Moro Gianluca, Masseroli Marco
DISI - University of Bologna, Via dell'Università, Cesena (FC), Italy.
DEIB, Politecnico di Milano, Piazza L. Da Vinci 32, Milan, 20133, Italy.
BioData Min. 2021 Feb 12;14(1):14. doi: 10.1186/s13040-021-00239-w.
Structured biological information about genes and proteins is a valuable resource to improve discovery and understanding of complex biological processes via machine learning algorithms. Gene Ontology (GO) controlled annotations describe, in a structured form, features and functions of genes and proteins of many organisms. However, such valuable annotations are not always reliable and sometimes are incomplete, especially for rarely studied organisms. Here, we present GeFF (Gene Function Finder), a novel cross-organism ensemble learning method able to reliably predict new GO annotations of a target organism from GO annotations of another source organism evolutionarily related and better studied.
Using a supervised method, GeFF predicts unknown annotations from random perturbations of existing annotations. The perturbation consists in randomly deleting a fraction of known annotations in order to produce a reduced annotation set. The key idea is to train a supervised machine learning algorithm with the reduced annotation set to predict, namely to rebuild, the original annotations. The resulting prediction model, in addition to accurately rebuilding the original known annotations for an organism from their perturbed version, also effectively predicts new unknown annotations for the organism. Moreover, the prediction model is also able to discover new unknown annotations in different target organisms without retraining.We combined our novel method with different ensemble learning approaches and compared them to each other and to an equivalent single model technique. We tested the method with five different organisms using their GO annotations: Homo sapiens, Mus musculus, Bos taurus, Gallus gallus and Dictyostelium discoideum. The outcomes demonstrate the effectiveness of the cross-organism ensemble approach, which can be customized with a trade-off between the desired number of predicted new annotations and their precision.A Web application to browse both input annotations used and predicted ones, choosing the ensemble prediction method to use, is publicly available at http://tiny.cc/geff/ .
Our novel cross-organism ensemble learning method provides reliable predicted novel gene annotations, i.e., functions, ranked according to an associated likelihood value. They are very valuable both to speed the annotation curation, focusing it on the prioritized new annotations predicted, and to complement known annotations available.
有关基因和蛋白质的结构化生物信息是一种宝贵资源,可通过机器学习算法来改进对复杂生物过程的发现和理解。基因本体论(GO)控制注释以结构化形式描述了许多生物体中基因和蛋白质的特征与功能。然而,此类有价值的注释并不总是可靠的,有时还不完整,尤其是对于研究较少的生物体。在此,我们提出了GeFF(基因功能查找器),这是一种新型的跨生物体集成学习方法,能够根据进化相关且研究更充分的另一种源生物体的GO注释可靠地预测目标生物体的新GO注释。
使用一种监督方法,GeFF从现有注释的随机扰动中预测未知注释。扰动包括随机删除一部分已知注释以生成一个精简的注释集。关键思想是使用精简的注释集训练一种监督机器学习算法来预测,即重建原始注释。所得的预测模型,除了能从其扰动版本准确重建生物体的原始已知注释外,还能有效地预测该生物体的新未知注释。此外,该预测模型还能够在无需重新训练的情况下发现不同目标生物体中的新未知注释。我们将我们的新方法与不同的集成学习方法相结合,并将它们相互比较以及与等效的单模型技术进行比较。我们使用五种不同生物体的GO注释对该方法进行了测试:智人、小家鼠、牛、原鸡和盘基网柄菌。结果证明了跨生物体集成方法的有效性,该方法可以在期望的预测新注释数量与其精度之间进行权衡来定制。一个可用于浏览所用输入注释和预测注释、选择要使用的集成预测方法的网络应用程序可在http://tiny.cc/geff/ 上公开获取。
我们的新型跨生物体集成学习方法提供了可靠预测的新基因注释,即功能,并根据相关的似然值进行排序。它们对于加快注释整理(将其重点放在预测的优先新注释上)以及补充可用的已知注释都非常有价值。