Abstract

Radiomics provides opportunities to quantify the tumor phenotype non-invasively by applying a large number of quantitative imaging features. This study evaluates computed-tomography (CT) radiomic features for their capability to predict distant metastasis (DM) for lung adenocarcinoma patients. We included two datasets: 98 patients for discovery and 84 for validation. The phenotype of the primary tumor was quantified on pre-treatment CT-scans using 635 radiomic features. Univariate and multivariate analysis was performed to evaluate radiomics performance using the concordance index (CI). Thirty-five radiomic features were found to be prognostic (CI>0.60, FDR<5%) for DM and twelve for survival. It is noteworthy that tumor volume was only moderately prognostic for DM (CI=0.55, p-value=2.77×10(-5)) in the discovery cohort. A radiomic-signature had strong power for predicting DM in the independent validation dataset (CI=0.61, p-value=1.79×10(-17)). Adding this radiomic-signature to a clinical model resulted in a significant improvement of predicting DM in the validation dataset (p-value=1.56×10(-11)). Although only basic metrics are routinely quantified, this study shows that radiomic features capturing detailed information of the tumor phenotype can be used as a prognostic biomarker for clinically-relevant factors such as DM. Moreover, the radiomic-signature provided additional information to clinical data.

Keywords

RadiomicsConcordanceMedicineUnivariateImaging biomarkerMultivariate analysisAdenocarcinomaMultivariate statisticsBiomarkerConcordance correlation coefficientOncologyRadiologyInternal medicineMagnetic resonance imagingCancerComputer scienceStatisticsMachine learningMathematics

MeSH Terms

AdenocarcinomaAdenocarcinoma of LungAdultAgedAged80 and overFemaleHumansLung NeoplasmsMaleMiddle AgedNeoplasm MetastasisPrognosisTomographyX-Ray ComputedTumor Burden

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Publication Info

Year
2015
Type
article
Volume
114
Issue
3
Pages
345-350
Citations
695
Access
Closed

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Cite This

Thibaud Coroller, Patrick Großmann, Ying Hou et al. (2015). CT-based radiomic signature predicts distant metastasis in lung adenocarcinoma. Radiotherapy and Oncology , 114 (3) , 345-350. https://doi.org/10.1016/j.radonc.2015.02.015

Identifiers

DOI
10.1016/j.radonc.2015.02.015
PMID
25746350
PMCID
PMC4400248

Data Quality

Data completeness: 86%