About this item
- Title
- Biosensing-by-Learning Direct Targeting Strategy for Enhanced Tumor Sensitization
- Content partner
- University of Waikato
- Collection
- ResearchCommons@Waikato
- Description
We propose a novel iterative-optimization-inspired direct targeting strategy (DTS) for smart nanosystems, which harness swarms of externally manipulable nanoswimmers assembled by magnetic nanoparticles (MNPs) for knowledge-aided tumor sensitization and targeting. We aim to demonstrate through computational experiments that the proposed DTS can significantly enhance the accumulation of MNPs in the tumor site, which serve as a contrast agent in various medical imaging modalities, by using the s...
- Format
- Research paper
- Research format
- Journal article
- Date created
- 2019
- Creator
- Chen, Yifan / Ali, Muhammad / Shi, Shaolong / Cheang, U. Kei
- URL
- https://hdl.handle.net/10289/13035
- Related subjects
- Science & Technology / Life Sciences & Biomedicine / Biochemical Research Methods / Nanoscience & Nanotechnology / Biochemistry & Molecular Biology / Science & Technology - Other Topics / Direct targeting strategy / biosensing-by-learning / tumor-triggered biological gradients / externally manipulable smart nanosystems / magnetic nanoswimmers / iterative optimization / natural computing / contrast-enhanced medical imaging / DRUG-DELIVERY / BLOOD-FLOW / DIELECTRIC-PROPERTIES / IN-VIVO / NANOPARTICLES / MICROENVIRONMENT / AMPLIFICATION / ANGIOGENESIS / SCALE
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This is an author’s submitted version of an article published in the IEEE Transactions on Nonobioscience. © 2019 IEEE. Personal use of this material is permitted. However, permission to reprint/republish this material for advertising or promotional purposes or for creating new collective works for resale or redistribution to servers or lists, or to reuse any copyrighted component of this work in other works must be obtained from the IEEE.
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Report this itemDigitalNZ brings together more than 30 million items from institutions so that they are easy to find and use. This information is the best information we could find on this item. This item was added on 26 October 2019, and updated 10 March 2024.
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