Cambridge Healthtech Institute’s 4th Annual

AI/ML-Enabled Drug Discovery - Part 1

Part 1: Design and Optimization of Novel Drugs and Modalities

September 23 - 24, 2025 ALL TIMES EDT

Cambridge Healthtech Institute’s two-part conference on Artificial Intelligence (AI)/Machine Learning (ML)-Enabled Drug Discovery will highlight the increasing use of computational tools, predictive modeling, algorithms, and data analysis for identifying novel drug targets, designing new drug candidates, optimizing leads, and ADMET properties, drug repurposing and other diverse applications. Relevant case studies and research findings will show where and how AI/ML can be successfully applied, integrated, and implemented in drug discovery. It will bring together chemists, biologists, pharmacologists, data scientists, and bioinformaticians to talk about what is being done and what can be made possible, while understanding the underlying caveats of AI-enabled decision-making.

Tuesday, September 23

7:00 amRegistration Open and Morning Coffee

7:55 amWelcome Remarks

AI-DRIVEN DRUG DESIGN

8:00 am

Chairperson's Remarks

Anthony Bradley, D.Phil, Assistant Professor, Department of Chemistry, University of Liverpool

8:05 am

Generative Design in Drug Discovery: Are We Truly Innovating or Merely Complicating?

Anthony Bradley, D.Phil, Assistant Professor, Department of Chemistry, University of Liverpool

As generative models grow more complex, discerning their actual contributions to drug design becomes challenging. This presentation assesses the true impact of these models, focusing on molecule synthesizability and 3D structural integration. We critically analyze limitations from small datasets and the models' tendency to infer patterns without genuine extrapolative power. Emphasizing the need for clarity in evaluation, we propose strategies for establishing meaningful benchmarks to ensure generative models deliver tangible improvements in drug discovery.

8:35 am

AI/ML-Enabled Growing of Small Molecules from Fragment Seeds within Protein Cavities

Jordi Mestres, PhD, Founder & CSO, Chemotargets

Structure-based generative modelling (SBGM) represents a change of paradigm in drug discovery, from virtually screening ultra-large chemical libraries to virtually growing molecules with desired physicochemical and ADMET properties directly inside the protein cavity. In this talk, the SBGM platform developed at Chemotargets (named D3) to generate novel synthetically feasible drug-like molecules for protein targets will be introduced. Both retrospective fragment-to-drug examples and prospective fragment-growing case studies that resulted in the identification of novel bioactive chemical matter will be presented.

9:05 am

Integrating AI/ML with a Unique Chemical Space to Create Efficiency and Optionality in Early Drug Discovery

Hok Hei Tam, PhD, Co-Founder and CTO, Montai Therapeutics; Senior Principal, Flagship Pioneering

Advanced AI/ML modeling makes it possible to efficiently and specifically discover new oral therapeutics for chronic disease. Montai’s CONECTA platform integrates proprietary bioassay data and machine-learning models built on repositories of chemistry and multi-factorial biological data on complex disease pathways and drug-like properties. The integration of multi-modal modeling into the candidate selection process efficiently identifies those with the highest probability of becoming successful drugs to address significant unmet needs in human health.

9:35 amNetworking Refreshment Break

Join your colleagues for a cup of coffee or refreshments and make new connections

10:05 am

PANEL DISCUSSION: From GPU to GMP- Bridging AI/ML Tools and Real-World Drug Discovery

PANEL MODERATOR:

Anthony Bradley, D.Phil, Assistant Professor, Department of Chemistry, University of Liverpool

PANELISTS:

Erin Davis, PhD, CTO, Technology, X Chem Inc

Ashwini Ghogare, PhD, MBA, GenAI Leader, Start-ups, Life Sciences & Healthcare, Amazon Web Services

Petrina Kamya, PhD, Global Head of AI Platforms & Vice President, Insilico Medicine; President, Insilico Medicine Canada

Jordi Mestres, PhD, Founder & CSO, Chemotargets

Janet Paulsen, PhD, Senior Alliance Manager, Drug Discovery, NVIDIA Corp.

