Department of Urology, Medicover Hospital, 323T Principala St., 407062 Suceagu, Romania.
Faculty of Medicine and Pharmacy, University of Oradea, 1 Universitatii St., 410087 Oradea, Romania.
Int J Mol Sci. 2024 Sep 11;25(18):9830. doi: 10.3390/ijms25189830.
Renal cell carcinoma (RCC) is the sixth most common cancer in men and is often asymptomatic, leading to incidental detection in advanced disease stages that are associated with aggressive histology and poorer outcomes. Various cancer biomarkers are found in urine samples from patients with RCC. In this study, we propose to investigate the use of Attenuated Total Reflection-Fourier Transform Infrared Spectroscopy (ATR-FTIR) on dried urine samples for distinguishing RCC. We analyzed dried urine samples from 49 patients with RCC, confirmed by histopathology, and 39 healthy donors using ATR-FTIR spectroscopy. The vibrational bands of the dried urine were identified by comparing them with spectra from dried artificial urine, individual urine components, and dried artificial urine spiked with urine components. Urea dominated all spectra, but smaller intensity peaks, corresponding to creatinine, phosphate, and uric acid, were also identified. Statistically significant differences between the FTIR spectra of the two groups were obtained only for creatinine, with lower intensities for RCC cases. The discrimination of RCC was performed through Principal Component Analysis combined with Linear Discriminant Analysis (PCA-LDA) and Support Vector Machine (SVM). Using PCA-LDA, we achieved a higher discrimination accuracy (82%) (using only six Principal Components to avoid overfitting), as compared to SVM (76%). Our results demonstrate the potential of urine ATR-FTIR combined with machine learning techniques for RCC discrimination. However, further studies, especially of other urological diseases, must validate this approach.
肾细胞癌 (RCC) 是男性中第六种最常见的癌症,通常无症状,导致在晚期疾病阶段偶然发现,这些阶段与侵袭性组织学和较差的结果相关。在 RCC 患者的尿液样本中发现了各种癌症生物标志物。在这项研究中,我们建议研究使用衰减全反射-傅里叶变换红外光谱 (ATR-FTIR) 对干燥的尿液样本进行 RCC 区分。我们使用 ATR-FTIR 光谱分析了 49 名经组织病理学证实的 RCC 患者和 39 名健康供体的干燥尿液样本。通过将干燥尿液的振动带与干燥人工尿液、单个尿液成分和用尿液成分掺杂的干燥人工尿液的光谱进行比较,确定了干燥尿液的振动带。尿素主导所有光谱,但也鉴定出较小强度的峰,对应于肌酐、磷酸盐和尿酸。两组 FTIR 光谱之间仅获得了肌酐的统计学显著差异,RCC 病例的强度较低。通过主成分分析结合线性判别分析 (PCA-LDA) 和支持向量机 (SVM) 进行了 RCC 的区分。使用 PCA-LDA,我们实现了更高的区分准确性 (82%)(仅使用六个主成分以避免过度拟合),而 SVM 为 76%。我们的结果表明,尿液 ATR-FTIR 结合机器学习技术有可能用于 RCC 区分。然而,必须进一步研究,特别是其他泌尿科疾病,以验证这种方法。