Are Detailed, Patient-level Social Determinant of Health Factors Associated With Physical Function and Mental Health at Presentation Among New Patients With Orthopaedic Conditions?


Journal

Clinical orthopaedics and related research
ISSN: 1528-1132
Titre abrégé: Clin Orthop Relat Res
Pays: United States
ID NLM: 0075674

Informations de publication

Date de publication:
01 05 2023
Historique:
received: 30 05 2022
accepted: 15 09 2022
pmc-release: 01 05 2024
medline: 25 4 2023
pubmed: 7 10 2022
entrez: 6 10 2022
Statut: ppublish

Résumé

It is well documented that routinely collected patient sociodemographic characteristics (such as race and insurance type) and geography-based social determinants of health (SDoH) measures (for example, the Area Deprivation Index) are associated with health disparities, including symptom severity at presentation. However, the association of patient-level SDoH factors (such as housing status) on musculoskeletal health disparities is not as well documented. Such insight might help with the development of more-targeted interventions to help address health disparities in orthopaedic surgery. (1) What percentage of patients presenting for new patient visits in an orthopaedic surgery clinic who were unemployed but seeking work reported transportation issues that could limit their ability to attend a medical appointment or acquire medications, reported trouble paying for medications, and/or had no current housing? (2) Accounting for traditional sociodemographic factors and patient-level SDoH measures, what factors are associated with poorer patient-reported outcome physical health scores at presentation? (3) Accounting for traditional sociodemographic factor patient-level SDoH measures, what factors are associated with poorer patient-reported outcome mental health scores at presentation? New patient encounters at one Level 1 trauma center clinic visit from March 2018 to December 2020 were identified. Included patients had to meet two criteria: they had completed the Patient-Reported Outcome Measure Information System (PROMIS) Global-10 at their new orthopaedic surgery clinic encounter as part of routine clinical care, and they had visited their primary care physician and completed a series of specific SDoH questions. The SDoH questionnaire was developed in our institution to improve data that drive interventions to address health disparities as part of our accountable care organization work. Over the study period, the SDoH questionnaire was only distributed at primary care provider visits. The SDoH questions focused on transportation, housing, employment, and ability to pay for medications. Because we do not have a way to determine how many patients had both primary care provider office visits and new orthopaedic surgery clinic visits over the study period, we were unable to determine how many patients could have been included; however, 9057 patients were evaluated in this cross-sectional study. The mean age was 61 ± 15 years, and most patients self-reported being of White race (83% [7561 of 9057]). Approximately half the patient sample had commercial insurance (46% [4167 of 9057]). To get a better sense of how this study cohort compared with the overall patient population seen at the participating center during the time in question, we reviewed all new patient clinic encounters (n = 135,223). The demographic information between the full patient sample and our study subgroup appeared similar. Using our study cohort, two multivariable linear regression models were created to determine which traditional metrics (for example, self-reported race or insurance type) and patient-specific SDoH factors (for example, lack of reliable transportation) were associated with worse physical and mental health symptoms (that is, lower PROMIS scores) at new patient encounters. The variance inflation factor was used to assess for multicollinearity. For all analyses, p values < 0.05 designated statistical significance. The concept of minimum clinically important difference (MCID) was used to assess clinical importance. Regression coefficients represent the projected change in PROMIS physical or mental health symptom scores (that is, the dependent variable in our regression analyses) accounting for the other included variables. Thus, a regression coefficient for a given variable at or above a known MCID value suggests a clinical difference between those patients with and without the presence of that given characteristic. In this manuscript, regression coefficients at or above 4.2 (or at and below -4.2) for PROMIS Global Physical Health and at or above 5.1 (or at and below -5.1) for PROMIS Global Mental Health were considered clinically relevant. Among the included patients, 8% (685 of 9057) were unemployed but seeking work, 4% (399 of 9057) reported transportation issues that could limit their ability to attend a medical appointment or acquire medications, 4% (328 of 9057) reported trouble paying for medications, and 2% (181 of 9057) had no current housing. Lack of reliable transportation to attend doctor visits or pick up medications (β = -4.52 [95% CI -5.45 to -3.59]; p < 0.001), trouble paying for medications (β = -4.55 [95% CI -5.55 to -3.54]; p < 0.001), Medicaid insurance (β = -5.81 [95% CI -6.41 to -5.20]; p < 0.001), and workers compensation insurance (β = -5.99 [95% CI -7.65 to -4.34]; p < 0.001) were associated with clinically worse function at presentation. Trouble paying for medications (β = -6.01 [95% CI -7.10 to -4.92]; p < 0.001), Medicaid insurance (β = -5.35 [95% CI -6.00 to -4.69]; p < 0.001), and workers compensation (β = -6.07 [95% CI -7.86 to -4.28]; p < 0.001) were associated with clinically worse mental health at presentation. Although transportation issues and financial hardship were found to be associated with worse presenting physical function and mental health, Medicaid and workers compensation insurance remained associated with worse presenting physical function and mental health as well even after controlling for these more detailed, patient-level SDoH factors. Because of that, interventions to decrease health disparities should focus on not only sociodemographic variables (for example, insurance type) but also tangible patient-specific SDoH characteristics. For example, this may include giving patients taxi vouchers or ride-sharing credits to attend clinic visits for patients demonstrating such a need, initiating financial assistance programs for necessary medications, and/or identifying and connecting certain patient groups with social support services early on in the care cycle. Level III, prognostic study.

