Development of a Machine-Learning-Driven Microneedle Design Methodology for Biological Tissue Grippers
- Authors
- 류제경; 김지엽; 박찬욱; 김해윤; 이득희; 한경원
- Issue Date
- 2026-02-05
- Publisher
- 한국로봇학회
- Citation
- 제21회 한국로봇 종합학술대회
- Abstract
- Microneedles offer promising capabilities not only for minimally invasive drug delivery but also as effective bio-tissue grippers. However, achieving strong tissue fixation while minimizing tissue damage during insertion remains a significant challenge. In this study, we propose a novel microneedle geometry optimized for 3D printing, designed to maximize the Pull-Out-to-Penetration Ratio through a machine-learning-based optimization framework combined with finite element analysis. Experimental results show that the optimized geometry achieves a six-fold improvement in the objective metric relative to conventional conical designs, demonstrating enhanced tissue fixation while simultaneously reducing insertion-induced damage. This approach highlights the potential for customizable, low-pain microneedle designs across a broad range of biomedical applications.
- ISSN
- 1975-6291
- URI
- https://pubs.kist.re.kr/handle/201004/154396
- Appears in Collections:
- KIST Conference Paper > 2026
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