Norinder Ulf, Spjuth Ola, Svensson Fredrik
Department of Pharmaceutical Biosciences and Science for Life Laboratory, Uppsala University, Box 591, SE-75124, Uppsala, Sweden.
Department of Computer and Systems Sciences, Stockholm University, Box 7003, 164 07, Kista, Sweden.
J Cheminform. 2021 Oct 2;13(1):77. doi: 10.1186/s13321-021-00555-7.
Confidence predictors can deliver predictions with the associated confidence required for decision making and can play an important role in drug discovery and toxicity predictions. In this work we investigate a recently introduced version of conformal prediction, synergy conformal prediction, focusing on the predictive performance when applied to bioactivity data. We compare the performance to other variants of conformal predictors for multiple partitioned datasets and demonstrate the utility of synergy conformal predictors for federated learning where data cannot be pooled in one location. Our results show that synergy conformal predictors based on training data randomly sampled with replacement can compete with other conformal setups, while using completely separate training sets often results in worse performance. However, in a federated setup where no method has access to all the data, synergy conformal prediction is shown to give promising results. Based on our study, we conclude that synergy conformal predictors are a valuable addition to the conformal prediction toolbox.
置信度预测器能够提供决策所需的具有相关置信度的预测,并且在药物发现和毒性预测中可以发挥重要作用。在这项工作中,我们研究了一种最近引入的共形预测版本,即协同共形预测,重点关注其应用于生物活性数据时的预测性能。我们针对多个划分数据集将该性能与共形预测器的其他变体进行比较,并证明了协同共形预测器在数据无法集中于一处的联邦学习中的效用。我们的结果表明,基于有放回随机采样训练数据的协同共形预测器能够与其他共形设置相竞争,而使用完全分离的训练集通常会导致性能更差。然而,在没有任何方法能够访问所有数据的联邦设置中,协同共形预测显示出了有前景的结果。基于我们的研究,我们得出结论,协同共形预测器是共形预测工具箱中一个有价值的补充。