The Impact of Resampling and Denoising Deep Learning Algorithms on Radiomics in Brain Metastases MRI

被引:9
|
作者
Moummad, Ilyass [1 ]
Jaudet, Cyril [1 ]
Lechervy, Alexis [2 ]
Valable, Samuel [3 ]
Raboutet, Charlotte [4 ]
Soilihi, Zamila [1 ]
Thariat, Juliette [5 ]
Falzone, Nadia [6 ]
Lacroix, Joelle [4 ]
Batalla, Alain [1 ]
Corroyer-Dulmont, Aurelien [1 ,3 ]
机构
[1] CLCC Francois Baclesse, Med Phys Dept, F-14000 Caen, France
[2] Normandie Univ, CNRS, UMR, UNICAEN,ENSICAEN,GREYC, F-14000 Caen, France
[3] Normandie Univ, CNRS, CEA, UNICAEN,ISTCT CERVOxy Grp, F-14000 Caen, France
[4] CLCC Francois Baclesse, Radiol Dept, F-14000 Caen, France
[5] CLCC Francois Baclesse, Radiotherapy Dept, F-14000 Caen, France
[6] GenesisCare Theranost, Bldg 1&11,Mill,41-43 Bourke Rd, Alexandria, NSW 2015, Australia
关键词
deep learning; radiomics; MRI; resampling; denoising; FEATURE STABILITY; TEST-RETEST; IMAGE; NOISE;
D O I
10.3390/cancers14010036
中图分类号
R73 [肿瘤学];
学科分类号
100214 ;
摘要
Simple Summary Due to the central role of magnetic resonance Imaging (MRI) in the management of patients with cancer, waiting lists exceed clinically relevant delays. For this reason, many research groups and MRI manufacturers develop algorithms as resampling and denoising models to allow faster acquisition time without deterioration in image quality. Whereas these algorithms are available in all new MRI, it is not clear how they will impact image features as well as the validity of statistical model of radiomics which use deep images characteristics to predict treatment outcome. The aim of this study was to develop resampling and denoising deep learning (DL) models and evaluate their impact on radiomics from post-Gd-T1w-MRI brain images with brain metastases. We show that resampling and denoising DL models reconstruct low resolution and noised MRI images acquired quickly into high quality images. While fast acquisition loses most of the radiomic-features and invalidates predictive radiomic models, DL models restore these parameters. Background: Magnetic resonance imaging (MRI) is predominant in the therapeutic management of cancer patients, unfortunately, patients have to wait a long time to get an appointment for examination. Therefore, new MRI devices include deep-learning (DL) solutions to save acquisition time. However, the impact of these algorithms on intensity and texture parameters has been poorly studied. The aim of this study was to evaluate the impact of resampling and denoising DL models on radiomics. Methods: Resampling and denoising DL model was developed on 14,243 T1 brain images from 1.5T-MRI. Radiomics were extracted from 40 brain metastases from 11 patients (2049 images). A total of 104 texture features of DL images were compared to original images with paired t-test, Pearson correlation and concordance-correlation-coefficient (CCC). Results: When two times shorter image acquisition shows strong disparities with the originals concerning the radiomics, with significant differences and loss of correlation of 79.81% and 48.08%, respectively. Interestingly, DL models restore textures with 46.15% of unstable parameters and 25.96% of low CCC and without difference for the first-order intensity parameters. Conclusions: Resampling and denoising DL models reconstruct low resolution and noised MRI images acquired quickly into high quality images. While fast MRI acquisition loses most of the radiomic features, DL models restore these parameters.
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收藏
页数:19
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