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Open AccessJournal ArticleDOI

Impact of radiogenomics in esophageal cancer on clinical outcomes: A pilot study.

TLDR
In this paper, the authors explored the combination of CT radiomic features and molecular targets associated with clinical outcomes for characterization of ESCA patients using a correlation filter based on Spearman's correlation (ρ) and Wilcoxon-rank sum test respect to clinical outcomes.
Abstract
Background Esophageal cancer (ESCA) is the sixth most common malignancy in the world, and its incidence is rapidly increasing. Recently, several microRNAs (miRNAs) and messenger RNA (mRNA) targets were evaluated as potential biomarkers and regulators of epigenetic mechanisms involved in early diagnosis. In addition, computed tomography (CT) radiomic studies on ESCA improved the early stage identification and the prediction of response to treatment. Radiogenomics provides clinically useful prognostic predictions by linking molecular characteristics such as gene mutations and gene expression patterns of malignant tumors with medical images and could provide more opportunities in the management of patients with ESCA. Aim To explore the combination of CT radiomic features and molecular targets associated with clinical outcomes for characterization of ESCA patients. Methods Of 15 patients with diagnosed ESCA were included in this study and their CT imaging and transcriptomic data were extracted from The Cancer Imaging Archive and gene expression data from The Cancer Genome Atlas, respectively. Cancer stage, history of significant alcohol consumption and body mass index (BMI) were considered as clinical outcomes. Radiomic analysis was performed on CT images acquired after injection of contrast medium. In total, 1302 radiomics features were extracted from three-dimensional regions of interest by using PyRadiomics. Feature selection was performed using a correlation filter based on Spearman's correlation (ρ) and Wilcoxon-rank sum test respect to clinical outcomes. Radiogenomic analysis involved ρ analysis between radiomic features associated with clinical outcomes and transcriptomic signatures consisting of eight N6-methyladenosine RNA methylation regulators and five up-regulated miRNA. The significance level was set at P Results Of 25, five and 29 radiomic features survived after feature selection, considering stage, alcohol history and BMI as clinical outcomes, respectively. Radiogenomic analysis with stage as clinical outcome revealed that six of the eight mRNA regulators and two of the five up-regulated miRNA were significantly correlated with ten and three of the 25 selected radiomic features, respectively (-0.61 Conclusion Our study revealed interesting relationships between the expression of eight N6-methyladenosine RNA regulators, as well as five up-regulated miRNAs, and CT radiomic features associated with clinical outcomes of ESCA patients.

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Citations
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Journal ArticleDOI

The diverse role of RNA methylation in esophageal cancer

TL;DR: In this paper , the authors focus on the regulation of major RNA methylation, including m 6A, m 5C, and m 7G, and summarize how these RNA modifications affect the "life cycle" of target RNAs, including mRNA, microRNA, long non-coding RNA, and tRNA.
Journal ArticleDOI

The application of radiomics in esophageal cancer: Predicting the response after neoadjuvant therapy

TL;DR: In this article , the authors discuss the definition and workflow of radiomics, the advances in efficacy prediction after NAT, and the current application for predicting efficacy after NAT for esophageal cancer.
References
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Journal ArticleDOI

The role of obesity in oesophageal cancer development.

TL;DR: There are no proven chemopreventative interventions that may reduce the incidence of obesity-associated oesophageal cancer: observational studies suggest that the combined use of a statin and aspirin or another cyclo-oxygenase inhibitor is associated with a significantly reduced cancer incidence in patients with Barrett’s Oesophagus.
Posted Content

Feature Selection Library (MATLAB Toolbox)

TL;DR: This short report provides an overview of the feature selection algorithms included in the FSLib MATLAB toolbox among filter, embedded, and wrappers methods.
Journal ArticleDOI

m6A Regulators Is Differently Expressed and Correlated With Immune Response of Esophageal Cancer

TL;DR: Wang et al. as mentioned in this paper analyzed the gene expression data of 24 major m6A RNA methylation regulators from 775 patients with esophageal cancer from TCGA dataset.
Journal ArticleDOI

Radiomics in esophageal and gastric cancer.

TL;DR: This review assesses the evidence to date and discusses how radiomic approaches could improve outcome in esophageal, esophago-gastric, and gastric cancer and Radiomic approaches provide an opportunity to improve tumor phenotyping.
Journal ArticleDOI

Esophageal Cancer: Evaluation with Triple-Phase Dynamic CT—Initial Experience

TL;DR: The second arterial phase of dynamic CT is the optimal phase for visualization of esophageal cancer.
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