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When treatment algorithms fail: A response to the development of a nomogram to determine the frequency of elevated risk for non-medical opioid use in cancer patients

Published online by Cambridge University Press:  22 October 2021

Katie Fitzgerald Jones*
Affiliation:
Boston College School of Nursing, VA Boston Healthcare System, Boston, MA, USA
Zachary Sager
Affiliation:
New England Geriatric Research Education and Clinical Center, VA Boston Healthcare System, Boston, MA, USA
Richard E. Leiter
Affiliation:
Division of Adult Palliative Care, Department of Psychosocial Oncology and Palliative Care, Dana-Farber Cancer Institute and Brigham and Women's Hospital, Boston, MA, USA Harvard Medical School, Boston, MA, USA
Justin J. Sanders
Affiliation:
Division of Adult Palliative Care, Department of Psychosocial Oncology and Palliative Care, Dana-Farber Cancer Institute and Brigham and Women's Hospital, Boston, MA, USA Harvard Medical School, Boston, MA, USA Ariadne Labs, Boston, MA, USA
*
Author for correspondence: Katie Fitzgerald Jones, Boston College School of Nursing, VA Boston Healthcare System, Boston, MA, USA. E-mail: [email protected]
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Abstract

Type
Letter to the Editor
Copyright
Copyright © The Author(s), 2021. Published by Cambridge University Press

We read the February 2021 article by Yennurajalingam et al. (Reference Yennurajalingam, Edwards and Arthur2021) with great interest given the growing recognition that individuals with cancer remain at risk for opioid misuse and overdose (Tan et al., Reference Tan, Barclay and Blackhall2015). Caring for this patient population requires carefully balancing risks to manage cancer-related pain while keeping patients safe from the risk of potential overdose (Alyssa et al., Reference Alyssa, Thomas and Robert2020). The authors developed a nomogram to help identify patients at-risk for non-medical opioid use (NMOU) and include a patient's race as a risk factor (Yennurajalingam et al., Reference Yennurajalingam, Edwards and Arthur2021).

Recent publications caution against the use of race in such algorithms (Vyas et al., Reference Vyas, Eisenstein and Jones2020). The nomogram in this article finds that a Black patient matched with a White patient for all other categories would be at elevated risk for NMOU (Yennurajalingam et al., Reference Yennurajalingam, Edwards and Arthur2021). Disappointingly, the authors neither reflect on why this may be true in their clinic setting nor mention structural or other forms of racism. While the authors correctly conceptualize race as a social variable with marital status and financial distress, we believe that inclusion of race is more likely to promote race-based disparities in opioid and pain care than it is to improve care. Furthermore, the inclusion of race and recommendations for future research of genetic factors for NMOU leaves room for the reader to incorrectly interpret race as a biologic factor rather than a sociopolitical one (Boyd et al., Reference Boyd, Lindo and Weeks2020).

Black Americans are less likely than White Americans to have their pain managed, both because clinicians are less likely to believe their reports of pain and because Black Americans face significant barriers to access pain medications (Meghani et al., Reference Meghani, Byun and Gallagher2012; Trawalter et al., Reference Trawalter, Hoffman and Waytz2012; Jefferson et al., Reference Jefferson, Quest and Yeager2019). Black patients may experience a high burden of chronic cancer pain, which is associated with higher unemployment, lower socioeconomic status, and inadequate insurance (Meghani and Chittams, Reference Meghani and Chittams2015; Jiang et al., Reference Jiang, Wang and Wang2019). Additionally, Black patients are subjected to more burdensome opioid care such as more frequent required office visits and restricted refills, despite similar rates of opioid use disorder between Black and White patients (Becker et al., Reference Becker, Starrels and Heo2011). Finally, Black patients are less likely to be offered medical treatment for opioid use disorder and are more likely to die from an overdose (James and Jordan, Reference James and Jordan2018; Lagisetty et al., Reference Lagisetty, Ross and Bohnert2019). A treatment algorithm that includes race is likely to reinforce known inequities in pain and opioid care due to structural racism, provider implicit bias, and the false idea about biological differences in pain perception (Hoffman et al., Reference Hoffman, Trawalter and Axt2016; Hirsh et al., Reference Hirsh, Anastas and Miller2020; Meghani et al., Reference Meghani, Rosa and Chittams2020).

The authors concede limitations to their nomogram, but not the likely harm that it perpetuates. Our field should prioritize creating decision-making and treatment algorithms that reduce bias, promote equity, and ultimately disrupt racism through antiracist action (Obermeyer et al., Reference Obermeyer, Powers and Vogeli2019). In the end, it is the journals themselves that bear responsibility of gatekeeping and vigilant adherence to the current standards for publishing on racial health inequities (Boyd et al., Reference Boyd, Lindo and Weeks2020).

