ecBSU1: A Genome-Scale Enzyme-Constrained Model of Bacillus subtilis Based on the ECMpy Workflow
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Hongwu Ma | Yufeng Mao | Zhiwen Wang | Zhitao Mao | Jingyi Cai | Qianqian Yuan | Xiaoping Liao | Ke Wu | Jinhui Niu | Lili Yun
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