Literature DB >> 28003636

Data-intensive drug development in the information age: applications of Systems Biology/Pharmacology/Toxicology.

Naoki Kiyosawa1, Sunao Manabe.   

Abstract

Pharmaceutical companies continuously face challenges to deliver new drugs with true medical value. R&D productivity of drug development projects depends on 1) the value of the drug concept and 2) data and in-depth knowledge that are used rationally to evaluate the drug concept's validity. A model-based data-intensive drug development approach is a key competitive factor used by innovative pharmaceutical companies to reduce information bias and rationally demonstrate the value of drug concepts. Owing to the accumulation of publicly available biomedical information, our understanding of the pathophysiological mechanisms of diseases has developed considerably; it is the basis for identifying the right drug target and creating a drug concept with true medical value. Our understanding of the pathophysiological mechanisms of disease animal models can also be improved; it can thus support rational extrapolation of animal experiment results to clinical settings. The Systems Biology approach, which leverages publicly available transcriptome data, is useful for these purposes. Furthermore, applying Systems Pharmacology enables dynamic simulation of drug responses, from which key research questions to be addressed in the subsequent studies can be adequately informed. Application of Systems Biology/Pharmacology to toxicology research, namely Systems Toxicology, should considerably improve the predictability of drug-induced toxicities in clinical situations that are difficult to predict from conventional preclinical toxicology studies. Systems Biology/Pharmacology/Toxicology models can be continuously improved using iterative learn-confirm processes throughout preclinical and clinical drug discovery and development processes. Successful implementation of data-intensive drug development approaches requires cultivation of an adequate R&D culture to appreciate this approach.

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Mesh:

Year:  2016        PMID: 28003636     DOI: 10.2131/jts.41.SP15

Source DB:  PubMed          Journal:  J Toxicol Sci        ISSN: 0388-1350            Impact factor:   2.196


  3 in total

1.  Public data sources to support systems toxicology applications.

Authors:  Allan Peter Davis; Jolene Wiegers; Thomas C Wiegers; Carolyn J Mattingly
Journal:  Curr Opin Toxicol       Date:  2019-03-11

2.  Data Portal for the Library of Integrated Network-based Cellular Signatures (LINCS) program: integrated access to diverse large-scale cellular perturbation response data.

Authors:  Amar Koleti; Raymond Terryn; Vasileios Stathias; Caty Chung; Daniel J Cooper; John P Turner; Dušica Vidovic; Michele Forlin; Tanya T Kelley; Alessandro D'Urso; Bryce K Allen; Denis Torre; Kathleen M Jagodnik; Lily Wang; Sherry L Jenkins; Christopher Mader; Wen Niu; Mehdi Fazel; Naim Mahi; Marcin Pilarczyk; Nicholas Clark; Behrouz Shamsaei; Jarek Meller; Juozas Vasiliauskas; John Reichard; Mario Medvedovic; Avi Ma'ayan; Ajay Pillai; Stephan C Schürer
Journal:  Nucleic Acids Res       Date:  2018-01-04       Impact factor: 16.971

3.  An exploratory assessment of the applicability of direct-to-consumer genetic testing to translational research in Japan.

Authors:  Masahiro Inoue; Shota Arichi; Tsuyoshi Hachiya; Anna Ohtera; Seok-Won Kim; Eric Yu; Masatoshi Nishimura; Kazuhito Shiosakai; Takeshi Ohira
Journal:  BMC Res Notes       Date:  2021-07-23
  3 in total

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