QMAIAug 26, 2016

Activity Networks with Delays An application to toxicity analysis

arXiv:1608.07440v14 citations
Originality Synthesis-oriented
AI Analysis

This work provides a modular modeling approach for time-dependent biological systems, specifically targeting toxicity analysis, but it appears incremental as it builds on existing Petri net semantics without major breakthroughs.

The authors introduced ANDy, a discrete-time framework for modeling time-dependent biological systems like regulatory pathways, and demonstrated its application to toxicity analysis by classifying toxicity properties and verifying them with existing tools.

ANDy , Activity Networks with Delays, is a discrete time framework aimed at the qualitative modelling of time-dependent activities. The modular and concise syntax makes ANDy suitable for an easy and natural modelling of time-dependent biological systems (i.e., regulatory pathways). Activities involve entities playing the role of activators, inhibitors or products of biochemical network operation. Activities may have given duration, i.e., the time required to obtain results. An entity may represent an object (e.g., an agent, a biochemical species or a family of thereof) with a local attribute, a state denoting its level (e.g., concentration, strength). Entities levels may change as a result of an activity or may decay gradually as time passes by. The semantics of ANDy is formally given via high-level Petri nets ensuring this way some modularity. As main results we show that ANDy systems have finite state representations even for potentially infinite processes and it well adapts to the modelling of toxic behaviours. As an illustration, we present a classification of toxicity properties and give some hints on how they can be verified with existing tools on ANDy systems. A small case study on blood glucose regulation is provided to exemplify the ANDy framework and the toxicity properties.

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