Examining disparities in regional anesthesia utilization, opioid prescriptions, and pain scores among patients who received primary or revision total knee arthroplasty at a Veterans Affairs medical center: A retrospective cohort study

Abstract: Introduction: Total knee arthroplasty (TKA) is one of the most performed surgical operations in the United States. Managing postoperative pain after TKA is of vital importance, as it is positively associated with outcome measures related to recovery of function and quality of life. Two commonly used methods to control postoperative pain are regional anesthesia (RA), consisting of a single or a combination of peripheral nerve and epidural blocks, and pain medication, such as opioids. Our retrospective analysis sought to better understand whether revision versus primary TKA impacted previously discovered disparities in perioperative pain management and use of RA at the Atlanta Veterans Affairs Health Care System (AVAHCS). Before data collection, we hypothesized that revision TKA would have a higher proportion of Black and older patients and that revision TKA patients would have lower postoperative pain scores. Materials and Methods:This was a retrospective analysis of AVAHCS patients who underwent elective unilateral primary or revision TKA surgery between 2014 and 2020. After application of our exclusion criteria, data from 562 patients were analyzed. Data collected included demographics information, type of RA used, and pain scores. Statistical analyses included chi-square test, t-tests, multiple logistic regression, and multiple linear regression, as appropriate to the outcomes of interest. Results: Revision TKA patients were more likely to be Black (P = .018) and younger (P = .023 for <50 years of age group, P = .006 for 50 to 64 years of age compared to the >65 years group). Black patients, compared to White patients, had significantly higher pain scores at baseline (P = .0086) and at 24 hours postsurgery (P = .0037). Older patients (≥50 years old) had significantly higher baseline pain scores (P = .021 for the 50 to 64 years group, P < .01 for the >65 years group) and significantly lower first postanesthesia care unit pain scores (P < .05). Black race (P < .01) and age > 65 years (P < .01) were associated with a significant decrease in total oral morphine equivalents (OME) prescribed at discharge. None of the predictor variables-race, age, type of surgery (primary versus revision), baseline, and first postanesthesia care unit pain scores-were significantly associated with the use of RA in our cohort. Conclusions: Sociodemographic disparities in pain management have been reported in all healthcare systems, including the VAHCS. This moderately sized retrospective study, conducted at a single veterans affairs site, yielded several noteworthy findings. One finding of particular interest was that, despite Black patients reporting higher baseline and 24-hour postoperative pain scores, they were prescribed fewer opioids at discharge. Our results highlight the presence of clinically significant disparities in perioperative TKA pain management, emphasizing the need for continuous investigation and focused mitigation efforts among Veterans.

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