Natural Products and Bioprospecting ›› 2026, Vol. 16 ›› Issue (1): 3-3.DOI: 10.1007/s13659-025-00556-1
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Buddha Bahadur Basnet1,2, Zhen-Yi Zhou1, Rajesh Basnet4,5, Bin Wei1, Hong Wang1,3
Received:2025-08-10
Online:2026-03-25
Published:2026-02-14
Contact:
Bin Wei,E-mail:binwei@zjut.edu.cn;Hong Wang,E-mail:hongw@zjut.edu.cn
Supported by:Buddha Bahadur Basnet1,2, Zhen-Yi Zhou1, Rajesh Basnet4,5, Bin Wei1, Hong Wang1,3
通讯作者:
Bin Wei,E-mail:binwei@zjut.edu.cn;Hong Wang,E-mail:hongw@zjut.edu.cn
基金资助:Buddha Bahadur Basnet, Zhen-Yi Zhou, Rajesh Basnet, Bin Wei, Hong Wang. Advances in natural product discovery: strategies, technologies, and insights[J]. Natural Products and Bioprospecting, 2026, 16(1): 3-3.
Buddha Bahadur Basnet, Zhen-Yi Zhou, Rajesh Basnet, Bin Wei, Hong Wang. Advances in natural product discovery: strategies, technologies, and insights[J]. 应用天然产物, 2026, 16(1): 3-3.
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