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The value of prior knowledge in machine learning of complex network systems

David Craft, Dana Ferranti, David Krane
doi: https://doi.org/10.1101/094151
David Craft
Department of Radiation Oncology, Massachusetts General Hospital, Harvard Medical School
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Dana Ferranti
Department of Radiation Oncology, Massachusetts General Hospital, Harvard Medical School
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David Krane
Department of Radiation Oncology, Massachusetts General Hospital, Harvard Medical School
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Abstract

Our overall goal is to develop machine learning approaches based on genomics and other relevant accessible information for use in predicting how a patient will respond to a given proposed drug or treatment. Given the complexity of this problem, we begin by developing, testing, and analyzing learning methods using data from simulated systems, which allows us access to a known ground truth. We examine the benefits of using prior system knowledge and investigate how learning accuracy depends on various system parameters as well as the amount of training data available. The simulations are based on Boolean networks – directed graphs with 0/1 node states and logical node update rules – which are the simplest computational systems that can mimic the dynamic behavior of cellular systems. Boolean networks can be generated and simulated at scale, have complex yet cyclical dynamics, and as such provide a useful framework for developing machine learning algorithms for modular and hierarchical networks such as biological systems in general and cancer in particular. We demonstrate that utilizing prior knowledge (in the form of network connectivity information), without detailed state equations, greatly increases the power of machine learning algorithms to predict network steady state node values (“phenotypes”) and perturbation responses (“drug effects”).

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The copyright holder for this preprint is the author/funder, who has granted bioRxiv a license to display the preprint in perpetuity. It is made available under a CC-BY 4.0 International license.
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Posted April 06, 2017.
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The value of prior knowledge in machine learning of complex network systems
David Craft, Dana Ferranti, David Krane
bioRxiv 094151; doi: https://doi.org/10.1101/094151
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The value of prior knowledge in machine learning of complex network systems
David Craft, Dana Ferranti, David Krane
bioRxiv 094151; doi: https://doi.org/10.1101/094151

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