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Erschienen in: European Radiology 5/2019

06.12.2018 | Computed Tomography

Diabetes risk assessment with imaging: a radiomics study of abdominal CT

verfasst von: Chun-Qiang Lu, Yuan-Cheng Wang, Xiang-Pan Meng, Hai-Tong Zhao, Chu-Hui Zeng, Weiwei Xu, Ya-Ting Gao, Shenghong Ju

Erschienen in: European Radiology | Ausgabe 5/2019

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Abstract

Objectives

To identify CT markers for screening of early type 2 diabetes and assessment of the risk of incident diabetes using a radiomics method.

Methods

The medical records of 26,947 inpatients were reviewed. A total of 690 patients were selected and allocated to a primary cohort, a validation cohort, and a prediction cohort and used to build prediction models for diabetes. Three radiomics signatures were constructed using CT image features extracted from three regions of interest, i.e., in the pancreas, liver, and psoas major muscle. By incorporating radiomics signatures and other markers, we built a radiomics nomogram that could be used to screen for early diabetes and predict future diabetes.

Results

Of the three abdominal organs for which radiomics signature were constructed, that of the pancreas showed the best discriminatory power for early diabetes screening and prediction (C-statistics of 0.833, 0.846, and 0.899 for the primary cohort, validation cohort, and prediction cohort, respectively). The sensitivity and specificity of the nomogram for prediction of 3-year incident diabetes were 0.827 and 0.807, respectively.

Conclusions

This study presents alternative radiomics markers that have potential for use in screening for undiagnosed type 2 diabetes and prediction of 3-year incident diabetes.

Key Points

CT images may provide useful information to evaluate the risk of developing diabetes.
• Radiomics score for diabetes prediction is based on subtle changes of abdominal organs detected by CT.
• The radiomics signature of pancreas, a combination of five features of CT images, is efficient for early diabetes screening and prediction of future diabetes (AUC > 0.8).
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Metadaten
Titel
Diabetes risk assessment with imaging: a radiomics study of abdominal CT
verfasst von
Chun-Qiang Lu
Yuan-Cheng Wang
Xiang-Pan Meng
Hai-Tong Zhao
Chu-Hui Zeng
Weiwei Xu
Ya-Ting Gao
Shenghong Ju
Publikationsdatum
06.12.2018
Verlag
Springer Berlin Heidelberg
Erschienen in
European Radiology / Ausgabe 5/2019
Print ISSN: 0938-7994
Elektronische ISSN: 1432-1084
DOI
https://doi.org/10.1007/s00330-018-5865-5

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