AI Tools for a New Era of Phenotypic Drug Discovery
Over the last two decades, phenotypic drug discovery contributed to a large number of first-in-class medicines with novel molecular mechanisms. It has proven to be a powerful strategy for identifying new molecular entities that are not derivatives of existing or previously investigated compounds. This enabled the discovery of therapies that have provided valuable interventions for unmet medical needs, such as Duchenne muscular dystrophy, spinal muscular atrophy, hepatitis C, and cystic fibrosis.
To further advance phenotypic drug discovery, the biotech industry is dedicated to improving the methods for phenotypic profiling, developing better disease models and novel computational approaches. In particular, ML and AI tools provide significant advantages for phenotypic drug discovery by enabling automated analysis of cell image data, extraction of diverse morphological features and clustering of cellular phenotypes to help identify potential drug candidates, as well as for many other applications.
In addition, advanced computational methods can take advantage of multimodal data. For example, using chemical structure features and together with extracted image features for elucidating the Mode of Action (MoA) and bioactivity properties significantly improves the prediction power of the method. Diverse types of large public datasets have become a valuable data source for phenotypic drug discovery. The phenotypic drug discovery community is collaborating by sharing datasets and analysis methods through consortia such as JUMP-CP. Ardigen has been a supporting partner of the JUMP-CP, contributing resources such as the JUMP-CP Data Explorer tool.
Incorporating machine learning and AI solutions into phenotypic drug discovery workflows can provide additional dimensionality and powerful insights, improve the success rate and accelerate the speed of drug discovery, as well as provide access to the greatest diversity of target types and identify novel mechanisms.
Explore Ardigen’s phenAID platform, dedicated to reducing the analysis time and enhancing the quality of predictions for HCS datasets. Visit our website to learn more.