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Semantic segmentation to identify bladder layers from H&E Images

机译:语义分割以识别H&E图像的膀胱层

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BACKGROUND:Identification of bladder layers is a necessary prerequisite to bladder cancer diagnosis and prognosis. We present a method of multi-class image segmentation, which recognizes urothelium, lamina propria, muscularis propria, and muscularis mucosa layers as well as regions of red blood cells, cauterized tissue, and inflamed tissue from images of hematoxylin and eosin stained slides of bladder biopsies.METHODS:Segmentation is carried out using a U-Net architecture. The number of layers was either, eight, ten, or twelve and combined with a weight initializers of He uniform, He normal, Glorot uniform, and Glorot normal. The most optimal of these parameters was found by through a seven-fold training, validation, and testing of a dataset of 39 whole slide images of T1 bladder biopsies.RESULTS:The most optimal model was a twelve layer U-net using He normal initializer. Initial visual evaluation by an experienced pathologist on an independent set of 15 slides segmented by our method yielded an average score of 8.93 ± 0.6 out of 10 for segmentation accuracy. It took only 23?min for the pathologist to review 15 slides (1.53?min/slide) with the computer annotations. To assess the generalizability of the proposed model, we acquired an additional independent set of 53 whole slide images and segmented them using our method. Visual examination by a different experienced pathologist yielded an average score of 8.87 ± 0.63 out of 10 for segmentation accuracy.CONCLUSIONS:Our preliminary findings suggest that predictions of our model can minimize the time needed by pathologists to annotate slides. Moreover, the method has the potential to identify the bladder layers accurately. Further development can assist the pathologist with the diagnosis of T1 bladder cancer.
机译:背景:膀胱层的鉴定是膀胱癌诊断和预后的必要先决条件。我们介绍了一种多级图像分割的方法,其识别尿液,椎板,Muscularis Propria和Muscularis mucosa层以及来自血毒素和嗜素染色的膀胱玻璃玻璃的图像的红细胞,烧灼组织和发炎组织的区域Biopsies.Methods:使用U-Net架构进行分割。层数是,八个,十,或十二个,与他均匀的重量初始化器合并,他正常,耀眼均匀,并耀斑正常。通过七倍的训练,验证和测试,验证,验证,验证和测试的T1膀胱活检的数据集的最佳最佳最佳。结果:最佳模型是使用他正常初始化的二十层U-Net 。经验丰富的病理学家在我们的方法分段的独立15个幻灯片上进行了经验丰富的病理学家的初始视觉评估,其平均得分为分割精度为10分中的8.93±0.6。该病理学家认为15次幻灯片(1.53?min /幻灯片)与计算机注释只花了23次。为了评估所提出的模型的普遍性,我们获得了另外的53个整个幻灯片图像的独立独立组,并使用我们的方法分段。不同经验的病理学家的视觉检查产生了分割准确性的10分中的8.87±0.63的平均得分。结论:我们的初步调查结果表明我们的模型的预测可以最大限度地减少病理学家注释幻灯片所需的时间。此外,该方法具有精确识别囊层的可能性。进一步的发展可以帮助病理学家诊断T1膀胱癌。

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