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  2. A Computational Integration Strategy Driven by Chemical Similarity Uncovers Comprehensive Metabolic Profiles of Small Bioactive Peptides via UHPLC-HRMS for Doping Control

A Computational Integration Strategy Driven by Chemical Similarity Uncovers Comprehensive Metabolic Profiles of Small Bioactive Peptides via UHPLC-HRMS for Doping Control

  • Anal Chem. 2025 Nov 18;97(45):25158-25167. doi: 10.1021/acs.analchem.5c04272.
Tian Tian 1 2 Xi Chen 1 2 Li Liu 3 Xueqi Liang 1 4 Xiaojun Deng 1 2
Affiliations

Affiliations

  • 1 Shanghai Anti-doping Laboratory, Shanghai University of Sport, 900 Jiangwancheng Road, Shanghai 200438, China.
  • 2 Research Institute for Doping Control, Shanghai University of Sport, 900 Jiangwancheng Road, Shanghai 200438, China.
  • 3 Bio-resource Research and Utilization Joint Key Laboratory of Sichuan and Chongqing, Chongqing Institute of Medicinal Plant Cultivation, Chongqing 408435, China.
  • 4 School of Exercise and Health, Shanghai University of Sport, 399 Changhai Road, Shanghai 200438, China.
Abstract

The current limited understanding of small bioactive peptide metabolism hinders effective doping control. A primary challenge lies in distinguishing suspicious features from extensive mass spectral datasets contaminated by biological matrix interference and background noise. In this study, we introduce a strategy integrating in silico prediction and nontargeted data mining to achieve more comprehensive metabolic profiling through ultrahigh-performance liquid chromatography-high-resolution mass spectrometry (UHPLC-HRMS). The strategy operates by identifying and applying chemical similarity (CSIM) rules of peptides (such as LC/MS behaviors and specific biotransformation) to mine unknown metabolites. With this strategy, a semiautomated workflow utilizing computational software and custom script was constructed and applied to the human liver microsomal metabolism of two significant kisspeptin analogues with doping potential (TAK-448 and TAK-683). The characteristic behaviors induced by CSIM enabled effectively in-depth data mining from redundant background signals, leading to the identification of 13 metabolites (three were validated via synthetic standards) and two uncommon biotransformation pathways (N-terminal vinylation and N-terminal carboxylation) for both investigated compounds. Notably, the two biotransformation pathways offered an innovative perspective on small peptide metabolism, which was further confirmed in rats, and produced two promising long-term metabolites for monitoring doping abuse. Further drug activity evaluation indicated higher or retained performance-enhancing effects of these metabolites, alerting doping control subjects to pay attention to more information. The study provided the first comprehensive characterization of the metabolic profiles of TAK-448 and TAK-683, while also offering an effective tool for metabolism research on small peptide doping agents.

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