首页> 美国卫生研究院文献>AMIA Summits on Translational Science Proceedings >Approaching neural net feature interpretation using stacked autoencoders: gene expression profiling of systemic lupus erythematosus patients
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Approaching neural net feature interpretation using stacked autoencoders: gene expression profiling of systemic lupus erythematosus patients

机译:使用堆叠式自动编码器进行神经网络特征解释:系统性红斑狼疮患者的基因表达谱

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摘要

Systemic lupus erythematosus >(SLE) is a rare, autoimmune disorder known to affect most organ sites. Complicating clinical management is a poorly differentiated, heterogenous SLE disease state. While some small molecule drugs and biologics are available for treatment, additional therapeutic options are needed. Parsing complex biological signatures using powerful, yet human interpretable approaches is critical to advancing our understanding of SLE etiology and identifying therapeutic repositioning opportunities. To approach this goal, we developed a semi-supervised deep neural network pipeline for gene expression profiling of SLE patients and subsequent characterization of individual gene features. Our pipeline performed exemplar multinomial classification of SLE patients in independent balanced validation (F1=0.956) and unbalanced, under-powered testing (F1=0.944) cohorts. A stacked autoencoder disambiguated individual feature representativeness by regenerating an input-like(A ‘) feature matrix. A to A’ comparisons suggest the top associated features to be key features in gene expression profiling using neural nets.
机译:系统性红斑狼疮(SLE)是一种罕见的自身免疫性疾病,已知会影响大多数器官部位。复杂的临床管理是低分化,异质性SLE疾病状态。虽然一些小分子药物和生物制剂可用于治疗,但仍需要其他治疗选择。使用功能强大但人类可以解释的方法来解析复杂的生物特征,对于增进我们对SLE病因的认识并确定治疗性重新定位机会至关重要。为了实现这一目标,我们开发了一种半监督的深度神经网络管道,用于SLE患者的基因表达谱分析和随后的单个基因特征表征。我们的管道在独立的平衡验证(F1 = 0.956)和不平衡,动力不足的测试(F1 = 0.944)队列中对SLE患者进行了示例多项式分类。堆叠式自动编码器通过重新生成类似输入的特征矩阵来消除各个特征的歧义。 A对A的比较表明,最相关的特征是使用神经网络进行基因表达谱分析的关键特征。

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