Biopharmaceutical Informatics: Learning to Discover Developable Biotherapeutics
English
Despite the phenomenal clinical success of antibody-based biopharmaceuticals in recent years, discovery and development of these novel biomedicines remains a costly, time consuming, and risky endeavor with low probability of success. To bring better biomedicines to patients faster, we have come up with a strategic vision of Biopharmaceutical Informatics which calls for syncretic use of computation and experiment at all stages of biologic drug discovery and pre-clinical development cycles to improve probability of successful clinical outcomes. Biopharmaceutical Informatics also encourages industry and academic scientists supporting various aspects of biotherapeutic drug discovery and development cycles to learn from our collective experiences of successes and, more importantly, failures. The insights gained from such learnings shall help us improve rate of successful translation of drug discoveries into drug products available to clinicians and patients; reduce costs and increase the speed of biologic drug discovery and development. Hopefully, the efficiencies gained from implementing such insights shall make novel biomedicines more affordable for the patients.
This unique volume describes ways to invent and commercialize biomedicines more efficiently:
- Calls for digital transformation of biopharmaceutical industry by appropriately collecting, curating and making available discovery and pre-clinical development project data using FAIR principles.
- Describes applications of artificial intelligence and machine learning (AIML) in Discovery of antibodies in silico (DAbI) starting with antigen design, constructing inherently developable antibody libraries, finding hits, identifying lead candidates and optimizing them.
- Details applications of AIML, physics-based computational design methods, and other bioinformatics tools in fields such as developability assessments, formulation and excipient design, analytical and bioprocess development, and pharmacology.
- Presents pharmacokinetics/pharmacodynamics (PK/PD) and Quantitative Systems Pharmacology (QSP) models for biopharmaceuticals.
- Describes uses of AIML in bispecific and multi-specific formats.
- Dr Sandeep Kumar has also edited a collection of articles dedicated to this topic which can be found in the Taylor and Francis journal mAbs.
Will deliver when available. Publication date 15 Jan 2025