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e-Bitter: Bitterant Prediction by the Consensus Voting From the Machine-Learning Methods

机译:e-Bitter:基于机器学习方法的共识投票进行的恶意预测

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摘要

In-silico bitterant prediction received the considerable attention due to the expensive and laborious experimental-screening of the bitterant. In this work, we collect the fully experimental dataset containing 707 bitterants and 592 non-bitterants, which is distinct from the fully or partially hypothetical non-bitterant dataset used in the previous works. Based on this experimental dataset, we harness the consensus votes from the multiple machine-learning methods (e.g., deep learning etc.) combined with the molecular fingerprint to build the bitter/bitterless classification models with five-fold cross-validation, which are further inspected by the Y-randomization test and applicability domain analysis. One of the best consensus models affords the accuracy, precision, specificity, sensitivity, F1-score, and Matthews correlation coefficient (MCC) of 0.929, 0.918, 0.898, 0.954, 0.936, and 0.856 respectively on our test set. For the automatic prediction of bitterant, a graphic program “e-Bitter” is developed for the convenience of users via the simple mouse click. To our best knowledge, it is for the first time to adopt the consensus model for the bitterant prediction and develop the first free stand-alone software for the experimental food scientist.
机译:由于苦味剂的昂贵且费力的实验筛选,硅酸苦味剂的预测受到了相当大的关注。在这项工作中,我们收集了包含707种苦味剂和592种非苦味剂的完全实验性数据集,这与先前工作中使用的全部或部分假设的非苦味剂数据集不同。基于此实验数据集,我们利用多种机器学习方法(例如深度学习等)的共识投票与分子指纹相结合,以建立具有五重交叉验证的苦涩/无苦分类模型,这将进一步通过Y随机检验和适用范围分析进行了检查。最好的共识模型之一是在我们的测试集中提供0.929、0.918、0.898、0.954、0.936和0.856的准确性,精确度,特异性,敏感性,F1得分和Matthews相关系数(MCC)。为了自动预测苦味,开发了一个图形程序“ e-Bitter”,通过简单的鼠标点击即可为用户带来便利。据我们所知,这是首次采用共识模型进行痛苦的预测,并为实验食品科学家开发了第一个免费的独立软件。

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