Cambridge Healthtech Institute's 3rd Annual

Intelligent Antibody Discovery – Part 2

Advancing the Implementation and Use of Artificial Intelligence and Machine Learning in Biopharmaceutical Discovery

January 18 - 19, 2024 ALL TIMES PST

Peptalk’s two-part Intelligent Antibody Discovery conference explores the tools, technologies, and strategies supporting goals of improving the quality and precision of biotherapeutic discovery and selections. Part 1 examines the assays and technologies being employed for the early-stage prediction of pharmaceutical properties, target binding, modalities, immune cell engagement, and others — and then the best practices for using these outputs in training next-generation AI/ML models for lead/candidate selection and optimization. Part 2 then builds on this foundation to consider the progress in developing viable current and near-term applications of machine learning in biotherapeutic design and optimization, with an emphasis on experimental validation.

Thursday, January 18

Conference Registration & Morning Coffee7:45 am

Organizer's Welcome Remarks8:25 am

Kent Simmons, Senior Conference Director, Cambridge Healthtech Institute

APPLICATIONS OF AI/ML IN BIOLOGICS DISCOVERY PROJECTS

8:30 am

Chairperson’s Opening Remarks

Darcy Davidson, PhD, Structural and Computational Biologist, Genentech

8:35 am

FEATURED PRESENTATION: De novo Design of Miniprotein Ligand Scaffolds for Molecularly Targeted Therapy

Benjamin J. Hackel, PhD, Professor, Chemical Engineering & Materials Science, University of Minnesota

Hyperstable miniprotein ligands provide advantageous modularity, physiological transport, and synthesis. We have synergized design and experimental library selection to engineer a family of miniprotein binding scaffolds. Starting with proteins designed for hyperstability across three topologies, we experimentally identified the most evolvable and developable frameworks and paratope diversities, which resulted in specific, nanomolar-affinity binders to numerous targets. We leverage the resultant data in a feedback loop to design next-generation scaffolds.

9:05 am

A Comparative Study of Antibody Structure Prediction Methods through Molecular Dynamics Simulations

Darcy Davidson, PhD, Structural and Computational Biologist, Genentech

Computable surface properties of therapeutic proteins like antibodies can help predict biophysical properties relevant to drug formulation. Property predictions based on single states may underestimate developability risks, motivating molecular dynamics (MD) simulation. To probe whether the initial model seeding the simulation affects risk prediction, we used five ML-based structure prediction methods and compared to simulation results using experimental structures to determine an ideal workflow. 

9:35 am

KEYNOTE PRESENTATION: Better Medicines, Created Rapidly through de novo Protein Design

Chris Bahl, President, CSO and Co-Founder, AI Proteins

Miniproteins are a powerful yet underutilized therapeutic modality, with a structure that enables binding with high affinity and specificity to their targets, and that achieves remarkable stability using only the 20 canonical amino acids. By combining synthetic biology with laboratory automation, we accelerate the discovery and optimization of protein binders and create a vast toolbox of modular miniprotein domains, each with ideal drug-like properties and developability profiles.

10:05 am Leveraging Machine Learning to Prioritize Leads: Innovative Precision Antibody Discovery Workflow

Crystal Richardson, PhD, Business Partnership Manager, Gene Synthesis, Azenta Life Sciences

Azenta now offers an innovative end-to-end antibody screening solution that guides your discovery program to more diverse leads while reducing liabilities for antibody development. Utilizing next generation sequencing of your in-vivo samples (i.e. B-cells, PBMCs) or in-vitro libraries (i.e. Phage display), a bioinformatics platform, and gene synthesis, antibodies are produced with promising biophysical profiles for commercialization. 

Coffee Break in the Exhibit Hall with Poster Viewing10:35 am

PEPTALK PLAZA: ELECTRONIC CONNECTIONS TRAINING

10:45 am

Electronic Connections Training

Nandini Kashyap, M.Pharm., Senior Director, Conferences and Social Media Strategy, Cambridge Innovation Institute

Looking to make connections but no longer carry a paper business card with you? Join us for this event to share your electronic business card, LinkedIn profile, or to connect on the PepTalk app.

11:15 am

Towards Biologics by Design: Computational Optimization of Multispecific Protein Therapeutics

Norbert Furtmann, PhD, Head, Computational & High-Throughput Protein Engineering, Large Molecule Research, Sanofi

The generation of multispecific protein therapeutics necessitates the exploration of extensive design spaces, a task that cannot be entirely covered through wet lab experiments alone. By harnessing our systematically-collected and curated data assets, we have developed computational and machine learning-based optimization workflows for predicting molecular properties such as expression, activity, stability, and clearance. We will showcase examples of how our computational pipeline assists in navigating through the vast design space of multispecific biologics.

