An in silico approach to treating “the right patient with the right drug at the right dose at the right time”
Commentary

An in silico approach to treating “the right patient with the right drug at the right dose at the right time”

Takashi Kohno1,2

1Division of Genome Biology, National Cancer Center Research Institute, Tokyo, Japan; 2Division of Translational Research, Exploratory Oncology Research and Clinical Trial Center, National Cancer Center, Tokyo, Japan

Correspondence to: Takashi Kohno, Chief. Division of Translational Research, Exploratory Oncology Research and Clinical Trial Center, National Cancer Center, 1-1, Tsukiji 5-chome, Chuo-ku Tokyo 104-0045, Japan. Email: tkkohno@ncc.go.jp.

Comment on: Wang LB, Chuang EY, Lu ZP. Identification of predictive biomarkers for ZD-6474 in lung cancer. Transl Cancer Res 2015;4:324-31.


Submitted Oct 03, 2015. Accepted for publication Oct 05, 2015.

doi: 10.3978/j.issn.2218-676X.2015.10.07


Biomarkers that predict responses to anti-cancer drugs are required to establish personalized cancer medicine, which is defined by the United States Federal Drug Administration as treating “the right patient with the right drug at the right dose at the right time” (1). In this issue, Dr. Wang and colleagues report a gene expression signature that predicts the efficacy of ZD-6474 (vandetanib) in 89 lung cancer cell lines (2) using a data set deposited in the cancer cell line encyclopedia (3). This was an in silico study; therefore, the results require validation in tumor samples from lung cancer patients treated with ZD-6474. However, the study provides a good example of a method of identifying candidate biomarkers that predict responses to anti-cancer drugs.

ZD-6474 is a selective inhibitor of VEGFR, RET, and EGFR tyrosine kinases, and its efficacy in lung cancer has been tested in several randomized clinical trials, including ZODIAC (NCT00312377; vandetanib ± docetaxel), ZEAL (NCT00418886; vandetanib ± pemetrexed), ZEPHYR (NCT00404924; vandetanib vs. placebo), and ZEST (NCT00364351; vandetanib vs. erlotinib). Recent in vitro and in vivo studies indicate that the EGFR mutation and RET fusion (both oncogenic) are genetic biomarkers that predict the efficacy of vandetanib (4-7). However, although recent retrospective evaluation of tumor samples from those trials confirmed the utility of EGFR mutations, it did not clearly validate the RET fusion (8,9). Thus, there may be several as yet undefined cellular contexts that modify the efficacy of vandetanib.

As the authors point out, a randomized clinical trial accompanied by a comprehensive omics study is the best way to identify predictive biomarkers for a particular drug; however, such studies are not easy to execute in practice. In particular, the limited quantity and quality of biopsied tumor tissues from advanced cancer patients who are scheduled to receive chemotherapy is a problem. A combination of full-omics data from cancer cell lines and focused-omics analysis of tumor specimens will facilitate the identification of predictive biomarkers that are useful in a clinical setting.


Acknowledgments

Funding: None.


Footnote

Provenance and Peer Review: This article was commissioned by the editorial office, Translational Cancer Research. The article did not undergo external peer review.

Conflicts of Interest: The author has completed the ICMJE uniform disclosure form (available at http://dx.doi.org/10.3978/j.issn.2218-676X.2015.10.07). The author has no conflicts of interest to declare.

Ethical Statement: The author is accountable for all aspects of the work in ensuring that questions related to the accuracy or integrity of any part of the work are appropriately investigated and resolved.

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References

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  2. Wang LB, Chuang EY, Lu ZP. Identification of predictive biomarkers for ZD-6474 in lung cancer. Transl Cancer Res 2015;4:324-31.
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Cite this article as: Kohno T. An in silico approach to treating “the right patient with the right drug at the right dose at the right time”. Transl Cancer Res 2015;4(5):578-579. doi: 10.3978/j.issn.2218-676X.2015.10.07

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