Laboratory of Cellular Imaging and Macromolecular Biophysics, National Institute of Biomedical Imaging and Bioengineering, National Institutes of Health, Bethesda, MD, USA.
Department of Internal Medicine, University of Kentucky College of Medicine, Lexington, KY, USA.
Platelets. 2023 Dec;34(1):2264978. doi: 10.1080/09537104.2023.2264978. Epub 2023 Nov 7.
Platelets contribute to COVID-19 clinical manifestations, of which microclotting in the pulmonary vasculature has been a prominent symptom. To investigate the potential diagnostic contributions of overall platelet morphology and their α-granules and mitochondria to the understanding of platelet hyperactivation and micro-clotting, we undertook a 3D ultrastructural approach. Because differences might be small, we used the high-contrast, high-resolution technique of focused ion beam scanning EM (FIB-SEM) and employed deep learning computational methods to evaluate nearly 600 individual platelets and 30 000 included organelles within three healthy controls and three severely ill COVID-19 patients. Statistical analysis reveals that the α-granule/mitochondrion-to-plateletvolume ratio is significantly greater in COVID-19 patient platelets indicating a denser packing of organelles, and a more compact platelet. The COVID-19 patient platelets were significantly smaller -by 35% in volume - with most of the difference in organelle packing density being due to decreased platelet size. There was little to no 3D ultrastructural evidence for differential activation of the platelets from COVID-19 patients. Though limited by sample size, our studies suggest that factors outside of the platelets themselves are likely responsible for COVID-19 complications. Our studies show how deep learning 3D methodology can become the gold standard for 3D ultrastructural studies of platelets.
血小板与 COVID-19 的临床表现有关,其中肺血管中的微血栓形成是一个突出的症状。为了研究血小板整体形态及其α颗粒和线粒体对血小板过度激活和微血栓形成的潜在诊断贡献,我们采用了 3D 超微结构方法。由于差异可能很小,我们使用了高对比度、高分辨率的聚焦离子束扫描电子显微镜(FIB-SEM)技术,并采用深度学习计算方法评估了三个健康对照组和三个 COVID-19 重症患者中的近 600 个个体血小板和 30000 个包含的细胞器。统计分析表明,COVID-19 患者血小板中的α颗粒/线粒体与血小板体积比显著增加,表明细胞器的堆积密度更高,血小板更紧凑。COVID-19 患者的血小板体积显著减小,体积减小了 35%,而细胞器堆积密度的大部分差异则归因于血小板体积的减小。COVID-19 患者的血小板几乎没有或没有显示出明显的激活差异。虽然受到样本量的限制,但我们的研究表明,COVID-19 并发症可能是由血小板本身以外的因素引起的。我们的研究表明,深度学习 3D 方法如何成为血小板 3D 超微结构研究的金标准。