Wilhelm Alexis, Flynn Charlotte, Hammer Evelyn, Roessler Johannes, Haller Bernhard, Napieralski Rudolf, Leuthner Moritz, Tosheska Sanja, Knoops Kèvin, Mathew Anjusha, Ciarimboli Giuliano, Kranich Jan, Flaskamp Lavinia, King Siobhan, Gevensleben Heidrun, Emslander Quirin, Pastucha Anna, Reisbeck Mathias, Rief Lukas, Bronger Holger, Dreyer Tobias, Bausch Andreas R, Pichlmair Andreas, Brocker Thomas, Zeidler Reinhard, Hammerschmidt Wolfgang, Piedavent-Salomom Melanie, López-Iglesias Carmen, Schricker Gabrielle, Haydn Oliver, Kiechle Marion, Grill Sabine, Heeren Ron, Knolle Percy A, Wilhelm Olaf, Höchst Bastian
Klinik Und Poliklinik Für Frauenheilkunde, TUM University Hospital, Technical University Munich (TUM), Munich, Germany.
Therawis Diagnostics GmbH, Grillparzerstrasse 14, Munich, 81675, Germany.
Breast Cancer Res. 2025 Jun 16;27(1):107. doi: 10.1186/s13058-025-02056-z.
Breast cancer, one of the most common cancers in women, is classified by the expression of hormone receptors and the growth factor receptor HER2, which is important for personalised tumour treatment with HER2-targeted therapies. Tumour biopsies are required for histopathological diagnosis of HER2 expression by breast cancer cells but are subject to sampling error. In this study, we present a method for identifying and analysing cancer-derived EVs from plasma for the detection of HER2 expression in breast cancer without the need for additional processing steps. We detected nano-sized particles through an optimised flow cytometry approach that allows for the identification of HER2-expressing EVs and quantification of their HER2 expression levels. In a clinical study of 115 breast cancer patients, this optimised flow cytometric analysis detected a range of 1.3 to 50 × 10 HER2EVs per µl of plasma. The number of HER2EVs did not correlate directly with tumour size, grade, or metastasis. However, computational integration of data from the quantification of HER2 EVs per µl/plasma and their HER2 expression levels on a single EV basis allowed for the reliable identification of HER2 expression levels in tumours. Our results reveal the potential for analysing cancer-derived EVs from plasma for the diagnosis and personalised therapy in breast cancer patients.
乳腺癌是女性最常见的癌症之一,根据激素受体和生长因子受体HER2的表达进行分类,这对于使用HER2靶向疗法进行个性化肿瘤治疗很重要。乳腺癌细胞HER2表达的组织病理学诊断需要肿瘤活检,但存在抽样误差。在本研究中,我们提出了一种从血浆中识别和分析癌症衍生的细胞外囊泡(EVs)的方法,用于检测乳腺癌中的HER2表达,而无需额外的处理步骤。我们通过优化的流式细胞术方法检测纳米级颗粒,该方法能够识别表达HER2的EVs并量化其HER2表达水平。在一项对115名乳腺癌患者的临床研究中,这种优化的流式细胞术分析检测到每微升血浆中HER2阳性EVs的数量范围为1.3至50×10 。HER2阳性EVs的数量与肿瘤大小、分级或转移没有直接相关性。然而,对每微升血浆中HER2阳性EVs的定量数据及其在单个EV基础上的HER2表达水平进行计算整合,可以可靠地识别肿瘤中的HER2表达水平。我们的结果揭示了分析血浆中癌症衍生的EVs用于乳腺癌患者诊断和个性化治疗的潜力。