Predicting Chronic Pain Following Breast Surgery

Sponsor
University of California, San Diego (Other)
Overall Status
Recruiting
CT.gov ID
NCT04967352
Collaborator
(none)
500
1
29.4
17

Study Details

Study Description

Brief Summary

Breast surgery, which includes mastectomy, breast reconstructive surgery, or lumpectomies with sentinel node biopsies, may lead to the development of chronic pain and long-term opioid use. In the era of an opioid crisis, it is important to risk-stratify this surgical population for risk of these outcomes in an effort to personalize pain management. The opioid epidemic in the United States resulted in more than 40,000 deaths in 2016, 40% of which involved prescription opioids. Furthermore, it is estimated that 2 million patients become opioid-dependent after elective, outpatient surgery each year. After major breast surgery, chronic pain has been reported to develop anywhere between 35% - 62% of patients, while about 10% use long-term opioids. Precision medicine is a concept at which medical management is tailored to an individual patient based on a specific patient's characteristics, including social, demographic, medical, genetic, and molecular/cellular data. With a plethora of data specific to millions of patients, the use of artificial intelligence (AI) modalities to analyze big data in order to implement precision medicine is crucial. We propose to prospectively collect rich data from patients undergoing various breast surgeries in order to develop predictive models using AI modalities to predict patients at-risk for chronic pain and opioid use.

Condition or Disease Intervention/Treatment Phase

    Detailed Description

    The primary objective of this is to develop predictive models using artificial intelligence algorithms to predict acute and chronic pain and opioid use in patients undergoing breast surgery. Development of these models will involve prospectively collecting data from this surgical population, including: 1) survey results from the Brief Pain Inventory, Fibromyalgia Survey Criteria, and PROMIS scales (depression scale, anxiety scale, physical function scale, fatigue scale, sleep disturbance scale); 2) pharmacogenomics (single nucleotide peptides from COMT, BDNF, SCN11a, OPRM1, ABCB1, CYPD26, and CYP34A, to name a few); 3) preoperative comorbidities (including but not limited to diabetes mellitus, chronic pain, psychiatric disorders, substance abuse history, obstructive sleep apnea, etc); 4) preoperative labs (i.e. hemoglobin); 5) demographic data (i.e. socioeconomic status, religion, ethnicity; primary language spoken, age, body mass index, sex, etc); 6) preoperative medication use; 7) primary surgical diagnosis; 8) surgery; and 9) social support system. Intraoperative data will include: 1) primary anesthetic type; 2) case duration; 3) total opioid use; 4) non-opioid analgesic use; 5) heart rate hemodynamics; and 6) blood pressure hemodynamics. Postoperative data will include: 1) total opioid use; 2) discharge medications; 3) hospital length of stay; 4) pain scores; 5) postoperative vital signs (blood pressure, heart rate); and 6) participation with physical therapy. The primary outcome measures will be opioid use in the acute period and chronic postoperative stage (30 and 90 days and 6 months) and development of chronic pain (up to 6 months after surgery). The model with the best performance will be used to develop a predictive analytic system aimed to identify high risk opioid patients in order to allocate expert pain management resources to those patients. We hypothesize that we can develop an accurate model for identifying high risk opioid users and patients at-risk for chronic pain in these surgical populations and subsequently implement a predictive analytic system that can detect these patients early-on.

    Study Design

    Study Type:
    Observational
    Anticipated Enrollment :
    500 participants
    Observational Model:
    Case-Control
    Time Perspective:
    Prospective
    Official Title:
    Development of Predictive Models Using Artificial Intelligence for Postoperative Chronic Pain and Opioid Use Following Breast Surgery: A Prospectively-Designed Study
    Actual Study Start Date :
    Jul 19, 2021
    Anticipated Primary Completion Date :
    Jul 31, 2023
    Anticipated Study Completion Date :
    Dec 31, 2023

    Arms and Interventions

    Arm Intervention/Treatment
    Developed Persistent Opioid Use after 3 months following surgery

    Did not develop persistent opioid use after 3 months following surgery

    Outcome Measures

    Primary Outcome Measures

    1. Persistent opioid use after 90 days [90 days]

      continual use of opioids after 90 days following surgery

    2. Persistent pain after 90 days [90 days]

      persistent surgical pain after 90 days following surgery

    Secondary Outcome Measures

    1. Persistent opioid use after 30 days [30 days]

      continual use of opioids 30 days after surgery

    2. Persistent pain after 30 days [30 days]

      persistent surgical pain after 30 days following surgery

    3. Persistent opioid use after 6 months [6 months]

      continual use of opioids 6 months after surgery

    4. Persistent pain after 6 months [6 months]

      persistent surgical pain after 6 months following surgery

    5. Acute opioid use [3 days]

      total opioid use during the first 3 days following surgery

    6. Acute pain [3 days]

      median pain scores (numeric rating scale) during the first 3 days following surgery

    Eligibility Criteria

    Criteria

    Ages Eligible for Study:
    18 Years and Older
    Sexes Eligible for Study:
    All
    Accepts Healthy Volunteers:
    No
    Inclusion Criteria:
    • Patient undergoing major breast surgery (except for simple lumpectomy)
    Exclusion Criteria:
    • refusal to consent

    • lack of independent decision-making capacity

    • inability to communicate effectively with research personnel

    Contacts and Locations

    Locations

    Site City State Country Postal Code
    1 University of California San Diego La Jolla California United States 92037

    Sponsors and Collaborators

    • University of California, San Diego

    Investigators

    None specified.

    Study Documents (Full-Text)

    None provided.

    More Information

    Publications

    None provided.
    Responsible Party:
    Rodney Gabriel, Associate Professor, University of California, San Diego
    ClinicalTrials.gov Identifier:
    NCT04967352
    Other Study ID Numbers:
    • 201610
    First Posted:
    Jul 19, 2021
    Last Update Posted:
    Mar 24, 2022
    Last Verified:
    Mar 1, 2022
    Individual Participant Data (IPD) Sharing Statement:
    Undecided
    Plan to Share IPD:
    Undecided
    Studies a U.S. FDA-regulated Drug Product:
    No
    Studies a U.S. FDA-regulated Device Product:
    No
    Additional relevant MeSH terms:

    Study Results

    No Results Posted as of Mar 24, 2022