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Amalia Hadjitheodorou
Stanford University - Stanford / United States
Engineering & Technology / Bioengineering
AD Scientific Index ID: 5919931
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Amalia Hadjitheodorou's MOST POPULAR ARTICLES
1-)
Efficient front-rear coupling in neutrophil chemotaxis by dynamic myosin II localization Developmental cell 49 (2), 189-205. e6, 2019
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Directional reorientation of migrating neutrophils is limited by suppression of receptor input signaling at the cell rear through myosin II activity Nature Communications 12 (1), 6619, 2021
3-)
Analytical and numerical study of diffusion-controlled drug release from composite spherical matrices Materials Science and Engineering: C 42, 681-690, 2014
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Quantifying diffusion-controlled drug release from spherical devices using Monte Carlo simulations Materials Science and Engineering: C 33 (2), 763-768, 2013
5-)
Quantitative comparison of principal component analysis and unsupervised deep learning using variational autoencoders for shape analysis of motile cells bioRxiv, 2020.06. 26.174474, 2020
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