Search alternatives:
significantly predicted » significantly reduced (Expand Search), significantly reduce (Expand Search), significant predictor (Expand Search)
predicted processing » predicted proteins (Expand Search), product processing (Expand Search), predicted pressure (Expand Search)
increase decrease » increased release (Expand Search)
significantly predicted » significantly reduced (Expand Search), significantly reduce (Expand Search), significant predictor (Expand Search)
predicted processing » predicted proteins (Expand Search), product processing (Expand Search), predicted pressure (Expand Search)
increase decrease » increased release (Expand Search)
-
101
-
102
-
103
-
104
-
105
-
106
ATGL-1 levels increase and lipid droplets decrease in response to <i>N. parisii</i> infection.
Published 2025Subjects: -
107
-
108
Significance analysis results.
Published 2025“…<div><p>Amid substantial capital influx and the rapid evolution of online user groups, the increasing complexity of user behavior poses significant challenges to cybersecurity, particularly in the domain of vulnerability prediction. …”
-
109
Tree density decreases with increasing percent disturbance in upper montane forests.
Published 2019“…<p>Description: Tree density (ha<sup>-1</sup>) decreased significantly with increasing percent disturbance in the upper montane forest sites, however; density did not vary significantly with disturbance in the montane sites.…”
-
110
-
111
-
112
-
113
-
114
-
115
-
116
-
117
OS correlation of differentially expressed miRNAs (> 2-fold increase or decrease in HCC vs normal livers), according to KMP; miRNAs in bold are significantly correlated with OS.
Published 2024“…<p>OS correlation of differentially expressed miRNAs (> 2-fold increase or decrease in HCC vs normal livers), according to KMP; miRNAs in bold are significantly correlated with OS.…”
-
118
-
119
Comprehensive prediction process of shape errors.
Published 2025“…Following model updates with measured data, the accumulated prediction error rapidly decreases. The proposed prediction method for shape errors during pushing exhibits high accuracy and versatility in similar projects, significantly reducing time spent on manual error handling and minimizing computational inaccuracies.…”
-
120