New reconstruction algorithm for digital breast tomosynthesis: better image quality for humans and computers.
Alejandro Rodríguez-RuizJonas TeuwenSuzan VreemannRamona W BouwmanRuben E van EngenNico KarssemeijerRitse M MannAlbert Gubern-MeridaIoannis SechopoulosPublished in: Acta radiologica (Stockholm, Sweden : 1987) (2017)
Background The image quality of digital breast tomosynthesis (DBT) volumes depends greatly on the reconstruction algorithm. Purpose To compare two DBT reconstruction algorithms used by the Siemens Mammomat Inspiration system, filtered back projection (FBP), and FBP with iterative optimizations (EMPIRE), using qualitative analysis by human readers and detection performance of machine learning algorithms. Material and Methods Visual grading analysis was performed by four readers specialized in breast imaging who scored 100 cases reconstructed with both algorithms (70 lesions). Scoring (5-point scale: 1 = poor to 5 = excellent quality) was performed on presence of noise and artifacts, visualization of skin-line and Cooper's ligaments, contrast, and image quality, and, when present, lesion visibility. In parallel, a three-dimensional deep-learning convolutional neural network (3D-CNN) was trained (n = 259 patients, 51 positives with BI-RADS 3, 4, or 5 calcifications) and tested (n = 46 patients, nine positives), separately with FBP and EMPIRE volumes, to discriminate between samples with and without calcifications. The partial area under the receiver operating characteristic curve (pAUC) of each 3D-CNN was used for comparison. Results EMPIRE reconstructions showed better contrast (3.23 vs. 3.10, P = 0.010), image quality (3.22 vs. 3.03, P < 0.001), visibility of calcifications (3.53 vs. 3.37, P = 0.053, significant for one reader), and fewer artifacts (3.26 vs. 2.97, P < 0.001). The 3D-CNN-EMPIRE had better performance than 3D-CNN-FBP (pAUC-EMPIRE = 0.880 vs. pAUC-FBP = 0.857; P < 0.001). Conclusion The new algorithm provides DBT volumes with better contrast and image quality, fewer artifacts, and improved visibility of calcifications for human observers, as well as improved detection performance with deep-learning algorithms.
Keyphrases
- image quality
- deep learning
- convolutional neural network
- machine learning
- computed tomography
- artificial intelligence
- dual energy
- end stage renal disease
- newly diagnosed
- endothelial cells
- magnetic resonance
- ejection fraction
- chronic kidney disease
- big data
- systematic review
- contrast enhanced
- induced pluripotent stem cells
- data analysis
- high resolution
- loop mediated isothermal amplification
- quantum dots
- real time pcr
- neural network