Affiliation:
1. IBM Research Europe, Zurich, Switzerland
Abstract
:
It is more pressing than ever to reduce the time and costs for the development
of lead compounds in the pharmaceutical industry. The co-occurrence of advances in
high-throughput screening and the rise of deep learning (DL) have enabled the development
of large-scale multimodal predictive models for virtual drug screening. Recently,
deep generative models have emerged as a powerful tool to explore the chemical space
and raise hopes to expedite the drug discovery process. Following this progress in chemocentric
approaches for generative chemistry, the next challenge is to build multimodal
conditional generative models that leverage disparate knowledge sources when mapping
biochemical properties to target structures.
:
Here, we call the community to bridge drug discovery more closely with systems biology
when designing deep generative models. Complementing the plethora of reviews on the
role of DL in chemoinformatics, we specifically focus on the interface of predictive and
generative modelling for drug discovery. Through a systematic publication keyword
search on PubMed and a selection of preprint servers (arXiv, biorXiv, chemRxiv, and medRxiv),
we quantify trends in the field and find that molecular graphs and VAEs have become
the most widely adopted molecular representations and architectures in generative
models, respectively. We discuss progress on DL for toxicity, drug-target affinity, and
drug sensitivity prediction and specifically focus on conditional molecular generative
models that encompass multimodal prediction models. Moreover, we outline future
prospects in the field and identify challenges such as the integration of deep learning systems
into experimental workflows in a closed-loop manner or the adoption of federated
machine learning techniques to overcome data sharing barriers. Other challenges include,
but are not limited to interpretability in generative models, more sophisticated metrics for
the evaluation of molecular generative models, and, following up on that, community-accepted
benchmarks for both multimodal drug property prediction and property-driven
molecular design.
Publisher
Bentham Science Publishers Ltd.
Subject
Pharmacology,Molecular Medicine,Drug Discovery,Biochemistry,Organic Chemistry
Cited by
13 articles.
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