Cambridge Healthtech Institute’s Inaugural

Artificial Intelligence in Drug Discovery – Part 1

AI/ML for Optimizing Drug Targets and Leads

October 18 - 19, 2022 EDT

Cambridge Healthtech Institute’s conference on Artificial Intelligence (AI) in Drug Discovery will bring together experts to discuss the increasing use of computational tools, AI models, machine learning (ML) algorithms and data science for accelerating target discovery, drug design, lead optimization, biomarker discovery and ADME/toxicology assessments. The talks will bring attendees up-to-speed with how AI is being applied in drug discovery using relevant case studies and research findings. It will bring together chemists, biologists, pharmacologists and bioinformaticians to talk about how and where AI/ML can be successfully integrated and implemented. The first part of the Artificial Intelligence in Drug Discovery conference will focus on use of AI and ML for optimizing drug targets and leads.

Tuesday, October 18

Registration and Morning Coffee (Grand Ballroom Foyer)7:00 am

ROOM LOCATION: Republic Ballroom A

AI/ML FOR DRUG DESIGN & OPTIMIZATION

7:55 amWelcome Remarks
8:00 am

Chairperson's Remarks

Patrick Riley, PhD, Senior Vice President, Artificial Intelligence, Computation Department, Relay Therapeutics, Inc.

8:05 am

Automated Chemical Design in Drug Discovery

Patrick Riley, PhD, Senior Vice President, Artificial Intelligence, Computation Department, Relay Therapeutics, Inc.

I’ll cover a framework we call ACD (Automated Chemical Design) Levels for describing the level of autonomy for AI-powered systems that design molecules. This framework allows relevant distinctions to be drawn and can help teams better understand the claimed capabilities of a system and ask more insightful questions to understand their function. Using these definitions, we will discuss the challenges and opportunity for AI-powered design of molecules in drug discovery.

8:35 am

Combining Generative AI Models and Reinforcement Learning for de novo Drug Discovery

Parthiban Srinivasan, PhD, Professor, Data Science and Engineering, Indian Institute of Science Education and Research

Generative Adversarial Networks (GANs) and Reinforcement Learning (RL) have been successfully applied for de novo drug design. Multiple such frameworks have been explored and shared by many AI researchers. We review these models and discuss the features of these techniques in terms of generating novel molecules with desired properties.

9:05 am How AI Is Redefining How Potential Drug Targets Are Discovered

Richard Harrison, Chief Scientist, Causaly

It is well known that 90% of drugs entering clinical trials fail to make it to market. Furthermore, a failure to link the target to a disease in preclinical research is the major reason for these failures. Using AI to machine-read and comprehend all scientific literature, we will demonstrate how Causaly Cloud can uncover hidden mediators for several diseases, ensuring the identification of candidates with the greatest chance of success. 

Grand Opening Coffee Break in the Exhibit Hall with Poster Viewing (Grand Ballroom)9:35 am

10:25 am

CACHE: An Experimental Platform to Benchmark and Reveal the Future of Virtual Screening Methods

Matthieu Schapira, PhD, Principal Investigator, Structural Genomics Consortium

The Critical Assessment of Computational Hit-Finding Experiments (CACHE) is an international competition where computational chemists and AI experts around the world submit their predicted compounds which are then procured and rigorously tested experimentally at CACHE against a pre-defined target. The first two challenges, to find hits for the Parkinson’s disease target LRRK2 and the SARS-CoV-2 helicase NSP13 are ongoing. ~50% of participants combined physics-based and deep-learning techniques. Do these hybrid methods already out-perform more traditional approaches?

10:55 am

Solubility Prediction by Deep Learning of Quantum Information Embedded in a Novel Molecular Representation

Tonglei Li, PhD, Allen Chao Chair & Professor, Industrial & Physical Pharmacy, Purdue University

Solubility can be a challenging, time-consuming, material intensive property to measure correctly. To accurately predict solubility values of drug-like compounds, we have recently developed a molecular featurization scheme – MEMS, or Manifold Embedding of Molecular Surface – based on electronic properties on the surface of a molecule. Deep learning methods were further developed. Our effort shows promise in solubility prediction with an accuracy outperforming most of the reported models.

11:25 am

PANEL DISCUSSION: Key Learnings from AI-Driven Early Drug Discovery

PANEL MODERATOR:

Patrick Riley, PhD, Senior Vice President, Artificial Intelligence, Computation Department, Relay Therapeutics, Inc.

PANELISTS:

Anthony Bradley, PhD, Director of Design Development, Exscientia Ltd.

