结合肿瘤分割面具与PET/CT图像和临床数据在深度学习框架中改进头颈部鳞状细胞癌的预后预测

K. Wahid, R. He, C. Dede, A. Mohamed, M. A. Abdelaal, L. V. Dijk, C. Fuller, M. Naser
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引用次数: 9

摘要

PET/CT图像为头颈部鳞状细胞癌(HNSCC)的临床预测模型提供了丰富的数据来源。深度学习模型通常以端到端的方式使用图像和临床数据,或者不需要额外的预测输入。然而,在HNSCC的背景下,感兴趣的肿瘤区域可能是产生改进预测性能的信息先验。在这项研究中,我们利用基于DenseNet架构的深度学习框架,将PET图像、CT图像、原发肿瘤分割掩码和临床数据作为单独的通道来预测HNSCC患者的无进展生存期(PFS)。通过基于2021年HECKTOR挑战赛提供的大量训练数据的内部验证(10倍交叉验证),我们获得了在C-index计算中包括观测事件和不包括观测事件时的平均C-index分别为0.855 +- 0.060和0.650 +- 0.074。将集成方法应用于交叉验证折叠,在独立测试集(外部验证)中c指数值高达0.698。重要的是,与不使用分割掩码的模型相比,添加的分割掩码的价值在内部和外部验证中都通过改进c指数来强调。这些有希望的结果强调了将分割掩码作为深度学习管道中用于HNSCC临床结果预测的额外输入通道的实用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Combining Tumor Segmentation Masks with PET/CT Images and Clinical Data in a Deep Learning Framework for Improved Prognostic Prediction in Head and Neck Squamous Cell Carcinoma
PET/CT images provide a rich data source for clinical prediction models in head and neck squamous cell carcinoma (HNSCC). Deep learning models often use images in an end-to-end fashion with clinical data or no additional input for predictions. However, in the context of HNSCC, the tumor region of interest may be an informative prior in the generation of improved prediction performance. In this study, we utilize a deep learning framework based on a DenseNet architecture to combine PET images, CT images, primary tumor segmentation masks, and clinical data as separate channels to predict progression-free survival (PFS) in days for HNSCC patients. Through internal validation (10-fold cross-validation) based on a large set of training data provided by the 2021 HECKTOR Challenge, we achieve a mean C-index of 0.855 +- 0.060 and 0.650 +- 0.074 when observed events are and are not included in the C-index calculation, respectively. Ensemble approaches applied to cross-validation folds yield C-index values up to 0.698 in the independent test set (external validation). Importantly, the value of the added segmentation mask is underscored in both internal and external validation by an improvement of the C-index when compared to models that do not utilize the segmentation mask. These promising results highlight the utility of including segmentation masks as additional input channels in deep learning pipelines for clinical outcome prediction in HNSCC.
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