Sobecki Piotr, Jóźwiak Rafał, Sklinda Katarzyna, Przelaskowski Artur
Applied Artificial Intelligence Laboratory, National Information Processing Institute, Warsaw, Mazowieckie, Poland.
Faculty of Mathematics and Information Science, Warsaw University of Technology, Warsaw, Poland.
PeerJ. 2021 Mar 9;9:e11006. doi: 10.7717/peerj.11006. eCollection 2021.
Prostate cancer is one of the most common cancers worldwide. Currently, convolution neural networks (CNNs) are achieving remarkable success in various computer vision tasks, and in medical imaging research. Various CNN architectures and methodologies have been applied in the field of prostate cancer diagnosis. In this work, we evaluate the impact of the adaptation of a state-of-the-art CNN architecture on domain knowledge related to problems in the diagnosis of prostate cancer. The architecture of the final CNN model was optimised on the basis of the Prostate Imaging Reporting and Data System (PI-RADS) standard, which is currently the best available indicator in the acquisition, interpretation, and reporting of prostate multi-parametric magnetic resonance imaging (mpMRI) examinations.
A dataset containing 330 suspicious findings identified using mpMRI was used. Two CNN models were subjected to comparative analysis. Both implement the concept of decision-level fusion for mpMRI data, providing a separate network for each multi-parametric series. The first model implements a simple fusion of multi-parametric features to formulate the final decision. The architecture of the second model reflects the diagnostic pathway of PI-RADS methodology, using information about a lesion's primary anatomic location within the prostate gland. Both networks were experimentally tuned to successfully classify prostate cancer changes.
The optimised knowledge-encoded model achieved slightly better classification results compared with the traditional model architecture (AUC = 0.84 vs. AUC = 0.82). We found the proposed model to achieve convergence significantly faster.
The final knowledge-encoded CNN model provided more stable learning performance and faster convergence to optimal diagnostic accuracy. The results fail to demonstrate that PI-RADS-based modelling of CNN architecture can significantly improve performance of prostate cancer recognition using mpMRI.
前列腺癌是全球最常见的癌症之一。目前,卷积神经网络(CNN)在各种计算机视觉任务以及医学成像研究中取得了显著成功。各种CNN架构和方法已应用于前列腺癌诊断领域。在这项工作中,我们评估了一种先进的CNN架构的适应性对与前列腺癌诊断问题相关的领域知识的影响。最终CNN模型的架构是基于前列腺影像报告和数据系统(PI-RADS)标准进行优化的,该标准是目前前列腺多参数磁共振成像(mpMRI)检查的采集、解读和报告中可用的最佳指标。
使用了一个包含通过mpMRI识别出的330个可疑发现的数据集。对两个CNN模型进行了比较分析。两者都实现了针对mpMRI数据的决策级融合概念,为每个多参数系列提供一个单独的网络。第一个模型实现了多参数特征的简单融合以形成最终决策。第二个模型的架构反映了PI-RADS方法的诊断途径,使用了关于病变在前列腺内主要解剖位置的信息。两个网络都经过实验调整以成功对前列腺癌变化进行分类。
与传统模型架构相比,优化后的知识编码模型取得了略好的分类结果(AUC = 0.84对AUC = 0.82)。我们发现所提出的模型收敛速度明显更快。
最终的知识编码CNN模型提供了更稳定的学习性能,并能更快地收敛到最佳诊断准确性。结果未能证明基于PI-RADS的CNN架构建模能显著提高使用mpMRI识别前列腺癌的性能。