MetNetComp Database [1] / Minimal gene deletions

Minimal gene deletions for simulation-based growth-coupled production. You can also see maximal gene deletions.


Model : iLB1027_lipid [2].
Target metabolite : cys__L_m
List of minimal gene deletion strategies (Download)

Gene deletion strategy (24 of 25: See next) for growth-coupled production (at least stoichioemetrically feasible)
  Gene deletion size : 22
  Gene deletion: PHATRDRAFT_51092 PHATRDRAFT_800 PHATRDRAFT_54219 PHATRDRAFT_16571 PHATRDRAFT_49601 PHATRDRAFT_26290 PHATRDRAFT_3046 Phatr3_EG02251 PHATRDRAFT_31906 PHATRDRAFT_50742 PHATRDRAFT_19708 Phatr3_EG02361 PHATRDRAFT_44546 PHATRDRAFT_11273 PHATRDRAFT_15140 PHATRDRAFT_20504 Phatr3_EG02569 PHATRDRAFT_21970 PHATRDRAFT_39772 PHATRDRAFT_32849 PHATRDRAFT_draft1517 PHATRDRAFT_28585   (List of alternative genes)
  Computed by: RandTrimGdel [1] (Step 1, Step 2)

When growth rate is maximized,
  Growth Rate : 0.353575 (mmol/gDw/h)
  Minimum Production Rate : 0.029520 (mmol/gDw/h)

Substrate: (mmol/gDw/h)
  EX_photon_e : 1000.000000
  EX_h2o_e : 84.936912
  EX_co2_e : 74.081867
  EX_no3_e : 1.760000
  EX_so4_e : 0.092400
  EX_pi_e : 0.087795
  EX_mg2_e : 0.006319

Product: (mmol/gDw/h)
  EX_o2_e : 82.008923
  SK_for_c : 26.975242
  EX_h_e : 24.995000
  EX_etoh_e : 15.111359
  DM_biomass_c : 0.353575
  Auxiliary production reaction : 0.029520

Visualization
  1. Download JSON file.
  2. Go to Escher site [3].

References
[1] Tamura, T. MetNetComp: Database for minimal and maximal gene deletion strategies for growth-coupled production of genome-scale metabolic networks, IEEE/ACM Transactions on Computational Biology and Bioinformatics, in press.
[2] Norsigian, C. J., Pusarla, N., McConn, J. L., Yurkovich, J. T., Dräger, A., Palsson, B. O., & King, Z. (2020). BiGG Models 2020: multi-strain genome-scale models and expansion across the phylogenetic tree. Nucleic acids research, 48(D1), D402-D406.
[3] King, Z. A., Dräger, A., Ebrahim, A., Sonnenschein, N., Lewis, N. E., & Palsson, B. O. (2015). Escher: a web application for building, sharing, and embedding data-rich visualizations of biological pathways. PLoS computational biology, 11(8), e1004321.


Last updated: 27-Sep-2023
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