Learning feature fusion via an interpretation method for tumor segmentation on PET/CT Journal Article


Authors: Kang, S.; Chen, Z.; Li, L.; Lu, W.; Qi, X. S.; Tan, S.
Article Title: Learning feature fusion via an interpretation method for tumor segmentation on PET/CT
Abstract: Accurate tumor segmentation of multi-modality PET/CT images plays a vital role in computer-aided cancer diagnosis and treatment. It is crucial to rationally fuse the complementary information in multi-modality PET/CT segmentation. However, existing methods usually lack interpretability and fail to sufficiently identify and aggregate critical information from different modalities. In this study, we proposed a novel segmentation framework that incorporated an interpretation module into the multi-modality segmentation backbone. The interpretation module highlighted critical features from each modality based on their contributions to the segmentation performance. To provide explicit supervision for the interpretation module, we introduced a novel interpretation loss with two fusion schemes: strengthened fusion and perturbed fusion. The interpretation loss guided the interpretation module to focus on informative features, enhancing its effectiveness in generating meaningful interpretable masks. Under the guidance of the interpretation module, the proposed approach can fully exploit meaningful features from each modality, leading to better integration of multi-modality information and improved segmentation performance. Ablative and comparative experiments were conducted on two PET/CT tumor segmentation datasets. The proposed approach surpassed the baseline by 1.4 and 1.8 Dices on two datasets, respectively, indicating the improvement achieved by the interpretation method. Furthermore, the proposed approach outperformed the best comparison approach by 0.9 and 0.6 Dices on two datasets, respectively. In addition, visualization and perturbation experiments further illustrated the effectiveness of the interpretation method in highlighting critical features. © 2023
Keywords: tumors; image segmentation; computer aided diagnosis; tumor segmentation; image fusion; multi-modality; ct image; deep learning; computer aided instruction; critical features; feature fusion; pet/ct images; segmentation performance; air navigation; network interpretation; features fusions; interpretation methods; pet/ct image
Journal Title: Applied Soft Computing
Volume: 148
ISSN: 1568-4946
Publisher: Elsevier B.V.  
Date Published: 2023-11-01
Start Page: 110825
Language: English
DOI: 10.1016/j.asoc.2023.110825
PROVIDER: scopus
DOI/URL:
Notes: Article -- Source: Scopus
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  1. Wei   Lu
    70 Lu