Increased [18F]FDG uptake of radiation-induced giant cells: a single-cell study in lung cancer models

Neeladrisingha Das, Hieu T. M. Nguyen, Wan-Jin Lu, Arutselvan Natarajan, Syamantak Khan, Guillem Pratx
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Abstract

Positron emission tomography (PET), a cornerstone in cancer diagnosis and treatment monitoring, relies on the enhanced uptake of fluorodeoxyglucose ([18F]FDG) by cancer cells to highlight tumors and other malignancies. While instrumental in the clinical setting, the accuracy of [18F]FDG-PET is susceptible to metabolic changes introduced by radiation therapy. Specifically, radiation induces the formation of giant cells, whose metabolic characteristics and [18F]FDG uptake patterns are not fully understood. Through a novel single-cell gamma counting methodology, we characterized the [18F]FDG uptake of giant A549 and H1299 lung cancer cells that were induced by radiation, and found it to be considerably higher than that of their non-giant counterparts. This observation was further validated in tumor-bearing mice, which similarly demonstrated increased [18F]FDG uptake in radiation-induced giant cells. These findings underscore the metabolic implications of radiation-induced giant cells, as their enhanced [18F]FDG uptake could potentially obfuscate the interpretation of [18F]FDG-PET scans in patients who have recently undergone radiation therapy.

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辐射诱导的巨细胞[18F]FDG 摄取增加:肺癌模型中的单细胞研究
正电子发射断层扫描(PET)是癌症诊断和治疗监测的基石,它依靠癌细胞对氟脱氧葡萄糖([18F]FDG)的增强吸收来突出显示肿瘤和其他恶性肿瘤。虽然[18F]FDG-PET 在临床环境中非常重要,但其准确性容易受到放射治疗引起的代谢变化的影响。具体来说,辐射会诱导巨细胞的形成,而巨细胞的代谢特征和[18F]FDG摄取模式尚不完全清楚。通过一种新颖的单细胞伽马计数法,我们对辐射诱导的 A549 和 H1299 巨型肺癌细胞的[18F]FDG 摄取进行了表征,发现其[18F]FDG 摄取大大高于非巨型细胞。这一观察结果在肿瘤小鼠身上得到了进一步验证,同样证明了辐射诱导的巨细胞对[18F]FDG的摄取增加。这些发现强调了辐射诱导巨细胞对新陈代谢的影响,因为它们增强的[18F]FDG摄取量有可能会混淆近期接受过放射治疗的患者对[18F]FDG-PET扫描结果的解读。
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