AI/Machine Learning for Early Drug Discovery – Part 1 Icon

Cambridge Healthtech Institute’s 6th Annual

AI/Machine Learning for Early Drug Discovery – Part 1

AI-Driven Decision-Making for Drug Design, Screening, and Lead Optimization

APRIL 2 - 3, 2024

 

Artificial Intelligence (AI)/Machine Learning (ML) for Early Drug Discovery is a two-part conference that brings together a diverse group of experts from chemistry, target discovery, pharmacology, and bioinformatics to talk about the increasing use of computational tools, models, algorithms, and data analytics for drug development. The talks will highlight the pros and cons of AI/ML-driven decision-making using relevant case studies from small molecule and peptide drug development. The first part of the conference will focus on how AI/ML can help improve drug design, hit identification, and lead optimization.

6:00 pm MONDAY, APRIL 1: Dinner Short Course*
SC3: Fundamentals of Generative AI for Drug Discovery

*Premium Pricing or separate registration required. See Short Courses page for details.

Tuesday, April 2

Registration Open and Morning Coffee7:00 am

Welcome Remarks8:00 am

AI/ML & REAL-WORLD APPLICATIONS

8:05 am

Chairperson's Remarks

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

8:10 am

AI in Healthcare: Where We Are and Where We Can Go

Karlie Sharma, PhD, Program Officer, National Center for Advancing Translational Sciences (NCATS), National Institutes of Health

The importance of using AI in healthcare is well emphasized in the clinical community but translating such innovative tools for clinical applications and physician/patient utilization remains a challenge. I will highlight several unique challenges that have impeded the progress of AI in healthcare and will discuss some potential resources that could inform the implementation of AI in clinical practice, allowing clinicians to better diagnose and treat patients.

8:40 am

Real-World Data Meets the Drug Development Pipeline

Michael Liebman, PhD, Managing Director, IPQ Analytics, LLC

Currently, real-world data in pharma most frequently supplements clinical trials and complements regulatory submissions, however this may miss the real opportunity to improve target selection and drug development. RWD, focused on clinical data rather than operational data—and applied in early drug discovery—can significantly improve disease (and patient) stratification and reduce failure rates. Disease is a process, not a state, leading to “next-generation phenotyping” that stratifies most current diagnoses and enables differential diagnosis into disease subtypes. Examples will be presented including hypertension, preeclampsia, breast cancer, and menopause—and their impact on women’s health.

9:10 am

Combining Active Learning, Synthesis-on-Demand Libraries, and Fragment Screening in Early Drug Discovery

Patrick Walters, PhD, Chief Data Officer, Relay Therapeutics, Inc.

The advent of ultra-large screening libraries has created opportunities and challenges for virtual screening. With multi-billion molecule libraries like the Enamine REAL and WuXi GalaXi collections, brute-force evaluation is no longer a viable alternative. To meet this need, computational groups are developing active learning methods that use machine learning models as surrogates for more computationally (and economically) expensive calculations. This presentation will highlight applications of one such method, Thompson Sampling.

9:40 am Beyond the Algorithm: Balancing Generative AI Novelty with Synthetic Feasibility in Drug Design

Ashwini Ghogare, PhD, Executive Director, Head of AI and Automation for Drug Discovery, MilliporeSigma

Exploring the frontier of drug design, this presentation delves 'Beyond the Algorithm' to discuss the delicate balance between generating novel compounds using AI and ensuring their practical synthesis. Join us to uncover strategies for harmonizing generative AI innovation with the demands of synthetic feasibility, propelling drug discovery into a new era of efficiency and efficacy.

Networking Coffee Break10:10 am

10:35 am

The Future Now: AI and Drug Discovery

Jose Duca, PhD, Global Head Computer Aided Drug Discovery, Global Discovery Chemistry, Novartis Institutes for Biomedical Research Inc.

We live in a unique and exciting time. This presentation will showcase the latest developments in modeling, generative methods, and drug discovery, using real-life examples. The talk will emphasize that success in this field requires a combination of AI deployment and molecular thinking, as well as adherence to first principles. A culture revolution is currently underway, which enables the acceleration of higher-quality results.

