化学
片段(逻辑)
药物发现
亲缘关系
滴定法
药品
核磁共振波谱
结合亲和力
计算生物学
配体效率
小分子
组合化学
生物系统
配体(生物化学)
二维核磁共振波谱
异核单量子相干光谱
立体化学
药物开发
灵敏度(控制系统)
色谱法
作者
Ridvan Nepravishta,Juan C. Muñoz–García,Kenneth Cameron,Jesús Angulo,Dušan Uhrı́n
摘要
Fragment-Based Drug Discovery (FBDD) is a powerful strategy used in the development of new therapeutics. Molecular fragments are screened against a target protein, where interactions are typically characterized by a low affinity. Nuclear Magnetic Resonance (NMR) spectroscopy is well-suited to detect weak protein-ligand interactions and is therefore often used in FBDD. However, while NMR is very effective in initial screening, follow-up NMR experiments to measure binding affinities (i.e., KD values) are labor-intensive and time-consuming. To address this challenge, we have developed an innovative SHARPER NMR fragment scoring technique. The high sensitivity of SHARPER NMR dramatically reduces the data acquisition times, allowing faster and more accurate quantification of fragment KD values from ligand titration curves. To further accelerate fragment scoring, a machine learning model was developed that accurately ranks fragment affinities from only two SHARPER titration points. The resulting integrated method, termed "ML-boosted 1H LB SHARPER NMR", produced significant time savings; using a 600 MHz QCI cryoprobe, KD values of up to 144 ligands in a day could be determined under our conditions, compared with only a handful achievable by traditional approaches. The proposed methodology will shorten the transition from hits to lead compounds, accelerating the drug discovery process by rapidly and reliably evaluating fragment binding, providing informed decision-making in the early stages of FBDD.
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