Woody Sherman, PhD, Founder and Chief Innovation Officer, PsiThera

Mike Tarselli, PhD, Specialist Leader, HCLS Data & AI, AWS Healthcare & Life Sciences

11:30 am Exploiting Dynamics and Kinetics for Selective Drug Design

Samuel Lotz, Chief Technology Officer, Examol

Selectivity within closely related protein families (kinases, GPCRs, muscarinic receptors) remains a critical challenge that current AI methods fail to address due to their inability to capture dynamics and kinetics. Examol uniquely combines weighted ensemble molecular dynamics for minute-timescale residence time predictions with target family-specific AI models, enabling identification of exploitable selectivity opportunities through cryptic sites, kinetic differences, and subtle dynamical features between family members. Examol's computational platform provides pharmaceutical partners with actionable insights for rational design of selective therapeutics where conventional approaches have failed.

11:35 am Accelerate Your DMTA Cycles with AI-Powered Serverless HPC

Fengbo Ren, Founder & CEO, Fovus

Mark Azadpour, Sr. Business Manager, HPC Orchestration, Amazon Web Services (AWS)

Sunny Sharma, HPC & AI Evangelist, Fovus Corporation

Drug discovery today requires both speed and scale. AWS provides the most flexible cloud infrastructure for high-performance computing, while Fovus delivers the world’s first AI-powered serverless HPC platform that makes supercomputing simple, adaptive, and cost-efficient. Together, AWS and Fovus help computational scientists accelerate Design Make Test Analyze (DMTA) cycles, reduce costs, and uncover insights faster than ever before.

This talk will show how Fovus optimizes workload strategies with AI, leverages spot capacity intelligently, and adapts continuously to evolving AWS infrastructure to deliver sustained time cost optimality. We will share benchmarking results from AlphaFold 3, Boltz-1, and GROMACS workloads along with case studies from leading biotech innovators.

Join us to see how AWS and Fovus are transforming computational pipelines and enabling teams to discover more with less. Learn more at fovus.co

11:50 am AI-Enhanced, Chemically Aware Workflows for Chemical and Biological Drug Discovery

James White, CDD

CDD Vault enhances drug discovery by embedding AI and AI⁺ modules into a unified, chemically aware platform. It supports small molecules, biologics, peptides, and ADCs while standardizing structures, sequences, conjugation details, and assays within a single, context-rich environment. Users can apply deep learning to identify similar compounds and novel bioisosteres, perform 3D protein folding with AlphaFold2 or ESMFold, and simulate ligand–protein docking with DiffDock, including scoring and interactive visualizations, all within CDD Vault. These capabilities create a fully integrated workflow for registration, assay data management, visualization, search, and modeling that empowers multidisciplinary teams to collaborate and accelerate innovation.

12:05 pmEnjoy Lunch on Your Own

AI/ML FOR TARGET DISCOVERY

1:15 pm

Chairperson's Remarks

Tudor Oprea, MD, PhD, CEO, Expert Systems, Inc.

1:20 pm

Artificial Intelligence for Target Prioritization and Therapeutic Indication Expansion

Tudor Oprea, MD, PhD, CEO, Expert Systems, Inc.

At Expert Systems, we firmly believe in temporal validation for all AIML models as a means to significantly reduce predictive errors and hallucinations. We will discuss our Target Druggability model, which, trained on data current as of 2017, correctly predicts nearly 80% of novel drug targets (2018-2024). We will also discuss using agentic LLMs that conduct automated reasoning to suggest novel therapeutic indications for existing intellectual property.

1:50 pm

A Framework for Autonomous, Fully Transparent AI-Driven Target Discovery

Douglas Selinger, PhD, CEO & Founder, Plex Research Inc.

The exponential increase in biomedical data offers unprecedented opportunities for drug discovery, yet often overwhelms traditional data analysis methods. Here we introduce a framework for autonomous artificial intelligence (AI)-driven drug discovery that integrates knowledge graphs with large language models (LLMs) and which is capable of planning and executing automated drug discovery programs on a massive scale while providing details of its research strategy, progress, and all supporting data.

