Interpreting drug synergy in breast cancer with deep learning using target-protein inhibition profiles.

IF 4 3区 生物学 Q1 MATHEMATICAL & COMPUTATIONAL BIOLOGY
Thanyawee Srithanyarat, Kittisak Taoma, Thana Sutthibutpong, Marasri Ruengjitchatchawalya, Monrudee Liangruksa, Teeraphan Laomettachit
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引用次数: 0

Abstract

Background: Breast cancer is the most common malignancy among women worldwide. Despite advances in treating breast cancer over the past decades, drug resistance and adverse effects remain challenging. Recent therapeutic progress has shifted toward using drug combinations for better treatment efficiency. However, with a growing number of potential small-molecule cancer inhibitors, in silico strategies to predict pharmacological synergy before experimental trials are required to compensate for time and cost restrictions. Many deep learning models have been previously proposed to predict the synergistic effects of drug combinations with high performance. However, these models heavily relied on a large number of drug chemical structural fingerprints as their main features, which made model interpretation a challenge.

Results: This study developed a deep neural network model that predicts synergy between small-molecule pairs based on their inhibitory activities against 13 selected key proteins. The synergy prediction model achieved a Pearson correlation coefficient between model predictions and experimental data of 0.63 across five breast cancer cell lines. BT-549 and MCF-7 achieved the highest correlation of 0.67 when considering individual cell lines. Despite achieving a moderate correlation compared to previous deep learning models, our model offers a distinctive advantage in terms of interpretability. Using the inhibitory activities against key protein targets as the main features allowed a straightforward interpretation of the model since the individual features had direct biological meaning. By tracing the synergistic interactions of compounds through their target proteins, we gained insights into the patterns our model recognized as indicative of synergistic effects.

Conclusions: The framework employed in the present study lays the groundwork for future advancements, especially in model interpretation. By combining deep learning techniques and target-specific models, this study shed light on potential patterns of target-protein inhibition profiles that could be exploited in breast cancer treatment.

利用靶蛋白抑制图谱,通过深度学习解读乳腺癌的药物协同作用。
背景:乳腺癌是全球妇女最常见的恶性肿瘤。尽管过去几十年来乳腺癌的治疗取得了进展,但耐药性和不良反应仍然是一项挑战。最近的治疗进展已转向使用药物组合来提高治疗效率。然而,由于潜在的小分子癌症抑制剂越来越多,因此需要在实验前采用硅学策略预测药理协同作用,以弥补时间和成本的限制。此前已有许多深度学习模型被提出来预测药物组合的高效协同效应。然而,这些模型严重依赖大量的药物化学结构指纹作为其主要特征,这使得模型解释成为一项挑战:本研究建立了一个深度神经网络模型,该模型可根据小分子对 13 种选定关键蛋白的抑制活性预测小分子对之间的协同作用。在五个乳腺癌细胞系中,协同作用预测模型与实验数据之间的皮尔逊相关系数达到 0.63。在考虑单个细胞系时,BT-549 和 MCF-7 的相关性最高,达到 0.67。尽管与之前的深度学习模型相比,我们的模型实现了中等程度的相关性,但在可解释性方面具有明显优势。将对关键蛋白靶点的抑制活性作为主要特征,可以直接解释模型,因为单个特征具有直接的生物学意义。通过追踪化合物与靶蛋白之间的协同作用,我们深入了解了我们的模型所识别的表明协同效应的模式:本研究采用的框架为未来的进步奠定了基础,尤其是在模型解释方面。通过将深度学习技术与靶点特异性模型相结合,本研究揭示了靶点蛋白抑制谱的潜在模式,可用于乳腺癌治疗。
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来源期刊
Biodata Mining
Biodata Mining MATHEMATICAL & COMPUTATIONAL BIOLOGY-
CiteScore
7.90
自引率
0.00%
发文量
28
审稿时长
23 weeks
期刊介绍: BioData Mining is an open access, open peer-reviewed journal encompassing research on all aspects of data mining applied to high-dimensional biological and biomedical data, focusing on computational aspects of knowledge discovery from large-scale genetic, transcriptomic, genomic, proteomic, and metabolomic data. Topical areas include, but are not limited to: -Development, evaluation, and application of novel data mining and machine learning algorithms. -Adaptation, evaluation, and application of traditional data mining and machine learning algorithms. -Open-source software for the application of data mining and machine learning algorithms. -Design, development and integration of databases, software and web services for the storage, management, retrieval, and analysis of data from large scale studies. -Pre-processing, post-processing, modeling, and interpretation of data mining and machine learning results for biological interpretation and knowledge discovery.
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