11:45 am

Illuminating Antibody Diversity and Structure-Activity Relationships: A Case Study in Harnessing Transformer-Based Language Models for Therapeutic Design

Brett Averso, CTO, EVQLV, Inc.

In this case study, we employ transformer-based language model embeddings to decode the genetic and somatic diversity of human antibody sequences. Through self-attention mechanisms, our model garners insights into the Structure-Activity Relationship (SAR) and potential disease correlations. Remarkably, despite limited sequence homology, antibodies exhibiting similar structural variations converge in a multi-dimensional latent space, illuminating subtleties in the SAR. By creating a distinct digital signature for any antibody within the adaptive human immunome, the development of language models for predicting binding and molecular developability becomes feasible.

Session Break and Transition to Luncheon Presentation12:15 pm

Luncheon Presentation (Sponsorship Opportunity Available) or Enjoy Lunch on Your Own12:25 pm

Session Break1:25 pm

MODELS FOR PROTEIN STRUCTURE PREDICTION & SEQUENCE DESIGN

1:45 pm

Chairperson’s Remarks

Francis Gaudreault, PhD, Research Officer, Human Health Therapeutics, National Research Council Canada

1:50 pm

In silico Evolution of Protein Binders with Deep Learning Models for Structure Prediction and Sequence Design

Brian Kuhlman, PhD, Professor, Biochemistry and Biophysics, University of North Carolina Chapel Hill

We have developed a protein design pipeline, called EvoPro, that uses iterative rounds of deep learning-based structure prediction and sequence optimization to evolve protein sequences for prespecified design goals. Initial experimental testing has focused on the creation of small, stable proteins that bind to target binding surfaces on proteins of interest. Without any experimental optimization, low nanomolar binders were designed against a PD-L1 antagonist. 

2:20 pm

Generative Structure-Based De Novo Protein Design: RFdiffusion and Beyond

Joseph Watson, PhD, Postdoctoral Fellow, Institute for Protein Design, University of Washington

De novo protein design seeks to learn the underlying principles of protein folding from natural proteins and to subsequently apply them to generate novel proteins with programmable functions. In this talk, I will describe the development of RFdiffusion, a generative neural network for de novo protein design which demonstrates state-of-the-art performance, both in silico and experimentally, across a broad range of therapeutically relevant design challenges.

2:50 pm

Antibody-Antigen Structure Prediction from Deep Learning-Generated Models

Francis Gaudreault, PhD, Research Officer, Human Health Therapeutics, National Research Council Canada

The ability to correctly predict the structure of antibody-antigen complexes in silico would provide a lot of value for medical applications. Recent deep learning technologies have enabled the production of antibody models with significantly better quality than traditional tools. We evaluated if such quality is sufficient for successful antibody-antigen structure prediction, using traditional molecular docking tools that normally fall short in real applications where the antibody structure is unknown.

3:20 pm

Conditional Generation of Paired Antibody Chain Sequences through Encoder-Decoder Language Model

Simon Chu, PhD, Researcher, Biophysics Graduate Program, University of California Davis

Heavy and light chain pairing in antibodies involves complex mechanisms of diversification and maturation, which remain to be elucidated. Borrowing techniques from natural language processing, we show that antibody chain pairing can be modeled as a machine translation problem. The generated synthetic library resembles natural antibody pairing preferences down to gene family level and correlates with functions previously unseen during training.

Refreshment Break in the Exhibit Hall with Poster Viewing3:50 pm

PEPTALK PLAZA: SPEED NETWORKING

4:00 pm

Speed Networking 

Mary Ann Brown, Executive Director, Conferences, Cambridge Healthtech Institute

Christina Lingham, Executive Director, Conferences and Fellow, Cambridge Healthtech Institute

Bring yourself, and your business cards, and be prepared to share and summarize the key elements of your research in a minute. PepTalk will provide a location, timer, and fellow attendees to facilitate the introductions.

PLENARY KEYNOTE SESSION

4:35 pm

Plenary Keynote Introduction

Andre Mueller, PhD, Marketing Manager, Biologics Solutions, Unchained Labs

4:45 pm

Protein and Gene Therapy Biotherapeutics: Biophysics, Simulations, and Analytical Tools to Shed Light on Biomanufacturability and Downstream Bioprocessing Opportunities

Steven M. Cramer, PhD, William Weightman Walker Professor, Isermann Department of Chemical and Biological Engineering, Rensselaer Polytechnic Institute

This talk will illustrate how a combination of biophysics, simulations, and analytical tools can be employed for a deeper understanding of the molecular basis for important biomanufacturability properties as well as the purification of both protein and gene therapy biotherapeutics from their product- and process-related impurities. In addition, the unique challenges of gene therapy bioprocessing will be discussed from the perspective of proper analytical definition of the “biological product.”

