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Viable and necrotic tumor assessment from whole slide images of osteosarcoma using machine-learning and deep-learning models

机译:使用机器学习和深度学习模型从骨肉瘤的整个幻灯片图像评估可行和坏死的肿瘤

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摘要

Pathological estimation of tumor necrosis after chemotherapy is essential for patients with osteosarcoma. This study reports the first fully automated tool to assess viable and necrotic tumor in osteosarcoma, employing advances in histopathology digitization and automated learning. We selected 40 digitized whole slide images representing the heterogeneity of osteosarcoma and chemotherapy response. With the goal of labeling the diverse regions of the digitized tissue into viable tumor, necrotic tumor, and non-tumor, we trained 13 machine-learning models and selected the top performing one (a Support Vector Machine) based on reported accuracy. We also developed a deep-learning architecture and trained it on the same data set. We computed the receiver-operator characteristic for discrimination of non-tumor from tumor followed by conditional discrimination of necrotic from viable tumor and found our models performing exceptionally well. We then used the trained models to identify regions of interest on image-tiles generated from test whole slide images. The classification output is visualized as a tumor-prediction map, displaying the extent of viable and necrotic tumor in the slide image. Thus, we lay the foundation for a complete tumor assessment pipeline from original histology images to tumor-prediction map generation. The proposed pipeline can also be adopted for other types of tumor.
机译:化疗后肿瘤坏死的病理评估对于骨肉瘤患者至关重要。这项研究报告了第一个全自动工具,利用组织病理学数字化技术和自动化学习技​​术来评估骨肉瘤中的生存性和坏死性肿瘤。我们选择了40个数字化的完整幻灯片图像,它们代表了骨肉瘤的异质性和化疗反应。为了将数字化组织的不同区域标记为可行的肿瘤,坏死性肿瘤和非肿瘤,我们训练了13种机器学习模型,并根据报告的准确性选择了性能最高的模型(一种支持向量机)。我们还开发了深度学习架构,并在相同的数据集上对其进行了训练。我们计算了接收者-操作者的特征,以区分肿瘤中的非肿瘤,然后有条件地区分出存活肿瘤中的坏死细胞,发现我们的模型表现异常出色。然后,我们使用训练有素的模型来确定从测试整个幻灯片图像生成的图像平铺上的感兴趣区域。分类输出可视化为肿瘤预测图,在幻灯片图像中显示了可行和坏死的肿瘤范围。因此,我们为从原始组织学图像到肿瘤预测图生成的完整肿瘤评估流程奠定了基础。拟议中的管道还可以用于其他类型的肿瘤。

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