| Literature DB >> 25277068 |
Vence L Bonham1, Sherrill L Sellers, Sam Woolford.
Abstract
BACKGROUND: Understanding physician perspectives on the intersection of race and genomics in clinical decision making is critical as personalized medicine and genomics become more integrated in health care services. There is a paucity of literature in the United States of America (USA) and globally regarding how health care providers understand and use information about race, ethnicity and genetic variation in their clinical decision making. This paper describes the development of three scales related to addressing this gap in the literature: the Bonham and Sellers Genetic Variation Knowledge Assessment Index--GKAI, Health Professionals Beliefs about Race-HPBR, and Racial Attributes in Clinical Evaluation-RACE scales.Entities:
Mesh:
Year: 2014 PMID: 25277068 PMCID: PMC4283084 DOI: 10.1186/1472-6963-14-456
Source DB: PubMed Journal: BMC Health Serv Res ISSN: 1472-6963 Impact factor: 2.655
Figure 1Racial Lens In Clinical Decision Making. The conceptual model explores the use of race and genetic variation in clinical decision making. The model consists of six domains foregrounded by a seventh domain which we describe as the racial lens. Our model suggests that this racial lens influences all aspects of the clinical decision making process.
Items for the genetic variation knowledge assessment index (GKAI)
| ITEM# | QUESTION | †ANSWER |
|---|---|---|
| GKAI1 | The DNA sequences of two randomly selected healthy individuals of the same sex are 90-95% identical. | False (22%)** |
| GKAI2 | Most common diseases, such as diabetes and heart disease, are caused by a single gene variant. | False (80%) |
| GKAI3* | Common structural genetic variation (changes in the human genome such as deletions, duplications and large-scale copy-number variants) is important in health and disease. | True (90%) |
| GKAI4 | All the genetic variation in an individual can be attributed to either spontaneous (i.e., de novo) or inherited changes in the human genome. | True (60%) |
| GKAI5* | The variation in the human genome includes both disease-causing gene variants and variants that have no effect on health and disease. | True (92%) |
| GKAI6 | Individual genetic variants are usually highly predictive of the manifestation of common disease. | False (60%) |
| GKAI7 | Prevalence of many Mendelian diseases differs by racial groups. | True (69%) |
| GKAI8 | Self-reported race is informative of a racial group’s genetic ancestral background. | True (39%) |
*Item not included in final scoring.
Correct answer.
**Numbers in parentheses indicate the percentage of respondents who answered the question correctly.
Items and standardized factor loadings for the Health Professionals Beliefs about Race (HPBR) scale
| ITEM | QUESTION | LOADING |
|---|---|---|
|
| ||
| HPBR-BD1 | Genetics usually explains differences in the prevalence of common diseases, such as diabetes and kidney disease, among racial groups. | .53 |
| HPBR-BD2 | National Census categories of race correspond with genetic differences. | .53 |
| HPBR-BD3 | Race is the best proxy clinicians have to identify genetic effects on health. | .68 |
| HPBR-BD4 | A clinician’s best predictor of treatment response is the patient’s self-identified race. | .67 |
| HPBR-BD5* | A patient’s race provides important information about a patient’s risk of disease. | |
|
| ||
| HPBR-CD1 | A patient’s race can identify patients who can benefit from enhanced screening for certain diseases. | .61 |
| HPBR-CD2 | A patient’s race can identify patients who can benefit from referral to genetic services for certain diseases. | .71 |
| HPBR-CD3 | Human genetic variation provides clues to unraveling the primary causes of specific racial and ethnic disparities in health. | .47 |
| HPBR-CD4* | There are genetic differences in racial groups that influence health. |
*Item not included in final scoring.
Biological Domain (HPBR-BD) and Clinical Domain (HPBR-CD).