Networking Reception in the Exhibit Hall with Poster Viewing5:30 pm

PEPTALK PLAZA: WOMEN IN SCIENCE MEET UP

6:15 pm

Women In Science Meet Up

Christa Cortesio, PhD, Director, Protein Science, Protein Biochemistry & Analytics Core, Kite Pharma

Marija Dramicanin, PhD, Head, Protein Production Facility, Walter & Eliza Hall Institute of Medical Research

Deborah Moore-Lai, PhD, Vice President, Protein Development Platform, Abcam

CHI is proud to offer programming that honors and celebrates the advancement of diversity in the life sciences. We recognize that barriers preventing women from fully participating in the sciences are not just barriers to equality, but also critically deter scientific advancement worldwide. Our Women in Science programming invites the entire scientific community to discuss these barriers, as we believe that all voices are necessary and welcome.

Close of Day6:30 pm

Friday, January 19

Conference Registration7:30 am

BuzZ Sessions

7:45 amBuzZ Sessions with Continental Breakfast

BuzZ Sessions 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 BuzZ Sessions page on the conference website for a complete listing of topics and descriptions.

BuzZ Table 1: Intelligent Antibody Discovery & Engineering

Christopher R. Corbeil, PhD, Research Officer, Human Health Therapeutics, National Research Council Canada

  • What is the future of AI in Ab Discovery?
  • What data are we currently missing to push the field further?
  • Where should we focus? Discovery vs Optimization vs Manufacturing​

BuzZ Table 2: Applications of Molecular Dynamics for Machine Learning

Darcy Davidson, PhD, Structural and Computational Biologist, Genentech

  • Using MD for training data for ML, introducing physics into ML
  • Generalizing beyond training data for ML
  • Experimental data vs QM calculations as training data
  • What are people's expectations and aspirations for ML-augmented simulations?​

Transition to Conference Track8:45 am

ANTIBODY DESIGN & OPTIMIZATION

9:00 am

Chairperson’s Remarks

Gilad Kaplan, PhD, Associate Director, Biologics Engineering, AstraZeneca

9:05 am

RESP AI Model to Accelerate the Identification of Tight-Binding Antibodies

Wei Wang, PhD, Professor, Chemistry and Biochemistry, University of California San Diego

High-affinity antibodies are often identified through directed evolution, which may require many iterations of mutagenesis and selection to find an optimal candidate. Deep learning techniques hold the potential to accelerate this process, but the existing methods cannot provide the confidence interval or uncertainty needed to assess the reliability of the predictions. Here we present a pipeline called RESP for efficient identification of high-affinity antibodies. Importantly, this model can quantify their likelihood to be tight binders for sequences not present in the directed evolution library, and thus greatly expand the search space to uncover the best sequences for experimental evaluation.

9:35 am

Enhancement of Antibody Thermostability and Affinity by Computational Design in the Absence of Antigen

Gilad Kaplan, PhD, Associate Director, Biologics Engineering, AstraZeneca

DeepAb, a deep learning model for predicting antibody Fv structure directly from sequence, was used to design 200 potentially stabilized variants of an anti-hen egg lysozyme (HEL) proof of concept antibody [FY1]. 85% of the clones exhibited increased thermal and colloidal stability. Of these, 11% showed a highly increased affinity for HEL (1.5- to 10-fold increase) while retaining the developability profile of the parental antibody. These data open up the possibility of in silico antibody stabilization and affinity maturation, without the need to predict the antibody-antigen interface.

10:05 am

Harnessing Large Scale Binding Data and Machine Learning to Discover and Optimize Rare Cross-Reactive Antibodies

Randolph Lopez, PhD, CTO and Co-Founder, A-Alpha-Bio

Leveraging AlphaSeq, a library-on-library method for studying protein-protein interactions, we screened a large library of synthetic antibodies to identify cross-reactive binders against human TIGIT and its mouse ortholog. Cross-reactive antibodies were further optimized for binding and bio-developability following multiple cycles of data generation, computational model training, sequence proposals, and binding validation assays. This process improved binding affinity and generated hundreds of antibody candidates with favorably predicted developability properties.

