The tumor therapy landscape of synthetic lethality

Biyu Zhang(Shanghai East Hospital), Chen Tang(Shanghai East Hospital), Yanli Yao(Shanghai Jiao Tong University), Xiaohan Chen(Shanghai East Hospital), Chi Zhou(Shanghai East Hospital), Zhiting Wei(Shanghai East Hospital), Feiyang Xing(Shanghai East Hospital), Lan Chen(Shanghai Jiao Tong University), Xiang Cai(Alibaba Group (China)), Zhiyuan Zhang(Shanghai Jiao Tong University), Shuyang Sun(Shanghai Jiao Tong University), Qi Liu(Tongji University)
Nature Communications
February 24, 2021
Cited by 73Open Access
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Abstract

Synthetic lethality is emerging as an important cancer therapeutic paradigm, while the comprehensive selective treatment opportunities for various tumors have not yet been explored. We develop the Synthetic Lethality Knowledge Graph (SLKG), presenting the tumor therapy landscape of synthetic lethality (SL) and synthetic dosage lethality (SDL). SLKG integrates the large-scale entity of different tumors, drugs and drug targets by exploring a comprehensive set of SL and SDL pairs. The overall therapy landscape is prioritized to identify the best repurposable drug candidates and drug combinations with literature supports, in vitro pharmacologic evidence or clinical trial records. Finally, cladribine, an FDA-approved multiple sclerosis treatment drug, is selected and identified as a repurposable drug for treating melanoma with CDKN2A mutation by in vitro validation, serving as a demonstrating SLKG utility example for novel tumor therapy discovery. Collectively, SLKG forms the computational basis to uncover cancer-specific susceptibilities and therapy strategies based on the principle of synthetic lethality.


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