Machine Learning Group at the Department of Physics and Technology, UiT the Arctic University of Norway, Tromsø NO-9037, Norway.
Machine Learning Group at the Department of Physics and Technology, UiT the Arctic University of Norway, Tromsø NO-9037, Norway.
Comput Med Imaging Graph. 2023 Jul;107:102239. doi: 10.1016/j.compmedimag.2023.102239. Epub 2023 May 9.
Deep learning-based approaches for content-based image retrieval (CBIR) of computed tomography (CT) liver images is an active field of research, but suffer from some critical limitations. First, they are heavily reliant on labeled data, which can be challenging and costly to acquire. Second, they lack transparency and explainability, which limits the trustworthiness of deep CBIR systems. We address these limitations by: (1) Proposing a self-supervised learning framework that incorporates domain-knowledge into the training procedure, and, (2) by providing the first representation learning explainability analysis in the context of CBIR of CT liver images. Results demonstrate improved performance compared to the standard self-supervised approach across several metrics, as well as improved generalization across datasets. Further, we conduct the first representation learning explainability analysis in the context of CBIR, which reveals new insights into the feature extraction process. Lastly, we perform a case study with cross-examination CBIR that demonstrates the usability of our proposed framework. We believe that our proposed framework could play a vital role in creating trustworthy deep CBIR systems that can successfully take advantage of unlabeled data.
基于深度学习的 CT 肝脏图像基于内容的图像检索(CBIR)方法是一个活跃的研究领域,但存在一些关键的局限性。首先,它们严重依赖于标记数据,这在获取方面可能具有挑战性和成本高昂。其次,它们缺乏透明度和可解释性,这限制了深度 CBIR 系统的可信度。我们通过以下方式解决这些限制:(1)提出了一个自监督学习框架,将领域知识纳入训练过程;(2)通过在 CT 肝脏图像 CBIR 的背景下提供首次表示学习可解释性分析。结果表明,与标准的自监督方法相比,在多个指标上的性能都有所提高,并且在数据集之间的泛化能力也有所提高。此外,我们在 CBIR 的背景下进行了首次表示学习可解释性分析,这揭示了特征提取过程的新见解。最后,我们进行了一个交叉检查 CBIR 的案例研究,展示了我们提出的框架的可用性。我们相信,我们提出的框架可以在创建可信赖的深度 CBIR 系统方面发挥重要作用,这些系统可以成功地利用未标记的数据。