Print

Daniel C. Morgan

PhD student @ Stockholm University
Favorite editor: Sublime, vim

Are you sure you want to do that?

Cancel Yes, delete it
Education 2015 → 2019
Ph.D. Systems Biology, Stockholm University

I am working on several projects surrounding the reverse engineering, or inference, of gene regulatory networks, with an interest in downstream drug repositioning in the Sonnhammer Lab at SciLifeLab in conjunction with Torbjörn Nordling at National Cheng Kung University

I am working on several projects surrounding the reverse engineering, or inference, of gene regulatory networks, with an interest in downstream drug repositioning in the Sonnhammer Lab at SciLifeLab in conjunction with Torbjörn Nordling at National Cheng Kung University

Are you sure you want to do that?

Cancel Yes, delete it
Open source Sep 2016 → Feb 2018 (1 year, 6 months)

we have developed a method called nested bootstrapping, which applies a bootstrapping protocol to GRN inference, and by repeated bootstrap runs assesses the stability of the estimated support values. To translate bootstrap support values to false discovery rates we run the same pipeline with shuffled data as input. This provides a general method to control the false discovery rate of GRN inference that can be applied to any setting of inference parameters, noise level, or data property. We evaluated nested bootstrapping on a simulated dataset spanning a range of such properties, using the LASSO, Least Squares, and RNI inference methods. An improved inference accuracy was observed in almost all situations. The method is part of the GeneSPIDER package, which was also used for generating the simulated networks and data, as well as running and analyzing the inferences.

we have developed a method called nested bootstrapping, which applies a bootstrapping protocol to GRN inference, and by repeated bootstrap runs assesses the stability of the estimated support values. To translate bootstrap support values to false discovery rates we run the same pipeline with shuffled data as input. This provides a general method to control the false discovery rate of GRN inference that can be applied to any setting of inference parameters, noise level, or data property. We evaluated nested bootstrapping on a simulated dataset spanning a range of such properties, using the LASSO, Least Squares, and RNI inference methods. An improved inference accuracy was observed in almost all situations. The method is part of the GeneSPIDER package, which was also used for generating the simulated networks and data, as well as running and analyzing the inferences.

Are you sure you want to do that?

Cancel Yes, delete it
Feature or Apps Aug 2017

Visualization and analytics for post-network inference via NestBoot

Visualization and analytics for post-network inference via NestBoot

Are you sure you want to do that?

Cancel Yes, delete it
Open source May 2014 → May 2016 (2 years, 1 month)

nference of gene regulatory networks (GRNs) is a central goal in systems biology. It is therefore important to evaluate the accuracy of GRN inference methods in the light of network and data properties. Although several packages are available for modelling, simulate, and analyse GRN inference, they offer limited control of network topology together with system dynamics, experimental design, data properties, and noise characteristics. Independent control of these properties in simulations is key to drawing conclusions about which inference method to use in a given condition and what performance to expect from it, as well as to obtain properties representative of real biological systems.

nference of gene regulatory networks (GRNs) is a central goal in systems biology. It is therefore important to evaluate the accuracy of GRN inference methods in the light of network and data properties. Although several packages are available for modelling, simulate, and analyse GRN inference, they offer limited control of network topology together with system dynamics, experimental design, data properties, and noise characteristics. Independent control of these properties in simulations is key to drawing conclusions about which inference method to use in a given condition and what performance to expect from it, as well as to obtain properties representative of real biological systems.

Are you sure you want to do that?

Cancel Yes, delete it
Open source Jan 2015 → Aug 2015 (8 months)

M.Sc. thesis project

principle architect

M.Sc. thesis project

principle architect

Are you sure you want to do that?

Cancel Yes, delete it
Education Jan 2012 → Jun 2015
M.Sc. Bioinformatics, The Ohio State University

Studied and worked with interest in drug repositioning, with projects investigating primary bladder and lung cancer samples. Thesis: Gene Co-Expression Network Mining Approach for Differential Expression Analysis.

Studied and worked with interest in drug repositioning, with projects investigating primary bladder and lung cancer samples. Thesis: Gene Co-Expression Network Mining Approach for Differential Expression Analysis.

Are you sure you want to do that?

Cancel Yes, delete it
Position May 2013 → Sep 2014 (1 year, 5 months)
Bioinformatics Analyst at Elevada

Remote testing and data analysis and extraction using novel web application with R back-end

Remote testing and data analysis and extraction using novel web application with R back-end

Recommended reading

by Nautilus

Ask any biologist—sex seems like a waste. It’s costly: Think of the enormous energy that goes into producing a peacock’s spectacular…

Ask any biologist—sex seems like a waste. It’s costly: Think of the enormous energy that goes into producing a peacock’s spectacular…

Donald J. Trump, as he is happy to tell anyone who will listen for five seconds, is wealthy. Although he has yet to provide the tax returns that would tell us exactly how much he’s worth, he reminds voters again and again: “I’m really rich.” He said as much when he announced his campaign.

