DCAMCP: A deep learning model based on capsule network and attention mechanism for molecular carcinogenicity prediction

IF 5.3 2区 医学 Q1 Biochemistry, Genetics and Molecular Biology Journal of Cellular and Molecular Medicine Pub Date : 2023-07-31 DOI:10.1111/jcmm.17889
Zhe Chen, Li Zhang, Jianqiang Sun, Rui Meng, Shuaidong Yin, Qi Zhao
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引用次数: 2

Abstract

The carcinogenicity of drugs can have a serious impact on human health, so carcinogenicity testing of new compounds is very necessary before being put on the market. Currently, many methods have been used to predict the carcinogenicity of compounds. However, most methods have limited predictive power and there is still much room for improvement. In this study, we construct a deep learning model based on capsule network and attention mechanism named DCAMCP to discriminate between carcinogenic and non-carcinogenic compounds. We train the DCAMCP on a dataset containing 1564 different compounds through their molecular fingerprints and molecular graph features. The trained model is validated by fivefold cross-validation and external validation. DCAMCP achieves an average accuracy (ACC) of 0.718 ± 0.009, sensitivity (SE) of 0.721 ± 0.006, specificity (SP) of 0.715 ± 0.014 and area under the receiver-operating characteristic curve (AUC) of 0.793 ± 0.012. Meanwhile, comparable results can be achieved on an external validation dataset containing 100 compounds, with an ACC of 0.750, SE of 0.778, SP of 0.727 and AUC of 0.811, which demonstrate the reliability of DCAMCP. The results indicate that our model has made progress in cancer risk assessment and could be used as an efficient tool in drug design.

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DCAMCP:一个基于胶囊网络和注意力机制的深度学习模型,用于分子致癌性预测。
药物的致癌性会对人类健康产生严重影响,因此在上市前对新化合物进行致癌性测试是非常必要的。目前,许多方法已被用于预测化合物的致癌性。然而,大多数方法的预测能力有限,仍有很大的改进空间。在本研究中,我们构建了一个基于胶囊网络和注意力机制的深度学习模型DCAMCP,以区分致癌和非致癌化合物。我们通过分子指纹和分子图谱特征,在包含1564种不同化合物的数据集上训练DCAMCP。训练后的模型通过五重交叉验证和外部验证进行验证。DCAMCP的平均精度(ACC)为0.718 ± 0.009,灵敏度(SE)为0.721 ± 0.006,特异性(SP)为0.715 ± 0.014,受试者工作特性曲线下面积(AUC)为0.793 ± 0.012。同时,在包含100种化合物的外部验证数据集上可以获得可比较的结果,ACC为0.750,SE为0.778,SP为0.727,AUC为0.811,这证明了DCAMCP的可靠性。结果表明,我们的模型在癌症风险评估方面取得了进展,可以作为一种有效的药物设计工具。
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来源期刊
CiteScore
10.00
自引率
1.90%
发文量
496
审稿时长
28 weeks
期刊介绍: Bridging physiology and cellular medicine, and molecular biology and molecular therapeutics, Journal of Cellular and Molecular Medicine publishes basic research that furthers our understanding of the cellular and molecular mechanisms of disease and translational studies that convert this knowledge into therapeutic approaches.
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