CC-DCNet: Dynamic Convolutional Neural Network with Contrastive Constraints for Identifying Lung Cancer Subtypes on Multi-modality Images
The accurate diagnosis of pathological subtypes of lung cancer is of paramount importance for follow-up treatments and prognosis managements. Assessment methods utilizing deep learning technologies have introduced novel approaches for clinical diagnosis. However, the majority of existing models rely...
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Zusammenfassung: | The accurate diagnosis of pathological subtypes of lung cancer is of
paramount importance for follow-up treatments and prognosis managements.
Assessment methods utilizing deep learning technologies have introduced novel
approaches for clinical diagnosis. However, the majority of existing models
rely solely on single-modality image input, leading to limited diagnostic
accuracy. To this end, we propose a novel deep learning network designed to
accurately classify lung cancer subtype with multi-dimensional and
multi-modality images, i.e., CT and pathological images. The strength of the
proposed model lies in its ability to dynamically process both paired
CT-pathological image sets as well as independent CT image sets, and
consequently optimize the pathology-related feature extractions from CT images.
This adaptive learning approach enhances the flexibility in processing
multi-dimensional and multi-modality datasets and results in performance
elevating in the model testing phase. We also develop a contrastive constraint
module, which quantitatively maps the cross-modality associations through
network training, and thereby helps to explore the "gold standard" pathological
information from the corresponding CT scans. To evaluate the effectiveness,
adaptability, and generalization ability of our model, we conducted extensive
experiments on a large-scale multi-center dataset and compared our model with a
series of state-of-the-art classification models. The experimental results
demonstrated the superiority of our model for lung cancer subtype
classification, showcasing significant improvements in accuracy metrics such as
ACC, AUC, and F1-score. |
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DOI: | 10.48550/arxiv.2407.13092 |