Showing 701 - 720 results of 148,764 for search '(( 5 ((nn decrease) OR (mean decrease)) ) OR ( 10 ((we decrease) OR (a decrease)) ))', query time: 0.61s Refine Results
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    Supplementary Material for: SGLT2 inhibitors decrease overhydration and proteasuria in patients with chronic kidney disease: a longitudinal observational study by Schork A. (17795387)

    Published 2024
    “…Median glucosuria increased to 14 (10-19) g/g creatinine. At baseline, patients displayed overhydration (OH) with + 0.4 (-0.2 – 2.2) L/1.73m² which decreased by 0.5 (0.1 – 1.2) L/1.73m² after 6 months. …”
  18. 718

    Supplementary Material for: SGLT2 inhibitors decrease overhydration and proteasuria in patients with chronic kidney disease: a longitudinal observational study by Schork A. (17795387)

    Published 2024
    “…Median glucosuria increased to 14 (10-19) g/g creatinine. At baseline, patients displayed overhydration (OH) with + 0.4 (-0.2 – 2.2) L/1.73m² which decreased by 0.5 (0.1 – 1.2) L/1.73m² after 6 months. …”
  19. 719

    Detailed information of the observation datasets. by Weidong Ji (129916)

    Published 2025
    “…On longer time scales (6–24 hours), the score and correlation between ERA5 and observations further increased, while the centered root-mean-square error (CRMSE) and standard deviation decrease. 4) Hourly wind data with a regular spatial distribution in ERA5 reanalysis provides valuable information for further detailed research on meteorology or renewable energy perspectives, but some inherent shortcomings should be considered.…”
  20. 720

    General technical specification for GW154/6700. by Weidong Ji (129916)

    Published 2025
    “…On longer time scales (6–24 hours), the score and correlation between ERA5 and observations further increased, while the centered root-mean-square error (CRMSE) and standard deviation decrease. 4) Hourly wind data with a regular spatial distribution in ERA5 reanalysis provides valuable information for further detailed research on meteorology or renewable energy perspectives, but some inherent shortcomings should be considered.…”