Various innovations in the field of genomics over the past
few decades have given researchers hope that resolutions to long-lasting
debates might finally be on the horizon. In particular, many have become
optimistic about the prospects for disentangling the threads of “nature” and
“nurture” — that is, about determining the extent to which genes alone can
explain differences within and between populations.
But two recent studies are now calling some of the methods
underlying those aspirations into question.
A key breakthrough was the recent
development of genome-wide association studies (GWAS, commonly pronounced
“gee-wahs”). The genetics of simple traits can often be deduced from
pedigrees, and people have been using that approach for millennia to
selectively breed vegetables that taste better and cows that produce more
milk. But many traits are not the result of a handful of genes
that have clear, strong effects; rather, they are the product of tens of
thousands of weaker genetic signals, often found in noncoding DNA.
When it comes to those kinds of features — the ones that scientists are most
interested in, from height, to blood pressure, to predispositions for
schizophrenia — a problem arises. Although environmental factors can be
controlled in agricultural settings so as not to confound the search for
genetic influences, it’s not so straightforward to extricate the two in humans.
Not to be thwarted, over
the past two decades experts have come up with robust statistical techniques to
address the issue, using data collected from thousands of individuals. This approach
has become particularly prevalent in human genetics, as researchers hope
to predict, say, someone’s risk for a disease based on their genome. Some
groups have even used these methods to probe how natural selection might have
led to observed differences in height (and other traits) among populations. The
findings generated further excitement about the potential applications in
medicine and evolutionary biology for GWAS.
But now, two
resultspublished
last month have cast doubt on those findings, and have
illustrated that problems with interpretations of GWAS results are far more
pervasive than anyone realized. The work has implications for how scientists
think about the interactions between genetic and environmental effects. It also
“raise[s] the ghosts of the possibility that we overestimate … how important
genetics is in contributing to differences between people,” said Rasmus
Nielsen, a biologist at the University of California, Berkeley.
Predictions and Dreams
The warning signs started
quietly. Genome-wide association studies had already proved incredibly
successful at identifying genetic markers for a wide array of traits, even in
complex cases where it wasn’t obvious what the many, many variants were doing.
What had also emerged from that
research as an “obvious, beguiling offshoot,” according to Nick
Barton, an evolutionary biologist at the Institute of Science and
Technology Austria, was a specific prediction known as a “polygenic score.”
Beyond the associations themselves, GWAS could provide estimates of how
individual variants in the genome corresponded to measurable changes in a
trait; polygenic scores constituted the sum of all those tiny effects. For
instance, with height, having a guanine base instead of a cytosine one in a
particular DNA region might correlate with being 0.1 millimeter taller than
average. The polygenic score would take all those approximations, add them up
and spit out a prediction for some individual’s actual height.