IEEE Trans Med Imaging. 2021 Feb;40(2):735-747. doi: 10.1109/TMI.2020.3035789. Epub 2021 Feb 2.
Pancreatic cancer is a malignant form of cancer with one of the worst prognoses. The poor prognosis and resistance to therapeutic modalities have been linked to TP53 mutation. Pathological examinations, such as biopsies, cannot be frequently performed in clinical practice; therefore, noninvasive and reproducible methods are desired. However, automatic prediction methods based on imaging have drawbacks such as poor 3D information utilization, small sample size, and ineffectiveness multi-modal fusion. In this study, we proposed a model-driven multi-modal deep learning scheme to overcome these challenges. A spiral transformation algorithm was developed to obtain 2D images from 3D data, with the transformed image inheriting and retaining the spatial correlation of the original texture and edge information. The spiral transformation could be used to effectively apply the 3D information with less computational resources and conveniently augment the data size with high quality. Moreover, model-driven items were designed to introduce prior knowledge in the deep learning framework for multi-modal fusion. The model-driven strategy and spiral transformation-based data augmentation can improve the performance of the small sample size. A bilinear pooling module was introduced to improve the performance of fine-grained prediction. The experimental results show that the proposed model gives the desired performance in predicting TP53 mutation in pancreatic cancer, providing a new approach for noninvasive gene prediction. The proposed methodologies of spiral transformation and model-driven deep learning can also be used for the artificial intelligence community dealing with oncological applications. Our source codes with a demon will be released at https://github.com/SJTUBME-QianLab/SpiralTransform.
胰腺癌是一种恶性癌症,预后最差。不良的预后和对治疗方式的耐药性与 TP53 突变有关。在临床实践中,无法频繁进行病理检查,如活检;因此,需要非侵入性和可重复的方法。然而,基于成像的自动预测方法存在一些缺点,例如 3D 信息利用不佳、样本量小以及多模态融合无效。在本研究中,我们提出了一种模型驱动的多模态深度学习方案来克服这些挑战。开发了一种螺旋变换算法,从 3D 数据中获取 2D 图像,变换后的图像继承和保留了原始纹理和边缘信息的空间相关性。螺旋变换可以有效地利用较少的计算资源应用 3D 信息,并方便地以高质量增加数据量。此外,设计了模型驱动项以在多模态融合的深度学习框架中引入先验知识。模型驱动策略和基于螺旋变换的数据增强可以提高小样本量的性能。引入了双线性池化模块来提高细粒度预测的性能。实验结果表明,所提出的模型在预测胰腺癌中的 TP53 突变方面表现出了所需的性能,为非侵入性基因预测提供了一种新方法。螺旋变换和模型驱动深度学习的方法也可以用于处理肿瘤学应用的人工智能社区。我们的带有演示的源代码将在 https://github.com/SJTUBME-QianLab/SpiralTransform 上发布。