Deep bone oncology Diagnostics: Computed tomography based Machine learning for detection of bone tumors from breast cancer metastasis
•Deep learning and radiomics distinguish bone tumors on CT as metastases from breast cancer.•Medical Image Segmentation via Self-distilling TransUNet (MISSU) model for bone tumors.•Potential for early detection and intervention in metastatic breast cancer.•Feasibility of integrating advanced imaging...
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Veröffentlicht in: | Journal of bone oncology 2024-10, Vol.48, p.100638, Article 100638 |
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Zusammenfassung: | •Deep learning and radiomics distinguish bone tumors on CT as metastases from breast cancer.•Medical Image Segmentation via Self-distilling TransUNet (MISSU) model for bone tumors.•Potential for early detection and intervention in metastatic breast cancer.•Feasibility of integrating advanced imaging analysis into routine clinical workflows.
The objective of this study is to develop a novel diagnostic tool using deep learning and radiomics to distinguish bone tumors on CT images as metastases from breast cancer. By providing a more accurate and reliable method for identifying metastatic bone tumors, this approach aims to significantly improve clinical decision-making and patient management in the context of breast cancer.
This study utilized CT images of bone tumors from 178 patients, including 78 cases of breast cancer bone metastases and 100 cases of non-breast cancer bone metastases. The dataset was processed using the Medical Image Segmentation via Self-distilling TransUNet (MISSU) model for automated segmentation. Radiomics features were extracted from the segmented tumor regions using the Pyradiomics library, capturing various aspects of tumor phenotype. Feature selection was conducted using LASSO regression to identify the most predictive features. The model’s performance was evaluated using ten-fold cross-validation, with metrics including accuracy, sensitivity, specificity, and the Dice similarity coefficient.
The developed radiomics model using the SVM algorithm achieved high discriminatory power, with an AUC of 0.936 on the training set and 0.953 on the test set. The model’s performance metrics demonstrated strong accuracy, sensitivity, and specificity. Specifically, the accuracy was 0.864 for the training set and 0.853 for the test set. Sensitivity values were 0.838 and 0.789 for the training and test sets, respectively, while specificity values were 0.896 and 0.933 for the training and test sets, respectively. These results indicate that the SVM model effectively distinguishes between bone metastases originating from breast cancer and other origins. Additionally, the average Dice similarity coefficient for the automated segmentation was 0.915, demonstrating a high level of agreement with manual segmentations.
This study demonstrates the potential of combining CT-based radiomics and deep learning for the accurate detection of bone metastases from breast cancer. The high-performance metrics indicate that this approach can significantly enhance di |
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ISSN: | 2212-1374 2212-1366 2212-1374 |
DOI: | 10.1016/j.jbo.2024.100638 |