Combining genomic and network characteristics for extended capability in predicting synergistic drugs for cancer

Yi Sun(Tongji University), Zhen Sheng(Tongji University), Chao Ma(Tongji University), Kailin Tang(Tongji University), Ruixin Zhu(Tongji University), Zhuanbin Wu(Shanghai Model Organisms (China)), Ruling Shen(Tongji University), Jun Feng(Tongji University), Dingfeng Wu(Tongji University), Danyi Huang(Tongji University), Dandan Huang(Tongji University), Jian Fei(Tongji University), Qi Liu(Tongji University), Zhiwei Cao(Tongji University)
Nature Communications
September 28, 2015
Cited by 140Open Access
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Abstract

The identification of synergistic chemotherapeutic agents from a large pool of candidates is highly challenging. Here, we present a Ranking-system of Anti-Cancer Synergy (RACS) that combines features of targeting networks and transcriptomic profiles, and validate it on three types of cancer. Using data on human β-cell lymphoma from the Dialogue for Reverse Engineering Assessments and Methods consortium we show a probability concordance of 0.78 compared with 0.61 obtained with the previous best algorithm. We confirm 63.6% of our breast cancer predictions through experiment and literature, including four strong synergistic pairs. Further in vivo screening in a zebrafish MCF7 xenograft model confirms one prediction with strong synergy and low toxicity. Validation using A549 lung cancer cells shows similar results. Thus, RACS can significantly improve drug synergy prediction and markedly reduce the experimental prescreening of existing drugs for repurposing to cancer treatment, although the molecular mechanism underlying particular interactions remains unknown.


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