从组织病理学图像生成用于量化新辅助化疗切除标本中坏死的合成数据集

T. S. Saleena, Muhamed Ilyas P, Sajna V. M. Kutty
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引用次数: 0

摘要

化疗后肿瘤组织的死亡是骨肉瘤和肾细胞癌治疗方案中最重要的决定因素。由于这种化疗而累积的坏死百分比将有助于医生评估患者癌症的严重程度。深度学习算法可以自动分割坏死区域,并使用数字组织病理学图像找到该区域的体积。这可以减少在病理学家手工分割时产生的观察者之间的分歧。但数据供应不足,尤其是病理图像的数据供应不足,一直是深度学习算法的障碍。在我们的研究中,我们从47张图像中创建了一个合成数据集,这些图像由经验丰富的病理学家捕获并手动注释。捕获的每张图像的尺寸为2592×1932,这些图像被分成大小为512×512的小块。因此,我们可以从每张图像中获得15个补丁,因此我们创建了一个包含705个样本的数据集。可以将不同的增强技术应用于此数据集,从而再次增加数量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Synthetic Dataset Generation From Histopathology Images For Quantizing Necrosis In Post Neo-Adjuvant Chemotherapy Resection Specimen
The death of tumor tissues after chemotherapy is the most important decision factor in the treatment plan in the case of Osteosarcoma and Renal Cell Carcinoma. The percentage of necrosis accumulated due to such chemotherapy will help the doctors to assess the severity of cancer in the patient. Deep learning algorithms can automatically segment the region of necrosis and find the volume of the region using digital histopathology images. This can reduce the inter-observer disagreement that arises at the time of manual segmentation by the pathologists. But the undersupply of data, especially in pathology images is an ever-time obstacle in deep learning algorithms. In our study we have created a synthetic dataset from 47 images which are captured and manually annotated by experienced pathologists. Each image captured is of dimensions 2592×1932, which are split into patches of size 512×512. So we can have 15 patches from each image and thereby we created a dataset of 705 samples. Different augmentation techniques can be applied to this dataset that can again increment the number.
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