Causality, Information and Biological Computation: An algorithmic software approach to life, disease and the immune system
Hector Zenil, Angelika Schmidt, Jesper Tegn\'er

TL;DR
This paper explores how principles from computer science, information theory, and software engineering can be applied to understand, reprogram, and treat biological systems, diseases, and the immune response.
Contribution
It introduces a systematic, algorithmic approach to biology, framing life processes and diseases as computational and information-theoretic phenomena, bridging biology and computer science.
Findings
Biological processes can be modeled as computational systems.
Diseases like cancer can be viewed as information-theoretic conflicts.
Immune response can be understood as software debugging.
Abstract
Biology has taken strong steps towards becoming a computer science aiming at reprogramming nature after the realisation that nature herself has reprogrammed organisms by harnessing the power of natural selection and the digital prescriptive nature of replicating DNA. Here we further unpack ideas related to computability, algorithmic information theory and software engineering, in the context of the extent to which biology can be (re)programmed, and with how we may go about doing so in a more systematic way with all the tools and concepts offered by theoretical computer science in a translation exercise from computing to molecular biology and back. These concepts provide a means to a hierarchical organization thereby blurring previously clear-cut lines between concepts like matter and life, or between tumour types that are otherwise taken as different and may not have however a different…
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Taxonomy
TopicsGenetics, Bioinformatics, and Biomedical Research · Artificial Immune Systems Applications · Gene Regulatory Network Analysis
