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Enhanced Integrated Gradients: improving interpretability of deep learning models using splicing codes as a case study

机译:增强的综合梯度:使用拼接代码提高深度学习模型的可解释性作为案例研究

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Despite the success and fast adaptation of deep learning models in biomedical domains, their lack of interpretability remains an issue. Here, we introduce Enhanced Integrated Gradients (EIG), a method to identify significant features associated with a specific prediction task. Using RNA splicing prediction as well as digit classification as case studies, we demonstrate that EIG improves upon the original Integrated Gradients method and produces sets of informative features. We then apply EIG to identify A1CF as a key regulator of liver-specific alternative splicing, supporting this finding with subsequent analysis of relevant A1CF functional (RNA-seq) and binding data (PAR-CLIP).
机译:尽管生物医学领域的深度学习模型成功,但它们缺乏可解释性仍然是一个问题。这里,我们引入增强的集成梯度(EIG),一种识别与特定预测任务相关的重要特征的方法。使用RNA剪接预测以及数字分类作为案例研究,我们证明EIG改进了原始集成梯度方法并产生了信息特征集。然后,我们将EIG识别A1CF作为肝特异性替代剪接的关键调节器,支持此发现随后的相关A1CF功能(RNA-SEQ)和绑定数据(PAR-CLIP)。

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