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Exploratory Study to Identify Radiomics Classifiers for Lung Cancer Histology

2016·370 Zitationen·Frontiers in OncologyOpen Access
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370

Zitationen

8

Autoren

2016

Jahr

Abstract

Histological subtypes can influence the choice of a treatment/therapy for lung cancer patients. We observed that radiomic features show significant association with the lung tumor histology. Moreover, radiomics-based multivariate classifiers were independently validated for the prediction of histological subtypes. Despite achieving lower than optimal prediction accuracy (AUC 0.72), our analysis highlights the impressive potential of non-invasive and cost-effective radiomics for precision medicine. Further research in this direction could lead us to optimal performance and therefore to clinical applicability, which could enhance the efficiency and efficacy of cancer care.

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