Machine Learning-Assisted Clustering of Nanoparticle-Binding Peptides and Prediction of Their Properties

被引:6
|
作者
Kenry [1 ,2 ,3 ]
机构
[1] Harvard Univ, Harvard John A Paulson Sch Engn & Appl Sci, Cambridge, MA 02138 USA
[2] Dana Farber Canc Inst, Dept Imaging, Boston, MA 02215 USA
[3] Harvard Med Sch, Boston, MA 02215 USA
关键词
biomimetic nanostructures; data-driven analysis; gold nanoparticles; machine learning; peptides; FUNCTIONALIZED GOLD NANOPARTICLES; DESIGN; DISCOVERY; PROTEIN; ACID;
D O I
10.1002/adts.202300122
中图分类号
O [数理科学和化学]; P [天文学、地球科学]; Q [生物科学]; N [自然科学总论];
学科分类号
07 ; 0710 ; 09 ;
摘要
Bioinspired and biomimetic nanostructures have attracted tremendous interest for theranostic and nanomedicine applications. Among the strategies employed to synthesize these nanostructures, surface functionalization and biomineralization of nanomaterials using peptides stand out due to the wide availability of peptides and their variations as well as the ease of modification process. Effective peptide-based modification of nanomaterials relies on preferential and strong binding between peptides and target nanomaterials. Therefore, the discovery and design of specific peptides with high binding affinity to nanomaterials are essential. Unfortunately, conventional peptide screening methods suffer from shortcomings which render peptide discovery time-consuming, expensive, and cumbersome. Herein, leveraging unsupervised and supervised machine learning, a framework to accelerate peptide analysis is presented. Specifically, more than 1700 nanoparticle-binding peptides are classified into peptide clusters to identify important peptide features to realize higher-affinity binding. In addition, the binding and biomineralization properties of peptides are predicted with high classification accuracy, precision, and recall. This work then proposes the use of unsupervised k-means clustering and supervised k-nearest neighbors algorithms for grouping peptides and predicting their properties, respectively. It is anticipated that the framework originated from this study will further facilitate the rational selection and design of peptides for engineering functional bioinspired and biomimetic nanostructures.
引用
收藏
页数:9
相关论文
共 50 条
  • [31] Visualizing Uncertainty in Machine Learning-Assisted Measurements
    Shirmohammadi, Shervin
    IEEE INSTRUMENTATION & MEASUREMENT MAGAZINE, 2023, 26 (07) : 20 - 27
  • [32] Machine Learning-Assisted Hybrid ReaxFF Simulations
    Yilmaz, Dundar E.
    Woodward, William Hunter
    van Duin, Adri C. T.
    JOURNAL OF CHEMICAL THEORY AND COMPUTATION, 2021, 17 (11) : 6705 - 6712
  • [33] Machine learning-assisted crystal engineering of a zeolite
    Li, Xinyu
    Han, He
    Evangelou, Nikolaos
    Wichrowski, Noah J.
    Lu, Peng
    Xu, Wenqian
    Hwang, Son-Jong
    Zhao, Wenyang
    Song, Chunshan
    Guo, Xinwen
    Bhan, Aditya
    Kevrekidis, Ioannis G.
    Tsapatsis, Michael
    NATURE COMMUNICATIONS, 2023, 14 (01)
  • [34] Learning-Assisted Rain Attenuation Prediction Models
    Samad, Md Abdus
    Choi, Dong-You
    APPLIED SCIENCES-BASEL, 2020, 10 (17):
  • [35] Validation of machine learning-assisted screening of PKC ligands: PKC binding affinity and activation
    Maki, Jumpei
    Oshimura, Asami
    Shiotani, Yudai
    Yamanaka, Maki
    Okuda, Sogen
    Yanagita, Ryo C.
    Kitani, Shigeru
    Igarashi, Yasuhiro
    Saito, Yutaka
    Sakakibara, Yasubumi
    Tsukano, Chihiro
    Irie, Kazuhiro
    BIOSCIENCE BIOTECHNOLOGY AND BIOCHEMISTRY, 2025,
  • [36] Machine Learning-Assisted Process Prediction of Horizontal Continuous Casting for Copper Tubular Billets
    Liu, Jin-Song
    Long, Hai-Sheng
    Chen, Da-Yong
    Song, Hong-Wu
    Zhang, Shi-Hong
    Piccininni, Antonio
    Chen, Chuan-Lai
    JOURNAL OF MATERIALS ENGINEERING AND PERFORMANCE, 2025,
  • [37] Machine Learning-Assisted Prediction of Corrosion Behavior of 7XXX Aluminum Alloys
    Xiong, Xilin
    Zhang, Na
    Yang, Jingjing
    Chen, Tongqian
    Niu, Tong
    METALS, 2024, 14 (04)
  • [38] Machine Learning-Assisted Prediction of Stress Corrosion Crack Growth Rate in Stainless Steel
    Wang, Peng
    Wu, Huanchun
    Liu, Xiangbing
    Xu, Chaoliang
    CRYSTALS, 2024, 14 (10)
  • [39] Machine/deep learning-assisted hemoglobin level prediction using palpebral conjunctival images
    Kato, Shota
    Chagi, Keita
    Takagi, Yusuke
    Hidaka, Moe
    Inoue, Shutaro
    Sekiguchi, Masahiro
    Adachi, Natsuho
    Sato, Kaname
    Kawai, Hiroki
    Kato, Motohiro
    BRITISH JOURNAL OF HAEMATOLOGY, 2024, 205 (04) : 1590 - 1598
  • [40] Machine Learning-Assisted Prediction of Ambient-Processed Perovskite Solar Cells' Performances
    Pyun, Dowon
    Lee, Seungtae
    Lee, Solhee
    Jeong, Seok-Hyun
    Hwang, Jae-Keun
    Kim, Kyunghwan
    Kim, Youngmin
    Nam, Jiyeon
    Cho, Sujin
    Hwang, Ji-Seong
    Lee, Wonkyu
    Lee, Sangwon
    Lee, Hae-Seok
    Kim, Donghwan
    Kang, Yoonmook
    ENERGIES, 2024, 17 (23)