Quantcast

SC Connecticut News

Wednesday, October 16, 2024

New study links genetic variants with neuropsychiatric diseases

Webp pdb35xqzt3c00yieveg2mvly0a3u

Peter Salovey President | Yale University

Peter Salovey President | Yale University

A new analysis has revealed detailed information about genetic variation in brain cells that could open new avenues for the targeted treatment of diseases such as schizophrenia and Alzheimer’s disease.

The findings, reported May 23 in Science, were the result of a multi-institutional collaboration known as PsychENCODE, founded in 2015 by the National Institutes of Health, which seeks new understandings of genomic influences on neuropsychiatric disease. The study was published alongside related studies in Science, Science Advances, and Science Translational Medicine.

The study included data from 388 people, including healthy individuals and some with brain-related diseases and disorders. More than 2.8 million brain cells across 28 different cell types were analyzed. The researchers used their findings to construct genetic regulatory and cellular communication networks, and a machine learning model built off those networks was able to predict disease diagnosis from an individual’s genetic information.

Previous research has established a strong link between a person’s genetics and their likelihood of developing neuropsychiatric disease, says Mark Gerstein, the Albert L. Williams Professor of Biomedical Informatics at Yale School of Medicine and senior author of the new study.

“The correlations between genetics and your susceptibility to disease are much higher for brain diseases than for cancer or heart disease,” said Gerstein. “If your parents have schizophrenia, you’re much more likely to get it than you are to get heart disease if your parents have the disease. There is a very large heritability for these brain-related conditions.”

What’s less clear, however, is how this genetic variation leads to disease.

“We want to understand the mechanism,” said Gerstein. “What is that gene variant doing in the brain?”

For the new study, researchers set out to better understand the genetic variation across individual cell types in the brain. To do so, they performed several types of single-cell experiments on more than 2.8 million cells taken from the brains of 388 people, including healthy individuals and others with schizophrenia, bipolar disorder, autism spectrum disorder, post-traumatic stress disorder, and Alzheimer’s disease.

From that pool of cells, the researchers identified 28 different cell types. Then they examined gene expression and regulation within those cell types.

In one analysis, the researchers were able to link gene expression to variants in “upstream” regulatory regions—bits of genetic code situated before the gene in question that can increase or decrease the gene’s expression.

“That’s useful because if you have a variant of interest, you can now link it to a gene,” said Gerstein. “And that’s really powerful because it helps you interpret the variants. It helps you understand what effect they’re having in the brain. And because we looked across cell types, our data also allow you to connect that variant to an individual cell type of action.”

The researchers also assessed how particular genes—such as those associated with neurotransmitters—varied across individuals and cell types; finding variability was usually higher across cell types than across individuals. This pattern was even stronger for genes that code for proteins targeted for drug treatment.

“And that’s generally good for a drug,” Gerstein said. “It means that those drugs are homing in on particular cell types and not affecting your whole brain or body. It also means those drugs are more likely to be unaffected by genetic variants and work in many people.”

Using data generated by their analysis, researchers mapped out within-cell type genetic regulatory networks and between-cell communication networks before plugging those networks into a machine learning model capable of predicting whether an individual had a brain disease based on their genetic information.

“Because these networks were hard coded in the model when it made a prediction we could see which parts contributed to it,” said Gerstein. “So we could identify which genes and cell types were important for that prediction—and that can suggest candidate drug targets.”

In one example provided by Gerstein's team: their model predicted an individual with a particular genetic variant might have bipolar disorder based on two genes in three cell types; while another example saw six genes in six cell types contributing towards predicting schizophrenia diagnosis.

The model also worked conversely: introducing hypothetical perturbations allowed scientists preview potential impacts upon health outcomes—a tool useful during drug design processes or testing combinations thereof according to Gerstein who concluded:

“Our vision is researchers interested specifically about certain genes/variants using resources like ours—to better understand what happens inside brains or identify possible new candidate drugs worth investigating further."

ORGANIZATIONS IN THIS STORY

!RECEIVE ALERTS

The next time we write about any of these orgs, we’ll email you a link to the story. You may edit your settings or unsubscribe at any time.
Sign-up

DONATE

Help support the Metric Media Foundation's mission to restore community based news.
Donate

MORE NEWS