 22;9:e61387. doi: 10.7554/eLife.61387.
Kube T, Schwarting R, Rozenkrantz L, Glombiewski JA, Rief W. Distorted Cognitive Processes in Major Depression: A Predictive Processing Perspective. Biol Psychiatry. 2020 Mar 1;87(5):388-398. doi: 10.1016/j.biopsych.2019.07.017. Epub 2019 Jul 29.
O'Shea J, Revol P, Cousijn H, Near J, Petitet P, Jacquin-Courtois S, Johansen-Berg H, Rode G, Rossetti Y. Induced sensorimotor cortex plasticity remediates chronic treatment-resistant visual neglect. Elife. 2017 Sep 12;6:e26602. doi: 10.7554/eLife.26602.
Pulcu E, Browning M. Affective bias as a rational response to the statistics of rewards and punishments. Elife. 2017 Oct 4;6:e27879. doi: 10.7554/eLife.27879.
Razza LB, Palumbo P, Moffa AH, Carvalho AF, Solmi M, Loo CK, Brunoni AR. A systematic review and meta-analysis on the effects of transcranial direct current stimulation in depressive episodes. Depress Anxiety. 2020 Jul;37(7):594-608. doi: 10.1002/da.23004. Epub 2020 Feb 26.
Reis J, Schambra HM, Cohen LG, Buch ER, Fritsch B, Zarahn E, Celnik PA, Krakauer JW. Noninvasive cortical stimulation enhances motor skill acquisition over multiple days through an effect on consolidation. Proc Natl Acad Sci U S A. 2009 Feb 3;106(5):1590-5. doi: 10.1073/pnas.0805413106. Epub 2009 Jan 21.
Other Identifiers
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R67041/RE002
Identifier Type: -
Identifier Source: org_study_id
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