Leveraging high-resolution omics data for predicting responses and adverse events to immune checkpoint inhibitors
Review article, 2023

A long-standing goal of personalized and precision medicine is to enable accurate prediction of the outcomes of a given treatment regimen for patients harboring a disease. Currently, many clinical trials fail to meet their endpoints due to underlying factors in the patient population that contribute to either poor responses to the drug of interest or to treatment-related adverse events. Identifying these factors beforehand and correcting for them can lead to an increased success of clinical trials. Comprehensive and large-scale data gathering efforts in biomedicine by omics profiling of the healthy and diseased individuals has led to a treasure-trove of host, disease and environmental factors that contribute to the effectiveness of drugs aiming to treat disease. With increasing omics data, artificial intelligence allows an in-depth analysis of big data and offers a wide range of applications for real-world clinical use, including improved patient selection and identification of actionable targets for companion therapeutics for improved translatability across more patients. As a blueprint for complex drug-disease-host interactions, we here discuss the challenges of utilizing omics data for predicting responses and adverse events in cancer immunotherapy with immune checkpoint inhibitors (ICIs). The omics-based methodologies for improving patient outcomes as in the ICI case have also been applied across a wide-range of complex disease settings, exemplifying the use of omics for in-depth disease profiling and clinical use.

Immune related adverse events

Omics

Predictive models

Immune-checkpoint inhibitors

Biomarkers

Author

Angelo Limeta

Chalmers, Life Sciences, Systems and Synthetic Biology

Francesco Gatto

Karolinska Institutet

Chalmers, Life Sciences, Systems and Synthetic Biology

M. J. Herrgard

BioInnovation Institute

Boyang Ji

BioInnovation Institute

Jens B Nielsen

Chalmers, Life Sciences, Systems and Synthetic Biology

BioInnovation Institute

Computational and Structural Biotechnology Journal

2001-0370 (eISSN)

Vol. 21 3912-3919

Subject Categories

Cancer and Oncology

DOI

10.1016/j.csbj.2023.07.032

PubMed

37602228

More information

Latest update

8/17/2023