School of Forensic and Applied Sciences, Faculty of Science & Technology , University of Central Lancashire , Preston , Lancashire PR1 2HE , U.K.
Marine Biodiscovery Centre, Department of Chemistry , University of Aberdeen , Aberdeen AB24 3UE , Scotland, U.K.
J Nat Prod. 2019 Feb 22;82(2):211-220. doi: 10.1021/acs.jnatprod.8b00575. Epub 2019 Feb 8.
In order to accelerate the isolation and characterization of structurally new or novel secondary metabolites, it is crucial to develop efficient strategies that prioritize samples with greatest promise early in the workflow so that resources can be utilized in a more efficient and cost-effective manner. We have developed a metrics-based prioritization approach using exact LC-HRMS, which uses data for 24 618 marine natural products held in the PharmaSea database. Each sample was evaluated and allocated a metric score by a software algorithm based on the ratio of new masses over the total (sample novelty), ratio of known masses over the total (chemical novelty), number of peaks above a defined peak area threshold (sample complexity), and peak area (sample diversity). Samples were then ranked and prioritized based on these metric scores. To validate the approach, eight marine sponges and six tunicate samples collected from the Fiji Islands were analyzed, metric scores calculated, and samples targeted for isolation and characterization of new compounds. Structures of new compounds were elucidated by spectroscopic techniques, including 1D and 2D NMR, MS, and MS/MS. Structures were confirmed by computer-assisted structure elucidation methods (CASE) using the ACD/Structure Elucidator Suite.
为了加速结构新颖或新型次级代谢产物的分离和鉴定,开发优先考虑早期工作流程中最有希望的样本的有效策略至关重要,以便能够以更高效和更具成本效益的方式利用资源。我们已经开发了一种基于指标的优先级排序方法,使用精确的 LC-HRMS,该方法使用了 PharmaSea 数据库中包含的 24618 种海洋天然产物的数据。每个样本都通过基于新质量与总质量之比(样本新颖性)、已知质量与总质量之比(化学新颖性)、高于定义峰面积阈值的峰数(样本复杂性)和峰面积(样本多样性)的软件算法进行评估和分配指标得分。然后根据这些指标得分对样本进行排名和优先级排序。为了验证该方法,对从斐济群岛采集的 8 种海绵和 6 种被囊动物样本进行了分析,计算了指标得分,并针对分离和鉴定新化合物的目标样本进行了靶向。通过包括 1D 和 2D NMR、MS 和 MS/MS 在内的光谱技术阐明了新化合物的结构。通过使用 ACD/Structure Elucidator Suite 的计算机辅助结构解析方法 (CASE) 确认了结构。