Computer-aided diagnosis of distal metastasis in non-small cell lung cancer by low-dose CT based radiomics and deep learning signatures
- PMID: 38214839
- DOI: 10.1007/s11547-024-01770-6
Computer-aided diagnosis of distal metastasis in non-small cell lung cancer by low-dose CT based radiomics and deep learning signatures
Abstract
Background: This study aimed to develop and validate radiomics and deep learning (DL) signatures for predicting distal metastasis (DM) of non-small cell lung cancer (NSCLC) in low-dose computed tomography (LDCT).
Methods: Images and clinical data were retrospectively collected for 381 NSCLC patients and prospectively collected for 114 patients at the Fifth Affiliated Hospital of Sun Yat-Sen University. Additionally, we enrolled 179 patients from the Jiangmen Central Hospital to externally validate the signatures. Machine-learning algorithms were employed to develop radiomics signature while the DL signature was developed using neural architecture search. The diagnostic efficiency was primarily quantified with the area under receiver operating characteristic curve (AUC). We interpreted the reasoning process of the radiomics signature and DL signature by radiomics voxel mapping and attention weight tracking.
Results: A total of 674 patients with pathologically-confirmed NSCLC were included from two institutions, with 143 of them having DM. The radiomics signature achieved AUCs of 0.885, 0.854, and 0.733 in the internal validation, prospective validation, and external validation while those for DL signature were 0.893, 0.786, and 0.780. The proposed signatures achieved a promising performance in predicting the DM of NSCLC and outperformed the approaches proposed in previous studies. Interpretability analysis revealed that both radiomics and DL signatures could detect the variations among voxels inside tumors, which helped in identifying the DM of NSCLC.
Conclusions: Our study demonstrates the potential of LDCT-based radiomics and DL signatures for predicting DM in NSCLC. These signatures could help improve lung cancer screening regarding further diagnostic tests and treatment strategies.
Keywords: Cancer screening; Deep learning; Low dose computer tomography; Non-small cell lung cancer; Radiomics; Tumor metastasis.
© 2024. Italian Society of Medical Radiology.
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References
-
- Sung H, Ferlay J, Siegel RL et al (2021) Global cancer statistics 2020: GLOBOCAN estimates of incidence and mortality worldwide for 36 cancers in 185 countries. CA Cancer J Clin 71:209–249. https://doi.org/10.3322/caac.21660 - DOI - PubMed
-
- Duma N, Santana-Davila R, Molina JR (2019) Non-small cell lung cancer: epidemiology, screening, diagnosis, and treatment. Mayo Clin Proc 94:1623–1640. https://doi.org/10.1016/j.mayocp.2019.01.013 - DOI - PubMed
-
- National Cancer Institute (2023) The Surveillance E, and End Results (SEER) Program. Cancer Stat Facts: Lung and Bronchus Cancer. https://seer.cancer.gov/statfacts/html/lungb.html . Published December 11, 2011. Updated March 30, 2022. Accessed June 30
-
- Ashok A, Jiwnani SS, Karimundackal G et al (2021) Controversies in mediastinal staging for nonsmall cell lung cancer. Indian J Med Paediatr Oncol 42:406–414. https://doi.org/10.1055/s-0041-1739345 - DOI
-
- Lam S, Bai C, Baldwin D et al (2023) Current and future perspectives on CT screening for lung cancer: a road map for 2023–2027 from the IASLC. J Thorac Oncol. https://doi.org/10.1016/j.jtho.2023.07.019 - DOI - PubMed
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