Hill, Steven M. ; Heiser, Laura M. ; Cokelaer, Thomas ; Unger, Michael ; Nesser, Nicole K. ; Carlin, Daniel E. ; Zhang, Yang ; Sokolov, Artem ; Paull, Evan O. ; Wong, Chris K. ; Graim, Kiley ; Bivol, Adrian ; Wang, Haizhou ; Zhu, Fan ; Afsari, Bahman ; Danilova, Ludmila V. ; Favorov, Alexander V. ; Lee, Wai Shing ; Taylor, Dane ; Hu, Chenyue W. ; Long, Byron L. ; Noren, David P. ; Bisberg, Alexander J. ; Mills, Gordon B. ; Gray, Joe W. ; Kellen, Michael ; Norman, Thea ; Friend, Stephen ; Qutub, Amina A. ; Fertig, Elana J. ; Guan, Yuanfang ; Song, Mingzhou ; Stuart, Joshua M. ; Spellman, Paul T. ; Koeppl, Heinz ; Stolovitzky, Gustavo ; Saez-Rodriguez, Julio ; Mukherjee, Sach (2024)
Inferring causal molecular networks: empirical assessment through a community-based effort.
In: Nature Methods, 2016, 13 (4)
doi: 10.26083/tuprints-00027016
Article, Secondary publication, Publisher's Version
Item Type: | Article |
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Type of entry: | Secondary publication |
Title: | Inferring causal molecular networks: empirical assessment through a community-based effort |
Language: | English |
Date: | 22 April 2024 |
Place of Publication: | Darmstadt |
Year of primary publication: | February 2016 |
Place of primary publication: | London |
Publisher: | Nature |
Journal or Publication Title: | Nature Methods |
Volume of the journal: | 13 |
Issue Number: | 4 |
DOI: | 10.26083/tuprints-00027016 |
Corresponding Links: | |
Origin: | Secondary publication service |
Abstract: | It remains unclear whether causal, rather than merely correlational, relationships in molecular networks can be inferred in complex biological settings. Here we describe the HPN-DREAM network inference challenge, which focused on learning causal influences in signaling networks. We used phosphoprotein data from cancer cell lines as well as in silico data from a nonlinear dynamical model. Using the phosphoprotein data, we scored more than 2,000 networks submitted by challenge participants. The networks spanned 32 biological contexts and were scored in terms of causal validity with respect to unseen interventional data. A number of approaches were effective, and incorporating known biology was generally advantageous. Additional sub-challenges considered time-course prediction and visualization. Our results suggest that learning causal relationships may be feasible in complex settings such as disease states. Furthermore, our scoring approach provides a practical way to empirically assess inferred molecular networks in a causal sense. |
Status: | Publisher's Version |
URN: | urn:nbn:de:tuda-tuprints-270162 |
Classification DDC: | 500 Science and mathematics > 570 Life sciences, biology 600 Technology, medicine, applied sciences > 621.3 Electrical engineering, electronics |
Divisions: | 18 Department of Electrical Engineering and Information Technology > Self-Organizing Systems Lab |
Date Deposited: | 22 Apr 2024 09:53 |
Last Modified: | 09 Aug 2024 09:51 |
URI: | https://tuprints.ulb.tu-darmstadt.de/id/eprint/27016 |
PPN: | 520435427 |
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