Funding

K.F.J. is a 2021–2023 Jonas Scholar and supported by National Institute of Nursing Research National Research Service Award (F31NR019929). The content is solely the responsibility of the authors and does not necessarily represent the official views of the National Institute of Health.

Footnotes

*

Both authors contributed equally as first authors .

References

Alyssa, AS, Thomas, KO, Robert, AS, et al. (2020) Bridging the gap among clinical practice guidelines for pain management in cancer and sickle cell disease. Journal of the National Comprehensive Cancer Network 18(4), 392399. doi:10.6004/jnccn.2019.7379.Google Scholar
Becker, W, Starrels, J, Heo, M, et al. (2011) Racial differences in primary care opioid risk reduction strategies. Annals of Family Medicine 9(3), 219225. doi:10.1370/afm.1242.CrossRefGoogle ScholarPubMed
Boyd, R, Lindo, E, Weeks, L, et al. (2020) On racism: A new standard for publishing on racial health inequities. Health Affairs Blog. doi:10.1377/HBLOG20200630.939347.Google Scholar
Hirsh, AT, Anastas, TM, Miller, MM, et al. (2020) Patient race and opioid misuse history influence provider risk perceptions for future opioid-related problems. American Psychologist 75(6), 784795. doi:10.1037/amp0000636.CrossRefGoogle ScholarPubMed
Hoffman, KM, Trawalter, S, Axt, JR, et al. (2016) Racial bias in pain assessment and treatment recommendations, and false beliefs about biological differences between blacks and whites. Proceedings of the National Academy of Sciences, 201516047. doi:10.1073/pnas.1516047113.Google ScholarPubMed
James, K and Jordan, A (2018) The opioid crisis in black communities. Journal of Law Medical Ethics 46(2), 404421. doi:10.1177/1073110518782949.CrossRefGoogle ScholarPubMed
Jefferson, K, Quest, T and Yeager, KA (2019) Factors associated with black cancer patients’ ability to obtain their opioid prescriptions at the pharmacy. Journal of Palliative Medicine 22(9), 11431148. doi:10.1089/jpm.2018.0536.CrossRefGoogle ScholarPubMed
Jiang, C, Wang, H, Wang, Q, et al. (2019) Prevalence of chronic pain and high-impact chronic pain in cancer survivors in the United States. JAMA Oncology 5(8), 12241226. doi:10.1001/jamaoncol.2019.1439.CrossRefGoogle ScholarPubMed
Lagisetty, PA, Ross, R, Bohnert, A, et al. (2019) Buprenorphine treatment divide by race/ethnicity and payment. JAMA Psychiatry 76(9), 979981. doi:10.1001/jamapsychiatry.2019.0876.CrossRefGoogle Scholar
Meghani, SH and Chittams, J (2015) Controlling for socioeconomic status in pain disparities research: All-else-equal analysis when “all else” is not equal. Pain Medicine 16(12), 22222225. doi:10.1111/pme.12829.CrossRefGoogle Scholar
Meghani, SH, Byun, E and Gallagher, RM (2012) Time to take stock: A meta-analysis and systematic review of analgesic treatment disparities for pain in the United States. Pain Medicine 13(2), 150174. doi:10.1111/j.1526-4637.2011.01310.x.CrossRefGoogle ScholarPubMed
Meghani, SH, Rosa, WE, Chittams, J, et al. (2020) Both race and insurance type independently predict the selection of oral opioids prescribed to cancer outpatients. Pain Management Nursing 21(1), 6571. doi:10.1016/j.pmn.2019.07.004.CrossRefGoogle ScholarPubMed
Obermeyer, Z, Powers, B, Vogeli, C, et al. (2019) Algorithmic bias In health care: A path forward. Health Affairs Blog. doi:10.1377/HBLOG20191031.373615.Google Scholar
Tan, P, Barclay, J and Blackhall, L (2015) Do palliative care clinics screen for substance abuse and diversion? Results of a national survey. Journal of Palliative Medicine 18(9), 752757. doi:10.1089/jpm.2015.0098.CrossRefGoogle ScholarPubMed
Trawalter, S, Hoffman, KM and Waytz, A (2012) Racial bias in perceptions of others’ pain. PLoS One 7(11), e48546. doi:10.1371/journal.pone.0048546.CrossRefGoogle ScholarPubMed
Vyas, DA, Eisenstein, LG and Jones, DS (2020) Hidden in plain sight — reconsidering the use of race correction in clinical algorithms. New England Journal of Medicine 383(9), 874882. doi:10.1056/NEJMms2004740.CrossRefGoogle ScholarPubMed
Yennurajalingam, S, Edwards, T, Arthur, J, et al. (2021) The development of a nomogram to determine the frequency of elevated risk for non-medical opioid use in cancer patients. Palliative Support Care 19(1), 310. doi:10.1017/s1478951520000322.CrossRefGoogle ScholarPubMed