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基于片段的针对乳腺癌相关蛋白的多靶抑制剂的计算机模拟。

Fragment-based in silico modeling of multi-target inhibitors against breast cancer-related proteins.

机构信息

LAQV@REQUIMTE/Department of Chemistry and Biochemistry, University of Porto, 4169-007, Porto, Portugal.

出版信息

Mol Divers. 2017 Aug;21(3):511-523. doi: 10.1007/s11030-017-9731-1. Epub 2017 Feb 13.

Abstract

Breast cancer is the most frequent cancer reported in women, being responsible for hundreds of thousands of deaths. Chemotherapy has proven to be effective against this malignant neoplasm depending on different biological factors such as the histopathology, grade, and stage, among others. However, breast cancer cells have become resistant to current chemotherapeutic regimens, urging the discovery of new anti-breast cancer drugs. Computational approaches have the potential to offer promising alternatives to accelerate the search for potent and versatile anti-breast cancer agents. In the present work, we introduce the first multitasking (mtk) computational model devoted to the in silico fragment-based design of new molecules with high inhibitory activity against 19 different proteins involved in breast cancer. The mtk-computational model was created from a dataset formed by 24,285 cases, and it exhibited accuracy around 93% in both training and prediction (test) sets. Several molecular fragments were extracted from the molecules present in the dataset, and their quantitative contributions to the inhibitory activities against all the proteins under study were calculated. The combined use of the fragment contributions and the physicochemical interpretations of the different molecular descriptors in the mtk-computational model allowed the design of eight new molecular entities not reported in our dataset. These molecules were predicted as potent multi-target inhibitors against all the proteins, and they exhibited a desirable druglikeness according to the Lipinski's rule of five and its variants.

摘要

乳腺癌是女性最常见的癌症,导致了数十万人死亡。化疗已被证明对这种恶性肿瘤有效,这取决于不同的生物学因素,如组织病理学、分级和分期等。然而,乳腺癌细胞已经对当前的化疗方案产生了耐药性,促使人们发现新的抗乳腺癌药物。计算方法有可能提供有前途的替代方案,以加速寻找有效和多功能的抗乳腺癌药物。在本工作中,我们引入了第一个多任务(mtk)计算模型,专门用于基于片段的计算机设计具有高抑制活性的新分子,针对参与乳腺癌的 19 种不同蛋白质。mtk 计算模型是从由 24285 个病例组成的数据集创建的,在训练和预测(测试)集上的准确性都在 93%左右。从数据集中存在的分子中提取了几个分子片段,并计算了它们对所有研究蛋白质的抑制活性的定量贡献。片段贡献的综合使用和 mtk 计算模型中不同分子描述符的物理化学解释允许设计八个在我们的数据集中没有报道的新分子实体。这些分子被预测为对所有蛋白质具有强大的多靶点抑制作用,并且根据 Lipinski 的五规则及其变体,它们表现出良好的类药性。

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