Immunotherapy can only be viable and cost-effective if we know more about the patient’s body and their cancer before making treatment decisions. Determining which patients will benefit from immunotherapy treatments will be critical for the adoption and further development of these therapies.
Identifying biological indicators– biomarkers–that can predict treatment response accurately is almost within our grasp. Vital information lies hidden beneath heaps of data from genomic and transcriptomic panels, immunological assays or in the gut microbiome. Physicians can utilize this knowledge to predict the effectiveness of different therapies in individuals or groups, as well as the likelihood of adverse reactions. Currently, parameters such as the tumour mutational burden (TMB) [5], and Programmed cell death-ligand 1 Immunochemistry (PD-L1 IHC) [6] can serve as predictors of treatment outcome.
Still, considering more factors influencing response is needed to make more accurate predictions. However, the amount of data required to extract relevant insights is too large to be parsed on the fly by healthcare professionals. Certainly, tracking and comparing the data on many different biomarkers to infer a recommendation for therapeutic approach, requires more advanced computational methods and models. These models should also enable the clinicians to interpret the model predictions to justify treatment recommendations.
Biomarker discovery is a growing field and new tools for outcome prediction and diagnostics are rapidly emerging. At Ardigen, we are the forefront of this exploration. We have applied our Bioinformatics and Machine Learning expertise to sift through different sources of data– from genomics, through metabolomics, to biopsy images – and provide insights for a wide variety of diseases ranging from depression to inflammatory bowel disease. To date, we have completed ten biomarker discovery projects.
In oncology, we have built models to understand the contributions of multiple biomarkers for predicting response to atezolizumab. [7] We investigated associations of gene mutations, expressions, and gene expression signatures with the treatment outcome, which lead to the identification of the most relevant biomarkers. We constructed multivariate machine learning models for predicting treatment response. These models were tested on two tasks related to medical outcome measures: one related to tumour size change, and the second one related to patient’s survival during two years post-treatment. In the latter we performed stratification of patients into groups predicted to benefit and not benefit from the atezolizumab treatment.