Donald J. Trump, as he is happy to tell anyone who will listen for five seconds, is wealthy. Although he has yet to provide the tax returns that would tell us exactly how much he’s worth, he reminds voters again and again: “I’m really rich.” He said as much when he announced his campaign.

Daniel C. Morgan

Stockholm, Sweden http://DanielCMorgan.com

Technical Skills

Likes: python matlab r plotly ggplot2 pytorch

Experience

May 2013 → Sep 2014 Bioinformatics Analyst Elevada
r

Remote testing and data analysis and extraction using novel web application with R back-end

Education

2015 → 2019 Ph.D. Systems Biology Stockholm University
matlab, python, sirna, crispri, abb-control-systems

I am working on several projects surrounding the reverse engineering, or inference, of gene regulatory networks, with an interest in downstream drug repositioning in the Sonnhammer Lab at SciLifeLab in conjunction with Torbjörn Nordling at National Cheng Kung University

Jan 2012 → Jun 2015 M.Sc. Bioinformatics The Ohio State University
network-mining

Studied and worked with interest in drug repositioning, with projects investigating primary bladder and lung cancer samples. Thesis: Gene Co-Expression Network Mining Approach for Differential Expression Analysis.

Projects & Interests

Sep 2016 → Feb 2018 NestBoot https://bitbucket.org/sonnhammergrni/genespider/src/NB/%2BMethods/NestBoot.m
matlab, bootstrapping, linearmodels

we have developed a method called nested bootstrapping, which applies a bootstrapping protocol to GRN inference, and by repeated bootstrap runs assesses the stability of the estimated support values. To translate bootstrap support values to false discovery rates we run the same pipeline with shuffled data as input. This provides a general method to control the false discovery rate of GRN inference that can be applied to any setting of inference parameters, noise level, or data property. We evaluated nested bootstrapping on a simulated dataset spanning a range of such properties, using the LASSO, Least Squares, and RNI inference methods. An improved inference accuracy was observed in almost all situations. The method is part of the GeneSPIDER package, which was also used for generating the simulated networks and data, as well as running and analyzing the inferences.

May 2014 → May 2016 GeneSPIDER https://bitbucket.org/sonnhammergrni/genespider/src/master/
matlab, gnuplot

nference of gene regulatory networks (GRNs) is a central goal in systems biology. It is therefore important to evaluate the accuracy of GRN inference methods in the light of network and data properties. Although several packages are available for modelling, simulate, and analyse GRN inference, they offer limited control of network topology together with system dynamics, experimental design, data properties, and noise characteristics. Independent control of these properties in simulations is key to drawing conclusions about which inference method to use in a given condition and what performance to expect from it, as well as to obtain properties representative of real biological systems.

Jan 2015 → Aug 2015 localMax-eQCM https://github.com/dcbonline/localMax-eQCM
matlab

M.Sc. thesis project

principle architect

Apps & Software

Aug 2017 GeneSpiderNet https://dcolin.shinyapps.io/GSnetApp/
shiny, r-plotly, cytoscape.js, ggplot2

Visualization and analytics for post-network inference via NestBoot

Readings

Blood Oil: Tyrants, Violence, and the Rules that Run the World Leif Wenar http://www.amazon.com/Blood-Oil-Tyrants-Violence-Rules/dp/0190262923
Sustainable Energy - Without the Hot Air David JC MacKay http://www.amazon.com/Sustainable-Energy-Without-Hot-Air/dp/0954452933
Darwin, God and the Meaning of Life: How Evolutionary Theory Undermines Everything You Thought You Knew Steve Stewart-Williams http://www.amazon.com/Darwin-God-Meaning-Life-Evolutionary/dp/0521762782
Sex Seems Like a Waste—So Why Do So Many Creatures Need It to Reproduce? Nautilus http://nautil.us/issue/34/adaptation/sex-is-a-coping-mechanism

Ask any biologist—sex seems like a waste. It’s costly: Think of the enormous energy that goes into producing a peacock’s spectacular…

What’s More American Than Inheriting a Fortune? http://www.nytimes.com/2016/03/28/opinion/campaign-stops/whats-more-american-than-inheriting-a-fortune.html

Donald J. Trump, as he is happy to tell anyone who will listen for five seconds, is wealthy. Although he has yet to provide the tax returns that would tell us exactly how much he’s worth, he reminds voters again and again: “I’m really rich.” He said as much when he announced his campaign.

Tools

Favorite Editor: Sublime, vim