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利用深度学习指导的可解释模型预测抗癌药物敏感性。

Prediction of anticancer drug sensitivity using an interpretable model guided by deep learning.

机构信息

College of Information Technology, Shanghai Ocean University, Hucheng Ring Road, Shanghai, China.

Key Laboratory of Fisheries Information Ministry of Agriculture, Shanghai, China.

出版信息

BMC Bioinformatics. 2024 May 9;25(1):182. doi: 10.1186/s12859-024-05669-x.

Abstract

BACKGROUND

The prediction of drug sensitivity plays a crucial role in improving the therapeutic effect of drugs. However, testing the effectiveness of drugs is challenging due to the complex mechanism of drug reactions and the lack of interpretability in most machine learning and deep learning methods. Therefore, it is imperative to establish an interpretable model that receives various cell line and drug feature data to learn drug response mechanisms and achieve stable predictions between available datasets.

RESULTS

This study proposes a new and interpretable deep learning model, DrugGene, which integrates gene expression, gene mutation, gene copy number variation of cancer cells, and chemical characteristics of anticancer drugs to predict their sensitivity. This model comprises two different branches of neural networks, where the first involves a hierarchical structure of biological subsystems that uses the biological processes of human cells to form a visual neural network (VNN) and an interpretable deep neural network for human cancer cells. DrugGene receives genotype input from the cell line and detects changes in the subsystem states. We also employ a traditional artificial neural network (ANN) to capture the chemical structural features of drugs. DrugGene generates final drug response predictions by combining VNN and ANN and integrating their outputs into a fully connected layer. The experimental results using drug sensitivity data extracted from the Cancer Drug Sensitivity Genome Database and the Cancer Treatment Response Portal v2 reveal that the proposed model is better than existing prediction methods. Therefore, our model achieves higher accuracy, learns the reaction mechanisms between anticancer drugs and cell lines from various features, and interprets the model's predicted results.

CONCLUSIONS

Our method utilizes biological pathways to construct neural networks, which can use genotypes to monitor changes in the state of network subsystems, thereby interpreting the prediction results in the model and achieving satisfactory prediction accuracy. This will help explore new directions in cancer treatment. More available code resources can be downloaded for free from GitHub ( https://github.com/pangweixiong/DrugGene ).

摘要

背景

药物敏感性预测在提高药物治疗效果方面起着至关重要的作用。然而,由于药物反应的复杂机制以及大多数机器学习和深度学习方法缺乏可解释性,测试药物的有效性具有挑战性。因此,建立一个可解释的模型,该模型接收各种细胞系和药物特征数据,以学习药物反应机制并在可用数据集之间实现稳定预测,是当务之急。

结果

本研究提出了一种新的可解释深度学习模型 DrugGene,该模型整合了癌细胞的基因表达、基因突变、基因拷贝数变异和抗癌药物的化学特性,以预测其敏感性。该模型由两个不同的神经网络分支组成,其中第一个分支涉及生物子系统的层次结构,该结构利用人类细胞的生物学过程形成可视化神经网络(VNN)和可解释的人类癌细胞深度神经网络。DrugGene 从细胞系接收基因型输入,并检测子系统状态的变化。我们还使用传统的人工神经网络(ANN)来捕捉药物的化学结构特征。DrugGene 通过结合 VNN 和 ANN 并将它们的输出集成到全连接层中来生成最终的药物反应预测。使用从癌症药物敏感性基因组数据库和癌症治疗反应门户 v2 中提取的药物敏感性数据进行的实验结果表明,所提出的模型优于现有预测方法。因此,我们的模型实现了更高的准确性,从各种特征中学习抗癌药物与细胞系之间的反应机制,并解释模型的预测结果。

结论

我们的方法利用生物途径构建神经网络,该网络可以使用基因型来监测网络子系统状态的变化,从而解释模型中的预测结果并实现令人满意的预测准确性。这将有助于探索癌症治疗的新方向。更多可用的代码资源可从 GitHub(https://github.com/pangweixiong/DrugGene)免费下载。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/c25c/11080240/e8968854f839/12859_2024_5669_Fig1_HTML.jpg

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