Institute for Medicine and Engineering, Department of Chemical and Biomolecular Engineering, University of Pennsylvania, Philadelphia, Pennsylvania, USA.
Nat Biotechnol. 2010 Jul;28(7):727-32. doi: 10.1038/nbt.1642. Epub 2010 Jun 20.
Prediction of cellular response to multiple stimuli is central to evaluating patient-specific clinical status and to basic understanding of cell biology. Cross-talk between signaling pathways cannot be predicted by studying them in isolation and the combinatorial complexity of multiple agonists acting together prohibits an exhaustive exploration of the complete experimental space. Here we describe pairwise agonist scanning (PAS), a strategy that trains a neural network model based on measurements of cellular responses to individual and all pairwise combinations of input signals. We apply PAS to predict calcium signaling responses of human platelets in EDTA-treated plasma to six different agonists (ADP, convulxin, U46619, SFLLRN, AYPGKF and PGE(2)) at three concentrations (0.1, 1 and 10 x EC(50)). The model predicted responses to sequentially added agonists, to ternary combinations of agonists and to 45 different combinations of four to six agonists (R = 0.88). Furthermore, we use PAS to distinguish between the phenotypic responses of platelets from ten donors. Training neural networks with pairs of stimuli across the dose-response regime represents an efficient approach for predicting complex signal integration in a patient-specific disease milieu.
预测细胞对多种刺激的反应是评估患者特定临床状况和基本细胞生物学理解的核心。仅通过研究信号通路无法预测信号通路之间的串扰,并且多种激动剂共同作用的组合复杂性禁止对完整实验空间进行详尽的探索。在这里,我们描述了成对激动剂扫描(PAS),这是一种基于对单个和所有输入信号的成对组合的细胞反应测量来训练神经网络模型的策略。我们将 PAS 应用于预测 EDTA 处理的人血小板对六种不同激动剂(ADP、convulxin、U46619、SFLLRN、AYPGKF 和 PGE(2))在三个浓度(0.1、1 和 10 x EC(50))下的钙信号反应。该模型预测了顺序添加激动剂、激动剂的三元组合以及四种至六种激动剂的 45 种不同组合的反应(R = 0.88)。此外,我们使用 PAS 来区分来自十个供体的血小板的表型反应。使用跨剂量反应范围的成对刺激训练神经网络代表了一种预测特定于患者的疾病环境中复杂信号整合的有效方法。