Fast, Accurate, and Versatile Data Analysis Platform for the Quantification of Molecular Spatiotemporal Signals
计算机科学
数据挖掘
数据科学
作者
Xuelong Mi,Alex Chen,Daniela Duarte,Erin M. Carey,C R Taylor,Philipp N. Braaker,Mark Bright,Rafael Almeida,Jing-Xuan Lim,Virginia M. S. Ruetten,Wei Zheng,Mengfan Wang,Michael E. Reitman,Yizhi Wang,Kira E. Poskanzer,David A. Lyons,Axel Nimmerjahn,Misha B. Ahrens,Guoqiang Yu
SUMMARY Optical recording of intricate molecular dynamics is becoming an indispensable technique for biological studies, accelerated by the development of new or improved biosensors and microscopy technology. This creates major computational challenges to extract and quantify biologically meaningful spatiotemporal patterns embedded within complex and rich data sources, many of which cannot be captured with existing methods. Here, we introduce Activity Quantification and Analysis (AQuA2), a fast, accurate, and versatile data analysis platform built upon advanced machine learning techniques. It decomposes complex live imaging-based datasets into elementary signaling events, allowing accurate and unbiased quantification of molecular activities and identification of consensus functional units. We demonstrate applications across a wide range of biosensors, cell types, organs, animal models, and imaging modalities. As exemplar findings, we show how AQuA2 identified drug-dependent interactions between neurons and astroglia, and distinct sensorimotor signal propagation patterns in the mouse spinal cord.