College of Computer Science and Electronic Engineering, Hunan University, Changsha, China.
College of Life Science and Technology, Beijing University of Chemical Technology, Beijing, China.
BMC Med. 2022 Oct 17;20(1):368. doi: 10.1186/s12916-022-02549-0.
Considering the heterogeneity of tumors, it is a key issue in precision medicine to predict the drug response of each individual. The accumulation of various types of drug informatics and multi-omics data facilitates the development of efficient models for drug response prediction. However, the selection of high-quality data sources and the design of suitable methods remain a challenge.
In this paper, we design NeRD, a multidimensional data integration model based on the PRISM drug response database, to predict the cellular response of drugs. Four feature extractors, including drug structure extractor (DSE), molecular fingerprint extractor (MFE), miRNA expression extractor (mEE), and copy number extractor (CNE), are designed for different types and dimensions of data. A fully connected network is used to fuse all features and make predictions.
Experimental results demonstrate the effective integration of the global and local structural features of drugs, as well as the features of cell lines from different omics data. For all metrics tested on the PRISM database, NeRD surpassed previous approaches. We also verified that NeRD has strong reliability in the prediction results of new samples. Moreover, unlike other algorithms, when the amount of training data was reduced, NeRD maintained stable performance.
NeRD's feature fusion provides a new idea for drug response prediction, which is of great significance for precise cancer treatment.
考虑到肿瘤的异质性,预测每个个体的药物反应是精准医学的关键问题。各种类型的药物信息学和多组学数据的积累促进了药物反应预测的高效模型的发展。然而,选择高质量的数据源和设计合适的方法仍然是一个挑战。
在本文中,我们设计了基于 PRISM 药物反应数据库的多维数据集成模型 NeRD,用于预测药物的细胞反应。设计了四个特征提取器,包括药物结构提取器(DSE)、分子指纹提取器(MFE)、miRNA 表达提取器(mEE)和拷贝数提取器(CNE),用于不同类型和维度的数据。使用全连接网络融合所有特征并进行预测。
实验结果证明了药物的全局和局部结构特征以及来自不同组学数据的细胞系特征的有效集成。在 PRISM 数据库上测试的所有指标中,NeRD 均优于以前的方法。我们还验证了 NeRD 在新样本预测结果中的可靠性。与其他算法不同,当训练数据量减少时,NeRD 保持稳定的性能。
NeRD 的特征融合为药物反应预测提供了新的思路,对精准癌症治疗具有重要意义。