Research on the Professional Construction of Materials Forming and Control Engineering from the Perspective of Artificial Intelligence—Taking Shenyang Aerospace University as an Example [PDF]
杰 王
openalex +1 more source
Autophagosome marker, LC3, is released extracellularly via several distinct pathways
This study establishes a novel HiBiT‐tagging system for ultrasensitive detection of LC3, revealing multiple pathways for its extracellular secretion. It demonstrates that LC3 is released via both autophagy‐dependent and ‐independent mechanisms, including a novel route for nonlipidated LC3‐I.
Koki Saito +3 more
wiley +1 more source
Improving transient analysis technology for aircraft structures [PDF]
Aircraft dynamic analyses are demanding of computer simulation capabilities. The modeling complexities of semi-monocoque construction, irregular geometry, high-performance materials, and high-accuracy analysis are present.
Chargin, Mladen, Melosh, R. J.
core +1 more source
What factors make for an effective digital learning tool in Higher Education? This systematic review identifies elements of a digital tool that published examples reveal to be features of an engaging and impactful digital tool. A systematic literature search yielded 25 research papers for analysis.
Akmal Arzeman +4 more
wiley +1 more source
Circular economy transition barriers in the construction and demolition sector. [PDF]
Alzara M +3 more
europepmc +1 more source
The Quality Education for Engineering Graphics Teaching Material Construction [PDF]
Rong Zhang
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Application to Industrial Use (2) Civil Engineering and Construction Materials
Tomokazu Ise
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We established a spheroid coculture system enabling viable Porphyromonas gingivalis–HNSCC interactions under normoxic conditions. Inhibition of LATS1/2 maintains tumor cells in an undifferentiated state, which may promote spheroid growth and create a more permissive environment for bacterial persistence.
Yurika Nakajima +4 more
wiley +1 more source
Correction: Yuan et al. Machine Learning Prediction Models to Evaluate the Strength of Recycled Aggregate Concrete. <i>Materials</i> 2022, <i>15</i>, 2823. [PDF]
Yuan X +6 more
europepmc +1 more source

