High-Accuracy Identification and Structure-Activity Analysis of Antioxidant Peptides via Deep Learning and Quantum Chemistry

被引:0
|
作者
Li, Wanxing [1 ]
Liu, Xuejing [1 ]
Liu, Yuanfa [1 ]
Zheng, Zhaojun [1 ]
机构
[1] Jiangnan Univ, Sch Food Sci & Technol, Wuxi 214122, Peoples R China
基金
中国博士后科学基金;
关键词
PURIFICATION; QSAR;
D O I
10.1021/acs.jcim.4c01713
中图分类号
R914 [药物化学];
学科分类号
100701 ;
摘要
Antioxidant peptides (AOPs) hold great promise for mitigating oxidative-stress-related diseases, but their discovery is hindered by inefficient and time-consuming traditional methods. To address this, we developed an innovative framework combining machine learning and quantum chemistry to accelerate AOP identification and analyze structure-activity relationships. A Bi-LSTM-based model, AOPP, achieved superior performance with accuracies of 0.9043 and 0.9267, precisions of 0.9767 and 0.9848, and Matthews correlation coefficients (MCCs) of 0.818 and 0.859 on two data sets, outperforming existing methods. Compared with XGBoost and LightGBM, AOPP demonstrated a 4.67% improvement in accuracy. Feature fusion significantly enhanced classification, as validated by UMAP visualization. Experimental validation of ten peptides confirmed the antioxidant activity, with LLA exhibiting the highest DPPH and ABTS scavenging rates (0.108 and 0.437 mmol/g, respectively). Quantum chemical calculations identified LLA's lowest HOMO-LUMO gap (Delta E = 0.26 eV) and C3-H26 as the key active site contributing to its superior antioxidant potential. This study highlights the synergy of machine learning and quantum chemistry, offering an efficient framework for AOP discovery with broad applications in therapeutics and functional foods.
引用
收藏
页码:603 / 612
页数:10
相关论文
共 9 条
  • [1] Isolation, identification of antioxidant peptides from earthworm proteins and analysis of the structure-activity relationship of the peptides based on quantum chemical calculations
    He, Ping
    Zhang, Yi
    Zhang, Yizhe
    Zhang, Lina
    Lin, Zhengli
    Sun, Chongzhen
    Wu, Hui
    Zhang, Mengmeng
    FOOD CHEMISTRY, 2024, 431
  • [2] Evaluation and structure-activity relationship analysis of antioxidant shrimp peptides
    Wu, Dan
    Sun, Na
    Ding, Jie
    Zhu, BeiWei
    Lin, Songyi
    FOOD & FUNCTION, 2019, 10 (09) : 5605 - 5615
  • [3] Deep Learning Combined with Quantitative Structure-Activity Relationship Accelerates De Novo Design of Antifungal Peptides
    Yin, Kedong
    Li, Ruifang
    Zhang, Shaojie
    Sun, Yiqing
    Huang, Liang
    Jiang, Mengwan
    Xu, Degang
    Xu, Wen
    ADVANCED SCIENCE, 2025,
  • [4] Extraction, identification and structure-activity relationship of antioxidant peptides from sesame (Sesamum indicum L.) protein hydrolysate
    Lu, Xin
    Zhang, Lixia
    Sun, Qiang
    Song, Guohui
    Huang, Jinian
    FOOD RESEARCH INTERNATIONAL, 2019, 116 : 707 - 716
  • [5] Virtual screening, identification, and potential antioxidant mechanism of novel bioactive peptides during aging by a short-chain peptidomics, quantitative structure-activity relationship analysis, and molecular docking
    Du, An
    Jia, Wei
    FOOD RESEARCH INTERNATIONAL, 2023, 172
  • [6] A Deep Learning-Based Quantitative Structure-Activity Relationship System Construct Prediction Model of Agonist and Antagonist with High Performance
    Matsuzaka, Yasunari
    Uesawa, Yoshihiro
    INTERNATIONAL JOURNAL OF MOLECULAR SCIENCES, 2022, 23 (04)
  • [7] Production of ACE inhibitory peptides via ultrasonic-assisted enzymatic hydrolysis of microalgal Chlorella protein: Process improvement, fractionation, identification, and in silico structure-activity relationship
    Pekkoh, Jeeraporn
    Kamngoen, Apiwit
    Wichaphian, Antira
    Zin, May Thu
    Chaipoot, Supakit
    Yakul, Kamon
    Pathom-aree, Wasu
    Maneechote, Wageeporn
    Cheirsilp, Benjamas
    Khoo, Kuan Shiong
    Srinuanpan, Sirasit
    FUTURE FOODS, 2025, 11
  • [8] Optimization of a Deep-Learning Method Based on the Classification of Images Generated by Parameterized Deep Snap a Novel Molecular-Image-Input Technique for Quantitative Structure-Activity Relationship (QSAR) Analysis
    Matsuzaka, Yasunari
    Uesawa, Yoshihiro
    FRONTIERS IN BIOENGINEERING AND BIOTECHNOLOGY, 2019, 7
  • [9] Deep Learning-Based Structure-Activity Relationship Modeling for Multi-Category Toxicity Classification: A Case Study of 10K Tox21 Chemicals With High-Throughput Cell-Based Androgen Receptor Bioassay Data
    Idakwo, Gabriel
    Thangapandian, Sundar
    Luttrell, Joseph
    Zhou, Zhaoxian
    Zhang, Chaoyang
    Gong, Ping
    FRONTIERS IN PHYSIOLOGY, 2019, 10