Showing 16,881 - 16,900 results of 60,812 for search '(( 50 ((ms decrease) OR (a decrease)) ) OR ( 5 ((we decrease) OR (nn decrease)) ))', query time: 1.37s Refine Results
  1. 16881

    Model selection based on best fit. by Angelina Mageni Lutambi (22097223)

    Published 2025
    “…Enhanced vegetation index increased the likelihood of malaria incidence (ORs ranging from 5.28; 95% CI: 4.96,5.61) in 2000 to 6.22; 95% CI: 5.91,6.55) in 2020 and higher aridity was associated with higher malaria incidence (ORs: 1.11; 95% CI: 1.10,1.13) in 2010 and 1.07; 95% CI: 1.06,1.07) in 2020). …”
  2. 16882

    Straightforward and Ultrastable Surface Modification of Microfluidic Chips with Norepinephrine Bitartrate Improves Performance in Immunoassays by Haiying Shen (4906882)

    Published 2018
    “…Surface modification is stable for at least 2.5 years, allowing for autoinjection of aqueous solution into the channels. …”
  3. 16883

    The effect of cathodal tDCS on fear extinction: A cross-measures study by Ana Ganho-Ávila (7400609)

    Published 2019
    “…</p><p>Methods</p><p>We implemented a fear conditioning paradigm whereby 41 healthy women (mean age = 20.51 ± 5.0) were assigned to either cathodal tDCS (n = 27) or sham tDCS (n = 16). …”
  4. 16884
  5. 16885
  6. 16886
  7. 16887

    Structural Optimization and Pharmacological Evaluation of Inhibitors Targeting Dual-Specificity Tyrosine Phosphorylation-Regulated Kinases (DYRK) and CDC-like kinases (CLK) in Glio... by Qingqing Zhou (3801922)

    Published 2017
    “…The most potent inhibitors (IC<sub>50</sub> ≤ 50 nM) significantly decreased viability, clonogenic survival, migration, and invasion of glioblastoma cells. …”
  8. 16888
  9. 16889
  10. 16890
  11. 16891

    The age distribution of the patients. by Ruijie Wang (5989841)

    Published 2024
    “…On the XJTU-EC dataset, CM-UNet achieves an excellent segmentation performance, and ECRNet obtains an accuracy of 98.50%, a precision of 99.32% and a sensitivity of 97.67% on the test set, which outperforms other competitive classical models. …”
  12. 16892

    Comparison experiments. by Ruijie Wang (5989841)

    Published 2024
    “…On the XJTU-EC dataset, CM-UNet achieves an excellent segmentation performance, and ECRNet obtains an accuracy of 98.50%, a precision of 99.32% and a sensitivity of 97.67% on the test set, which outperforms other competitive classical models. …”
  13. 16893

    External validation comparison results. by Ruijie Wang (5989841)

    Published 2024
    “…On the XJTU-EC dataset, CM-UNet achieves an excellent segmentation performance, and ECRNet obtains an accuracy of 98.50%, a precision of 99.32% and a sensitivity of 97.67% on the test set, which outperforms other competitive classical models. …”
  14. 16894

    Patient characteristics. by Ruijie Wang (5989841)

    Published 2024
    “…On the XJTU-EC dataset, CM-UNet achieves an excellent segmentation performance, and ECRNet obtains an accuracy of 98.50%, a precision of 99.32% and a sensitivity of 97.67% on the test set, which outperforms other competitive classical models. …”
  15. 16895

    Comparison with baseline methods. by Ruijie Wang (5989841)

    Published 2024
    “…On the XJTU-EC dataset, CM-UNet achieves an excellent segmentation performance, and ECRNet obtains an accuracy of 98.50%, a precision of 99.32% and a sensitivity of 97.67% on the test set, which outperforms other competitive classical models. …”
  16. 16896

    The details of the channel attention module. by Ruijie Wang (5989841)

    Published 2024
    “…On the XJTU-EC dataset, CM-UNet achieves an excellent segmentation performance, and ECRNet obtains an accuracy of 98.50%, a precision of 99.32% and a sensitivity of 97.67% on the test set, which outperforms other competitive classical models. …”
  17. 16897

    Ablation experiments. by Ruijie Wang (5989841)

    Published 2024
    “…On the XJTU-EC dataset, CM-UNet achieves an excellent segmentation performance, and ECRNet obtains an accuracy of 98.50%, a precision of 99.32% and a sensitivity of 97.67% on the test set, which outperforms other competitive classical models. …”
  18. 16898

    Pathological diagnosis. by Ruijie Wang (5989841)

    Published 2024
    “…On the XJTU-EC dataset, CM-UNet achieves an excellent segmentation performance, and ECRNet obtains an accuracy of 98.50%, a precision of 99.32% and a sensitivity of 97.67% on the test set, which outperforms other competitive classical models. …”
  19. 16899

    The details of ECRNet. by Ruijie Wang (5989841)

    Published 2024
    “…On the XJTU-EC dataset, CM-UNet achieves an excellent segmentation performance, and ECRNet obtains an accuracy of 98.50%, a precision of 99.32% and a sensitivity of 97.67% on the test set, which outperforms other competitive classical models. …”
  20. 16900