11:05 am PANEL DISCUSSION:

How Can We Best Utilize AI/ML to Maximize Impact & Efficiency?

PANEL MODERATOR:

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

PANELISTS:

Jose Duca, PhD, Global Head Computer Aided Drug Discovery, Global Discovery Chemistry, Novartis Institutes for Biomedical Research Inc.

Michael Liebman, PhD, Managing Director, IPQ Analytics, LLC

Karlie Sharma, PhD, Program Officer, National Center for Advancing Translational Sciences (NCATS), National Institutes of Health

Patrick Walters, PhD, Chief Data Officer, Relay Therapeutics, Inc.

Transition to Lunch12:05 pm

12:10 pm LUNCHEON PRESENTATION:Empowering Early-Stage Drug Discovery Projects with AI/ML Technologies

Sang Eun Jee, PhD, Principal Scientist, XtalPi Inc

This presentation delves into the transformative potential of AI/ML technologies within drug discovery. Despite their promise, effectively integrating these cutting-edge tools into real-world drug discovery efforts poses persistent challenges. Through multiple case studies, we will showcase our tailored approach to harnessing AI/ML capabilities, illustrating how XtalPi's platform drives innovation and efficiency across specific drug discovery projects.

Session Break12:40 pm

AI-DRIVEN DRUG DESIGN

1:30 pm

Chairperson's Remarks

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

1:35 pm

Leveraging AI to Design and Optimize Selective CDK20 Inhibitors 

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

From identifying a dark target implicated in hepatocellular carcinoma to leveraging an AlphaFold2 predicted target for the design of tool molecules, during this talk, I will take on the next chapter in this story, optimization of our CDK20 inhibitors using AI.

2:05 pm

Scale-Up Your Experts: Harnessing AI for Augmented Fragment-Based Drug Discovery

Marcel Verdonk, PhD, Senior Director, Computational Chemistry & Informatics, Astex Pharmaceuticals

The rich structural context of fragment-based drug discovery opens up unique opportunities for artificial intelligence (AI) to assist us with the design of preclinical candidates. Here we discuss ideas around augmented interactive design as a strategy that integrates AI-driven approaches with human expertise—thus adding scale to the tradition of carefully handcrafted design. We will present some of the predictive and generative technology we have developed to incorporate prior knowledge and structural, synthetic, and directional constraints into the design process.

2:35 pm

Large Language Model-Based Platform for Target and Ligand Identification

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

Our team has developed DrugInteLLM, a suite of LLM experts, each focused on different tasks and activities related to early drug discovery. PharosGPT (targets, diseases, ligands from pharos.nih.gov), litGPT (learn from papers), ChEMBLGPT (compounds and bioactivities) and ActivityGPT (predict bioactivity endpoints) provide LLM-based support for our projects. We will describe our platform for target and ligand selection, and how GPTs can support drug discovery. 

3:05 pm CDD Vault and Assay Annotation Ontologies: Fueling AI/ML with Usable Data

Kelly Bachovchin, Customer Engagement Scientist, Collaborative Drug Discovery


CDD Vault’s Assay Annotation streamlines drug discovery data management, aligning assay data with FAIR principles for better research confidence. The adoption of Ai/ML to aid drug discovery represents a pivotal advancement, promising to expedite drug discovery processes. This presentation will delve into the synergy of FAIR data principles with AI and ML technologies and how this can be further leveraged with CDD Vault's FAIR Assay Annotation Application.

 

Grand Opening Refreshment Break in the Exhibit Hall with Poster Viewing and Best of Show Voting Begins3:20 pm

PLENARY KEYNOTE SESSION

4:20 pm

Plenary Welcome Remarks from Lead Content Director with Poster Finalists Announced

Anjani Shah, PhD, Senior Conference Director, Cambridge Healthtech Institute

4:30 pm

PLENARY KEYNOTE: Applications of SuFEx Click Chemistry for Drug Discovery and Chemical Biology

Barry Sharpless, PhD, Professor, Chemistry, Scripps Research Institute; 2022 and 2001 Nobel Laureate

My work has been guided by the modular simplicity of nature—the fact that all molecules of life are made from several dozen building blocks. Here I will discuss the Sulfur(VI) Fluoride Exchange (SuFEx), a second near-perfect click chemistry reaction pioneered here at Scripps. SuFEx allows reliable molecular connections to be made under metal-free conditions. I will include applications in drug discovery, chemical biology, and polymer chemistry.

