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Detection of Tumor Cell Spheroids from Co-cultures Using Phase Contrast Images and Machine Learning Approach

机译:使用相位对比图像和机器学习方法从共培养物中检测肿瘤细胞球体

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Automated image analysis is demanded in cell biology and drug development research. The type of microscopy is one of the considerations in the trade-offs between experimental setup, image acquisition speed, molecular labelling, resolution and quality of images. In many cases, phase contrast imaging gets higher weights in this optimization. And it comes at the price of reduced image quality in imaging 3D cell cultures. For such data, the existing state-of-the-art computer vision methods perform poorly in segmenting specific cell type. Low SNR, clutter and occlusions are basic challenges for blind segmentation approaches. In this study we propose an automated method, based on a learning framework, for detecting particular cell type in cluttered 2D phase contrast images of 3D cell cultures that overcomes those challenges. It depends on local features defined over super pixels. The method learns appearance based features, statistical features, textural features and their combinations. Also, the importance of each feature is measured by employing Random Forest classifier. Experiments show that our approach does not depend on training data and the parameters.
机译:细胞生物学和药物开发研究要求自动图像分析。显微镜的类型是实验设置,图像采集速度,分子标记,分辨率和图像质量之间的权衡的考虑之一。在许多情况下,相位对比度成像在该优化中获得更高的权重。它以成像3D细胞培养物中的图像质量降低的价格。对于这样的数据,现有的最先进的计算机视觉方法在分段特定的细胞类型中执行不良。低SNR,杂乱和闭塞是盲分段方法的基本挑战。在这项研究中,我们提出了一种基于学习框架的自动方法,用于检测克服这些挑战的3D细胞培养物的杂乱2D相位对比图像中的特定细胞类型。它取决于超像素定义的本地特征。该方法了解基于外观的功能,统计功能,纹理特征及其组合。而且,通过采用随机林分类器来测量每个特征的重要性。实验表明,我们的方法不依赖于训练数据和参数。

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