Selecting deep neural networks that yield consistent attribution-based interpretations for genomics.

Antonio Majdandzic, Chandana Rajesh, Amber Tang, Shushan Toneyan, Ethan Labelson, Rohit Tripathy, Peter K Koo
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Abstract

Deep neural networks (DNNs) have advanced our ability to take DNA primary sequence as input and predict a myriad of molecular activities measured via high-throughput functional genomic assays. Post hoc attribution analysis has been employed to provide insights into the importance of features learned by DNNs, often revealing patterns such as sequence motifs. However, attribution maps typically harbor spurious importance scores to an extent that varies from model to model, even for DNNs whose predictions generalize well. Thus, the standard approach for model selection, which relies on performance of a held-out validation set, does not guarantee that a high-performing DNN will provide reliable explanations. Here we introduce two approaches that quantify the consistency of important features across a population of attribution maps; consistency reflects a qualitative property of human interpretable attribution maps. We employ the consistency metrics as part of a multivariate model selection framework to identify models that yield high generalization performance and interpretable attribution analysis. We demonstrate the efficacy of this approach across various DNNs quantitatively with synthetic data and qualitatively with chromatin accessibility data.

为基因组学选择能产生一致归因解释的深度神经网络。
深度神经网络(DNN)提高了我们将 DNA 原始序列作为输入并预测通过高通量功能基因组测定所测得的大量分子活动的能力。事后归因分析被用来深入了解 DNNs 所学特征的重要性,通常能揭示序列图案等模式。然而,归因图通常包含虚假的重要性得分,其程度因模型而异,即使是预测通用性良好的 DNN 也不例外。因此,标准的模型选择方法依赖于保留验证集的表现,并不能保证表现优异的 DNN 能够提供可靠的解释。在此,我们介绍两种量化归因图群体中重要特征一致性的方法;一致性反映了人类可解释归因图的定性属性。我们将一致性度量作为多元模型选择框架的一部分,以确定能产生高泛化性能和可解释归因分析的模型。我们通过合成数据和染色质可及性数据分别定量和定性地证明了这种方法在各种 DNN 中的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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