Genome science and health disparities: a growing success story?

Ten years after the completion of the Human Genome Project, researchers are using DNA to shed light on human history and health. A signifi cant fiof the Human Genome Project and subsequent spin­off projects is that human populations are considerably more similar than diff erent at the DNA level, yet it is now well recognized that genetic diff erences between ancestral and ethnic groups can have important evolutionary and medical relevance. Here, we refl ect on how scientists are taking advantage of these observations to provide insight into complex social and medical issues, such as health disparities and variable drug response. Ethnic diff erences and health disparities


Ethnic diff erences and health disparities
Health disparities are diff erences in health status (such as incidence, prevalence, and mortality rates) between population groups. Health disparities depend on many factors, including age, gender, income, geography, ethnicity, and race. Overwhelmingly, disparities in health are the result of sociopolitical structures that drive some members of a society towards poorer health. Some have expressed concern that this gradient will be exacerbated if genetics draws attention and resources away from more important determinants of disparities [1]. Furthermore, because disparities can occur along ethnic and racial lines (at least in the US), genetic explanation may re inforce racial stereotypes, a known contributor to dis parities. We recognize these pitfalls, but given the central role of DNA in disease etiology and variable drug response, the potential of genetics and genomics to shed light on health disparities must be considered.
Highthroughput genomics has illuminated the relation ship between ethnicity and disease disparities. Although most genetic variation is shared among all human popu lations, a disease susceptibility locus can diff er in frequency across populations. To illustrate, African Americans typically trace ancestry to western Africa and Europe; this type of population of mixed ancestry is called admixed. In chromosomal segments containing disease susceptibility loci, there will be excess ancestry in an admixed population from the ancestral populations with higher frequencies of risk alleles. Admixture map ping became feasible in 2004 and has generated some notable successes. For example, the incidence of end stage renal disease (ESRD) is four times higher in African Americans than in European Americans. Th e hypothesis that susceptibility alleles for ESRD have higher frequen cies in West African than European gene pools led to the identifi cation of the Apolipoprotein L1 gene (APOL1) as a major eff ect gene [2]. Interestingly, the frequency of the APOL1 risk variant (rs73885319) varies worldwide, ranging from 40% among the Yoruba from Nigeria to 20% in African Americans and 0% in Europeans and East Asians. Th is kidney disease risk variant is believed to have risen to high frequency in Africa because it confers resistance to trypanosomal infection and protects against the lethal form of African sleeping sickness.
Another example is diff erences in white blood cell (WBC) count, which have possible implications for dis parity in cancer treatment and survival. Populations with African ancestry have lower WBC count than Europeans, and it has been suggested that lower WBC counts in African American women with earlystage breast cancer may lead to delays in treatment compared with European American women at a similar disease stage [3]. Approxi mately 20% of variation in peripheral WBC counts between African Americans and European Americans can be explained by the promoternull variant rs2814778 in the Duff y blood group gene DARC [4]. Th e derived allele C is fi xed between West Africans (frequency 100%) and Europeans and East Asians (frequency 0%); lack of genotypic variation within ancestral groups precludes detection via traditional genomewide association studies.
Given such examples, methods that explicitly incor porate ancestrally specifi c eff ect sizes and diff erences in allele frequencies and linkage disequilibrium are being developed to empower studies of replication and better localization of disease risk variants across ancestral back grounds. Furthermore, methodological advances now allow integration of admixture mapping and genotypic association, combining the power of the former with the resolution of the latter [5]. We anticipate that such tech niques will help elucidate the genetic component of health disparities.

Illuminating health disparities in the choice of and response to treatment
Scientists are now beginning to document how pharma co genomics variants can explain disparities in health outcomes. For example, warfarin is the most commonly used anticoagulant worldwide. However, it is charac terized by a narrow therapeutic index and wide inter and intraindividual variation in the dose required for the target therapeutic response. A small number of polymor ph isms in CYP2C9 (alleles *2 and *3, rs1799853 and rs1057910, respectively) and VKORC1 (3673G>A, rs9923231) capture most of the pharmacogenomics effect on warfarin dose variance in white populations, but this is not so for populations of African ancestry, in whom VKORC1 rs9923231 and CYP2C9 *2 and *3 are absent or rare [6]. The VKORC1 single nucleotide polymorphism rs9923231 is associated with reduced warfarin dose requirements in Asians, blacks, and whites. However, the percentage of interindividual dose variation explained by this polymorphism is considerably lower in blacks (4.2%) than in whites (22.5%), which is largely due to the lower frequency of rs9923231 in the black study group (10.1%) compared with whites (37.8%) [7]. These allele frequency differences between populations translate to poor performance of warfarin dosing algorithms among populations of African ancestry when compared with Europeans.
Patients infected with hepatitis C virus are usually treated with peginterferon and ribavirin to prevent sequelae such as progressive hepatic fibrosis, cirrhosis, and hepatocellular carcinoma. However, response to treat ment is variable, and approximately half of such patients will achieve a sustained virological response after the standard course of treatment. African Americans are less likely to respond to treatment, independent of other host and viral factors. Genomewide association studies led to the identification of single nucleotide polymorphisms in IL28B (such as rs12979860) as important predictors of treatment response and spontaneous clearance in patients infected with hepatitis C virus. Allele frequencies differ between ethnic groups, largely explaining the observed differences in response rates between Cauca sians, African Americans, and Asians. Indeed, the IL28B polymorphism may explain at least half of the difference in response rates observed between Caucasians and African Americans who received the same treatment [8].
A final example is acute lymphoblastic leukemia, a childhood cancer for which great strides have been made in successful treatment. However, poorer survival is observed among African Americans or those with Hispanic ethnicity compared with European Americans or Asians. A recent study in an unselected cohort of children with this form of leukemia found that Native American ancestry was associated with risk of relapse, after adjusting for known prognostic factors [9]. Remarkably, this ancestryrelated difference in relapse risk was largely abolished by the addition of a single extra phase of chemotherapy.

Conclusions
The new knowledge allowing genomics to inform disease and treatment disparities across ethnic and continental ancestry populations stems directly from improvements in technology, tools, and methods from the Human Genome Project and related projects that enable us to interrogate the genome in a broad, flexible, and affordable way. We are just beginning to appreciate the potential role of pharmacogenomics in health disparities. Given the central role of treatment with pharmaceutical agents in modern medicine, it remains crucial to study multiple global populations as well as more drugs [10]. Such studies can find actionable observations that can be trans lated to treatment guidelines that maximize indi vidual response while avoiding side effects and adverse drug reactions. In time, we will have sufficient knowledge to disentangle the genetic influences from the other broader behavioral, social, cultural, and health care access aspects of disparities in health outcomes.