| Literature DB >> 26251068 |
Chintan Parmar1, Ralph T H Leijenaar2, Patrick Grossmann3, Emmanuel Rios Velazquez4, Johan Bussink5, Derek Rietveld6, Michelle M Rietbergen7, Benjamin Haibe-Kains8, Philippe Lambin2, Hugo J W L Aerts9.
Abstract
Radiomics provides a comprehensive quantification of tumor phenotypes by extracting and mining large number of quantitative image features. To reduce the redundancy and compare the prognostic characteristics of radiomic features across cancer types, we investigated cancer-specific radiomic feature clusters in four independent Lung and Head &Neck (H) cancer cohorts (in total 878 patients). Radiomic features were extracted from the pre-treatment computed tomography (CT) images. Consensus clustering resulted in eleven and thirteen stable radiomic feature clusters for Lung and H cancer, respectively. These clusters were validated in independent external validation cohorts using rand statistic (Lung RS = 0.92, p < 0.001, H RS = 0.92, p < 0.001). Our analysis indicated both common as well as cancer-specific clustering and clinical associations of radiomic features. Strongest associations with clinical parameters: Prognosis Lung CI = 0.60 ± 0.01, Prognosis H CI = 0.68 ± 0.01; Lung histology AUC = 0.56 ± 0.03, Lung stage AUC = 0.61 ± 0.01, H HPV AUC = 0.58 ± 0.03, H stage AUC = 0.77 ± 0.02. Full utilization of these cancer-specific characteristics of image features may further improve radiomic biomarkers, providing a non-invasive way of quantifying and monitoring tumor phenotypic characteristics in clinical practice.Entities:
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Year: 2015 PMID: 26251068 PMCID: PMC4937496 DOI: 10.1038/srep11044
Source DB: PubMed Journal: Sci Rep ISSN: 2045-2322 Impact factor: 4.379
Figure 1(a) Radiomic analysis overview: For both Lung and H & N cancer datasets, we extracted radiomic features from pre-treatment CT images. Cluster analysis was performed on the feature data. (b) Datasets overview: Four independent radiomic cohorts of Lung and Head & Neck cancer were included in the analysis. Lung1 and HN1 were used for training; Lung2 and HN2 were used for validation.
Figure 2Heatmap showing the prognostic performance of radiomic features in Lung2 and HN2 cohorts.
Prognostic performance was evaluated using the concordance index (CI). Note that a large number of features are prognostic in both cancer types. However, also a large number of features are cancer-type specific, e.g. prognostic only in Lung or only in H & N cancer.
Figure 3Heatmaps for radiomic features of Lung and H & N training cohorts ordered with respect to the obtained Lung and H & N clusters.
(a–b) Cluster consensus maps of Lung cancer (11 clusters) and H & N cancer (13 clusters) cohorts. (c–d) Radiomic feature expressions of Lung and H & N radiomic clusters. (e–f) Clinical relevance (CI & AUC) of radiomic clusters of Lung and H & N cancer.
Cluster table describing cluster size, size of each feature category, within cluster correlation, cluster consensus, average CI and AUC and selected representative features in Lung cancer.
Cluster table describing cluster size, size of each feature category, within cluster correlation, cluster consensus, average CI and AUC and selected representative features in H & N cancer.
Figure 4Heatmap depicting cluster overlap and clinical relevance (CI & AUC).
Center matrix in green & white color represents the overlap (Jaccard index) between the clusters of Lung (rows) and H & N (columns) radiomic cohorts. Top and left side panels in blue & white color depicts the average CI & AUC of the corresponding Lung and H & N radiomic clusters.