Duanyu Deng , Lihua Liang , Kaize Su , Han Gu , Xu Wang , Yan Wang , Xiangcun Shang , Wenhuan Huang , Henghui Chen , Xiaoxian Wu , Wing-Leung Wong , Dongli Li , Kun Zhang , Panpan Wu , Keke Wu
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引用次数: 0
Abstract
Diabetic wounds are complex complications characterized by long-term chronic inflammation, vascular damage, and difficulties in healing. Monitoring wound pH can serve as an early warning system for infection risk and enhance wound management by tracking changes in wound pH. In this study, a machine learning-assisted analysis smart hydrogel as wound dressing was developed by utilizing a double cross-linked network hydrogel of gelatin methacrylate (GelMA) and chitosan methacrylate (CMCSMA) as the matrix, a compound of cobalt-gallic acid based metal-phenolic nanoparticles (GACo MPNs) as the active ingredients, and phenol red as the pH indicator. This smart hydrogel exhibits excellent injection performance, shape adaptability and mechanical strength. Besides, a series of in vitro experiments demonstrated the favorable biocompatibility and bioactivity of GelMA/CMCSMAP-GACo hydrogel, encompassing its antibacterial, anti-inflammatory, antioxidant, and angiogenic properties. In vivo experiments show that this hydrogel significantly improved the repair of diabetic wounds in mice. Interestingly, the hydrogel exhibited unique visual pH monitoring properties, which can be seamlessly integrated with a smartphone for image visualization and further enable reliable wound pH assessment using machine learning algorithms to enhance wound management based on wound pH. Overall, this study presented a comprehensive regenerative strategy for the management of diabetic wounds.
期刊介绍:
Nano Today is a journal dedicated to publishing influential and innovative work in the field of nanoscience and technology. It covers a wide range of subject areas including biomaterials, materials chemistry, materials science, chemistry, bioengineering, biochemistry, genetics and molecular biology, engineering, and nanotechnology. The journal considers articles that inform readers about the latest research, breakthroughs, and topical issues in these fields. It provides comprehensive coverage through a mixture of peer-reviewed articles, research news, and information on key developments. Nano Today is abstracted and indexed in Science Citation Index, Ei Compendex, Embase, Scopus, and INSPEC.