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

Författare

Angelo Limeta

Chalmers, Life sciences, Systembiologi

Francesco Gatto

Karolinska Institutet

Chalmers, Life sciences, Systembiologi

M. J. Herrgard

BioInnovation Institute

Boyang Ji

BioInnovation Institute

Jens B Nielsen

Chalmers, Life sciences, Systembiologi

BioInnovation Institute

Computational and Structural Biotechnology Journal

2001-0370 (eISSN)

Vol. 21 3912-3919

Ämneskategorier

Cancer och onkologi

DOI

10.1016/j.csbj.2023.07.032

PubMed

37602228

Mer information

Senast uppdaterat

2023-08-17