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Microfluidic droplets content classification and analysis through convolutional neural networks in a liquid biopsy workflow

机译:液体活检工作流中的卷积神经网络通过微流液滴含量分类和分析

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In a recent paper we presented an innovative method of liquid biopsy, for the detection of circulating tumor cells (CTC) in the peripheral blood. Using microfluidics, CTC are individually encapsulated in water-in-oil droplets and selected by their increased rate of extracellular acidification (ECAR). During the analysis, empty or debris-containing droplets are discarded manually by screening images of positive droplets, increasing the operator-dependency and time-consumption of the assay. In this work, we addressed the limitations of the current method integrating computer vision techniques in the analysis. We implemented an automatic classification of droplets using convolutional neural networks, correctly classifying more than 96% of droplets. A second limitation of the technique is that ECAR is computed using an average droplet volume, without considering small variations in extracellular volume which can occur due to the normal variability in the size of the droplets or cells. Here, with the use of neural networks for object detection, we segmented the images of droplets and cells to measure their relative volumes, correcting over- or under-estimation of ECAR, which was present up to 20%. Finally, we evaluated whether droplet images contained additional information. We preliminarily gave a proof-of-concept demonstration showing that white blood cells expression of CD45 can be predicted with 82.9% accuracy, based on bright-field cell images alone. Then, we applied the method to classify acid droplets as coming from metastatic breast cancer patients or healthy donors, obtaining an accuracy of 90.2%.
机译:在最近的论文中,我们提出了一种创新的液体活检方法,用于检测外周血中的循环肿瘤细胞(CTC)。使用微流控技术,将四氯化碳分别包封在油包水液滴中,并根据其增加的细胞外酸化率(ECAR)进行选择。在分析过程中,通过筛选阳性液滴的图像来手动丢弃空的或含有碎片的液滴,从而增加了操作员的依赖性和测定时间。在这项工作中,我们解决了在分析中集成计算机视觉技术的当前方法的局限性。我们使用卷积神经网络实现了液滴的自动分类,正确分类了超过96%的液滴。该技术的第二个局限性是使用平均液滴体积来计算ECAR,而没有考虑由于液滴或细胞大小的正常变化而可能发生的细胞外体积的细微变化。在这里,使用神经网络进行物体检测,我们对液滴和细胞的图像进行了分割,以测量它们的相对体积,校正了ECAR的高估或低估,ECAR的高估或低估都高达20%。最后,我们评估了液滴图像是否包含其他信息。我们初步进行了概念验证,表明仅基于明场细胞图像,可以预测CD45的白细胞表达具有82.9%的准确性。然后,我们应用该方法将酸滴归类为转移性乳腺癌患者或健康捐献者,获得的准确度为90.2%。

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