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Photodynamic Diagnosis of Bladder Cancer in Ex Vivo Urine Cytology

机译:膀胱尿液细胞学光动力学诊断

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Bladder cancer is the fourth common malignant disease worldwide, accounting for 4% of all cancer cases. In Singapore, it is the ninth most common form of cancer. The high mortality rate can be reduced by early treatment following pre-cancerous screening. Currently, the gold standard for screening bladder tumors is histological examination of biopsy specimen, which is both invasive and time-consuming. In this study ex vivo urine fluorescence cytology is investigated to offer a timely and biopsy-free means for detecting bladder cancers. Sediments in patients' urine samples were extracted and incubated with a novel photosensitizer, hypericin. Laser confocal microscopy was used to capture the fluorescence images at an excitation wavelength of 488 nm. Images were subsequently processed to single out the exfoliated bladder cells from the other cells based on the cellular size. Intensity histogram of each targeted cell was plotted and feature vectors, derived from the histogram moments, were used to represent each sample. A difference in the distribution of the feature vectors of normal and low-grade cancerous bladder cells was observed. Diagnostic algorithm for discriminating between normal and low-grade cancerous cells is elucidated in this paper. This study suggests that the fluorescence intensity profiles of hypericin in bladder cells can potentially provide an automated quantitative means of early bladder cancer diagnosis.
机译:膀胱癌是全球第四大常见恶性疾病,占所有癌症病例的4%。在新加坡,它是第九种最常见的癌症形式。癌前筛查后的早期治疗可以降低高死亡率。当前,筛查膀胱肿瘤的金标准是活检标本的组织学检查,这是侵入性的且耗时的。在这项研究中,对离体尿液荧光细胞学进行了研究,以提供及时且无活检的手段来检测膀胱癌。提取患者尿液样本中的沉积物,并与新型光敏剂金丝桃素一起孵育。激光共聚焦显微镜用于在488 nm的激发波长下捕获荧光图像。随后根据细胞大小对图像进行处理,以从其他细胞中挑选出脱落的膀胱细胞。绘制每个目标细胞的强度直方图,并使用从直方图矩导出的特征向量表示每个样本。观察到正常和低级膀胱癌细胞特征向量分布的差异。阐明了区分正常和低度癌细胞的诊断算法。这项研究表明,金丝桃素在膀胱细胞中的荧光强度特征可以潜在地提供早期膀胱癌诊断的自动定量方法。

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