Literature DB >> 36194411

Association of Disparities in Family History and Family Cancer History in the Electronic Health Record With Sex, Race, Hispanic or Latino Ethnicity, and Language Preference in 2 Large US Health Care Systems.

Daniel Chavez-Yenter1,2, Melody S Goodman3, Yuyu Chen3, Xiangying Chu3, Richard L Bradshaw4,5, Rachelle Lorenz Chambers6, Priscilla A Chan6, Brianne M Daly1, Michael Flynn5, Amanda Gammon1, Rachel Hess7,8, Cecelia Kessler1, Wendy K Kohlmann1, Devin M Mann9, Rachel Monahan6,9, Sara Peel1, Kensaku Kawamoto4, Guilherme Del Fiol4, Meenakshi Sigireddi6, Saundra S Buys1,8, Ophira Ginsburg10, Kimberly A Kaphingst1,2.   

Abstract

Importance: Clinical decision support (CDS) algorithms are increasingly being implemented in health care systems to identify patients for specialty care. However, systematic differences in missingness of electronic health record (EHR) data may lead to disparities in identification by CDS algorithms. Objective: To examine the availability and comprehensiveness of cancer family history information (FHI) in patients' EHRs by sex, race, Hispanic or Latino ethnicity, and language preference in 2 large health care systems in 2021. Design, Setting, and Participants: This retrospective EHR quality improvement study used EHR data from 2 health care systems: University of Utah Health (UHealth) and NYU Langone Health (NYULH). Participants included patients aged 25 to 60 years who had a primary care appointment in the previous 3 years. Data were collected or abstracted from the EHR from December 10, 2020, to October 31, 2021, and analyzed from June 15 to October 31, 2021. Exposures: Prior collection of cancer FHI in primary care settings. Main Outcomes and Measures: Availability was defined as having any FHI and any cancer FHI in the EHR and was examined at the patient level. Comprehensiveness was defined as whether a cancer family history observation in the EHR specified the type of cancer diagnosed in a family member, the relationship of the family member to the patient, and the age at onset for the family member and was examined at the observation level.
Results: Among 144 484 patients in the UHealth system, 53.6% were women; 74.4% were non-Hispanic or non-Latino and 67.6% were White; and 83.0% had an English language preference. Among 377 621 patients in the NYULH system, 55.3% were women; 63.2% were non-Hispanic or non-Latino, and 55.3% were White; and 89.9% had an English language preference. Patients from historically medically undeserved groups-specifically, Black vs White patients (UHealth: 17.3% [95% CI, 16.1%-18.6%] vs 42.8% [95% CI, 42.5%-43.1%]; NYULH: 24.4% [95% CI, 24.0%-24.8%] vs 33.8% [95% CI, 33.6%-34.0%]), Hispanic or Latino vs non-Hispanic or non-Latino patients (UHealth: 27.2% [95% CI, 26.5%-27.8%] vs 40.2% [95% CI, 39.9%-40.5%]; NYULH: 24.4% [95% CI, 24.1%-24.7%] vs 31.6% [95% CI, 31.4%-31.8%]), Spanish-speaking vs English-speaking patients (UHealth: 18.4% [95% CI, 17.2%-19.1%] vs 40.0% [95% CI, 39.7%-40.3%]; NYULH: 15.1% [95% CI, 14.6%-15.6%] vs 31.1% [95% CI, 30.9%-31.2%), and men vs women (UHealth: 30.8% [95% CI, 30.4%-31.2%] vs 43.0% [95% CI, 42.6%-43.3%]; NYULH: 23.1% [95% CI, 22.9%-23.3%] vs 34.9% [95% CI, 34.7%-35.1%])-had significantly lower availability and comprehensiveness of cancer FHI (P < .001). Conclusions and Relevance: These findings suggest that systematic differences in the availability and comprehensiveness of FHI in the EHR may introduce informative presence bias as inputs to CDS algorithms. The observed differences may also exacerbate disparities for medically underserved groups. System-, clinician-, and patient-level efforts are needed to improve the collection of FHI.

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Mesh:

Year:  2022        PMID: 36194411      PMCID: PMC9533178          DOI: 10.1001/jamanetworkopen.2022.34574

Source DB:  PubMed          Journal:  JAMA Netw Open        ISSN: 2574-3805


  76 in total

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2.  Fast spectroscopic multiple analysis (FASMA) for brain tumor classification: a clinical decision support system utilizing multi-parametric 3T MR data.

Authors:  Evangelia Tsolaki; Patricia Svolos; Evanthia Kousi; Eftychia Kapsalaki; Ioannis Fezoulidis; Konstantinos Fountas; Kyriaki Theodorou; Constantine Kappas; Ioannis Tsougos
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3.  NCCN Guidelines Insights: Colorectal Cancer Screening, Version 1.2018.

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Journal:  J Natl Compr Canc Netw       Date:  2018-08       Impact factor: 11.908

4.  Clinical decision support software for management of chronic heart failure: development and evaluation.

Authors:  Stephen J Leslie; Mark Hartswood; Catrin Meurig; Sinead P McKee; Roger Slack; Rob Procter; Martin A Denvir
Journal:  Comput Biol Med       Date:  2005-05-31       Impact factor: 4.589

5.  Identification and referral of families at high risk for cancer susceptibility.

Authors:  Kevin M Sweet; Terry L Bradley; Judith A Westman
Journal:  J Clin Oncol       Date:  2002-01-15       Impact factor: 44.544

6.  Cancer risk assessment: quality and impact of the family history interview.

Authors:  Harvey J Murff; Daniel Byrne; Sapna Syngal
Journal:  Am J Prev Med       Date:  2004-10       Impact factor: 5.043

Review 7.  Cost and economic benefit of clinical decision support systems for cardiovascular disease prevention: a community guide systematic review.

Authors:  Verughese Jacob; Anilkrishna B Thota; Sajal K Chattopadhyay; Gibril J Njie; Krista K Proia; David P Hopkins; Murray N Ross; Nicolaas P Pronk; John M Clymer
Journal:  J Am Med Inform Assoc       Date:  2017-05-01       Impact factor: 4.497

8.  Family history-taking in community family practice: implications for genetic screening.

Authors:  L S Acheson; G L Wiesner; S J Zyzanski; M A Goodwin; K C Stange
Journal:  Genet Med       Date:  2000 May-Jun       Impact factor: 8.822

9.  Comparing models of delivery for cancer genetics services among patients receiving primary care who meet criteria for genetic evaluation in two healthcare systems: BRIDGE randomized controlled trial.

Authors:  Kimberly A Kaphingst; Wendy Kohlmann; Rachelle Lorenz Chambers; Melody S Goodman; Richard Bradshaw; Priscilla A Chan; Daniel Chavez-Yenter; Sarah V Colonna; Whitney F Espinel; Jessica N Everett; Amanda Gammon; Eric R Goldberg; Javier Gonzalez; Kelsi J Hagerty; Rachel Hess; Kelsey Kehoe; Cecilia Kessler; Kadyn E Kimball; Shane Loomis; Tiffany R Martinez; Rachel Monahan; Joshua D Schiffman; Dani Temares; Katie Tobik; David W Wetter; Devin M Mann; Kensaku Kawamoto; Guilherme Del Fiol; Saundra S Buys; Ophira Ginsburg
Journal:  BMC Health Serv Res       Date:  2021-06-02       Impact factor: 2.655

10.  Biases in electronic health record data due to processes within the healthcare system: retrospective observational study.

Authors:  Denis Agniel; Isaac S Kohane; Griffin M Weber
Journal:  BMJ       Date:  2018-04-30
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