9 research outputs found
Inferring causal metabolic signals that regulate the dynamic TORC
Cells react to nutritional cues in changing environments via the integrated action of signaling, transcriptional, and metabolic networks. Mechanistic insight into signaling processes is often complicated because ubiquitous feedback loops obscure causal relationships. Consequently, the endogenous inputs of many nutrient signaling pathways remain unknown. Recent advances for system-wide experimental data generation have facilitated the quantification of signaling systems, but the integration of multi-level dynamic data remains challenging. Here, we co-designed dynamic experiments and a probabilistic, model-based method to infer causal relationships between metabolism, signaling, and gene regulation. We analyzed the dynamic regulation of nitrogen metabolism by the target of rapamycin complex 1 (TORC1) pathway in budding yeast. Dynamic transcriptomic, proteomic, and metabolomic measurements along shifts in nitrogen quality yielded a consistent dataset that demonstrated extensive re-wiring of cellular networks during adaptation. Our inference method identified putative downstream targets of TORC1 and putative metabolic inputs of TORC1, including the hypothesized glutamine signal. The work provides a basis for further mechanistic studies of nitrogen metabolism and a general computational framework to study cellular processes
Unsupervised modeling of cell morphology dynamics for time-lapse microscopy
Analysis of cellular phenotypes in large imaging data sets conventionally involves supervised statistical methods, which require user-annotated training data. This paper introduces an unsupervised learning method, based on temporally constrained combinatorial clustering, for automatic prediction of cell morphology classes in time-resolved images. We applied the unsupervised method to diverse fluorescent markers and screening data and validated accurate classification of human cell phenotypes, demonstrating fully objective data labeling in image-based systems biology.Fil: Zhong, Qing. Swiss Federal Institute Of Technology Zurich; SuizaFil: Busetto, Alberto Giovanni. Swiss Federal Institute Of Technology Zurich; SuizaFil: Fededa, Juan Pablo. Swiss Federal Institute Of Technology Zurich; Suiza. Consejo Nacional de Investigaciones Científicas y Técnicas; ArgentinaFil: Buhmann, Joachim M.. Swiss Federal Institute Of Technology Zurich; SuizaFil: Gerlich, Daniel W.. Swiss Federal Institute Of Technology Zurich; Suiz