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Clinical Trials/NCT05215756
NCT05215756
Completed
Not Applicable

Proof of Concept Assessment of the Performance of Artificial Intelligence-driven Transcutaneous Vagal Nerve Stimulation (tVNS) Algorithm for Somatic Pain

Queen Mary University of London1 site in 1 country12 target enrollmentApril 1, 2024

Overview

Phase
Not Applicable
Intervention
Not specified
Conditions
Healthy Volunteer
Sponsor
Queen Mary University of London
Enrollment
12
Locations
1
Primary Endpoint
The detection rate of HRV change in response to pain after exercising
Status
Completed
Last Updated
last year

Overview

Brief Summary

Pain, including somatic and visceral pain, is a common symptom. Persistent pain can lead to repetitive visits to hospitals and can limit patients' daily activities, which can result in tremendous medical cost and lower quality of life. For example, the prevalence rates of 25% are reported only for abdominal pain among adults (3), and it costs $10.2 billion each year in the US.

Pain is usually treated according to the World Health Organisation (WHO) 3 steps analgesic ladder. Non-Steroidal Anti-Inflammatory Drugs (NSAIDs) are mainly used in step 1, which can cause serious side effects such as GI bleeding, renal failure and cardiovascular disease. In step 2 & 3, opioids are used and are also associated with serious side effects (e.g., psychological addiction, dizziness, nausea, vomiting, constipation, physical dependence, tolerance, and respiratory depression). Therefore, a new effective non-pharmacological treatment is beneficial for patients.

One such method is transcutaneous vagal nerve stimulation (tVNS). The auricular or cervical branch of the vagal nerve runs just under the skin and can be electrically stimulated through the skin by tVNS devices, which have shown the analgesic effects on various pain conditions.

The autonomic activity, including parasympathetic tone, can be estimated from the beat to beat intervals in the electrocardiogram, which is called heart rate variability (HRV). To date, we have shown that visceral and somatic pain triggered the autonomic response with the change in HRV, and HRV could be a biomarker of pain.

We hypothesised that the development of pain, including somatic pain and visceral pain, could be predicted by analysing heart rate pattern by artificial intelligence (AI). In this proof of concept study, we evaluate the detection rate of pain by the AI analysis of heart rate pattern. We also evaluate the effect of tVNS on the pain threshold.

Detailed Description

Participants will be asked to attend our institution to complete an informed written consent sheet. They are asked to refrain from smoking for 12 hours and drinking alcohol and coffee as well as using recreational drugs for 48 hours prior to the study visit. After filling out a consent form, they will be asked to complete questionnaires to assess their psychological/personality status. Baseline heart rate will be measured for 10 minutes using a heart recording device. After the baseline measurement, the cold pressor test starts. Participants will be asked to immerse their hand into an ice water container. Then, the cold pain threshold and cold pain tolerance will be measured. During the cold pressor test, we will keep recording heart rate. We'll see if we can detect a change of heart rate variability (HRV) in response to pain. After 10 minutes break, the cold pressor test will be performed again. This time, tVNS is administered for 2 minutes during the cold pressor test. We will evaluate the changes in cold pain threshold and cold pain tolerance along the course. Finally, after 10 minutes interval, participants will be asked to exercise in the room (static jogging for 1 minute) to increase their heart rate. Then, the cold pressor test will be performed again. We will evaluate if we can detect a change of HRV in the circumstance where the heart rate increases. tVNS will also be administered for 2 minutes.

Registry
clinicaltrials.gov
Start Date
April 1, 2024
End Date
November 30, 2024
Last Updated
last year
Study Type
Interventional
Study Design
Single Group
Sex
All

Investigators

Responsible Party
Sponsor

Eligibility Criteria

Inclusion Criteria

  • Healthy participants (defined as those without pre-existing medical comorbidity that makes them take medications or go to hospitals regularly), aged 18-65, from staff, students and the local population of Queen Mary, University of London

Exclusion Criteria

  • Participants unable to provide informed consent
  • Participants with any systemic disease or medications that may influence the autonomic nervous system (e.g. beta-agonists or Parkinson's disease)
  • Pregnant or breastfeeding females
  • History of drug or alcohol abuse
  • Participants who have cardiovascular condition problems or epilepsy
  • Participants with cochlear implants
  • Participants who are using pain killers
  • Not meeting any of the inclusion criteria above

Outcomes

Primary Outcomes

The detection rate of HRV change in response to pain after exercising

Time Frame: 1 hour

The ratio of successful detection of HRV changes in response to pain (cold pressor test) among 20 subjects with increased heart rate by exercising

The detection rate of HRV change in response to pain

Time Frame: 1 hour

The ratio of successful detection of HRV changes in response to pain (cold pressor test) among 20 subjects

Secondary Outcomes

  • Changes in the threshold and tolerance of pain before and after tVNS(1 hour)
  • Psychological questionnaire scores(1 hour)
  • Personality questionnaire scores(1 hour)
  • Anxiety and depression questionnaire scores(1 hour)

Study Sites (1)

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