Jörg Wegner, PhD, Associate Scientific Director, In Silico Discovery and External Innovation, Janssen Research & Development, LLC

11:55 am How to Leverage New AI Technologies Alongside Traditional HTS to Better Validate Hit Compounds for GPCRs

Carleton Sage, PhD, Vice President, Computational Sciences, Eurofins Discovery

Based on predictive crystal structures made available by Google’s DeepMind AlphaFold project, Eurofins Discovery will explore the potential of computational chemistry alongside HTS procedures to present examples of diverse and complementary approaches to hit discovery using two ongoing GPCR discovery projects.  We will discuss target selection rationale in a virtual screening approach and a parallel effort of an HTS campaign to address the challenges of hit confirmation and validation. 

Enjoy Lunch on Your Own12:10 pm

UNDERSTANDING THE CAVEATS OF AI PREDICTIONS

1:25 pm

Chairperson's Remarks

Anthony Bradley, PhD, Director of Design Development, Exscientia Ltd.

1:30 pm

Patient-first AI​: Exscientia’s Approach


Anthony Bradley, PhD, Director of Design Development, Exscientia Ltd.

Exscientia’s patient-first approach to drug discovery has produced industry-leading productivity. Structural information is crucial across this process – from target ID, hit generation, and compound optimisation. The revolution in availability of computational and experimental structural information further drives Exscientia's efficiency and predictive quality. In this talk, we outline how we leverage the power of physics and informatics in our AI algorithms. We exemplify this through high-throughput structural target assessment, delivery of novel and class-leading potential anti-viral programme for SARS-CoV-2, and in delivering automated and de novo potent hits in the first cycle of design for a kinase.

2:00 pm

Opportunities and Challenges on “Which Compounds to Make” and “How to Make Them” – A Scalability Perspective

Jörg Wegner, PhD, Associate Scientific Director, In Silico Discovery and External Innovation, Janssen Research & Development, LLC

We will showcase how data analytics/AI is being used in business processes and how this improves decision-making for drug design teams. We will present retro- and prospective studies to highlight the value proposition of the innovation integration of novel science and technology into business processes. A key differentiator for enabling analytics/AI is to decide which science and technology contributes to the business and only lift those to enterprise level.

2:30 pm Logica: Reimagining Drug Discovery, Getting Medicines to Patients Faster!

Ronald Dorenbos, Executive Director Business Development, Logica

Charles River Laboratories and Valo Health have launched Logica, an artificial intelligence (AI) powered drug solution that directly translates clients’ biological insights into optimized preclinical assets. Logica leverages Valo’s AI-powered Opal Computational Platform and Charles River’s leading preclinical expertise, providing clients with transformed drug discovery with a single integrated offering seamlessly translating targets to candidate nomination.

 

Refreshment Break in the Exhibit Hall with Poster Viewing (Grand Ballroom)3:00 pm

3:40 pm FEATURED PRESENTATION:

How AI Is Accelerating Drug Discovery

Petrina Kamya, PhD, Head of AI Platforms, Department of Business Development, Insilico Medicine

Alex Zhavoronkov, PhD, Founder & CEO, Insilico Medicine

Bringing just one drug to market through traditional research and discovery is a decade-long process that costs over $2 billion and the vast majority of drugs in development fail. I will discuss how artificial intelligence is ushering in a new era of accelerated drug discovery through a revolutionary machine learning platform that incorporates novel target discovery, novel small molecule design, and clinical trial prediction. In silico medicine is a global pioneer in end-to-end AI-driven drug discovery with the first AI-discovered and AI-designed drug for idiopathic pulmonary fibrosis currently in Stage 1 clinical trials and 7 preclinical candidates developed.

4:25 pm FEATURED PRESENTATION:

The Potential Dark Side of Generative AI for Drug Discovery

Sean Ekins, PhD, Founder & CEO, Collaborations Pharmaceuticals, Inc.

Our recent work describing the use of generative approaches to rapidly develop thousands of virtual molecules, including the nerve agent VX, has drawn wide attention from the global media. We will address some of the many AI-related ethical questions we have faced since, including whether we should have published the work in the first place and our motivations behind it. In the process we will propose mechanisms whereby such software, data and models can be securely shared.

Interactive Discussions5:10 pm

Interactive Discussions are informal, moderated discussions, allowing participants to exchange ideas and experiences and develop future collaborations around a focused topic. Each discussion will be led by a facilitator who keeps the discussion on track and the group engaged. To get the most out of this format, please come prepared to share examples from your work, be a part of a collective, problem-solving session, and participate in active idea sharing. Please visit the conference website's Interactive Discussions page for a complete listing of topics and descriptions.

