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point decrease » point increase (Expand Search)
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point decrease » point increase (Expand Search)
nn decrease » _ decrease (Expand Search), mean decrease (Expand Search), gy decreased (Expand Search)
e decrease » _ decrease (Expand Search), _ decreased (Expand Search), _ decreases (Expand Search)
a decrease » _ decrease (Expand Search), _ decreased (Expand Search), _ decreases (Expand Search)
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WNT3 decreases the GCP proliferation marker <i>Atoh1</i> and increases the GCP differentiation marker PAX6.
Published 2013“…<p>(<i>A</i>) WNT3 decreased <i>Atoh1</i> mRNA levels after 6 h of treatment (Con=1; WNT3: <i>Atoh1</i>=0.52±0.06). …”
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725
Stabilization of Hif-1α at early stages of infection leads to a decrease in bacterial burden.
Published 2013“…<p>(A) Quantification of bacterial burden by fluorescent pixel count after DMOG treatment between 5 and 6 dpi. …”
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726
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727
<i>NAB3</i> reduces the level of <i>IMD2</i> CUT terminator readthrough product from a reporter and native <i>IMD2</i> CUT and readthrough RNA, but <i>NAB3</i> does not significant...
Published 2015“…As a control, <i>AIR1</i> significantly decreases Pol II occupancy downstream of the <i>IMD2</i> CUT in <i>air1-C178R air2</i>Δ cells at Primer Pair 4 and 5 positions compared to <i>air1/2</i> cells containing vector alone (<i>p</i>-value ≤ 0.05), indicating that Air1 significantly affects termination and suggesting that <i>air1/2</i> cells have a termination defect. …”
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728
Image6_Repression of enhancer RNA PHLDA1 promotes tumorigenesis and progression of Ewing sarcoma via decreasing infiltrating T‐lymphocytes: A bioinformatic analysis.TIF
Published 2022“…External validation based on multidimensional online databases and scRNA-seq analysis were used to verify our key findings.</p><p>Results: A six-different-dimension regulatory network was constructed based on 17 DEeRNAs, 29 DETFs, 9 DETGs, 5 immune cells, 24 immune gene sets, and 8 hallmarks of cancer. …”
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