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Predicting LncRNA-disease Association by Autoencoder and Rotation Forest

机译:通过自动编码器和旋转森林预测LncRNA-疾病关联

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In the past few years, most disease-related lncRNAs have been identified, but the experimental identification is cost-consuming and time-consuming. It is therefore very important to develop a reliable computational model to predict lncRNA-disease association. In this paper, we propose a method based on similarity, combining autoencoder and rotation forest to predict lncRNA-disease association (SARLDA). This method not only makes use of disease and lncRNA similarities, but also extracts latent low-dimension features and expand the gap between samples to make it easier to predict the associations. To evaluate our method, we conducted several experiments. Sufficient validations show that this method has significantly improved the prediction performance.
机译:在过去的几年中,已鉴定出大多数与疾病相关的lncRNA,但实验鉴定既费钱又费时。因此,开发可靠的计算模型来预测lncRNA-疾病关联非常重要。在本文中,我们提出了一种基于相似性的方法,将自编码器和旋转森林相结合来预测lncRNA-疾病关联(SARLDA)。此方法不仅利用疾病和lncRNA的相似性,而且提取潜在的低维特征并扩大样本之间的距离,从而更容易预测关联。为了评估我们的方法,我们进行了几次实验。充分的验证表明,该方法已大大改善了预测性能。

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