Showing 9,321 - 9,340 results of 31,172 for search '(( 2 step decrease ) OR ( 50 ((((we decrease) OR (mean decrease))) OR (a decrease)) ))', query time: 1.08s Refine Results
  1. 9321
  2. 9322

    TF function predicted from regulatory parameters <i>α</i> and <i>β</i>. by Md Zulfikar Ali (11965544)

    Published 2024
    “…For these TFs, we know the primary mode of regulation is through strong destabilization [<a href="http://www.ploscompbiol.org/article/info:doi/10.1371/journal.pcbi.1012194#pcbi.1012194.ref049" target="_blank">49</a>] and strong stabilization [<a href="http://www.ploscompbiol.org/article/info:doi/10.1371/journal.pcbi.1012194#pcbi.1012194.ref050" target="_blank">50</a>], respectively.…”
  3. 9323

    CavA and Vfr are regulators of global intracellular c-di-GMP levels in <i>A. baumannii</i>. by Lyuboslava G. Harkova (19557062)

    Published 2024
    “…Deletion of <i>cavA</i> reduced c-di-GMP levels by 66% (<b>A</b>) while disruption of <i>vfr</i> decreased them by 49% (<b>B</b>). …”
  4. 9324
  5. 9325

    2P excitation of DiO/DPA enables AP detection in a L5 pyramidal cell. A. by Ann E. Fink (312543)

    Published 2013
    “…Fluorescence traces were not inverted. <b>C</b>. Average of 50 trials showing fAPs and a DiO/DPA optical response to a 6.8 mV depolarization. …”
  6. 9326

    Multiple Knee Points in the Degradation of a Commercial Lithium-ion Battery: A Case Study of the NCM/Graphite System (Supporting Information) by Yui FUJIHARA (17772971)

    Published 2025
    “…Further studies are required to continuously track changes over time and elucidate the source of knee points during operation. Herein, we conduct degradation cycle tests using a large-format commercial lithium-ion battery (>50 Wh, LiNi<sub>0.5</sub>Co<sub>0.2</sub>Mn<sub>0.3</sub>O<sub>2</sub>/graphite) and analyze the knee points during cycling by employing electrochemical impedance spectroscopy (EIS) at different states of charge (SOCs) to track the degradation state over time, in combination with differential analysis and post-mortem methods. …”
  7. 9327

    Zpg does not function as a hemichannel. by Yanina-Yasmin Pesch (13884117)

    Published 2022
    “…<p>(A-D) <i>zpg</i> mutants rescued with genomic rescue constructs in which one or more cysteine residues were mutated, hindering the formation of gap junctions, have rudimentary testes and no Zpg is detected by antibody staining (green in A-D; single channels depicted in grey in A’-D’; wt in A-A’; <i>zpg</i> C6S, B-B’:, <i>zpg</i> C145S, C-C’; <i>zpg</i> C236S, D-D’). …”
  8. 9328

    Characteristics of Gasless Combustion of Core–Shell Al@NiO Microparticles with Boosted Exothermic Performance by Shina Maini (19413980)

    Published 2024
    “…The PM composite was not able to be ignited at all by a 5 W laser, while the core–shell counterpart ignited at 2.55 ms and was completely combusted within 6.50 ms accompanying a violent impulse.…”
  9. 9329

    Characteristics of Gasless Combustion of Core–Shell Al@NiO Microparticles with Boosted Exothermic Performance by Shina Maini (19413980)

    Published 2024
    “…The PM composite was not able to be ignited at all by a 5 W laser, while the core–shell counterpart ignited at 2.55 ms and was completely combusted within 6.50 ms accompanying a violent impulse.…”
  10. 9330

    Maintenance of weight loss or stability in subjects with obesity: a retrospective longitudinal analysis of a real-world population by Maral DerSarkissian (504144)

    Published 2018
    “…</p> <p><b>Methods:</b> A retrospective observational longitudinal study of subjects with obesity was conducted using the General Electric Centricity electronic medical record database. …”
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  12. 9332

    IG feature selection process. by Ahmed Muqdad Alnasrallah (21647492)

    Published 2025
    “…The proposed model employs Information Gain (IG) and Recursive Feature Elimination (RFE) in parallel to select the top 50% of features, from which intersection and union subsets are created, followed by a deep autoencoder (DAE) to reduce dimensionality without losing important data. …”
  13. 9333

    RFE feature selection process. by Ahmed Muqdad Alnasrallah (21647492)

    Published 2025
    “…The proposed model employs Information Gain (IG) and Recursive Feature Elimination (RFE) in parallel to select the top 50% of features, from which intersection and union subsets are created, followed by a deep autoencoder (DAE) to reduce dimensionality without losing important data. …”
  14. 9334

    CICID2017 dataset information. by Ahmed Muqdad Alnasrallah (21647492)

    Published 2025
    “…The proposed model employs Information Gain (IG) and Recursive Feature Elimination (RFE) in parallel to select the top 50% of features, from which intersection and union subsets are created, followed by a deep autoencoder (DAE) to reduce dimensionality without losing important data. …”
  15. 9335

    Shows the basic architecture of an autoencoder. by Ahmed Muqdad Alnasrallah (21647492)

    Published 2025
    “…The proposed model employs Information Gain (IG) and Recursive Feature Elimination (RFE) in parallel to select the top 50% of features, from which intersection and union subsets are created, followed by a deep autoencoder (DAE) to reduce dimensionality without losing important data. …”
  16. 9336

    Architecture of deep neural networks. by Ahmed Muqdad Alnasrallah (21647492)

    Published 2025
    “…The proposed model employs Information Gain (IG) and Recursive Feature Elimination (RFE) in parallel to select the top 50% of features, from which intersection and union subsets are created, followed by a deep autoencoder (DAE) to reduce dimensionality without losing important data. …”
  17. 9337

    Proposed model framework. by Ahmed Muqdad Alnasrallah (21647492)

    Published 2025
    “…The proposed model employs Information Gain (IG) and Recursive Feature Elimination (RFE) in parallel to select the top 50% of features, from which intersection and union subsets are created, followed by a deep autoencoder (DAE) to reduce dimensionality without losing important data. …”
  18. 9338

    WUSTL-EHMS-2020 dataset information. by Ahmed Muqdad Alnasrallah (21647492)

    Published 2025
    “…The proposed model employs Information Gain (IG) and Recursive Feature Elimination (RFE) in parallel to select the top 50% of features, from which intersection and union subsets are created, followed by a deep autoencoder (DAE) to reduce dimensionality without losing important data. …”
  19. 9339

    Effects of GSI treatment on MAPK, PI3K/AKT and NF-κB pathway activation in LPS/IC-activated macrophages. by Wipawee Wongchana (5367968)

    Published 2018
    “…The arrows indicate cells with decreased or no p50 nuclear translocation (green). …”
  20. 9340