2:20 pm Chemomics of DEL: Building Protein Structure–Function Maps and Machine Learning Models from Untapped Screening Data

Erin Davis, CTO, Technology, X Chem Inc

DNA-Encoded Library (DEL) screens yield chemistry data at the -omics level, yet the vast majority is unused. X-Chem transforms this hidden knowledge into high-resolution protein structure–function maps and well-validated AI/ML models. By integrating advanced DEL analytics with computational and medicinal chemistry expertise, we produce SAR and predictive models across multiple modes of action, compressing years of discovery into a single experiment. This talk will demonstrate how moving beyond top hits to leverage the full dataset accelerates preclinical programs, uncovers novel chemical space, and redefines what is possible in small-molecule discovery.

2:50 pmBreakout Discussions (In-Person Only)

In-Person Breakouts 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, or facilitators, 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 Breakouts page on the conference website for a complete listing of topics and descriptions.

In-Person Only BREAKOUT 9: Generative AI for Hit Finding and Lead Optimization

Anthony Bradley, D.Phil, Assistant Professor, Department of Chemistry, University of Liverpool

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

Woody Sherman, PhD, Founder and Chief Innovation Officer, PsiThera

In-Person Only BREAKOUT 10: How Successful are AI/ML Approaches in Finding Good Drug Targets?

Tudor Oprea, MD, PhD, CEO, Expert Systems, Inc.

Douglas Selinger, PhD, CEO & Founder, Plex Research Inc.

Yuan Wang, PhD, Head of Research Analytics, UCB Pharma

3:35 pmGrand Opening Refreshment Break in the Exhibit Hall with Poster Viewing and Best of Show Voting Begins

Don’t miss the opportunity to meet the Discovery on Target community, including leading service providers and poster presenters in our first Exhibit Hall break! Grab a cup of coffee or refreshment, vote for awards, and explore booths to fill the Game Card for a chance to win raffle prizes.

AI/ML FOR TARGET DISCOVERY

4:35 pm

Target Discovery: A Predictive Biology Approach

Lakshmi Kuttippurathu, PhD, Former Associate Director, Computational Biology & Data Sciences, Lexicon Pharmaceuticals, Inc.

Computational methods are reshaping how we discover and prioritize drug targets. This talk introduces the key role of target discovery in drug development and reviews some of the computational approaches, from traditional methods to statistical machine learning models. A real-world case study to investigate novel targets for obesity will illustrate how integrated techniques can prioritize therapeutic targets effectively.

5:05 pm

Leveraging Multiomics Data to Identify and Prosecute Targets Implicated in Women's Health

Petrina Kamya, PhD, Global Head of AI Platforms & Vice President, Insilico Medicine; President, Insilico Medicine Canada

Endometriosis and alternative sources of non-hormonal contraception are neglected and challenging issues associated with women's health. Today, I will discuss how we leverage multiomics data and AI to identify novel targets implicated in endometriosis and how we contribute to the challenge of designing novel non-hormonal contraceptives using AI.

5:35 pm

FEATURED PRESENTATION: Simulating Biologically Relevant Protein Motions in Challenging Disease Targets

Woody Sherman, PhD, Founder and Chief Innovation Officer, PsiThera

Understanding protein dynamics is critical for drug discovery against challenging targets. We describe an integrated platform that combines all-atom physics-based simulations with biophysical data, including HDX-MS and crystallography, to model biologically relevant protein motions and thermodynamics. We use this approach to enable mechanism-driven design strategies to advance our therapeutic pipeline of novel orally bioavailable molecules against clinically validated inflammation and immunology targets.

6:05 pmWelcome Reception in the Exhibit Hall with Poster Viewing

Engage with the community, explore the latest innovations, network with service partners and providers, meet the poster presenters, vote for our Best of Show Poster and Best of Show Exhibitor awards in a relaxed, social atmosphere.

7:05 pmClose of Day

Wednesday, September 24

7:30 amRegistration and Morning Coffee

AI/ML FOR PREDICTIVE MODELING

7:55 am

Chairperson's Remarks

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

8:00 am

Machine Learning and Large-Language Models for Modeling Complex Toxicity Pathways

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

Addressing certain toxicities such as drug-induced seizures and steroidogenesis may require complex models to enable predictions. We now describe how we have generated large numbers of machine-learning models for either individual toxicity targets or large language models (ProtBERT, MolBART) to enable predictions for prospective testing.

