Główne pojęcia
Artificial intelligence (AI) and the exponential growth in biological data present an unprecedented opportunity to construct comprehensive virtual cell models that can simulate cellular behavior, predict responses to perturbations, and uncover underlying mechanisms.
Streszczenie
The article proposes a vision for AI-powered Virtual Cells (AIVCs) - learned, multi-scale, multi-modal models that can represent and simulate the behavior of cells, tissues, and organisms across diverse states. Key capabilities of the AIVC include:
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Universal Representations: Integrating data across molecular, cellular, and multicellular scales to create a comprehensive reference of biological states.
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Predicting Cell Behavior and Understanding Mechanism: Modeling cellular responses and dynamics, and uncovering the underlying molecular mechanisms.
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In Silico Experimentation and Guiding Data Generation: Enabling virtual experiments to screen perturbations, generate hypotheses, and guide efficient data collection.
The article discusses the technical approaches to build the AIVC, including universal multi-scale representations and virtual instruments. It also highlights the data needs, model evaluation strategies, and the importance of an open, collaborative approach to realize this vision. The AIVC has the potential to revolutionize scientific discovery, drug development, and programmable biology.
Statystyki
"The cell is a dynamic and adaptive system in which complex behavior emerges from a myriad of molecular interactions."
"Existing cell models are often rule-based and combine assumptions about the underlying biological mechanisms with parameters fit from observational data."
"The exponential increase in the throughput of measurement technologies has led to the collection of large and growing reference datasets within and across different cell and tissue systems."
Cytaty
"An AI Virtual Cell should enable a new era of simulation in biology, in which cancer biologists model how specific mutations transition cells from healthy to malignant; in which developmental biologists forecast how developmental lineages evolve in response to perturbation in specific progenitor cells; in which microbiologists predict the effects of viral infection on not just the infected cell but also its host organism."
"By building on these properties, we argue that we now have the tools to develop a fully data-driven neural network-based representation of an AI Virtual Cell that is at some level agnostic to specific tasks or contexts, and enables novel capabilities."