Seamless Iterative Semi-Supervised Correction of Imperfect Labels in Microscopy Images

Marawan Elbatel, Christina Bornberg, Manasi Kattel, E. Almar, C. Marrocco, A. Bria
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Abstract

. In-vitro tests are an alternative to animal testing for the toxicity of medical devices. Detecting cells as a first step, a cell expert evaluates the growth of cells according to cytotoxicity grade under the microscope. Thus, human fatigue plays a role in error making, making the use of deep learning appealing. Due to the high cost of training data annotation, an approach without manual annotation is needed. We propose Seamless Iterative Semi-Supervised correction of Imperfect labels (SISSI) , a new method for training object detection models with noisy and missing annotations in a semi-supervised fashion. Our network learns from noisy labels generated with simple image processing algorithms, which are iteratively corrected during self-training. Due to the nature of missing bounding boxes in the pseudo labels, which would negatively affect the training, we propose to train on dynamically generated synthetic-like images using seamless cloning. Our method successfully provides an adaptive early learning correction technique for object detection. The combination of early learning correction that has been applied in classification and semantic segmentation before and synthetic-like image generation proves to be more effective than the usual semi-supervised approach by > 15% AP and > 20% AR across three different readers. Our code is available at https://github.com/marwankefah/SISSI.
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显微镜图像中不完美标记的无缝迭代半监督校正
. 体外试验是对医疗器械的毒性进行动物试验的一种替代方法。检测细胞是第一步,细胞专家在显微镜下根据细胞毒性等级评估细胞的生长情况。因此,人的疲劳在犯错中发挥了作用,这使得深度学习的使用具有吸引力。由于训练数据标注的成本较高,需要一种不需要人工标注的方法。我们提出了无缝迭代半监督校正不完美标签(SISSI),这是一种以半监督方式训练带有噪声和缺失注释的目标检测模型的新方法。我们的网络从简单的图像处理算法产生的噪声标签中学习,并在自我训练过程中迭代修正。由于伪标签中缺少边界框的性质会对训练产生负面影响,我们建议使用无缝克隆的方法在动态生成的类合成图像上进行训练。我们的方法成功地为目标检测提供了一种自适应的早期学习校正技术。之前在分类和语义分割中应用的早期学习校正与类合成图像生成相结合,在三种不同的阅读器中,> 15% AP和> 20% AR比通常的半监督方法更有效。我们的代码可在https://github.com/marwankefah/SISSI上获得。
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A Continual Learning Approach for Cross-Domain White Blood Cell Classification Self-Prompting Large Vision Models for Few-Shot Medical Image Segmentation The Performance of Transferability Metrics does not Translate to Medical Tasks Seamless Iterative Semi-Supervised Correction of Imperfect Labels in Microscopy Images Feather-Light Fourier Domain Adaptation in Magnetic Resonance Imaging
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