Sections du résumé

BACKGROUND
It is well documented that routinely collected patient sociodemographic characteristics (such as race and insurance type) and geography-based social determinants of health (SDoH) measures (for example, the Area Deprivation Index) are associated with health disparities, including symptom severity at presentation. However, the association of patient-level SDoH factors (such as housing status) on musculoskeletal health disparities is not as well documented. Such insight might help with the development of more-targeted interventions to help address health disparities in orthopaedic surgery.
QUESTIONS/PURPOSES
(1) What percentage of patients presenting for new patient visits in an orthopaedic surgery clinic who were unemployed but seeking work reported transportation issues that could limit their ability to attend a medical appointment or acquire medications, reported trouble paying for medications, and/or had no current housing? (2) Accounting for traditional sociodemographic factors and patient-level SDoH measures, what factors are associated with poorer patient-reported outcome physical health scores at presentation? (3) Accounting for traditional sociodemographic factor patient-level SDoH measures, what factors are associated with poorer patient-reported outcome mental health scores at presentation?
METHODS
New patient encounters at one Level 1 trauma center clinic visit from March 2018 to December 2020 were identified. Included patients had to meet two criteria: they had completed the Patient-Reported Outcome Measure Information System (PROMIS) Global-10 at their new orthopaedic surgery clinic encounter as part of routine clinical care, and they had visited their primary care physician and completed a series of specific SDoH questions. The SDoH questionnaire was developed in our institution to improve data that drive interventions to address health disparities as part of our accountable care organization work. Over the study period, the SDoH questionnaire was only distributed at primary care provider visits. The SDoH questions focused on transportation, housing, employment, and ability to pay for medications. Because we do not have a way to determine how many patients had both primary care provider office visits and new orthopaedic surgery clinic visits over the study period, we were unable to determine how many patients could have been included; however, 9057 patients were evaluated in this cross-sectional study. The mean age was 61 ± 15 years, and most patients self-reported being of White race (83% [7561 of 9057]). Approximately half the patient sample had commercial insurance (46% [4167 of 9057]). To get a better sense of how this study cohort compared with the overall patient population seen at the participating center during the time in question, we reviewed all new patient clinic encounters (n = 135,223). The demographic information between the full patient sample and our study subgroup appeared similar. Using our study cohort, two multivariable linear regression models were created to determine which traditional metrics (for example, self-reported race or insurance type) and patient-specific SDoH factors (for example, lack of reliable transportation) were associated with worse physical and mental health symptoms (that is, lower PROMIS scores) at new patient encounters. The variance inflation factor was used to assess for multicollinearity. For all analyses, p values < 0.05 designated statistical significance. The concept of minimum clinically important difference (MCID) was used to assess clinical importance. Regression coefficients represent the projected change in PROMIS physical or mental health symptom scores (that is, the dependent variable in our regression analyses) accounting for the other included variables. Thus, a regression coefficient for a given variable at or above a known MCID value suggests a clinical difference between those patients with and without the presence of that given characteristic. In this manuscript, regression coefficients at or above 4.2 (or at and below -4.2) for PROMIS Global Physical Health and at or above 5.1 (or at and below -5.1) for PROMIS Global Mental Health were considered clinically relevant.
RESULTS
Among the included patients, 8% (685 of 9057) were unemployed but seeking work, 4% (399 of 9057) reported transportation issues that could limit their ability to attend a medical appointment or acquire medications, 4% (328 of 9057) reported trouble paying for medications, and 2% (181 of 9057) had no current housing. Lack of reliable transportation to attend doctor visits or pick up medications (β = -4.52 [95% CI -5.45 to -3.59]; p < 0.001), trouble paying for medications (β = -4.55 [95% CI -5.55 to -3.54]; p < 0.001), Medicaid insurance (β = -5.81 [95% CI -6.41 to -5.20]; p < 0.001), and workers compensation insurance (β = -5.99 [95% CI -7.65 to -4.34]; p < 0.001) were associated with clinically worse function at presentation. Trouble paying for medications (β = -6.01 [95% CI -7.10 to -4.92]; p < 0.001), Medicaid insurance (β = -5.35 [95% CI -6.00 to -4.69]; p < 0.001), and workers compensation (β = -6.07 [95% CI -7.86 to -4.28]; p < 0.001) were associated with clinically worse mental health at presentation.
CONCLUSION
Although transportation issues and financial hardship were found to be associated with worse presenting physical function and mental health, Medicaid and workers compensation insurance remained associated with worse presenting physical function and mental health as well even after controlling for these more detailed, patient-level SDoH factors. Because of that, interventions to decrease health disparities should focus on not only sociodemographic variables (for example, insurance type) but also tangible patient-specific SDoH characteristics. For example, this may include giving patients taxi vouchers or ride-sharing credits to attend clinic visits for patients demonstrating such a need, initiating financial assistance programs for necessary medications, and/or identifying and connecting certain patient groups with social support services early on in the care cycle.
LEVEL OF EVIDENCE
Level III, prognostic study.

