2023 - Predicting Immune Checkpoint Inhibitor Response Directly from Tumor RNA-Sequencing Data
Date2023-05-31
Deadline2023-05-31
VenueWebinar, USA - United States
KeywordsTumor; Oncology; Biomarkers
Topics/Call fo Papers
Immune checkpoint inhibitors (ICI) have become the standard of care as a first- or second-line systemic treatment for patients with various cancer types. Unfortunately, many patients do not respond to this treatment and the occurrence of immune-related adverse events varies widely. There is an urgent need for robust predictive biomarkers for immune checkpoint inhibitor response to select patients with likely clinical benefit from this costly treatment.
Several biomarkers, aimed at predicting response to immune checkpoint inhibitors, have been proposed, including PD-L1 expression, tumor mutation burden (TMB), infiltration of cytotoxic T-cells in the tumor, Microsatellite Instability (MSI) and expression of various immune gene signatures. However, these individual biomarkers have suboptimal performance and multiple complementary omics technologies are required to properly quantify them. Integration of these multi-omic biomarkers has proven valuable in increasing the accuracy and robustness of immune checkpoint inhibitor response prediction.
The featured speakers have developed a computational pipeline that determines the expressed mutation burden (eTMB), MSI status, fraction of infiltrating immune cells and various immune gene expression signatures directly from the RNA-sequencing profile of the tumor. Each biomarker is quantified using a dedicated algorithm that applies machine learning (eTMB and MSI) or computational deconvolution (infiltrating immune cells) and integrates external data sources to maximize performance. Algorithm performance has been validated on large cohorts of tumor RNA-sequencing data with matching gold standard quantification of said biomarkers. Moreover, integrating these biomarkers improves prediction of response to checkpoint inhibition therapy.
Register for this webinar to learn how this computational approach enables the quantification of various immune checkpoint inhibitor response biomarkers from a single omics layer (RNA-seq) and improves response prediction.
Several biomarkers, aimed at predicting response to immune checkpoint inhibitors, have been proposed, including PD-L1 expression, tumor mutation burden (TMB), infiltration of cytotoxic T-cells in the tumor, Microsatellite Instability (MSI) and expression of various immune gene signatures. However, these individual biomarkers have suboptimal performance and multiple complementary omics technologies are required to properly quantify them. Integration of these multi-omic biomarkers has proven valuable in increasing the accuracy and robustness of immune checkpoint inhibitor response prediction.
The featured speakers have developed a computational pipeline that determines the expressed mutation burden (eTMB), MSI status, fraction of infiltrating immune cells and various immune gene expression signatures directly from the RNA-sequencing profile of the tumor. Each biomarker is quantified using a dedicated algorithm that applies machine learning (eTMB and MSI) or computational deconvolution (infiltrating immune cells) and integrates external data sources to maximize performance. Algorithm performance has been validated on large cohorts of tumor RNA-sequencing data with matching gold standard quantification of said biomarkers. Moreover, integrating these biomarkers improves prediction of response to checkpoint inhibition therapy.
Register for this webinar to learn how this computational approach enables the quantification of various immune checkpoint inhibitor response biomarkers from a single omics layer (RNA-seq) and improves response prediction.
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Last modified: 2023-05-09 06:05:55