Anti-cancer drug sensitivity prediction using deep learning models for individual cell line is a significant challenge in personalized medicine. REFINED (REpresentation of Features as Images with NEighborhood Dependencies) CNN (Convolutional Neural Network) based models have shown promising results in drug sensitivity prediction. The primary idea behind REFINED CNN is representing high dimensional vectors as compact images with spatial correlations that can benefit from convolutional neural network architectures. However, the mapping from a vector to a compact 2D image is not unique due to variations in considered distance measures and neighborhoods. In this article, we consider predictions based on ensembles built from such mappings that can improve upon the best single REFINED CNN model prediction. Results illustrated using NCI60 and NCIALMANAC databases shows that the ensemble approaches can provide significant performance improvement as compared to individual models. We further illustrate that a single mapping created from the amalgamation of the different mappings can provide performance similar to stacking ensemble but with significantly lower computational complexity.
翻译:在个人化医学中,使用单个细胞线的深学习模型进行抗癌药物敏感度预测是一项重大挑战。基于CNN(革命神经网络)的模型(作为邻里依赖图象的特征的展示)在药物敏感度预测方面显示了有希望的结果。REFINED(神经网络)的主要想法是将高维矢量作为具有空间相关性的紧凑图像,能够从神经神经网络结构中受益。然而,从矢量到紧凑的2D图像的映射并非独一无二,因为考虑的距离测量和邻近地区的变化。在本篇文章中,我们考虑了从这种绘图中得出的能够改进REFINEDCNNCN模型最佳预测的组合。使用NCI60和NCIALMANAC数据库显示的结果表明,同单个模型相比,共用的方法可以提供显著的性能改进。我们进一步说明,从不同测绘的合并产生的单一图象可以提供与堆叠组合相似的性,但计算复杂度要低得多。