ROOM LOCATION: Republic Ballroom A

IN-PERSON INTERACTIVE DISCUSSION:

Understanding the Caveats of AI Predictions

Anthony Bradley, PhD, Director of Design Development, Exscientia Ltd.

Sean Ekins, PhD, Founder & CEO, Collaborations Pharmaceuticals, Inc.

Petrina Kamya, PhD, Head of AI Platforms, Department of Business Development, Insilico Medicine

  • Current trends for the application of AI towards preclinical drug discovery
  • The challenge of continuous evolution of models in response to growth of big data, data types, and computational platforms
  • What measures should be taken to invest in and effectively use AI at various stages of drug development?​​

Welcome Reception in the Exhibit Hall with Poster Viewing (Grand Ballroom)5:55 pm

Close of Day6:55 pm

Wednesday, October 19

Registration and Morning Coffee (Grand Ballroom Foyer)7:30 am

ROOM LOCATION: Republic Ballroom A

AI FOR PROTEIN THERAPEUTICS

7:55 am

Chairperson's Remarks

Ryan Henrici, MD, PhD, Director of Translational Research, BigHat Biosciences

8:00 am

Designing Therapeutic Antibodies with Synthetic Biology and Machine Learning

Ryan Henrici, MD, PhD, Director of Translational Research, BigHat Biosciences

BigHat Biosciences is designing safer, more effective antibody therapies for patients using machine learning and synthetic biology. Machine learning guides the search for better molecules by directing and learning from each cycle of our high speed, automated wet lab that synthesizes and characterizes hundreds of antibodies each week. We’ll highlight key features of our platform and share several case studies of protein engineering using this novel platform.

8:30 am

De novo Design and Machine Learning Guided Optimization of Antibody Therapeutics

Surge Biswas, PhD, Founder & CEO, Nabla Bio, Inc.

We developed a method for de novo antibody design using antigen structure alone. Across multiple antigens, we characterized binding strength for ~105 antibody designs and observed 10s-100s of strong binders. Further, all designs were assayed in multiplex for stability and polyspecificity, and this revealed a broad array of binding and developability trade-offs. These results highlight the importance of integrating machine learning with high-throughput, multi-property measurements for the holistic design of antibody therapeutics.

9:30 am

Peptide Hit Identification and Lead Optimization Using Artificial Intelligence Approaches

Ewa Lis, PhD, Founder & CTO, Koliber Biosciences

Successful peptide drug discovery programs today require attainment of multiple performance metrics to progress a compound to clinical stage. To aid decision-making, Koliber has developed an AI peptide platform based on state-of-the-art machine learning methods to analyze peptide properties, profile positions, and predict new variants. The capabilities and wet-lab validation of the AI platform will be demonstrated with examples from immunology and antimicrobial peptide discovery and optimization.

Coffee Break in the Exhibit Hall with Poster Viewing (Grand Ballroom)10:00 am

PLENARY KEYNOTE PROGRAM

ROOM LOCATION: Constitution A + B

11:00 am

Plenary Chairperson’s Remarks

An-Dinh Nguyen, Team Lead, Discovery on Target, Cambridge Healthtech Institute

11:05 am

PLENARY: Pirating Biology to Detect and Degrade Extracellular Proteins

James A. Wells, PhD, Professor, Departments of Pharmaceutical Chemistry and Cellular & Molecular Pharmacology, University of California, San Francisco

In contrast to intracellular PROTACs, approaches to degrade extracellular proteins are just emerging. I’ll describe our recent progress to harness natural mechanisms such as transmembrane E3 ligases to degrade extracellular proteins using fully genetically encoded bispecific antibodies we call AbTACs. We have also engineered a peptide ligase which can be tethered to cells to detect proteolysis events and target them with recombinant antibodies for greater selectivity for the tumor microenvironment.

11:50 am

PLENARY: Therapeutic Modalities for Neuroscience Diseases

Anabella Villalobos, PhD, Senior Vice President, Biotherapeutics & Medicinal Sciences, Biogen

Many effective medicines exist to treat neurological diseases, but medical need remains high. We have a unique multi-modality approach to discover novel therapies and our goal is to find the best modality regardless of biological target. With a multi-modality approach, we aim to expand target space, leverage synergies across modalities, and offer options to patients. Opportunities and challenges associated with small molecules, biologics, oligonucleotides, and gene therapy will be discussed.

Enjoy Lunch on Your Own12:35 pm

Refreshment Break in the Exhibit Hall with Poster Viewing (Grand Ballroom Foyer)1:25 pm

Close of Artificial Intelligence in Drug Discovery – Part 1 Conference2:05 pm