Enhancing Hit Identification in Mycobacterium tuberculosis Drug Discovery Using Validated Dual-Event Bayesian Models
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Sean Ekins | Barry A. Bunin | Scott G. Franzblau | Joel S. Freundlich | Robert C. Reynolds | S. Ekins | R. Reynolds | S. Franzblau | B. Wan | Baojie Wan | Baojie Wan
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