Aseel Shomar
Technion – Israel Institute of Technology
7 Papers
4 Citations
Aseel Shomar is an academic researcher from Technion – Israel Institute of Technology. The author has contributed to research in topics: Targeted drug delivery & Drug delivery. The author has an hindex of 3, co-authored 4 publications.
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Papers
The Evolution of Tumor‐Targeted Drug Delivery: From the EPR Effect to Nanoswimmers
Nour Zoabi,Adi Golani-Armon,Assaf Zinger,Maayan Reshef,Zvi Yaari,Dikla Vardi-Oknin,Zohar Shatsberg,Aseel Shomar,Janna Shainsky-Roitman,Avi Schroeder +9 more
TL;DR: Interestingly, sperm may be nature’s best example of a multifunctional, targeted, high-fidelity, self-propelled, delivery system that the authors can learn from.
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Identifying Regulation with Adversarial Surrogates
TL;DR: This work proposes an algorithm, Identifying Regulation with Adversarial Surrogates (IRAS), that receives an array of temporal measurements of the system, and outputs a candidate for the control objective, expressed as a combination of observed variables.
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Local and global features of genetic networks supporting a phenotypic switch.
TL;DR: The results suggest emergent switches can neither be pinpointed to local motifs, nor do they arise as typical properties of random network ensembles, but arise through an interplay between the nature of local interactions, and the core-periphery structure induced by the modularity of the cell.
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Cancer Progression as a Learning Process.
TL;DR: In this article, the authors propose a learning-based approach for cancer adaptation, which is performed at the single cell level by stress-driven exploratory trial-and-error, where a random search for a state that diminishes the stress is performed.
Cooperative stochastic binding and unbinding explain synaptic size dynamics and statistics.
TL;DR: The model points to the potentially fundamental role of cooperativity in dictating synaptic remodeling dynamics and offers a conceptual understanding of these dynamics in terms of central microscopic features and processes.