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91探花
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Lilli Freischem (she/her)

Graduate Student - NERC DTP

Sub department

  • Atmospheric, Oceanic and Planetary Physics

Research groups

  • Atmospheric processes
  • Climate processes
lilli.freischem@physics.ox.ac.uk
  • About
  • Teaching
  • Publications

Prediction of gene essentiality using machine learning and genome-scale metabolic models

IFAC-PapersOnLine 55:23 (2022)

Authors:

Lilli J Freischem, Mauricio Barahona, Diego A Oyarz煤n

Abstract:

The identification of essential genes, i.e. those that impair cell survival when deleted, requires large growth assays of knock-out strains. The complexity and cost of such experiments has triggered a growing interest in computational methods for prediction of gene essentiality. In the case of metabolic genes, Flux Balance Analysis (FBA) is widely employed to predict essentiality under the assumption that cells maximize their growth rate. However, this approach assumes that knock-out strains optimize the same objectives as the wild-type, which excludes cases in which deletions cause large physiological changes to meet other objectives for survival. Here, we resolve this limitation with a novel machine learning approach that predicts essentiality directly from wild-type flux distributions. We first project the wild-type FBA solution onto a mass flow graph, a digraph with reactions as nodes and edge weights proportional to the mass transfer between reactions, and then train binary classifiers on the connectivity of graph nodes. We demonstrate the efficacy of this approach using the most complete metabolic model of Escherichia coli, achieving near state-of-the art prediction accuracy for essential genes. Our approach suggests that wild-type FBA solutions contain enough information to predict essentiality, without the need to assume optimality of deletion strains.

nextGEMS: entering the era of kilometer-scale Earth system modeling

Authors:

Hans Segura, Xabier Pedruzo-Bagazgoitia, Philipp Weiss, Sebastian K M眉ller, Thomas Rackow, Junhong Lee, Edgar Dolores-Tesillos, Imme Benedict, Matthias Aengenheyster, Razvan Aguridan, Gabriele Arduini, Alexander J Baker, Jiawei Bao, Swantje Bastin, Eul脿lia Baulenas, Tobias Becker, Sebastian Beyer, Hendryk Bockelmann, Nils Br眉ggemann, Lukas Brunner, Suvarchal K Cheedela, Sushant Das, Jasper Denissen, Ian Dragaud, Piotr Dziekan, Madeleine Ekblom, Jan Frederik Engels, Monika Esch, Richard Forbes, Claudia Frauen, Lilli Freischem, Diego Garc铆a-Maroto, Philipp Geier, Paul Gierz, 脕lvaro Gonz谩lez-Cervera, Katherine Grayson, Matthew Griffith, Oliver Gutjahr, Helmuth Haak, Ioan Hadade, Kerstin Haslehner, Shabeh ul Hasson, Jan Hegewald, Lukas Kluft, Aleksei Koldunov, Nikolay Koldunov, Tobias K枚lling, Shunya Koseki, Sergey Kosukhin, Josh Kousal, Peter Kuma, Arjun U Kumar, Rumeng Li, Nicolas Maury, Maximilian Meindl, Sebastian Milinski, Kristian Mogensen, Bimochan Niraula, Jakub Nowak, Divya Sri Praturi, Ulrike Proske, Dian Putrasahan, Ren茅 Redler, David Santuy, Domokos S谩rm谩ny, Reiner Schnur, Patrick Scholz, Dmitry Sidorenko, Dorian Sp盲t, Birgit S眉tzl, Daisuke Takasuka, Adrian Tompkins, Alejandro Uribe, Mirco Valentini, Menno Veerman, Aiko Voigt, Sarah Warnau, Fabian Wachsmann, Marta Wac艂awczyk, Nils Wedi, Karl-Hermann Wieners, Jonathan Wille, Marius Winkler, Yuting Wu, Florian Ziemen, Janos Zimmermann, Frida A-M Bender, Dragana Bojovic, Sandrine Bony, Simona Bordoni, Patrice Brehmer, Marcus Dengler, Emanuel Dutra, Saliou Faye, Erich Fischer, Chiel van Heerwaarden, Cathy Hohenegger, Heikki J盲rvinen, Markus Jochum, Thomas Jung, Johann H Jungclaus, Noel S Keenlyside, Daniel Klocke, Heike Konow, Martina Klose, Szymon Malinowski, Olivia Martius, Thorsten Mauritsen, Juan Pedro Mellado, Theresa Mieslinger, Elsa Mohino, Hanna Paw艂owska, Karsten Peters-von Gehlen, Abdoulaye Sarr茅, Pajam Sobhani, Philip Stier, Lauri Tuppi, Pier Luigi Vidale, Irina Sandu, Bjorn Stevens

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