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Detecting nodular basal cell carcinoma in pathology imaging using deep learning image segmentation

机译:使用深学习图像分割检测病理成像中的结节基础细胞癌

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With over 4.3 million new cases in the U.S. every year, basal cell carcinoma (BCC), is the most common form of skincancer. Pathologists must examine pathology images to diagnose BCC, potentially resulting in delay, error, andinconsistency. To address the need for standardized, expedited diagnosis, we created an automated diagnostic machine toidentify BCC given pathology images. In MATLAB, we adapted a deep neural network image segmentation model, UNet,to train on BCC images and their corresponding masks, which can learn to highlight these nodules in pathologyimages by outputting a computer-generated mask. We trained the U-Net on one image from the dataset and compared thecomputer-generated mask output from testing on three types of images: an image from a different region of the same imagetaken with the same microscope, an image from a different tissue sample with a different microscope, and an image takenwith a confocal microscope. We observed good, medium and poor results, respectively, illustrating that performancedepends on the similarity between test and training data. In subsequent tests using data augmentation, we achievedsensitivity of 0.82±0.07 and specificity of 0.87±0.16 on N = 6 sample sections from 3 different BCCs imaged with thesame microscope system. These data show that the U-Net performed well with a relatively few number of training images.Examining the errors raised interesting questions regarding what the errors mean and how they possibly arose. By creatinga surgeon interface for rapid pathological assessment and machine learning diagnostics for pathological features, the BCCdiagnosis process will be expedited and standardized.
机译:在美国的430万例新案例中,每年,基底细胞癌(BCC)是最常见的皮肤形式癌症。病理学家必须检查病理学图像以诊断BCC,可能导致延迟,错误和不一致。为了满足对标准化,加急诊断的需求,我们创建了一种自动诊断机识别BCC给定病理学图像。在MATLAB中,我们改编了一个深度神经网络图像分割模型,UNET,在BCC图像和相应的面具上培训,可以学会突出这些病理学中的这些结节通过输出计算机生成的掩码进行图像。我们从数据集中的一个图像上培训了U-Net,并比较了计算机生成的屏蔽从三种类型的图像测试输出:来自同一图像的不同区域的图像采用相同显微镜,具有不同显微镜的不同组织样品的图像,以及拍摄的图像用共聚焦显微镜。我们分别观察到良好,中等和差的结果,说明了这种性能取决于测试和培训数据之间的相似性。在使用数据增强的后续测试中,我们实现了0.82±0.07的敏感性为0.82±0.07和N = 6个样品部分的0.87±0.16的特异性来自3个不同的BCCS成像相同的显微镜系统。这些数据显示U-Net在相对较少的训练图像中表现良好。检查错误提出了有关错误意味着什么的有趣问题以及它们如何出现。通过创建用于快速病理评估和机器学习诊断的外科医生界面,用于病理特征,BCC将加快和标准化诊断过程。

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