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ATC-NLSP: Prediction of the Classes of Anatomical Therapeutic Chemicals Using a Network-Based Label Space Partition Method

机译:ATC-NLSP:使用基于网络的标签空间划分方法预测解剖治疗用化学药品的类别

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摘要

Anatomical Therapeutic Chemical (ATC) classification system proposed by the World Health Organization is a widely accepted drug classification scheme in both academic and industrial realm. It is a multilabeling system which categorizes drugs into multiple classes according to their therapeutic, pharmacological, and chemical attributes. In this study, we adopted a data-driven network-based label space partition (NLSP) method for prediction of ATC classes of a given compound within the multilabel learning framework. The proposed method ATC-NLSP is trained on the similarity-based features such as chemical–chemical interaction and structural and fingerprint similarities of a compound to other compounds belonging to the different ATC categories. The NLSP method trains predictors for each label cluster (possibly intersecting) detected by community detection algorithms and takes the ensemble labels for a compound as final prediction. Experimental evaluation based on the jackknife test on the benchmark dataset demonstrated that our method has boosted the absolute true rate, which is the most stringent evaluation metrics in this study, from 0.6330 to 0.7497, in comparison to the state-of-the-art approaches. Moreover, the community structures of the label relation graph were detected through the label propagation method. The advantage of multilabel learning over the single-label models was shown by label-wise analysis. Our study indicated that the proposed method ATC-NLSP, which adopts ideas from network research community and captures the correlation of labels in a data driven manner, is the top-performing model in the ATC prediction task. We believed that the power of NLSP remains to be unleashed for the multilabel learning tasks in drug discovery. The source codes are freely available at .
机译:世界卫生组织提出的解剖治疗化学(ATC)分类系统是学术和工业领域都被广泛接受的药物分类方案。这是一个多标签系统,可根据药物的治疗,药理和化学属性将其分为多个类别。在这项研究中,我们采用了一种基于数据驱动的基于网络的标签空间分区(NLSP)方法来预测多标签学习框架内给定化合物的ATC类。拟议的方法ATC-NLSP在基于相似性的特征上进行了训练,例如化学-化学相互作用以及化合物与属于不同ATC类别的其他化合物的结构和指纹相似性。 NLSP方法为由社区检测算法检测到的每个标签簇(可能相交)训练预测变量,并将化合物的整体标签作为最终预测。基于基准数据集的折刀测试进行的实验评估表明,与最新方法相比,我们的方法将绝对真实率(该研究中最严格的评估指标)从0.6330提高到0.7497。 。此外,通过标签传播方法检测标签关系图的社区结构。标签方式分析显示了多标签学习优于单标签模型的优势。我们的研究表明,所提出的方法ATC-NLSP借鉴了网络研究界的想法,并以数据驱动的方式捕获了标签之间的相关性,是ATC预测任务中性能最高的模型。我们认为,对于药物发现中的多标签学习任务,NLSP的功能仍有待释放。可从以下位置免费获得源代码。

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