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1.
Prog Med Chem ; 57(1): 277-356, 2018.
Article in English | MEDLINE | ID: mdl-29680150

ABSTRACT

Interpretation of Big Data in the drug discovery community should enhance project timelines and reduce clinical attrition through improved early decision making. The issues we encounter start with the sheer volume of data and how we first ingest it before building an infrastructure to house it to make use of the data in an efficient and productive way. There are many problems associated with the data itself including general reproducibility, but often, it is the context surrounding an experiment that is critical to success. Help, in the form of artificial intelligence (AI), is required to understand and translate the context. On the back of natural language processing pipelines, AI is also used to prospectively generate new hypotheses by linking data together. We explain Big Data from the context of biology, chemistry and clinical trials, showcasing some of the impressive public domain sources and initiatives now available for interrogation.


Subject(s)
Big Data , Computational Biology , Drug Discovery , Artificial Intelligence , Drug Design , Humans
2.
Nat Rev Drug Discov ; 8(9): 701-8, 2009 Sep.
Article in English | MEDLINE | ID: mdl-19609266

ABSTRACT

Pharmaceutical research and development is facing substantial challenges that have prompted the industry to shift funding from early- to late-stage projects. Among the effects is a major change in the attitude of many companies to their internal bioinformatics resources: the focus has moved from the vigorous pursuit of intellectual property towards exploration of pre-competitive cross-industry collaborations and engagement with the public domain. High-quality, open and accessible data are the foundation of pre-competitive research, and strong public-private partnerships have considerable potential to enhance public data resources, which would benefit everyone engaged in drug discovery. In this article, we discuss the background to these changes and propose new areas of collaboration in computational biology and chemistry between the public domain and the pharmaceutical industry.


Subject(s)
Drug Industry/trends , Informatics/trends , Pharmacology, Clinical/trends , Computer Simulation , Diffusion of Innovation , Drug Design , Economic Competition , Efficiency , Humans , Pharmaceutical Preparations/chemistry
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