A Low-Dose CT-Based Radiomic Model to Improve Characterization and Screening Recall Intervals of Indeterminate Prevalent Pulmonary Nodules.
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Authors
Ledda, Roberta Eufrasia
di Noia, Christian
Sala, Evis
Milanese, Gianluca
Sverzellati, Nicola
Gilardi, Maria Carla
Messa, Maria Cristina
Publication Date
2021-09-03ISSN
2075-4418
Language
eng
Type
Article
This Version
VoR
Metadata
Show full item recordCitation
Rundo, L., Ledda, R. E., di Noia, C., Sala, E., Mauri, G., Milanese, G., Sverzellati, N., et al. (2021). A Low-Dose CT-Based Radiomic Model to Improve Characterization and Screening Recall Intervals of Indeterminate Prevalent Pulmonary Nodules.. https://doi.org/10.3390/diagnostics11091610
Abstract
Lung cancer (LC) is currently one of the main causes of cancer-related deaths worldwide. Low-dose computed tomography (LDCT) of the chest has been proven effective in secondary prevention (i.e., early detection) of LC by several trials. In this work, we investigated the potential impact of radiomics on indeterminate prevalent pulmonary nodule (PN) characterization and risk stratification in subjects undergoing LDCT-based LC screening. As a proof-of-concept for radiomic analyses, the first aim of our study was to assess whether indeterminate PNs could be automatically classified by an LDCT radiomic classifier as solid or sub-solid (first-level classification), and in particular for sub-solid lesions, as non-solid versus part-solid (second-level classification). The second aim of the study was to assess whether an LCDT radiomic classifier could automatically predict PN risk of malignancy, and thus optimize LDCT recall timing in screening programs. Model performance was evaluated using the area under the receiver operating characteristic curve (AUC), accuracy, positive predictive value, negative predictive value, sensitivity, and specificity. The experimental results showed that an LDCT radiomic machine learning classifier can achieve excellent performance for characterization of screen-detected PNs (mean AUC of 0.89 ± 0.02 and 0.80 ± 0.18 on the blinded test dataset for the first-level and second-level classifiers, respectively), providing quantitative information to support clinical management. Our study showed that a radiomic classifier could be used to optimize LDCT recall for indeterminate PNs. According to the performance of such a classifier on the blinded test dataset, within the first 6 months, 46% of the malignant PNs and 38% of the benign ones were identified, improving early detection of LC by doubling the current detection rate of malignant nodules from 23% to 46% at a low cost of false positives. In conclusion, we showed the high potential of LDCT-based radiomics for improving the characterization and optimizing screening recall intervals of indeterminate PNs.
Keywords
Machine Learning, Low-dose Computed Tomography, Pulmonary Nodules, Lung Cancer Screening, Radiomics, Lung Cancer Risk Stratification
Sponsorship
Mark Foundation For Cancer Research (C9685/A25177)
Cancer Research UK (C42780/A27066)
Associazione Italiana per la Ricerca sul Cancro (IG 12162, IG 11991, IG 18812)
Ministero della Salute (RF 2010-2306232, 2010-2310201)
Istituto Nazionale dei Tumori di Milano (EDRN UO1 CA166905)
Wellcome Trust (RG98755)
Identifiers
PMC8471292, 34573951
External DOI: https://doi.org/10.3390/diagnostics11091610
This record's URL: https://www.repository.cam.ac.uk/handle/1810/330099
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