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基于过滤法的天然产物抗真菌活性索引:鉴别特性的揭示

Indexing Natural Products for their Antifungal Activity by Filters-based Approach: Disclosure of Discriminative Properties.

作者信息

Rayan Mahmoud, Abdallah Ziyad, Abu-Lafi Saleh, Masalha Mahmud, Rayan Anwar

机构信息

Institute of Applied Research, Galilee Society, Shefa-Amr 20200, Israel.

Faculty of Pharmacy, Al-Quds University, Abu-Dies, Palestinian Territory, Occupied.

出版信息

Curr Comput Aided Drug Des. 2019;15(3):235-242. doi: 10.2174/1573409914666181017100532.

Abstract

BACKGROUND

A considerable worldwide increase in the rate of invasive fungal infections and resistance toward antifungal drugs was witnessed during the past few decades. Therefore, the need for newer antifungal candidates is paramount. Nature has been the core source of therapeutics for thousands of years, and an impressive number of modern drugs including antifungals were derived from natural sources. In order to facilitate the recognition of potential candidates that can be derived from natural sources, an iterative stochastic elimination optimization technique to index natural products for their antifungal activity was utilized.

METHODS

A set of 240 FDA-approved antifungal drugs, which represent the active domain, and a set of 2,892 natural products, which represent the inactive domain, were used to construct predictive models and to index natural products for their antifungal bioactivity. The area under the curve for the produced predictive model was 0.89. When applying it to a database that is composed of active/inactive chemicals, we succeeded to detect 42% of the actives (antifungal drugs) in the top one percent of the screened chemicals, compared with one-percent when using a random model.

RESULTS AND CONCLUSION

Eight natural products, which were highly scored as likely antifungal drugs, are disclosed. Searching PubMed showed only one molecule (Flindersine) out of the eight that have been tested was reported as an antifungal. The other seven phytochemicals await evaluation for their antifungal bioactivity in a wet laboratory.

摘要

背景

在过去几十年间,全球侵袭性真菌感染率以及对抗真菌药物的耐药性显著上升。因此,对新型抗真菌药物的需求至关重要。数千年来,自然界一直是治疗药物的核心来源,包括抗真菌药物在内,大量现代药物都源自天然产物。为了便于识别可从天然来源获得的潜在候选药物,采用了一种迭代随机消除优化技术来对天然产物的抗真菌活性进行索引。

方法

使用一组代表活性域的240种美国食品药品监督管理局(FDA)批准的抗真菌药物,以及一组代表非活性域的2892种天然产物,构建预测模型并对天然产物的抗真菌生物活性进行索引。所产生的预测模型的曲线下面积为0.89。当将其应用于由活性/非活性化学物质组成的数据库时,与使用随机模型时的1%相比,我们成功在筛选出的化学物质的前1%中检测到了42%的活性物质(抗真菌药物)。

结果与结论

公开了8种被高度评分、可能为抗真菌药物的天然产物。在PubMed上搜索发现,这8种中只有一种分子(弗林德辛)已被报道具有抗真菌作用。其他7种植物化学物质有待在湿实验室中评估其抗真菌生物活性。

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