Strategic Communications and Marketing News Bureau

Machine-learning model can distinguish antibody targets

CHAMPAIGN, Ill. — A new study shows that it is possible to use the genetic sequences of a person’s antibodies to predict what pathogens those antibodies will target. Reported in the journal Immunity, the new approach successfully differentiates between antibodies against influenza and those attacking SARS-CoV-2, the virus that causes COVID-19.

“Our research is in a very early stage, but this proof-of-concept study shows that we can use machine learning to connect the sequence of an antibody to its function,” said Nicholas Wu, a professor of biochemistry at the University of Illinois Urbana-Champaign who led the research with U. of I. biochemistry Ph.D. student Yiquan Wang; and Meng Yuan, a staff scientist at Scripps Research in La Jolla, California.

With enough data, scientists should be able to predict not only the virus an antibody will attack, but which features on the pathogen the antibody binds to, Wu said. For example, an antibody may attach to different parts of the spike protein on the SARS-CoV-2 virus. Knowing this will allow scientists to predict the strength of a person’s immune defense, as some targets of a pathogen are more vulnerable than others.

The new approach was made possible by the abundance of data related to antibodies against SARS-CoV-2, Wu said.

“In 20 years, scientists have discovered about 5,000 antibodies against the flu virus,” he said. “But in just two years, people have identified 8,000 antibodies for COVID. This provides an opportunity that’s never been seen before to study how antibodies work and to do this kind of prediction.”

The researchers used antibody data from 88 published studies and 13 patents. The datasets were big enough to allow the researchers to train their model to make predictions based on the antibodies’ genetic sequence.

The model was designed to distinguish whether the sequences coded for antibodies targeting regions on the influenza virus or on the SARS-CoV-2 virus. The researchers then checked the accuracy of those predictions.

“The accuracy was close to 85% overall,” Wang said.

“I was actually quite surprised that it worked so well,” Wu said.

The team is working to improve its model so that it can more precisely determine which parts of the virus the antibodies attack.

“If we can make these predictions based on antibody sequence, we might also be able to go back and design antibodies that bind to specific pathogens,” Wu said. “This is not something that we can do now, but those are some implications for future study.”

The National Institutes of Health supported this research.

Editor’s notes

To reach Nicholas Wu, email nicwu@illinois.edu.

The paper “A large-scale systematic survey reveals recurring molecular features of public antibody responses to SARS-CoV-2” is available online and from the U. of I. News Bureau.

DOI: 10.1016/j.immuni.2022.03.019



This article was imported from a previous version of the News Bureau website. Please email news@illinois.edu to report missing photos and/or photo credits.

Read Next

Earth and Environmental Sciences Researcher portrait standing in front of graphics from study

Researchers advance first-of-its-kind AI tool for translating life-saving weather warnings across the US

A new study led by Joseph Trujillo-Falcón documents how artificial intelligence is used to translate life-saving weather forecasts and alerts into non-English languages.

Arts Photo of a group of violinists from Apollo's Fire standing and playing onstage.

Krannert Center announces performers for 2026-27 season

CHAMPAIGN, Ill. — Krannert Center for the Performing Arts’ 2026-27 season features a variety of performers that include Broadway stars Audra McDonald and Renée Elise Goldsberry, as well as Champaign-Urbana natives Somi and Sasha Velour. The season will feature a musical tribute for America’s 250th celebration, as well as jazz musicians, symphony orchestras, theater and […]

Life Sciences Research News Veterinary Medicine Photo of researchers in the laboratory. They are standing in front of dozens of fish tanks.

One simple trick makes zebrafish a better model for microbiome research

A new advance in animal husbandry involving a popular aquarium fish should speed the pace of microbiome research, scientists report.

Strategic Communications and Marketing News Bureau

507 E. Green St
MC-426
Champaign, IL 61820

Email: stratcom@illinois.edu

Phone (217) 333-5010