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High-resolution MRI-based radiomics analysis to predict lymph node metastasis and tumor deposits respectively in rectal cancer
by
Ya-qiong, Ge
, Yan-song, Yang
, Yong-juan, Qiu
, Gui-hua, Zheng
, Feng, Feng
, Yue-tao, Wang
in
Cancer
/ Colorectal cancer
/ Confidence intervals
/ Feature extraction
/ High resolution
/ Image resolution
/ Image segmentation
/ Lymph nodes
/ Lymphatic system
/ Magnetic resonance imaging
/ Metastases
/ Metastasis
/ Nomograms
/ Performance prediction
/ Radiomics
/ Rectum
/ Risk analysis
/ Risk factors
/ Sensitivity
/ Training
/ Tumors
2021
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High-resolution MRI-based radiomics analysis to predict lymph node metastasis and tumor deposits respectively in rectal cancer
by
Ya-qiong, Ge
, Yan-song, Yang
, Yong-juan, Qiu
, Gui-hua, Zheng
, Feng, Feng
, Yue-tao, Wang
in
Cancer
/ Colorectal cancer
/ Confidence intervals
/ Feature extraction
/ High resolution
/ Image resolution
/ Image segmentation
/ Lymph nodes
/ Lymphatic system
/ Magnetic resonance imaging
/ Metastases
/ Metastasis
/ Nomograms
/ Performance prediction
/ Radiomics
/ Rectum
/ Risk analysis
/ Risk factors
/ Sensitivity
/ Training
/ Tumors
2021
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High-resolution MRI-based radiomics analysis to predict lymph node metastasis and tumor deposits respectively in rectal cancer
by
Ya-qiong, Ge
, Yan-song, Yang
, Yong-juan, Qiu
, Gui-hua, Zheng
, Feng, Feng
, Yue-tao, Wang
in
Cancer
/ Colorectal cancer
/ Confidence intervals
/ Feature extraction
/ High resolution
/ Image resolution
/ Image segmentation
/ Lymph nodes
/ Lymphatic system
/ Magnetic resonance imaging
/ Metastases
/ Metastasis
/ Nomograms
/ Performance prediction
/ Radiomics
/ Rectum
/ Risk analysis
/ Risk factors
/ Sensitivity
/ Training
/ Tumors
2021
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High-resolution MRI-based radiomics analysis to predict lymph node metastasis and tumor deposits respectively in rectal cancer
Journal Article
High-resolution MRI-based radiomics analysis to predict lymph node metastasis and tumor deposits respectively in rectal cancer
2021
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Overview
PurposeTo establish and validate two predictive radiomics models for preoperative prediction of lymph node metastases (LNMs) and tumor deposits (TDs) respectively in rectal cancer (RC) patients.MethodsA total of 139 RC patients (98 in the training cohort and 41 in the validation cohort) were enrolled in the present study. High-resolution magnetic resonance images (HRMRI) were retrieved for tumor segmentation and feature extraction. HRMRI findings of RC were assessed by three experienced radiologists. Two radiomics nomograms were established by integrating the clinical risk factors, HRMRI findings and radiomics signature.ResultsThe predictive nomogram of LNMs showed good predictive performance (area under the curve [AUC], 0.90; 95% confidence interval [CI] 0.83–0.96) which was better than clinico-radiological (AUC, 0.83; 95% CI 0.74–0.93; Delong test, p = 0.017) or radiomics signature-only model (AUC, 0.77; 95% CI 0.67–0.86; Delong test, p = 0.003) in training cohort. Application of the nomogram in the validation cohort still exhibited good performance (AUC, 0.87; 95% CI 0.76–0.98). The accuracy, sensitivity and specificity of the combined model in predicting LNMs was 0.86,0.79 and 0.91 in training cohort and 0.83,0.85 and 0.82 in validation cohort. As for TDs, the predictive efficacy of the nomogram (AUC, 0.82; 95% CI 0.71–0.93) was not significantly higher than radiomics signature-only model (AUC, 0.80; 95% CI 0.69–0.92; Delong test, p = 0.71). Radiomics signature-only model was adopted to predict TDs with accuracy=0.76, sensitivity=0.72 and specificity=0.94 in training cohort and 0.68, 0.62 and 0.97 in validation cohort.ConclusionHRMRI-based radiomics models could be helpful for the prediction of LNMs and TDs preoperatively in RC patients.
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