Welcome Reception in the Exhibit Hall with Poster Viewing5:15 pm

Close of Day6:15 pm

Wednesday, April 3

Registration Open7:15 am

In-Person Breakouts with Continental Breakfast7:45 am

In-Person Breakouts are informal, moderated discussions, allowing participants to exchange ideas and experiences and develop future collaborations around a focused topic. Each breakout 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 Breakout Discussions page on the conference website for a complete listing of topics and descriptions.

IN-PERSON BREAKOUT 6:

AI-Driven Drug Design and Screening (SESSION ROOM)

Ghotas Evindar, PhD, Drug Discovery Consultant, Former DEL Platform Senior Manager and Group Leader at GlaxoSmithKline

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

  • Effective use of virtual screening and structure-activity predictions tools
  • Highlighting use of predictive and generative AI for drug design 
  • Novel deep learning models for generating leads, predicting ligand binding and interactions 
  • Improving training sets and building better selection models​

AI/ML FOR EXPLORING CHEMICAL SPACE

8:30 am

Chairperson's Remarks

Ghotas Evindar, PhD, Drug Discovery Consultant, Former DEL Platform Senior Manager and Group Leader at GlaxoSmithKline

8:35 am

Generating High Quality Datasets for Experimental and Computational Science

Michael Sundström, PhD, Scientific Director, European Initiatives, Karolinska Institute

There is a defined need to properly manage and disseminate quality assured data. In practice this rarely happens. Beyond data generation, dissemination of high-quality data is often de-prioritized. Data are therefore generated in a format suitable for the experimentalist, but less so for computational methods. This talk will focus on generation and dissemination of such high-quality data, ranging from protein expression to data from patient-derived models, being suitable for data science.

9:05 am

Effective Exploration of Giga- to Tera-Scale Chemical Spaces with V-SYNTHES-DL

Vsevolod "Seva" Katritch, PhD, Professor, Quantitative and Computational Biology and Chemistry, University of Southern California

The advent of giga-large make-on-demand combinatorial chemical spaces presents a great opportunity for drug discovery but requires novel computational approaches for fast and accurate screening. We have developed V-SYNTHES, a new iterative synthon-based approach for fast structure-based virtual screening of billions of readily available (REAL) compounds. I will discuss the latest developments of V-SYNTHES technology and its synergistic combination with machine learning tools for efficient exploration of giga-large chemical spaces.

Coffee Break in the Exhibit Hall with Poster Awards Announced (Sponsorship Opportunity Available)9:35 am

10:30 am

Does AI Help DEL-Based Drug Discovery? 

Jeff A. Messer, Director, Analytics, Encoded Libraries Technology, GlaxoSmithKline

I will provide a critical review of examples in the literature and industry to determine if, how, when and why using AI or machine learning has helped drug lead generation when using DNA-Encoded Libraries.

11:00 am

Using Iterative DEL to Drive the Hit to Lead Process

Meghan Lawler, PhD, Director, Affinity Technology, Biology, Anagenex

At Anagenex, we are coupling the high-throughput power of DNA-encoded libraries with Machine Learning in order to drive the hit-to-lead process. We will discuss a case study wherein we were able to drive a target campaign via leveraging focused libraries with Machine Learning to enable rapid chemotype expansion and decision making.

11:30 am

Construction and Selection of DELs for ML

Eray Watts, Vice President, High Throughput Chemistry, insitro

Machine learning models make better predictions of small molecule binders to proteins when they are built on better training sets. Training sets enable better models when they (i) comprise more, and diverse, true positives and negatives, and (ii) when the true positives are more accurately rank-ordered by affinity. We are building DELs and DEL selection methods that produce higher-quality training sets.

Close of AI/Machine Learning – Part 1 Conference12:00 pm