如何预测有效的药物组合-超越协同作用评分

IF 4.6 2区 综合性期刊 Q1 MULTIDISCIPLINARY SCIENCES
Lea Eckhart , Kerstin Lenhof , Lutz Herrmann , Lisa-Marie Rolli , Hans-Peter Lenhof
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引用次数: 0

摘要

为了提高我们对多药物治疗的理解,经常使用机器学习(ML)研究用药物组合筛选的癌细胞系面板。在这些数据上训练的机器学习模型通常侧重于预测支持药物开发和重新利用工作的协同得分,但在获得个性化治疗建议时存在局限性。为了模拟更现实的个性化治疗场景,我们开创了ML模型,该模型可以对相对生长抑制(而不是协同评分)进行剂量特异性预测,并且可以应用于以前未见过的细胞系。我们的方法是高度灵活的:它可以重建剂量-反应曲线和矩阵,以及从模型预测中对药物敏感性(和协同作用)的各种测量,最终甚至可以用来得出单一和联合治疗的细胞系特异性优先级。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
How to predict effective drug combinations – moving beyond synergy scores
To improve our understanding of multi-drug therapies, cancer cell line panels screened with drug combinations are frequently studied using machine learning (ML). ML models trained on such data typically focus on predicting synergy scores that support drug development and repurposing efforts but have limitations when deriving personalized treatment recommendations. To simulate a more realistic personalized treatment scenario, we pioneer ML models that make dose-specific predictions of the relative growth inhibition (instead of synergy scores), and that can be applied to previously unseen cell lines. Our approach is highly flexible: it enables the reconstruction of dose-response curves and matrices, as well as various measures of drug sensitivity (and synergy) from model predictions, which can finally even be used to derive cell line-specific prioritizations of both mono- and combination therapies.
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来源期刊
iScience
iScience Multidisciplinary-Multidisciplinary
CiteScore
7.20
自引率
1.70%
发文量
1972
审稿时长
6 weeks
期刊介绍: Science has many big remaining questions. To address them, we will need to work collaboratively and across disciplines. The goal of iScience is to help fuel that type of interdisciplinary thinking. iScience is a new open-access journal from Cell Press that provides a platform for original research in the life, physical, and earth sciences. The primary criterion for publication in iScience is a significant contribution to a relevant field combined with robust results and underlying methodology. The advances appearing in iScience include both fundamental and applied investigations across this interdisciplinary range of topic areas. To support transparency in scientific investigation, we are happy to consider replication studies and papers that describe negative results. We know you want your work to be published quickly and to be widely visible within your community and beyond. With the strong international reputation of Cell Press behind it, publication in iScience will help your work garner the attention and recognition it merits. Like all Cell Press journals, iScience prioritizes rapid publication. Our editorial team pays special attention to high-quality author service and to efficient, clear-cut decisions based on the information available within the manuscript. iScience taps into the expertise across Cell Press journals and selected partners to inform our editorial decisions and help publish your science in a timely and seamless way.
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