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A Guide on Deep Learning for Complex Trait Genomic Prediction

机译:复杂性状基因组预测的深度学习指南

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摘要

Deep learning (DL) has emerged as a powerful tool to make accurate predictions from complex data such as image, text, or video. However, its ability to predict phenotypic values from molecular data is less well studied. Here, we describe the theoretical foundations of DL and provide a generic code that can be easily modified to suit specific needs. DL comprises a wide variety of algorithms which depend on numerous hyperparameters. Careful optimization of hyperparameter values is critical to avoid overfitting. Among the DL architectures currently tested in genomic prediction, convolutional neural networks (CNNs) seem more promising than multilayer perceptrons (MLPs). A limitation of DL is in interpreting the results. This may not be relevant for genomic prediction in plant or animal breeding but can be critical when deciding the genetic risk to a disease. Although DL technologies are not “plug-and-play”, they are easily implemented using Keras and TensorFlow public software. To illustrate the principles described here, we implemented a Keras-based code in GitHub.
机译:深度学习(DL)已经成为一种强大的工具,可以根据复杂的数据(例如图像,文本或视频)做出准确的预测。但是,从分子数据预测表型值的能力研究得还不够深入。在这里,我们描述了DL的理论基础,并提供了可以轻松修改以适合特定需求的通用代码。 DL包含多种算法,这些算法取决于众多超参数。仔细优化超参数值对于避免过度拟合至关重要。在目前正在基因组预测中测试的DL体系结构中,卷积神经网络(CNN)似乎比多层感知器(MLP)更有希望。 DL的局限性在于解释结果。这可能与动植物育种中的基因组预测无关,但在确定疾病的遗传风险时可能至关重要。尽管DL技术不是“即插即用”的,但可以使用Keras和TensorFlow公共软件轻松实现。为了说明此处描述的原理,我们在GitHub中实现了基于Keras的代码。

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