Recruitment

Recruitment Status
Not yet recruiting
Estimated Enrollment
Same as current

Summary

Conditions
  • Obsessive Compulsive Disorder
  • OCD
Type
Observational
Design
Observational Model: Case-OnlyTime Perspective: Prospective

Participation Requirements

Age
Between 18 years and 65 years
Gender
Both males and females

Description

This is a research study in which BCM is collaborating with Brown University/Butler Hospital and University of Pittsburgh. BCM and Butler Hospital will be enrolling sites. Brown University and University of Pittsburgh will be analyzing the assessment, EEG and facial recognition data. Subjects will p...

This is a research study in which BCM is collaborating with Brown University/Butler Hospital and University of Pittsburgh. BCM and Butler Hospital will be enrolling sites. Brown University and University of Pittsburgh will be analyzing the assessment, EEG and facial recognition data. Subjects will participate in a clinical interview (Day 1), and cognitive tasks with EEG (Day 2). Neural data (through EEG) will be collected from OCD subjects when their symptoms are provoked, so we can look for biomarkers of that change. The subjects will be monitored through EEG and video recording for facial recognition. After initial video and EEG setup subjects will complete the Beads task followed by the Provocation task. Day 1: Demographics Questionnaire. Assesses psychiatric and medical treatment history. SCID-5: Structured Clinical Interview for the DSM 5 (SCID): The SCID will be used to determine comorbid diagnoses at baseline. Yale-Brown Obsessive-Compulsive Scale (Y-BOCS): The YBOCS is a 10-item inventory that assesses severity of OCD symptoms Y-BOCS Symptom Checklist: The YBOCS symptom checklist assesses OCD symptom subtypes. Trait Core Dimensions Questionnaire (TCDQ): The TCDQ measures prevalence of harm avoidant or incompleteness traits related to OCD. Beck Anxiety Inventory (BAI). The BAI is a 21-question self-report inventory that is used for measuring the severity of anxiety. The questions used in this measure ask about common symptoms of anxiety that the participant has had during the past week. Beck Depression Inventory (BDI): The BDI is a 21-question self-report inventory designed to measure depression severity. Beads Task: Participants will be asked to make a series of categorical decisions that involve combining information about the value and probability of potential rewards. Subjects will sit in front of a computer monitor and place their hand over a box with orange and blue button that they will be asked to press based on their idea of which one will be the majority in a jar full of orange and blue beads. This task is designed to dissociate information value and quantity as the guesses are made based on information shown to the subject. Combining asymmetric rewards beads task with neuroimaging could dissociate neural signals related to information value from those related to information quantity. That is the goal here as we track neural activity through EEG measurements and facial recognition through video acquisition. This task should take 15-20 minutes to complete, not including EEG setup. Provocation of OC symptoms (PROVOC): PROVOC will be used to evoke manageable levels of OCD related distress. Three tasks will be developed collaboratively with the participant and independent evaluator that involve the participant being exposed in vivo to triggers that are considered by him/her impossible to confront without ritualizing. Each of the 3 tasks will be broken up into 7 steps, which provoke increasing levels of distress when encountered. Each step will be uniform in duration (i.e., one minute exposure) with the potential of 7 one-minute tasks with ~30 seconds break between steps, to provide brief rest for the patient and introduction of the next task. Participants will systematically confront triggers without ritualizing starting with easier items, and will continue until they feel their distress or need to ritualize is intolerable. This task will involve researchers and subjects deciding upon a few different triggering items (bloody (fake) napkin, used tissue, etc) that will be moved closer and closer to the subject as they wear the EEG measuring system. Each step should take one minute or less, and the subject will always have the option of stopping if the task becomes too distressing. There will also be a similar process involving objects that should not cause any distress to be used as a control. Consistent with prior research, 5 scores are calculated including percentage of steps completed, subjective units of distress (SUDS) across steps, avoidance, ritual engagement, and composite provocation score, which will be associated with changes in biosignature from brain recordings. We will pilot the provocation protocol, and start addressing problems that come up (e.g. EEG movement artifacts). Sessions will be videotaped with AFAR system concurrent to recording of LFPs from VS and scalp EEG. High-density EEG System: The g.BCIsys64USB EEG system, manufactured by g.tec GmBH, uses wide-range DC-coupled amplifier technology with 24-bit sampling, which results in an input voltage resolution of < 30 nV. Very efficient analog-to-digital converters (2.5 MHz per channel) result in very high signal to noise ratio, critical for recording subtle changes in EEG measures. The system combines four bio-amplifiers (16-channels each) that can either be stacked to provide a higher density (32/48/64 channels) system, or can simultaneously be used on different study participants. The EEG system makes use of 'active' electrode technology that employs an additional ultra-low noise pre-amplifier located inside each electrode to maximize the signal-to-noise ratio. The active electrodes work in a frequency range from 0 - 10 kHz (DC) or 0.1 - 10 kHz (AC). The EEG system is also equipped with innovative data acquisition and data analysis software that allows sophisticated signal processing and data analysis capabilities. The system includes a 3D scalp digitizer that maps the scalp in the stereotactic space for EEG source localization. Other capabilities of the system include eye-tracking and acquisition of physiological data (SpO2, pulse and skin conductance). Automated Facial Affect Recognition (AFAR) will be used to measure facial expression of positive and negative valence. AFAR is a computer-vision based approach that can objectively measure the occurrence, intensity, laterality, and timing of facial action units, head pose, and gaze at video frame rate (30 to 60 frames per second). Participants will be videotaped. Action units are anatomically based actions that individually or in combination can describe nearly all-possible facial expressions. AFAR has strong concurrent validity with manual measurement of facial action units, holistic expressions, depression severity, and psychological distress; and with ground truth measures of head pose and gaze. Previous research has identified action units associated with positive (e.g., enjoyment) and negative (e.g., fear, anger, disgust, and anxiety) emotion; and used them to represent scales for positive and negative valence and pain. Because gaze and head orientation also are strongly related to emotion and valence, we include them in positive and negative valence scales. Videotaped data will be shared with the University of Pittsburgh. Local data and safety monitoring will be conducted by the PI who will meet regularly with the study team to review new information from clinical ratings, assessments, and medical records for each subject. Study-related adverse events or threats to subject confidentiality will be monitored, and any needed safety changes will be addressed. Assessment of adverse events, including grading of severity and attribution to research, will be conducted at each visit and noted on the rating coversheet. The PI will report all unanticipated problems within 5 working days from becoming aware of the event. The PI will evaluate all adverse events and determine whether the event affects the Risk/Benefit ratio of the study, and whether modifications to the protocol or consent form are required.

Tracking Information

NCT #
NCT03313622
Collaborators
  • Brown University
  • University of Pittsburgh
  • Butler Hospital
Investigators
Principal Investigator: Wayne Goodman, MD Baylor College of Medicine