NIH scientists develop AI tool to predict how cancer patients will respond to immunotherapy

In a proof-of-concept study, researchers at the National Institutes of Health have developed an artificial intelligence tool that uses routine clinical data, such as that from a simple blood test, to predict whether someone’s cancer will respond to immune checkpoint inhibitors, a type of immunotherapy drug that helps immune cells kill cancer cells.

BETHESDA, Md., June 3, 2024 /PRNewswire/ --

What: In a proof-of-concept study, researchers at the National Institutes of Health (NIH) have developed an artificial intelligence (AI) tool that uses routine clinical data, such as that from a simple blood test, to predict whether someone’s cancer will respond to immune checkpoint inhibitors, a type of immunotherapy drug that helps immune cells kill cancer cells. The machine-learning model may help doctors determine if immunotherapy drugs are effective for treating a patient’s cancer. The study, published June 3, 2024, in Nature Cancer, was led by researchers at the National Cancer Institute’s (NCI) Center for Cancer Research and Memorial Sloan Kettering Cancer Center in New York. NCI is part of the National Institutes of Health.

Currently, two predictive biomarkers are approved by the Food and Drug Administration for use in identifying patients who may be candidates for treatment with immune checkpoint inhibitors. The first is tumor mutational burden, which is the number of mutations in the DNA of cancer cells. The second is PD-L1, a tumor cell protein that limits the immune response and is a target of some immune checkpoint inhibitors. However, these biomarkers do not always accurately predict response to immune checkpoint inhibitors. Recent machine-leaning models that use molecular sequencing data have shown value in predicting response, but this kind of data is expensive to obtain and not routinely collected.

The new study details a different kind of machine-learning model that makes predictions based on five clinical features that are routinely collected from patients: a patient’s age, cancer type, history of systemic therapy, blood albumin level, and blood neutrophil-to-lymphocyte ratio, a marker of inflammation. The model also considers tumor mutational burden, assessed through sequencing panels. The model was constructed and evaluated using data from multiple independent data sets that included 2,881 patients treated with immune checkpoint inhibitors across 18 solid tumor types.

The model accurately predicted a patient’s likelihood of responding to an immune checkpoint inhibitor and how long they would live, both overall and before the disease returned. Notably, the researchers said, the model was also able to identify patients with low tumor mutational burden who could still be treated effectively with immunotherapy.

The researchers noted that larger prospective studies are needed to further evaluate the AI model in clinical settings. They have made their AI model, called Logistic Regression-Based Immunotherapy-Response Score (LORIS), publicly available at https://loris.ccr.cancer.gov. The tool estimates the likelihood of a patient responding to immune checkpoint inhibitors based on data on the six variables described above.

The study was co-led by Eytan Ruppin, M.D., Ph.D., of NCI’s Center for Cancer Research and Luc G. T. Morris, M.D., of Memorial Sloan Kettering Cancer Center. The work was spearheaded by Tiangen Chang, Ph.D., and Yingying Cao, Ph.D., of Dr. Ruppin’s group at NCI’s Center for Cancer Research.

Who: Eytan Ruppin, M.D., Ph.D., Center for Cancer Research, National Cancer Institute

The Study: “LORIS robustly predicts patient outcomes with immune checkpoint blockade therapy using common clinical, pathologic and genomic features” appears June 3, 2024, in Nature Cancer.

About the National Cancer Institute (NCI): NCI leads the National Cancer Program and NIH’s efforts to dramatically reduce the prevalence of cancer and improve the lives of people with cancer. NCI supports a wide range of cancer research and training extramurally through grants and contracts. NCI’s intramural research program conducts innovative, transdisciplinary basic, translational, clinical, and epidemiological research on the causes of cancer, avenues for prevention, risk prediction, early detection, and treatment, including research at the NIH Clinical Center—the world’s largest research hospital. Learn more about the intramural research done in NCI’s Center for Cancer Research. For more information about cancer, please visit the NCI website at cancer.gov or call NCI’s contact center at 1-800-4-CANCER (1-800-422-6237).

About the National Institutes of Health (NIH): NIH, the nation’s medical research agency, includes 27 Institutes and Centers and is a component of the U.S. Department of Health and Human Services. NIH is the primary federal agency conducting and supporting basic, clinical, and translational medical research, and is investigating the causes, treatments, and cures for both common and rare diseases. For more information about NIH and its programs, visit nih.gov.

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SOURCE National Cancer Institute

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