Showing 11,741 - 11,760 results of 100,160 for search '(( 5 ((a decrease) OR (mean decrease)) ) OR ( 50 ((nn decrease) OR (teer decrease)) ))', query time: 1.41s Refine Results
  1. 11741
  2. 11742
  3. 11743
  4. 11744

    SclB regulates the oxidative stress response in <i>A</i>. <i>nidulans</i> in the presence of H<sub>2</sub>O<sub>2</sub>. by Karl G. Thieme (5558369)

    Published 2018
    “…<p>A) Conidiospores of Δ<i>sclB</i>, Δ<i>vosA</i> and Δvos<i>A</i>Δ<i>sclB</i> strains show decreased survival in the presence of H<sub>2</sub>O<sub>2</sub> compared to spores of wildtype (WT), <i>sclB</i> comp and <i>sclB</i> OE strains. …”
  5. 11745

    NbVO<sub>5</sub> Mesoporous Thin Films by Evaporation Induced Micelles Packing: Pore Size Dependence of the Mechanical Stability upon Thermal Treatment and Li Insertion/Extraction by Natacha Krins (2066203)

    Published 2011
    “…In order to investigate the potentialities and limits of the soft-templating approach in the case of complex transition metal oxide networks, we deliberately selected a “difficult” compound: NbVO<sub>5</sub> was chosen because it combines a challenging synthesis with reported severe structural distortions during the first lithium insertion in the bulk material. …”
  6. 11746
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  8. 11748

    CircMED12L Protects Against Hydrogen Peroxide-induced Apoptotic and Oxidative Injury in Human Lens Epithelial Cells by miR-34a-5p/ALCAM axis by Baohua Wu (2124334)

    Published 2022
    “…MiR-34a-5p was increased, while ALCAM was decreased in ARC patients and H<sub>2</sub>O<sub>2</sub>-induced HLECs. …”
  9. 11749
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  13. 11753

    VEGF and sFlt-1 mutants exhibit changes in stem cell marker gene expression by RT-qPCR. by Christopher R. Schlieve (3179439)

    Published 2016
    “…<p>(A) VEGF mutants demonstrated 0.55-fold reduction in Lgr5 expression compared to littermates (*p = 0.04). …”
  14. 11754
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  16. 11756

    Deciphering Nonbioavailable Substructures Improves the Bioavailability of Antidepressants by Serotonin Transporter by Zhi-Zheng Wang (6056033)

    Published 2023
    “…Here, we proposed the concept of “nonbioavailable substructures”, referring to substructures that are unfavorable to bioavailability. A machine learning model was developed to identify nonbioavailable substructures based on their molecular properties and shows the accuracy of 83.5%. …”
  17. 11757

    Deciphering Nonbioavailable Substructures Improves the Bioavailability of Antidepressants by Serotonin Transporter by Zhi-Zheng Wang (6056033)

    Published 2023
    “…Here, we proposed the concept of “nonbioavailable substructures”, referring to substructures that are unfavorable to bioavailability. A machine learning model was developed to identify nonbioavailable substructures based on their molecular properties and shows the accuracy of 83.5%. …”
  18. 11758

    Deciphering Nonbioavailable Substructures Improves the Bioavailability of Antidepressants by Serotonin Transporter by Zhi-Zheng Wang (6056033)

    Published 2023
    “…Here, we proposed the concept of “nonbioavailable substructures”, referring to substructures that are unfavorable to bioavailability. A machine learning model was developed to identify nonbioavailable substructures based on their molecular properties and shows the accuracy of 83.5%. …”
  19. 11759

    Deciphering Nonbioavailable Substructures Improves the Bioavailability of Antidepressants by Serotonin Transporter by Zhi-Zheng Wang (6056033)

    Published 2023
    “…Here, we proposed the concept of “nonbioavailable substructures”, referring to substructures that are unfavorable to bioavailability. A machine learning model was developed to identify nonbioavailable substructures based on their molecular properties and shows the accuracy of 83.5%. …”
  20. 11760

    Deciphering Nonbioavailable Substructures Improves the Bioavailability of Antidepressants by Serotonin Transporter by Zhi-Zheng Wang (6056033)

    Published 2023
    “…Here, we proposed the concept of “nonbioavailable substructures”, referring to substructures that are unfavorable to bioavailability. A machine learning model was developed to identify nonbioavailable substructures based on their molecular properties and shows the accuracy of 83.5%. …”