利用机器学习对血小板进行多参数表型并确定激动剂作用的特征

IF 3.4 3区 医学 Q2 HEMATOLOGY
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引用次数: 0

摘要

背景血小板功能由特异性表面标志物的表达驱动。目的 设计一种基于光谱流式细胞术的表型工作流程,以便在整体和个体水平上更全面地描述静息和活化的健康血小板的表面标记物,并应用该工作流程研究血小板年龄不同所产生的不同反应。方法 开发了 14 个标记物的流式细胞仪面板,并将其应用于载体或激动剂刺激的富血小板血浆和健康志愿者的全血样本,或应用于根据 SYTO-13 (赛默飞世尔科技公司)染色强度作为血小板年龄指标分类的血小板。结果该检测方法在富含血小板的血浆和全血样本中检测到了健康血小板在静息和激动剂激活时的标记物表达差异,这与文献报道一致。机器学习识别受刺激血小板群的准确率很高(80%)。同样,机器学习区分年轻和年老血小板群的准确率也达到了 76%,主要由正向散射、分化群 (CD) 41、侧向散射、糖蛋白 VI、CD61 和 CD42b 表达模式加权得出。可裂解受体糖蛋白 VI 和 CD42b 有助于定义共有和独特的亚群。这种可采用的低容量方法对深入分析疾病中血小板的特征很有价值。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multiparameter phenotyping of platelets and characterization of the effects of agonists using machine learning

Background

Platelet function is driven by the expression of specialized surface markers. The concept of distinct circulating subpopulations of platelets has emerged in recent years, but their exact nature remains debatable.

Objectives

To design a spectral flow cytometry–based phenotyping workflow to provide a more comprehensive characterization, at a global and individual level, of surface markers in resting and activated healthy platelets, and to apply this workflow to investigate how responses differ according to platelet age.

Methods

A 14-marker flow cytometry panel was developed and applied to vehicle- or agonist-stimulated platelet-rich plasma and whole blood samples obtained from healthy volunteers, or to platelets sorted according to SYTO-13 (Thermo Fisher Scientific) staining intensity as an indicator of platelet age. Data were analyzed using both user-led and independent approaches incorporating novel machine learning–based algorithms.

Results

The assay detected differences in marker expression in healthy platelets, at rest and on agonist activation, in both platelet-rich plasma and whole blood samples, that are consistent with the literature. Machine learning identified stimulated populations of platelets with high accuracy (>80%). Similarly, machine learning differentiation between young and old platelet populations achieved 76% accuracy, primarily weighted by forward scatter, cluster of differentiation (CD) 41, side scatter, glycoprotein VI, CD61, and CD42b expression patterns.

Conclusion

Our approach provides a powerful phenotypic assay coupled with robust bioinformatic and machine learning workflows for deep analysis of platelet subpopulations. Cleavable receptors, glycoprotein VI and CD42b, contribute to defining shared and unique subpopulations. This adoptable, low-volume approach will be valuable in deep characterization of platelets in disease.

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来源期刊
CiteScore
5.60
自引率
13.00%
发文量
212
审稿时长
7 weeks
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