Identifiants

pubmed: 36201422
doi: 10.1097/CORR.0000000000002446
pii: 00003086-202305000-00017
pmc: PMC10097559
doi:

Types de publication

Journal Article

Langues

eng

Sous-ensembles de citation

IM

Pagination

912-921

Commentaires et corrections

Type : CommentIn

Informations de copyright

Copyright © 2022 by the Association of Bone and Joint Surgeons.

Déclaration de conflit d'intérêts

Each author certifies that there are no funding or commercial associations (consultancies, stock ownership, equity interest, patent/licensing arrangements, etc.) that might pose a conflict of interest in connection with the submitted article related to the author or any immediate family members. All ICMJE Conflict of Interest Forms for authors and Clinical Orthopaedics and Related Research® editors and board members are on file with the publication and can be viewed on request.

Références

Amen TB, Varady NH, Rajaee S, Chen AF. Persistent racial disparities in utilization rates and perioperative metrics in total joint arthroplasty in the U.S.: a comprehensive analysis of trends from 2006 to 2015. J Bone Joint Surg Am. 2020;102:811-820.
Atlas SJ, Chang Y, Kammann E, et al. Long-term disability and return to work among patients who have a herniated lumbar disc: the effect of disability compensation. J Bone Joint Surg Am. 2000;82:4-15.
Bernstein DN, Kurucan E, Fear K, Hammert WC. Impact of insurance type on self-reported symptom severity at the preoperative visit for carpal tunnel release. J Hand Surg Am. 2021;46:215-222.
Bernstein DN, Kurucan E, Fear K, Hammert WC. Evaluating the impact of patient social deprivation on the level of symptom severity at carpal tunnel syndrome presentation. Hand (N Y). 2022;17:339-345.
Bernstein DN, Merchan N, Fear K, Rubery PT, Mesfin A. Greater socioeconomic disadvantage is associated with worse symptom severity at initial presentation in patients seeking care for lumbar disc herniation. Spine (Phila Pa 1976). 2021;46:464-471.
Bongers MER, Groot OQ, Thio Q, et al. Prospective study for establishing minimal clinically important differences in patients with surgery for lower extremity metastases. Acta Oncol. 2021;60:714-720.
Bureau of Labor Statistics. The employment situation - April 2022. Available at: https://www.bls.gov/news.release/archives/empsit_05062022.pdf . Accessed May 30, 2022.
Cheng AL, McDuffie JV, Schuelke MJ, et al. How should we measure social deprivation in orthopaedic patients? Clin Orthop Relat Res. 2022;480:325-339.
Evans MK. Health equity - are we finally on the edge of a new frontier? N Engl J Med. 2020;383:997-999.
Fujihara Y, Shauver MJ, Lark ME, Zhong L, Chung KC. The effect of workers' compensation on outcome measurement methods after upper extremity surgery: a systematic review and meta-analysis. Plast Reconstr Surg. 2017;139:923-933.
Greene BD, Lange JK, Heng M, Melnic CM, Smith JT. Correlation between patient-reported outcome measures and health insurance provider types in patients with hip osteoarthritis. J Bone Joint Surg Am. 2021;103:1521-1530.
Harrop C. Social determinants of health in an ACO for better population health. Available at: https://www.mgma.com/resources/quality-patient-experience/social-determinants-of-health-in-an-aco-for-better . Accessed May 29, 2022.
Hays RD, Bjorner JB, Revicki DA, Spritzer KL, Cella D. Development of physical and mental health summary scores from the patient-reported outcomes measurement information system (PROMIS) global items. Qual Life Res. 2009;18:873-880.
Hlaing WY, Thosingha O, Chanruangvanich W. Health-related quality of life and its determinants among patients with hip fracture after surgery in myanmar. Int J Orthop Trauma Nurs. 2020;37:100752.
Hood CM, Gennuso KP, Swain GR, Catlin BB. County health rankings: relationships between determinant factors and health outcomes. Am J Prev Med. 2016;50:129-135.
Karhade AV, Bono CM, Schwab JH, Tobert DG. Minimum clinically important difference: a metric that matters in the age of patient-reported outcomes. J Bone Joint Surg Am. 2021;103:2331-2337.
Kim JH. Multicollinearity and misleading statistical results. Korean J Anesthesiol. 2019;72:558-569.
