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An efficient approach based on multi-sources information to predict circRNA-disease associations using deep convolutional neural network

机译:基于多源信息的一种有效方法,以预测使用深卷积神经网络预测循环疾病关联

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Motivation: Emerging evidence indicates that circular RNA (circRNA) plays a crucial role in human disease. Using circRNA as biomarker gives rise to a new perspective regarding our diagnosing of diseases and understanding of disease pathogenesis. However, detection of circRNA-disease associations by biological experiments alone is often blind, limited to small scale, high cost and time consuming. Therefore, there is an urgent need for reliable computational methods to rapidly infer the potential circRNA-disease associations on a large scale and to provide the most promising candidates for biological experiments.
机译:动机:新兴证据表明圆形RNA(CircrNA)在人类疾病中起着至关重要的作用。 使用CircRNA作为生物标志物引发了我们对疾病诊断和对疾病发病机制的理解的新视角。 然而,通过单独的生物实验检测圆锥疾病关联通常是盲,限于小规模,高成本和耗时的耗材。 因此,迫切需要可靠的计算方法,以迅速推断大规模的潜在圆锥疾病关联,并为生物实验提供最有希望的候选者。

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