New powerful tools for tackling life science problems have been created by recent advances in machine learning. The purpose of the paper is to discuss the potential advantages of gene recommendation performed by artificial intelligence (AI). Indeed, gene recommendation engines try to solve this problem: if the user is interested in a set of genes, which other genes are likely to be related to the starting set and should be investigated? This task was solved with a custom deep learning recommendation engine, DeepProphet2 (DP2), which is freely available to researchers worldwide via https://www.generecommender.com?utm_source=DeepProphet2_paper&utm_medium=pdf. Hereafter, insights behind the algorithm and its practical applications are illustrated. The gene recommendation problem can be addressed by mapping the genes to a metric space where a distance can be defined to represent the real semantic distance between them. To achieve this objective a transformer-based model has been trained on a well-curated freely available paper corpus, PubMed. The paper describes multiple optimization procedures that were employed to obtain the best bias-variance trade-off, focusing on embedding size and network depth. In this context, the model's ability to discover sets of genes implicated in diseases and pathways was assessed through cross-validation. A simple assumption guided the procedure: the network had no direct knowledge of pathways and diseases but learned genes' similarities and the interactions among them. Moreover, to further investigate the space where the neural network represents genes, the dimensionality of the embedding was reduced, and the results were projected onto a human-comprehensible space. In conclusion, a set of use cases illustrates the algorithm's potential applications in a real word setting.
翻译:处理生命科学问题的新的强大工具已经由最近机器学习的进步创造了。 本文的目的是讨论人工智能(AI) 所实施的基因建议的潜在好处。 事实上, 基因建议引擎试图解决这个问题: 如果用户对一组基因感兴趣, 其他基因可能与启动的一组有关, 应该调查这些基因? 这项任务是通过一个定制的深层次学习建议引擎Deep Prophet2 (DP2)来解决的, 全世界研究人员可以通过https://www.generecommeder.comding. com?utm_sours_source=Deep Propheet2_paper&utm_modeble=pdf免费获得基因建议的潜在好处。 下一步, 算算算算法背后的洞察力及其实际应用。 基因建议问题可以通过将基因绘制成一个测量空间空间空间空间, 来代表它们之间的真实的语系距离。 为实现这个目标, 一个基于变压模型已经通过一个精密的可自由获取的纸质( PubMed) 。 本文描述了多个优化程序, 用来获取最佳的偏差度交易, 但它是用来在虚拟网络中, 嵌入网络的路径和深度中, 直置的路径中, 理解的路径中, 直置的路径和直置的路径理解的路径的路径, 直置的路径 。 。 一个过程是用来显示的路径的路径的路径和直置入的路径的路径的路径的路径的路径的路径的路径 。 。 。 。