Kind AJH, Buckingham WR. Making neighborhood-disadvantage metrics accessible - the neighborhood atlas. N Engl J Med. 2018;378:2456-2458.
Labrum JT, Paziuk T, Rihn TC, et al. Does Medicaid insurance confer adequate access to adult orthopaedic care in the era of the patient protection and affordable care act? Clin Orthop Relat Res. 2017;475:1527-1536.
Latkin CA, Edwards C, Davey-Rothwell MA, Tobin KE. The relationship between social desirability bias and self-reports of health, substance use, and social network factors among urban substance users in Baltimore, Maryland. Addict Behav. 2017;73:133-136.
Leopold SS. Editorial: Beware of studies claiming that social factors are “independently associated” with biological complications of surgery. Clin Orthop Relat Res. 2019;477:1967-1969.
Leopold SS, Beadling L, Calabro AM, et al. Editorial: The complexity of reporting race and ethnicity in orthopaedic research. Clin Orthop Relat Res. 2018;476:917-920.
Massachusetts Coalition for the Homeless. Basic facts on homelessness and housing in Massachusetts and across the country. Available at: https://mahomeless.org/basic-facts/ . Accessed August 9, 2022.
Massachusetts Health Policy Commission. Transforming care: ACO briefs and other resources. Available at: https://www.mass.gov/service-details/transforming-care-aco-briefs-and-other-resources . Accessed May 29, 2022.
Norman GR, Sloan JA, Wyrwich KW. Interpretation of changes in health-related quality of life: the remarkable universality of half a standard deviation. Med Care. 2003;41:582-592.
Patterson BM, Draeger RW, Olsson EC, et al. A regional assessment of Medicaid access to outpatient orthopaedic care: the influence of population density and proximity to academic medical centers on patient access. J Bone Joint Surg Am. 2014;96:e156.
Rabah NM, Knusel KD, Khan HA, Marcus RE. Are there nationwide socioeconomic and demographic disparities in the use of outpatient orthopaedic services? Clin Orthop Relat Res. 2020;478:979-989.
Rethorn ZD, Cook C, Reneker JC. Social determinants of health: if you aren't measuring them, you aren't seeing the big picture. J Orthop Sports Phys Ther. 2019;49:872-874.
Rosenbaum AJ, Pauze D, Pauze D, et al. Health literacy in patients seeking orthopaedic care: results of the Literacy In Musculoskeletal Problems (LIMP) project. Iowa Orthop J. 2015;35:187-192.
Schroeder SA. Shattuck lecture. We can do better--improving the health of the American people. N Engl J Med. 2007;357:1221-1228.
Syed ST, Gerber BS, Sharp LK. Traveling towards disease: transportation barriers to health care access. J Community Health. 2013;38:976-993.
The 192nd General Court of the Commonwealth of Massachusetts. Massachusetts census data. Available at: https://malegislature.gov/Redistricting/MassachusettsCensusData/County . Accessed August 9, 2022.
The Council of Economic Advisors. The state of homelessness in America. Available at: https://www.nhipdata.org/local/upload/file/The-State-of-Homelessness-in-America.pdf . Accessed May 30, 2022.
Tourangeau R, Yan T. Sensitive questions in surveys. Psychol Bull. 2007;133:859-883.
U.S. Department of Health and Human Services. Healthy people 2030 - social determinants of health. Available at: https://health.gov/healthypeople/priority-areas/social-determinants-health . Accessed May 29, 2022.
Whitehead A. A resident morbidity and mortality conference curriculum to teach identification of cognitive biases, errors, and debiasing strategies. MedEdPORTAL. 2021;17:11190.
Witters D. In U.S., an estimated 18 million can't pay for needed drugs. Available at: https://news.gallup.com/poll/354833/estimated-million-pay-needed-drugs.aspx . Accessed May 30, 2022.
Wright MA, Adelani M, Dy C, OʼKeefe R, Calfee RP. What is the impact of social deprivation on physical and mental health in orthopaedic patients? Clin Orthop Relat Res. 2019;477:1825-1835.
Xiong G, Greene NE, Lightsey HM 4th, et al. Telemedicine use in orthopaedic surgery varies by race, ethnicity, primary language, and insurance status. Clin Orthop Relat Res. 2021;479:1417-1425.