Items and standardized factor loadings for the Racial Attributes in Clinical Evaluation (RACE) scale
| ITEM# | QUESTION | LOADINGS |
|---|---|---|
| RACE1 | I consider information from patients about their racial background. | .61 |
| RACE2 | I consider my patients race to better understand their genetic predispositions. | .69 |
| RACE3 | I consider my patients race when making decisions about which medications to prescribe. | .74 |
| RACE4 | I consider my patients race in determining genetic risk for common, complex diseases (e.g. kidney disease or diabetes). | .77 |
| RACE5 | I consider my patients race in making medication dosage decisions. | .64 |
| RACE6 | I consider my patients race when determining age of initiation of screening for certain diseases. | .66 |
| RACE7 | I consider my patients race in determining how aggressively to treat particular diseases. | .61 |
| RACE8* | I consider my patients race in determining genetic risk for single gene conditions (e.g. cystic fibrosis or sickle cell disease). |
*Item not included in final scoring.
Characteristics of physician respondents and U.S. internal medicine physicians
| Sample characteristics † | N | % | Mean | SD | AMA* (%) |
|---|---|---|---|---|---|
| Total internal medicine physicians | 787 | -- | -- | -- | |
| Mean age | 767 | -- | 48.6 | 9.6 | -- |
| Gender | |||||
| Male | 505 | 65.3 | -- | -- | 67.2 |
| Female | 269 | 34.7 | -- | -- | 32.8 |
| Ethnicity | |||||
| Hispanic/Latino | 27 | 3.5 | -- | -- | 4.9 |
| Race | |||||
| White | 515 | 67.1 | -- | -- | 44 |
| Black or African-American | 49 | 6.4 | -- | -- | 3.9 |
| Asian | 160 | 20.8 | -- | -- | 17.4 |
| American Indian/Alaska Native | 9 | 1.2 | -- | -- | 0.1 |
| Native Hawaiian/Pacific Islander | 2 | 0.3 | -- | -- | -- |
| Other | 54 | 7 | -- | -- | 2.3 |
| Are you a graduate of US Medical School? | |||||
| Yes | 584 | 75.4 | -- | -- | -- |
| No | 190 | 24.5 | -- | -- | -- |
| Did you have genetics training in primary specialty residency? | |||||
| Yes | 87 | 11.3 | -- | -- | -- |
| No | 684 | 88.7 | -- | -- | -- |
| Mean years in practice post-training | 769 | -- | 16.4 | 9.6 | -- |
| Primary practice setting | |||||
| Academic health center | 89 | 11.4 | -- | -- | -- |
| Federally Qualified Health Center | 23 | 2.9 | -- | -- | -- |
| Group or staff model practice HMO | 62 | 7.9 | -- | -- | -- |
| Hospital based | 105 | 13.5 | -- | -- | -- |
| Office based | 459 | 59.1 | -- | -- | -- |
| VA healthcare system | 15 | 1.9 | -- | -- | -- |
| Other | 24 | 3.1 | -- | -- | -- |
| Affiliation with academic institution? | |||||
| Yes | 304 | 39.2 | -- | -- | -- |
| No | 471 | 60.8 | -- | -- | -- |
| Percentage of work time seeing patients | 772 | 85 | -- | -- | -- |
| How would you rate your knowledge of genetics? | |||||
| Excellent | 4 | 0.5 | -- | -- | -- |
| Very good | 36 | 4.6 | -- | -- | -- |
| Good | 184 | 23.7 | -- | -- | -- |
| Fair | 433 | 55.9 | -- | -- | -- |
| Poor | 118 | 15.2 | -- | -- | -- |
†Questions taken from the Health Professionals’ Genetics Education Needs Exploration (HP GENE) Survey.
*N = 160,107. Data taken from the AMA’s Physician Characteristics and Distribution in the US book, 2010 Edition.
-- Data not available.
Figure 2Health Professional Beliefs and Race Scale (HPBR). The scale consists of two domains representing beliefs about race as a biological phenomenon (HPBR-BD) and beliefs about the clinical importance of race (HPBR-CD). Confirmatory Factor Analysis for this model indicated that a correlation between the errors associated with items HPBR-BD1 and HPBR-CD3 should be included (the highest interpretable modification index).
Figure 3Racial Attributes in Clinical Evaluation Scale (RACE). The scale consists of one domain representing the explicit use of race. Confirmatory Factor Analysis for this model indicated an adequate fit to the data. There were no particularly large modification indices and no additional justifiable parameters were indicated.