Coffee Break in the Exhibit Hall with Poster Viewing10:35 am

PEPTALK PLAZA: POST-PEPTALK CONNECTIONS

10:45 am

Post-PepTalk Connections

Kevin Brawley, Associate Project Manager, Production Operations & Communications, Cambridge Innovation Institute

Kent Simmons, Senior Conference Director, Cambridge Healthtech Institute

  • How will our onsite app benefit your networking after the conference?   
  • How to view on-demand presentations to maximize your conference experience​
11:15 am

A Machine Learning Strategy for the Identification of In Silico Descriptors and Prediction Models for IgG Monoclonal Antibody Developability Properties

Andrew B. Waight, PhD, Senior Director, Machine Learning, Discovery Biologics & Protein Sciences, Merck Research Labs

Prediction of biophysical properties for protein therapeutics from calculated in silico features has potential to reduce the time and cost of delivering clinical-grade material to patients. We have developed an automated machine learning workflow designed to identify the most powerful features from computationally derived physiochemical feature sets. We demonstrate the use of this workflow with medium-sized datasets of IgG molecules to generate predictive regression models for key developability endpoints.

11:45 am

In silico Improvement of Antibodies for Infectious Diseases

Reda Rawi, PhD, Staff Scientist & Co-Head, Structural Bioinformatics Core, NIH NIAID

A single administration of CIS43 can protect against malaria infection in the field for up to 9 months. In this in silico work, we improved the potency of CIS43 antibody variants by optimizing the binding energy to its target antigen PfCSP. In silico variants yielded increased affinity and superior protective efficacy to a malaria in vivo mouse challenge model. The best variant, P3-43, showed ~10-fold improvement in protection relative to CIS43. Our in silico pipeline provides a generally applicable approach to improve antibody functionality, and leads to novel variants to be used for passive prevention against malaria.

Session Break and Transition to Luncheon Presentation12:15 pm

Luncheon Presentation (Sponsorship Opportunity Available) or Enjoy Lunch on Your Own12:25 pm

Session Break12:55 pm

Ice Cream & Cookie Break in the Exhibit Hall with Last Chance for Poster Viewing1:00 pm

1:45 pm

Chairperson’s Remarks

Reda Rawi, PhD, Staff Scientist & Co-Head, Structural Bioinformatics Core, NIH NIAID

1:50 pm

Designing Multispecific Antibodies That Maintain the Symmetrical IgG Structure Using AI and Machine Learning

Ronald Herbst, PhD, CSO, R&D, Biolojic Design Ltd.

Bispecific antibodies have emerged as attractive modalities for the development of new therapeutics but come with certain drawbacks such as fixed stoichiometry for target binding and more challenging manufacturing. Biolojic Design has developed multibodies that overcome these challenges, by using our proprietary AI technology. Multibodies have the ability to flexibly bind two different targets, while maintaining a standard IgG format. This technology enables new applications for the development of therapeutics.

2:20 pm

An in silico Approach to Predicting and Optimizing Antibody Fragment Polyreactivity

Andrew C. Kruse, PhD, Professor of Biological Chemistry and Molecular Pharmacology, Harvard Medical School

Polyreactive antibodies lead to incorrect experimental results and are intractable for clinical development. We designed a set of experiments using a synthetic camelid antibody fragment ("nanobody") library to train machine learning models to assess polyreactivity from protein sequence. Our models provide quantitative scoring metrics that predict polyreactivity. We experimentally test our models’ performance on three nanobody scaffolds, finding that over 90% of predicted substitutions reduced polyreactivity.

2:50 pm

Design Novel Proteins with Desired Properties

Kathy Y. Wei, PhD, Co-Founder & CSO, 310 AI

Typically, protein engineering is labor-intensive and relies on sequential trial-and-error search. But the protein space is greater than the number of atoms in the universe. Therefore, to successfully create new designer proteins with ever-increasing complexity, it's necessary to generate to specifications, rather than search. At 310.ai, we aim to bypass trial-and-error, and instead, offer a highly parallel and coherent design solution that will impact speed, cost, and quality.

3:20 pm

Combining Advances in Machine Learning with Experimental Automation to Build New Platforms

Daniel Smith, PhD, Head, Computation, FL83

The application of machine learning for protein drug discovery combined with automated experimental systems allows the creation of advanced platforms to accelerate drug discovery. By leveraging both digital and physical automation, large-scale, low-aleatoric noise datasets can be created quickly for training and fine-tuning machine learning models. These models, in turn, can enhance the accuracy of experimental cycles, creating symbiotic feedback to deliver drugs faster than previously possible.

Close of Intelligent Antibody Discovery Part 23:50 pm