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DeepHIT:一种用于预测 hERG 诱导性心脏毒性的深度学习框架。

DeepHIT: a deep learning framework for prediction of hERG-induced cardiotoxicity.

机构信息

Information-based Drug Research Center, Korea Research Institute of Chemical Technology, 34114 Daejeon, Republic of Korea.

Department of Medicinal and Pharmaceutical Chemistry, University of Science and Technology, 34129 Daejeon, Republic of Korea.

出版信息

Bioinformatics. 2020 May 1;36(10):3049-3055. doi: 10.1093/bioinformatics/btaa075.

Abstract

MOTIVATION

Blockade of the human ether-à-go-go-related gene (hERG) channel by small compounds causes a prolonged QT interval that can lead to severe cardiotoxicity and is a major cause of the many failures in drug development. Thus, evaluating the hERG-blocking activity of small compounds is important for successful drug development. To this end, various computational prediction tools have been developed, but their prediction performances in terms of sensitivity and negative predictive value (NPV) need to be improved to reduce false negative predictions.

RESULTS

We propose a computational framework, DeepHIT, which predicts hERG blockers and non-blockers for input compounds. For the development of DeepHIT, we generated a large-scale gold-standard dataset, which includes 6632 hERG blockers and 7808 hERG non-blockers. DeepHIT is designed to contain three deep learning models to improve sensitivity and NPV, which, in turn, produce fewer false negative predictions. DeepHIT outperforms currently available tools in terms of accuracy (0.773), MCC (0.476), sensitivity (0.833) and NPV (0.643) on an external test dataset. We also developed an in silico chemical transformation module that generates virtual compounds from a seed compound, based on the known chemical transformation patterns. As a proof-of-concept study, we identified novel urotensin II receptor (UT) antagonists without hERG-blocking activity derived from a seed compound of a previously reported UT antagonist (KR-36676) with a strong hERG-blocking activity. In summary, DeepHIT will serve as a useful tool to predict hERG-induced cardiotoxicity of small compounds in the early stages of drug discovery and development.

AVAILABILITY AND IMPLEMENTATION

https://bitbucket.org/krictai/deephit and https://bitbucket.org/krictai/chemtrans.

SUPPLEMENTARY INFORMATION

Supplementary data are available at Bioinformatics online.

摘要

动机

小分子化合物对人 ether-à-go-go 相关基因(hERG)通道的阻断会导致 QT 间期延长,从而导致严重的心脏毒性,这也是药物开发中许多失败的主要原因。因此,评估小分子化合物的 hERG 阻断活性对于成功的药物开发至关重要。为此,已经开发了各种计算预测工具,但为了减少假阴性预测,需要提高它们在灵敏度和负预测值(NPV)方面的预测性能。

结果

我们提出了一个计算框架 DeepHIT,用于预测输入化合物的 hERG 阻滞剂和非阻滞剂。为了开发 DeepHIT,我们生成了一个大规模的金标准数据集,其中包括 6632 个 hERG 阻滞剂和 7808 个 hERG 非阻滞剂。DeepHIT 旨在包含三个深度学习模型,以提高灵敏度和 NPV,从而减少假阴性预测。在外部测试数据集上,DeepHIT 在准确性(0.773)、MCC(0.476)、灵敏度(0.833)和 NPV(0.643)方面均优于现有的工具。我们还开发了一种基于已知化学转化模式的虚拟化合物生成模块,该模块可以从种子化合物生成虚拟化合物。作为概念验证研究,我们从先前报道的具有强 hERG 阻断活性的 UT 拮抗剂(KR-36676)的种子化合物中发现了没有 hERG 阻断活性的新型 Urotensin II 受体(UT)拮抗剂。总之,DeepHIT 将成为预测药物发现和开发早期小分子化合物 hERG 诱导心脏毒性的有用工具。

可用性和实现

https://bitbucket.org/krictai/deephithttps://bitbucket.org/krictai/chemtrans。

补充信息

补充数据可在 Bioinformatics 在线获得。

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