Federated learning for predicting compound mechanism of action based on image-data from cell painting

Li Ju , Andreas Hellander , Ola Spjuth
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Abstract

Having access to sufficient data is essential in order to train accurate machine learning models, but much data is not publicly available. In drug discovery this is particularly evident, as much data is withheld at pharmaceutical companies for various reasons. Federated Learning (FL) aims at training a joint model between multiple parties but without disclosing data between the parties. In this work, we leverage Federated Learning to predict compound Mechanism of Action (MoA) using fluorescence image data from cell painting. Our study evaluates the effectiveness and efficiency of FL, comparing to non-collaborative and data-sharing collaborative learning in diverse scenarios. Specifically, we investigate the impact of data heterogeneity across participants on MoA prediction, an essential concern in real-life applications of FL, and demonstrate the benefits for all involved parties. This work highlights the potential of federated learning in multi-institutional collaborative machine learning for drug discovery and assessment of chemicals, offering a promising avenue to overcome data-sharing constraints.

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基于细胞绘画图像数据预测化合物作用机制的联合学习
要训练精确的机器学习模型,获得足够的数据是必不可少的,但很多数据并不公开。在药物发现领域,这种情况尤为明显,因为制药公司出于各种原因隐瞒了许多数据。Federated Learning(FL)旨在训练多方之间的联合模型,但不公开各方之间的数据。在这项工作中,我们利用联合学习技术,利用细胞绘画的荧光图像数据预测化合物的作用机制(MoA)。我们的研究评估了联邦学习的有效性和效率,并在不同场景下与非协作学习和数据共享协作学习进行了比较。特别是,我们研究了参与者之间的数据异质性对 MoA 预测的影响(这是 FL 在现实生活中应用的一个重要问题),并证明了所有参与方都能从中获益。这项工作凸显了联合学习在药物发现和化学品评估的多机构协作机器学习中的潜力,为克服数据共享限制提供了一条大有可为的途径。
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来源期刊
Artificial intelligence in the life sciences
Artificial intelligence in the life sciences Pharmacology, Biochemistry, Genetics and Molecular Biology (General), Computer Science Applications, Health Informatics, Drug Discovery, Veterinary Science and Veterinary Medicine (General)
CiteScore
5.00
自引率
0.00%
发文量
0
审稿时长
15 days
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