Auteurs

David N Bernstein (DN)

Department of Orthopaedic Surgery, Massachusetts General Hospital, Harvard Medical School, Boston, MA, USA.
Harvard Combined Orthopaedic Residency Program, Boston, MA, USA.
Department of Orthopaedic Surgery, Leiden University Medical Center, Leiden University, Leiden, the Netherlands.

Amanda Lans (A)

Department of Orthopaedic Surgery, Massachusetts General Hospital, Harvard Medical School, Boston, MA, USA.
Department of Orthopaedic Surgery, University Medical Center Utrecht, Utrecht University, Utrect, the Netherlands.

Aditya V Karhade (AV)

Department of Orthopaedic Surgery, Massachusetts General Hospital, Harvard Medical School, Boston, MA, USA.
Harvard Combined Orthopaedic Residency Program, Boston, MA, USA.

Marilyn Heng (M)

Department of Orthopaedic Surgery, Massachusetts General Hospital, Harvard Medical School, Boston, MA, USA.

Rudolf W Poolman (RW)

Department of Orthopaedic Surgery, Leiden University Medical Center, Leiden University, Leiden, the Netherlands.

Joseph H Schwab (JH)

Department of Orthopaedic Surgery, Massachusetts General Hospital, Harvard Medical School, Boston, MA, USA.

Daniel G Tobert (DG)

Department of Orthopaedic Surgery, Massachusetts General Hospital, Harvard Medical School, Boston, MA, USA.

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