Natural Products and Bioprospecting ›› 2026, Vol. 16 ›› Issue (3): 37-37.DOI: 10.1007/s13659-025-00589-6
• REVIEW • Previous Articles
Rajesh Muthuraj, Jaikanth Chandrasekaran
Received:2025-10-31
Online:2026-06-24
Contact:
Jaikanth Chandrasekaran,E-mail:jaikanthjai@gmail.com
Supported by:Rajesh Muthuraj, Jaikanth Chandrasekaran
通讯作者:
Jaikanth Chandrasekaran,E-mail:jaikanthjai@gmail.com
基金资助:Rajesh Muthuraj, Jaikanth Chandrasekaran. Nature meets machine: the AI renaissance in natural product drug discovery[J]. Natural Products and Bioprospecting, 2026, 16(3): 37-37.
Rajesh Muthuraj, Jaikanth Chandrasekaran. Nature meets machine: the AI renaissance in natural product drug discovery[J]. 应用天然产物, 2026, 16(3): 37-37.
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