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Integrating deep and radiomics features in cancer bioimaging

机译:在癌症生物成像中整合深层和放射学特征

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Almost every clinical specialty will use artificial intelligence in the future. The first area of practical impact is expected to be the rapid and accurate interpretation of image streams such as radiology scans, histo-pathology slides, ophthalmic imaging, and any other bioimaging diagnostic systems, enriched by clinical phenotypes used as outcome labels or additional descriptors. In this study, we introduce a machine learning framework for automatic image interpretation that combines the current pattern recognition approach (“radiomics”) with Deep Learning (DL). As a first application in cancer bioimaging, we apply the framework for prognosis of locoregional recurrence in head and neck squamous cell carcinoma (N=298)from Computed Tomography (CT)and Positron Emission Tomography (PET)imaging. The DL architecture is composed of two parallel cascades of Convolutional Neural Network (CNN)layers merging in a softmax classification layer. The network is first pretrained on head and neck tumor stage diagnosis, then fine-tuned on the prognostic task by internal transfer learning. In parallel, radiomics features (e.g., shape of the tumor mass, texture and pixels intensity statistics)are derived by predefined feature extractors on the CT/PET pairs. We compare and mix deep learning and radiomics features into a unifying classification pipeline (RADLER), where model selection and evaluation are based on a data analysis plan developed in the MAQC initiative for reproducible biomarkers. On the multimodal CT/PET cancer dataset, the mixed deep learning/radiomics approach is more accurate than using only one feature type, or image mode. Further, RADLER significantly improves over published results on the same data.
机译:未来几乎每个临床专业都将使用人工智能。实际影响的第一个领域是对图像流进行快速,准确的解释,例如放射学扫描,组织病理学幻灯片,眼科影像学和任何其他生物影像学诊断系统,并通过用作结果标签或其他描述符的临床表型加以充实。在这项研究中,我们介绍了一种用于自动图像解释的机器学习框架,该框架将当前的模式识别方法(“放射学”)与深度学习(DL)相结合。作为在癌症生物成像中的第一个应用,我们将头颅鳞状细胞癌(N = 298)的局部复发的框架应用到计算机断层扫描(CT)和正电子发射断层扫描(PET)成像中。 DL体系结构由合并在softmax分类层中的两个并行级联的卷积神经网络(CNN)层组成。首先对网络进行头颈部肿瘤分期诊断培训,然后通过内部转移学习对预后任务进行微调。并行地,放射学特征(例如,肿瘤块的形状,纹理和像素强度统计)由CT / PET对上的预定特征提取器导出。我们将深度学习和放射学特征进行比较和混合,形成统一的分类管道(RADLER),其中模型的选择和评估基于MAQC计划中针对可再生生物标记物开发的数据分析计划。在多模式CT / PET癌症数据集上,混合深度学习/放射学方法比仅使用一种特征类型或图像模式更为准确。此外,RADLER大大改善了在相同数据上发布的结果。

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