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A new method using machine learning for automated image analysis applied to chip-based digital assays

机译:一种使用机器学习自动图像分析的新方法应用于基于芯片的数字测定

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摘要

Chip-based digital assays such as the digital polymerase chain reaction (digital PCR), digital loop-mediated amplification (digital LAMP), digital enzyme-linked immunosorbent assay (digital ELISA) and digital proximity ligation assay (digital PLA) need high-throughput quantification of the captured fluorescence image data. However, traditional methods that are mainly based on image segmentation using either a fixed threshold or an automated hard threshold failed to extract valid signals over a broad range of image characteristics. In this study, we introduce a new method for automated image analysis to extract signals applied to chip-based digital assays. This approach precisely locates each micro-compartment based on the structure design of the chip, thereby eliminating the interference of non-signal noise in the image. Utilizing the principle that the human eyes can distinguish between the positive micro-compartments and the negative micro-compartments, we take the parameters of each micro-compartment together with its surrounding micro-compartments as the training dataset of the Random Forest classifier to classify the micro-compartments and extract valid signals, thus solving the problem caused by the differences among images. Furthermore, we adopted the iteration methodology that adds the output of a model's prediction to the input of the next model's training dataset, until the output of a model's prediction reaches the accuracy we expected, which improves the work efficiency during data training greatly. We demonstrate the method on the dPCR dataset and it performs well without any manual adjustment of settings. The results show that our proposed method can recognize the positive signals from the fluorescence images with an accuracy of 97.78%. With minor modification, bio-instrument companies or researchers can integrate this method into their digital assay devices' software conveniently.
机译:基于芯片的数字测定,如数字聚合酶链反应(数字PCR),数字环形介导的放大(数字灯),数字酶联免疫吸附测定(数字ELISA)和数字邻近连接测定(数字PLA)需要高吞吐量捕获荧光图像数据的定量。然而,主要基于使用固定阈值或自动硬阈值的图像分割的传统方法未能在广泛的图像特征上提取有效信号。在这项研究中,我们介绍了一种自动图像分析的新方法,以提取应用于基于芯片的数字测定的信号。该方法基于芯片的结构设计精确地定位每个微隔室,从而消除了图像中的非信号噪声的干扰。利用人眼可以区分正微室和负微隔室的原理,我们将每个微隔室的参数与其周围的微室一起作为随机林分类器的训练数据集来分类微隔室并提取有效信号,从而解决图像之间的差异引起的问题。此外,我们采用了迭代方法,该方法将模型预测的输出添加到下一个型号的训练数据集,直到模型的预测的输出达到我们预期的准确性,这提高了数据培训期间的工作效率。我们在DPCR数据集上演示了该方法,而且在没有任何手动调整的情况下表现良好。结果表明,我们的提出方法可以从荧光图像中识别阳性信号,精度为97.78%。通过轻微的修改,生物仪器公司或研究人员可以方便地将这种方法集成到其数字测定设备的软件中。

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    Zhejiang Univ Res Ctr Analyt Instrumentat Inst Cyber Syst &

    Control State Key Lab Ind Control Technol Coll Control Sc Hangzhou 310027 Zhejiang Peoples R China;

    Zhejiang Univ Res Ctr Analyt Instrumentat Inst Cyber Syst &

    Control State Key Lab Ind Control Technol Coll Control Sc Hangzhou 310027 Zhejiang Peoples R China;

    Zhejiang Univ Res Ctr Analyt Instrumentat Inst Cyber Syst &

    Control State Key Lab Ind Control Technol Coll Control Sc Hangzhou 310027 Zhejiang Peoples R China;

    Zhejiang Univ Res Ctr Analyt Instrumentat Inst Cyber Syst &

    Control State Key Lab Ind Control Technol Coll Control Sc Hangzhou 310027 Zhejiang Peoples R China;

    Zhejiang Univ Res Ctr Analyt Instrumentat Inst Cyber Syst &

    Control State Key Lab Ind Control Technol Coll Control Sc Hangzhou 310027 Zhejiang Peoples R China;

    Zhejiang Univ Res Ctr Analyt Instrumentat Inst Cyber Syst &

    Control State Key Lab Ind Control Technol Coll Control Sc Hangzhou 310027 Zhejiang Peoples R China;

    Zhejiang Univ Res Ctr Analyt Instrumentat Inst Cyber Syst &

    Control State Key Lab Ind Control Technol Coll Control Sc Hangzhou 310027 Zhejiang Peoples R China;

    Zhejiang Univ Res Ctr Analyt Instrumentat Inst Cyber Syst &

    Control State Key Lab Ind Control Technol Coll Control Sc Hangzhou 310027 Zhejiang Peoples R China;

    Zhejiang Univ Res Ctr Analyt Instrumentat Inst Cyber Syst &

    Control State Key Lab Ind Control Technol Coll Control Sc Hangzhou 310027 Zhejiang Peoples R China;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 分析化学;
  • 关键词

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