8:30 am

A Multimodal Transformer Breaking the Data Wall between Lab and Clinic

David Farina Jr., PhD, Senior Research Scientist, Machine Learning, Iambic Therapeutics Inc.

Enchant is a multimodal transformer designed to break the data wall between lab and clinic by predicting clinical outcomes from preclinical data. Trained on diverse, heterogeneous datasets, it addresses the scarcity of clinical data by leveraging stage discovery data of various modalities. Enchant enables informed decision-making earlier in the drug development pipeline, accelerating and de-risking the path from discovery to the clinic.

9:00 am

Identification of VHH-Binders from an Immunized-Antibody Repertoire from Computational Methods Alone

Nicholas Woodall, PhD, Scientist, Computational Platform, Visterra Inc.

We used a bioinformatics approach to analyze the immune repertoire of a llama immunized with a target antigen, prioritizing those antibodies inferred to be clonally expanded. We employed AlphaFold2 to dock these antibodies, selecting those predicted to bind an epitope of interest. This in silico strategy yielded a 60% hit rate in identifying binders. We found many binders that effectively inhibited binding of the target to its receptor.

9:30 am Accelerating Drug Discovery Success with Integrated Computational and Experimental Sciences

Douglas Kitchen, Research Fellow Computer-Aided Drug Discovery, Discovery Services, Curia

Curia was founded in 1992 and the Computer-assisted drug discovery group began in 1997. The CADD group has applied computational and cheminformatics calculations to dozens of projects as part of project teams from Curia and multiple drug discovery entities. We have found that the expert use of computational chemistry in collaboration with experimentalists leads to successful projects with the generation of novel chemical matter and preclinical leads. Several example projects will illustrate the use of virtual screening, traditional physics-based modeling, reaction modeling and library design in early drug discovery.

10:00 amCoffee Break in the Exhibit Hall with Book Raffle and Poster Viewing

Start your morning with coffee, connections, and cutting-edge research! Vote for the Best of Show Poster and stay to celebrate the winner! Visit with industry-leading service providers, fill out the Game Card to win a raffle prize and vote for the People’s Choice Best of Show Exhibitor.

PLENARY KEYNOTE PROGRAM

10:50 am

Welcome Remarks from Tanuja Koppal, PhD, Discovery on Target Team Lead

Tanuja Koppal, PhD, Senior Conference Director, Cambridge Healthtech Institute

11:05 am PLENARY KEYNOTE:

GLP-1 Unveiled: Key Takeaways for Next-Generation Drug Discovery

Lotte Bjerre Knudsen, PhD, Chief Scientific Advisor, Head of IDEA (Innovation&Data Experimentation Advancement), Novo Nordisk AS

This talk will explore the evolution of GLP-1 as a significant component in diabetes and obesity treatment, as well as its direct impact on multiple co-morbidities. It will highlight the role of industry innovation and scientific persistence in overcoming challenges posed by its short half-life, ultimately leading to the successful development of GLP-1 therapies. Key lessons from this journey will inform future drug discovery strategies, emphasizing that today’s drug discovery must be based on human data.

11:40 am PLENARY KEYNOTE:

Medicines, Integrins, and Organoids

Timothy A. Springer, PhD, Professor, Biological Chemistry and Molecular Pharmacology, Harvard Medical School; Senior Investigator, Boston Children's Hospital; Founder, Institute for Protein Innovation

Integrins are therapeutically important cell surface adhesion molecules that localize cells within tissues and  provide many signals. Despite their essential role in stimulating growth of stem cells into organoids, the potential of integrins to regulate formation of more tissue-like organoids is unexplored. I will discuss the effects of integrin agonists and antagonists on organoid formation with a long-term goal of guiding development of vascularized, mixed-lineage organoids.

12:15 pmClose of AI/ML-Enabled Drug Discovery - Part 1 Conference

12:15 pmNetworking Lunch in the Exhibit Hall with Poster Viewing





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