Cambridge Healthtech Instituteの初開催
ML and Predictive Methods in Analytical Development
分析開発におけるMLと予測手法
Addressing Development Challenges Before They Arise
開発上の課題を未然に防ぐ
2025年1月13日 PST(米国太平洋標準時)
1月13日 月曜日
Registration and Morning Coffee8:00 am
Organizer's Welcome Remarks8:50 am
Govinda Sharma, PhD, Conference Producer, Cambridge Healthtech Institute
DATA-DRIVEN PREDICTION IN ANALYTICAL DEVELOPMENT
分析開発におけるデータドリブンの予測
High-Throughput Developability Strategies to Support the Modern Pipeline and ML Models
Gilad Kaplan, PhD, Director, Biologics Engineering, AstraZeneca
Early developability screens are used to predict the downstream biophysical characteristics and manufacturability of candidate drug biologics. To realize the full potential of early developability screens, a fully automatable, predictive, and high-throughput developability screen is needed. We present our data-driven approach to increasing the throughput of the early developability phase to accommodate a growing pipeline and generate the data needed to construct in silico developability prediction models.
The Determinants of Aggregation in Small Protein Domains
Cydney M. Martell, PhD Candidate, Department of Pharmacology, Northwestern University
Predicting protein aggregation remains difficult, limiting their use for biotechnology and therapeutic applications. We aim to design aggregation-resistance by collecting and learning from large, experimentally validated datasets. I quantified aggregation after thermal and pH stress for thousands of small protein domains using mass spectrometry. I’m developing machine learning models to predict aggregation from protein features. Through iterative experiments and design, I will refine my model to achieve unprecedented aggregation-resistance.
Developability Assessment in Early Therapeutic Antibody Discovery by Integrating Machine Learning and High-Throughput Bioanalytical Assays
Dalton Markrush, Scientist, Global Bioanalytics, Alloy Therapeutics
Selection of highly developable leads is crucial for clinical translation and requires accurate developability assessments benchmarked against the clinical landscape. Combining large in vitro datasets with in silico tools, we have developed integrated wet lab and dry lab workflows that enable rational selection of both assays and candidates. The resulting developability pipeline enables efficient identification of highly developable leads with consideration of specific downstream risks.
Frank Erasmus, Director, Bioinformatics, Specifica, an IQVIA business
This presentation provides an overview of the developability profiles of antibodies discovered from Specifica’s Generation 3 VHH, Fab, and scFv libraries, selected using phage and yeast display. Antibodies are assessed as VHH/VHH-Fc or IgG, with many exhibiting strong affinities and specificities to their targets. Data show that a large panel of leads perform comparably to the late-stage or clinically approved antibodies from which they are derived in terms of developability. Metrics such as self-interaction, aggregation, polyspecificity/polyreactivity, hydrophobicity, and thermal stability support the conclusion that drug-like antibodies can be selected directly without requiring further optimization.
Networking Coffee Break11:00 am
High-Concentration Developability Approaches and Considerations
Jonathan Zarzar, Senior Principal Scientist and Group Leader, Pharmaceutical Development, Genentech, Inc.
The increase in biologics administered subcutaneously has required higher protein concentrations and highlighted liabilities such as protein aggregation, precipitation, and high viscosity. Identifying optimal high-concentration formulations that limit these liabilities can be slow and costly, and often prevent therapeutics from moving rapidly into the clinic/market. Here, we present advances that have been made in understanding high-concentration protein behavior as well as interesting case studies.
Machine Learning Methods for Integrated Developability Predictions in Early-Stage Antibody Discovery
Kyle A. Barlow, PhD, Senior Scientist, Computational Biology, Adimab LLC
Initial antibody discovery generates molecules with a wide range of biophysical characteristics that can be used to predict developability, presenting an opportunity to filter or improve their properties. We present machine learning models for developability predictions of properties such as hydrophobicity, chemical stability, and viscosity, and explain how they are deployed to obtain actionable information. We describe the generation and benchmarking of the models and associated experimental input training data.
