Ludwig Cancer Research scientists have developed a new and more accurate way to determine the molecular signs of cancer likely to be presented to helper T cells, which stimulate and orchestrate the immune response to tumors and infectious agents.

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The predictor algorithm is already being implemented in Ludwig Lausanne’s program to develop individualized immunotherapies for cancer.
Sick and cancerous cells chop up aberrant proteins associated with their disease and display fragments of those proteins on their surfaces to sound an immune alarm. They do so using two broad classes of HLA molecules: HLA-I, which activates the killer T cells that destroy cancerous or infected cells, and HLA-II, which activates helper T cells.
Distinct amino acid sequences—or binding “motifs”—direct the binding of antigenic peptides to each class of HLA molecules; those that lack such motifs are not presented by HLA molecules as targets of the immune response. Knowing those motifs thus allows researchers to select the right collection of peptides to serve as targets for (currently experimental) immunotherapies that are tailored to the unique molecular profile of an individual’s cancer.
Researchers are already quite good at identifying peptides likely to bind HLA-I. But HLA-II has proved more problematic. “Binding to HLA-II is much less well understood,” says Gfeller. “But we know from immunology that HLA-II antigen presentation to helper T cells is absolutely critical to priming the immune response.” The results of recent cancer vaccine studies have, moreover, indicated that helper T cells are vitally important to the induction of effective anti-tumor immune responses.
The rules of HLA-II binding have been hard to pin down due to the diversity of HLA-II molecules and the complexity of their peptide binding patterns. The researchers hypothesized that an unbiased analysis of amino acid patterns in the HLA-II bound peptides found by mass spectrometry might reveal some of those rules. “We believed it was very important to develop our own computational method because, that way, we could fine tune it to address this particular problem,” says Gfeller.
MoDec’s results were used to train an algorithm to predict the HLA-II binding capability of peptides from a variety of tumors and pathogens. The predictor’s identification of immunogenic HLA-II-binding peptides proved, by the researchers’ reckoning, to be at least two-fold better than those achieved by previous efforts.
In addition to their Ludwig Cancer Research positions, Gfeller is an associate professor at the Department of oncology UNIL CHUV and the University of Lausanne, and Bassani-Sternberg is a group leader at the Department of oncology UNIL CHUV, the Lausanne University Hospital and the University of Lausanne.
This study was supported by Ludwig Cancer Research, the Swiss Cancer League and the ISREC Foundation.
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