Detection of bladder cancer cells using quantitative interferometric label-free imaging flow cytometry

IF 2.5 4区 生物学 Q3 BIOCHEMICAL RESEARCH METHODS Cytometry Part A Pub Date : 2024-04-26 DOI:10.1002/cyto.a.24846
Matan Dudaie, Eden Dotan, Itay Barnea, Miki Haifler, Natan T. Shaked
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Abstract

Bladder cancer is one of the most common cancers with a high recurrence rate. Patients undergo mandatory yearly scrutinies, including cystoscopies, which makes bladder cancer highly distressing and costly. Here, we aim to develop a non-invasive, label-free method for the detection of bladder cancer cells in urine samples, which is based on interferometric imaging flow cytometry. Eight urothelial carcinoma and one normal urothelial cell lines, along with red and white blood cells, imaged quantitatively without staining by an interferometric phase microscopy module while flowing in a microfluidic chip, and classified by two machine-learning algorithms, based on deep-learning semantic segmentation convolutional neural network and extreme gradient boosting. Furthermore, urine samples obtained from bladder-cancer patients and healthy volunteers were imaged, and classified by the system. We achieved accuracy and area under the curve (AUC) of 99% and 97% for the cell lines on both machine-learning algorithms. For the real urine samples, the accuracy and AUC were 96% and 96% for the deep-learning algorithm and 95% and 93% for the gradient-boosting algorithm, respectively. By combining label-free interferometric imaging flow cytometry with high-end classification algorithms, we achieved high-performance differentiation between healthy and malignant cells. The proposed technique has the potential to supplant cystoscopy in the bladder cancer surveillance and diagnosis space.

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利用定量干涉无标记成像流式细胞术检测膀胱癌细胞
膀胱癌是最常见的癌症之一,复发率很高。患者每年都必须接受包括膀胱镜在内的检查,这使得膀胱癌患者非常痛苦,而且费用高昂。在此,我们旨在开发一种基于干涉成像流式细胞术的无创、无标记方法,用于检测尿液样本中的膀胱癌细胞。八种尿路上皮癌细胞系和一种正常尿路上皮癌细胞系以及红细胞和白细胞在微流控芯片中流动时,无需染色即可通过干涉相位显微镜模块定量成像,并通过基于深度学习语义分割卷积神经网络和极端梯度提升的两种机器学习算法进行分类。此外,该系统还对膀胱癌患者和健康志愿者的尿液样本进行了成像和分类。通过这两种机器学习算法,我们对细胞系的准确率和曲线下面积(AUC)分别达到了 99% 和 97%。对于真实尿液样本,深度学习算法的准确率和AUC分别为96%和96%,梯度提升算法的准确率和AUC分别为95%和93%。通过将无标记干涉成像流式细胞术与高端分类算法相结合,我们实现了对健康细胞和恶性细胞的高性能区分。该技术有望在膀胱癌监测和诊断领域取代膀胱镜检查。
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来源期刊
Cytometry Part A
Cytometry Part A 生物-生化研究方法
CiteScore
8.10
自引率
13.50%
发文量
183
审稿时长
4-8 weeks
期刊介绍: Cytometry Part A, the journal of quantitative single-cell analysis, features original research reports and reviews of innovative scientific studies employing quantitative single-cell measurement, separation, manipulation, and modeling techniques, as well as original articles on mechanisms of molecular and cellular functions obtained by cytometry techniques. The journal welcomes submissions from multiple research fields that fully embrace the study of the cytome: Biomedical Instrumentation Engineering Biophotonics Bioinformatics Cell Biology Computational Biology Data Science Immunology Parasitology Microbiology Neuroscience Cancer Stem Cells Tissue Regeneration.
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