Session Break12:45 pm
SIMULATION AND STRUCTURE-BASED APPROACHES FOR BIOTHERAPEUTIC DEVELOPMENT
バイオ医薬品開発におけるシミュレーションと構造ベースのアプローチ
Aggrescan4D: Structure-Informed Analysis of pH-Dependent Protein Aggregation
Salvador Ventura, PhD, Full Professor, Biochemistry and Molecular Biology, Autonomous University of Barcelona
Protein aggregation impacts industrial protein production and formulation. Aggrescan3D (A3D) was developed to aid in understanding and engineering aggregation in globular proteins. It has become one of the most popular structure-based predictors for aggregation studies and protein redesign. Here, we present Aggrescan4D (A4D), which largely extends A3D’s functionality by incorporating pH-dependent aggregation prediction and an evolutionarily informed automatic mutation protocol to engineer protein solubility.
Computational Design of Membrane Protein Stability, Recognition, and de novo TM Regulatory Adaptors
Marco Mravic, PhD, Assistant Professor, Department of Integrative Structural and Computational Biology, Scripps Research Institute
Because membrane proteins can be structurally dynamic, they are often unstable or difficult to discern mechanism of their many conformations. The chemical intuition and tools for engineering/design of protein in lipid are still far from the advanced capabilities for water-soluble proteins. Our group uses de novo design of simple transmembrane (TM) proteins for rapid Build-Test-Learn cycles to develop software that reliably encodes protein stability and molecular recognitions for membrane protein engineering. A generative sequence design method focused on TM interactions in lipid was tested by design and in vitro folding of >20 synthetic TM protein assemblies, where most correctly folded. A few reached hyper-stability, folded in high SDS, temperature, etc.-providing feedback on what molecular features/patterns idealized sequence-structure principles between TM spans. With improved principles, we devised an in silico approach to design de novo TM proteins that bind and recognize target membrane proteins directly by their TM spans to modulate structure and function. Past work proved we can recognize and functionally regulate single-pass proteins by their TM spans, integrins and EPO cytokine receptor. We recently advance the technology to correct misfolding of an ion channel and target GPCRs. These tools and chemical “rules” have advanced targeting and stabilization tools for membrane proteins.
CURATED DATA AND DATABASES IN PREDICTING DEVELOPABILITY
開発可能性の予測におけるキュレーションデータとデータベース
Development of Clinically Relevant Specifications for Biologics
Siddarth Prabhu, Process Development Scientist, Attribute Sciences, Amgen
Biological relevance tools are essential to gain knowledge about attribute impact which can be used to inform clinically relevant specifications. A new data science method called the Clinical Impact of Attributes (CIA) approach will be shared that uses clinical trial information to justify clinically safe specifications. CIA analyzes clinical studies to determine if any correlations exists between attribute levels exposed in patients and the development of adverse events. Several case studies will be shown.
Networking Refreshment Break3:40 pm
Leveraging a Database of Therapeutic Antibodies to Design Novel Therapeutics with De-Risked Developability Profiles
Oliver Turnbull, PhD Candidate, Department of Statistics, University of Oxford
Approved therapeutic antibodies provide valuable insights into which biophysical properties can be considered safe from a developability perspective, aiding the design of biotherapeutics with de-risked developability profiles. I will present our work on building a database of therapeutic antibodies (TheraSAbDab), using this to develop a predictive tool for developability risk (Therapeutic Antibody Profiler 2), and finally our generative machine learning model (p-IgGen) for creating developability-conditioned in silico screening libraries.
It’s Going to Take a Village: Standardizing Analytics for Better Machine Learning
Michael S. Marlow, PhD, Director, Biologics CMC Research, Biotherapeutics Discovery, Boehringer Ingelheim Pharmaceuticals, Inc.
Effective machine learning (ML) relies on high-quality data and standardized analysis procedures. We will explore the critical need for a collaborative, community-driven approach to standardizing ML analytics and contemplate strategies for producing better data. By establishing best practices and shared resources, development groups across the industry will be empowered to efficiently integrate different data types and leverage the full toolbox of ML techniques, ensuring reproducibility, interpretability, and robust model performance.
Checking Your Peptides in Databases: Complexities and Quirks
Christopher Southan, PhD, Honorary Professor, Deanery of Biomedical Sciences, University of Edinburgh
Public databases of sequences and bioactivity data, including from patent extractions, are a crucial but overlooked resource for peptide researchers. Because natural endogenous or designed therapeutic peptides fall between the formal representations of small-molecule cheminformatics and protein-sequence bioinformatics, they have database representational challenges that make them difficult to find. This presentation will review various sources of peptide entries in PubChem and offer searching tips.
*不測の事態により、事前の予告なしにプログラムが変更される場合があります。