SBIR-STTR Award

Discriminating Drug Safety Profiles in Polytherapy
Award last edited on: 12/12/07

Sponsored Program
SBIR
Awarding Agency
NIH : NCRR
Total Award Amount
$813,872
Award Phase
2
Solicitation Topic Code
-----

Principal Investigator
Arti C Patel

Company Information

Capital Technology Information Services (AKA: CTIS)

1 Research Court Suite 200
Rockville, MD 20850
   (301) 948-3033
   info@ctisinc.com
   www.ctisinc.com
Location: Single
Congr. District: 08
County: Montgomery

Phase I

Contract Number: 1R43RR019105-01
Start Date: 00/00/00    Completed: 00/00/00
Phase I year
2004
Phase I Amount
$99,734
Statistical data mining applied to large databases of spontaneous post-marketing adverse event reports has demonstrated substantial utility in supporting pharmacovigiiance efforts at government health authorities and pharmaceutical manufacturers. The objective of this research is to develop advanced statistical methods to help assess, in the safety data mining context, the contribution of individual drugs to adverse events in situations involving polytherapy. This work addresses an important theoretical and practical problem in pharmacovigilance, and builds on a long-standing collaboration which has led to the development and deployment of applicant's safety data mining software at FDA and in industry. In Phase I, the focus is on the implementation and evaluation of a method utilizing information from three-way (drug-drug-event) combinations to calculate a polytherapy adjustment score for each drug-event pair and thus to provide guidance on whether a high signal score may be due to the presence/influence of other drugs. Phase II involves extensions to the algorithm, full integration of the algorithm into applicant's safety data mining system, and preparation of educational and tutorial materials. The key benefit to public health is an improved ability to interpret signals of potential drug safety problems, and to prioritize efforts to investigate and evaluate these signals.

Thesaurus Terms:
combination chemotherapy, computer program /software, computer system design /evaluation, drug adverse effect, method development, statistics /biometry drug interaction, information retrieval, patient safety /medical error, public health clinical research, human data

Phase II

Contract Number: 2R44RR019105-02
Start Date: 5/7/04    Completed: 6/30/08
Phase II year
2006
(last award dollars: 2007)
Phase II Amount
$714,138

Statistical data mining applied to large databases of spontaneous post-marketing adverse event reports has demonstrated substantial utility in supporting pharmacovigilance efforts at government health authorities and pharmaceutical manufacturers. The goal of this project is to develop and validate advanced statistical methods for assessing the true association strengths between specific drugs and specific events, accounting for significant polytherapy within and across individual reports. These methods will support generating more accurate drug safety profiles that are corrected for confounding induced by the presence of other drugs throughout the database. Phase I demonstrated that logistic regression is a capable and generalizable method for providing intuitive and clinically reasonable safety signal scores in situations involving complex polytherapy where simpler non-model-based techniques are not reliable. Phase II focuses on design, prototyping, and full-scale development of a suitable high-performance, multivariate Bayesian logistic regression method; creation of an enhanced version of applicant's WebVDME safety data mining system incorporating a new regression-based computational core; and beta testing the new software with participation by academia, pharmaceutical companies, and FDA. The key Public health benefit is an improved ability to generate and interpret signals of potential drug safety problems, and to prioritize efforts to investigate and evaluate these signals.

Thesaurus Terms:
There Are No Thesaurus Terms On File For This Project.