基于蛋白质-化学相互作用的综合预测,使用虚拟筛选和实验验证。

Hiroki Kobayashi, Hiroko Harada, Masaomi Nakamura, Yushi Futamura, Akihiro Ito, Minoru Yoshida, Shun-Ichiro Iemura, Kazuo Shin-Ya, Takayuki Doi, Takashi Takahashi, Tohru Natsume, Masaya Imoto, Yasubumi Sakakibara
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引用次数: 7

摘要

背景:生物活性化合物靶蛋白的鉴定是阐明其作用方式的关键;然而,一般来说,目标识别一直很困难,主要是由于使用亲和层析然后CBB染色和MS/MS分析的检测灵敏度低。结果:我们采用了预测靶蛋白结合的方案,对incednine进行了硅筛选和实验验证,incednine以未知的机制抑制Bcl-xL的抗凋亡功能。通过统计预测方法计算预测了182个候选靶蛋白与incednine结合,并通过incednine与7个蛋白的体外结合验证了预测结果,这些蛋白的表达可以在我们的细胞系统中得到证实。结果,计算预测的准确率达到了40%,我们新发现了3个inced9结合蛋白。结论:本研究表明,我们提出的结合硅筛选和实验验证的靶蛋白预测方案是有用的,并为小分子靶蛋白的识别策略提供了新的见解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Comprehensive predictions of target proteins based on protein-chemical interaction using virtual screening and experimental verifications.

Comprehensive predictions of target proteins based on protein-chemical interaction using virtual screening and experimental verifications.

Comprehensive predictions of target proteins based on protein-chemical interaction using virtual screening and experimental verifications.

Background: Identification of the target proteins of bioactive compounds is critical for elucidating the mode of action; however, target identification has been difficult in general, mostly due to the low sensitivity of detection using affinity chromatography followed by CBB staining and MS/MS analysis.

Results: We applied our protocol of predicting target proteins combining in silico screening and experimental verification for incednine, which inhibits the anti-apoptotic function of Bcl-xL by an unknown mechanism. One hundred eighty-two target protein candidates were computationally predicted to bind to incednine by the statistical prediction method, and the predictions were verified by in vitro binding of incednine to seven proteins, whose expression can be confirmed in our cell system.As a result, 40% accuracy of the computational predictions was achieved successfully, and we newly found 3 incednine-binding proteins.

Conclusions: This study revealed that our proposed protocol of predicting target protein combining in silico screening and experimental verification is useful, and provides new insight into a strategy for identifying target proteins of small molecules.

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