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Computer Vision for Detecting and Measuring Multicellular Tumor Shperoids of Prostate Cancer

机译:检测和测量前列腺癌多细胞肿瘤球状体的计算机视觉

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We present a deep learning model to apply computer vision to detect prostate cancer spheroid cultures and calculate their volume. Multicellular tumour spheroids, or simply spheroids, represent a three-dimensional in vitro model of cancer. Spheroids are being increasingly used in drug discovery due to their superior ability to mimic the tumor microenvironment compared to monolayer cell cultures. A reduction in spheroid size in response to treatment with anticancer agents is indicative of the success of the therapy. As such, accurate spheroid detection and volume estimation is critical in assays involving spheroids. Automating spheroid detection and measurement reduces manual labor, laboratory costs, and research time. Our system is implemented using Darkflow YOLOv2, a single-phase object detector, based on a twenty-four-layer convolutional neural network. The network is trained on the custom data of biochemically-generated spheroids and their corresponding images, which are then bound and detected with an F1-score of 76% and an IoU of 69%. Volume calculations applied to the identified spheroids resulted in a high volume estimation accuracy with only 3.99% average error.
机译:我们展示了一个深入的学习模型来应用计算机视觉,以检测前列腺癌球状培养物并计算其体积。多细胞肿瘤球体或简单的球形,代表癌症的三维体外模型。与单层细胞培养物相比,由于它们的优异能力越来越多地用于药物发现中,越来越多地用于药物发现。响应于抗癌剂治疗的球体大小的减少表明治疗的成功。因此,精确的球形检测和体积估计对于涉及球状体的测定至关重要。自动化球体检测和测量可降低体力劳动,实验室成本和研究时间。我们的系统使用Darkflow Yolov2,单相对象检测器基于二十四层卷积神经网络来实现。网络培训在生物化生成的球体的自定义数据和它们的相应图像上,然后用F1分数为76%和69%的F1分。应用于所识别的球体的体积计算导致高批量估计精度,平均误差仅为3.99%。

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