Abstract
Background: Gene expression connectivity mapping has gained much popularity in recent years with a
number of successful applications in biomedical research testifying its utility and promise. A major application
of connectivity mapping is the identification of small molecule compounds capable of inhibiting a disease state.
In this study, we are additionally interested in small molecule compounds that may enhance a disease state or
increase the risk of developing that disease. Using breast cancer as a case study, we aim to develop and test a
methodology for identifying commonly prescribed drugs that may have a suppressing or inducing effect on the
target disease (breast cancer).
Results: We obtained from public data repositories a collection of breast cancer gene expression datasets
with over 7000 patients. An integrated meta-analysis approach to gene expression connectivity mapping was
developed, which involved unified processing and normalization of raw gene expression data, systematic
removal of batch effects, and multiple runs of balanced sampling for differential expression analysis.
Differentially expressed genes stringently selected were used to construct multiple non-joint gene signatures
representing the same biological state. Remarkably these non-joint gene signatures retrieved from connectivity
mapping separate lists of candidate drugs with significant overlaps, providing high confidence in their predicted
effects on breast cancers. Of particular note, among the top 26 compounds identified as inversely connected to
the breast cancer gene signatures, 14 of them are known anti-cancer drugs.
Conclusions: A few candidate drugs with potential to enhance breast cancer or increase the risk of the
disease were also identified; further investigation on a large population is required to firmly establish their
effects on breast cancer risks. This work thus provides a novel approach and an applicable example for
identifying medications with potential to alter cancer risks through gene expression connectivity mapping
| Original language | English |
|---|---|
| Pages (from-to) | 581-596 |
| Number of pages | 16 |
| Journal | BMC Bioinformatics |
| Volume | 18 |
| Issue number | 1 |
| DOIs | |
| Publication status | Published - 21 Dec 2017 |
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Ken Mills
- School of Medicine, Dentistry and Biomedical Sciences - Emeritus Professor
- The Johnston Cancer Research Centre
Person: Emeritus