Using machine learning technology to identify platelet and megakaryocyte types in single-cell transcriptome data

被引:0
|
作者
Wu, Jingyan [1 ]
机构
[1] Univ Warwick, Coventry, England
关键词
Platelets; Tumor microenvironment; Transcriptome data; Pltscanner model; Gene expression profiles; Machine learning;
D O I
10.1145/3665689.3665771
中图分类号
TP39 [计算机的应用];
学科分类号
081203 ; 0835 ;
摘要
Platelets play crucial roles in blood clotting, wound healing, and the tumor microenvironment. However, identifying them in single-cell transcriptome data is challenging. This study integrated different data sources to construct a rapid and accurate platelet identification model called Pltscanner. The model demonstrated high sensitivity and specificity during validation, capable of recognizing platelets by their characteristic gene expression profiles. Pltscanner also effectively clustered with self-isolated platelet data and accurately predicted vascular distribution in spatial transcriptome data. Compared to existing tools, Pltscanner is faster and provides more accurate annotations. Furthermore, the research revealed that platelets are not a single type but can be categorized into three classes, each potentially playing different roles in the tumor microenvironment. This study contributes to a deeper understanding of platelet functions in the tumor microenvironment and lays the foundation for investigating the mechanisms underlying tumor development.
引用
收藏
页码:491 / 494
页数:4
相关论文
共 50 条
  • [21] Integrated bulk and single-cell transcriptome data identify clinically relevant cell populations in clear cell renal cell carcinoma
    Zhang, Pingbao
    Zhang, Pu
    Gao, Jun
    Li, Xiaosong
    Wei, Chengcheng
    Liu, Weihui
    He, Qingliu
    Zhang, Yuan
    GENES & DISEASES, 2024, 11 (01) : 42 - 45
  • [22] High-Throughput Single-Cell Transcriptome Profiling of Plant Cell Types
    Shulse, Christine N.
    Cole, Benjamin J.
    Ciobanu, Doina
    Lin, Junyan
    Yoshinaga, Yuko
    Gouran, Mona
    Turco, Gina M.
    Zhu, Yiwen
    O'Malley, Ronan C.
    Brady, Siobhan M.
    Dickel, Diane E.
    CELL REPORTS, 2019, 27 (07): : 2241 - +
  • [23] scTenifoldNet: A Machine Learning Workflow for Constructing and Comparing Transcriptome-wide Gene Regulatory Networks from Single-Cell Data
    Osorio, Daniel
    Zhong, Yan
    Li, Guanxun
    Huang, Jianhua Z.
    Cai, James J.
    PATTERNS, 2020, 1 (09):
  • [24] Research Progress of Single-Cell Transcriptome Sequencing Technology in Plants
    Bian, Jianwen
    Zhuang, Zelong
    Ji, Xiangzhuo
    Tang, Rui
    Li, Jiawei
    Chen, Jiangtao
    Li, Zhiming
    Peng, Yunling
    AGRONOMY-BASEL, 2024, 14 (11):
  • [25] Causal machine learning for single-cell genomics
    Tejada-Lapuerta, Alejandro
    Bertin, Paul
    Bauer, Stefan
    Aliee, Hananeh
    Bengio, Yoshua
    Theis, Fabian J.
    NATURE GENETICS, 2025, : 797 - 808
  • [26] Machine learning for perturbational single-cell omics
    Ji, Yuge
    Lotfollahi, Mohammad
    Wolf, F. Alexander
    Theis, Fabian J.
    CELL SYSTEMS, 2021, 12 (06) : 522 - 537
  • [27] Identifying tumor cells at the single-cell level using machine learning
    Dohmen, Jan
    Baranovskii, Artem
    Ronen, Jonathan
    Uyar, Bora
    Franke, Vedran
    Akalin, Altuna
    GENOME BIOLOGY, 2022, 23 (01)
  • [28] Identifying tumor cells at the single-cell level using machine learning
    Jan Dohmen
    Artem Baranovskii
    Jonathan Ronen
    Bora Uyar
    Vedran Franke
    Altuna Akalin
    Genome Biology, 23
  • [29] exFINDER: identify external communication signals using single-cell transcriptomics data
    He, Changhan
    Zhou, Peijie
    Nie, Qing
    NUCLEIC ACIDS RESEARCH, 2023, 51 (10) : E58 - E58
  • [30] Identification of Cell-types based on the Pathway of Markers using Single-cell data
    Dey, Ashmita
    Maulik, Ujjwal
    2020 IEEE CALCUTTA CONFERENCE (CALCON), 2020, : 359 - 362