Qualitative and quantitative analysis of functional cardiac MRI using a novel compressed SENSE sequence with artificial intelligence image reconstruction.
Authors
Affiliations (10)
Affiliations (10)
- University Hospital Cologne, Cologne, Germany. Electronic address: [email protected].
- University Hospital Cologne, Cologne, Germany; Cardiovascular Imaging Research Center, Massachusetts General Hospital, Boston, MA, USA. Electronic address: [email protected].
- University Hospital Cologne, Cologne, Germany. Electronic address: [email protected].
- University Hospital Cologne, Cologne, Germany. Electronic address: [email protected].
- University Hospital Cologne, Cologne, Germany. Electronic address: [email protected].
- University Hospital Cologne, Cologne, Germany; Cardiovascular Imaging Research Center, Massachusetts General Hospital, Boston, MA, USA. Electronic address: [email protected].
- University Hospital Cologne, Cologne, Germany. Electronic address: [email protected].
- University Hospital Cologne, Cologne, Germany.
- University Hospital Cologne, Cologne, Germany. Electronic address: [email protected].
- University Hospital Cologne, Cologne, Germany; Radiologische Allianz, Hamburg, Germany. Electronic address: [email protected].
Abstract
To evaluate the feasibility of combining Compressed SENSE (CS) with a newly developed deep learning-based algorithm (CS-AI) using a Convolutional Neural Network to accelerate balanced steady-state free precession (bSSFP)-sequences for cardiac magnetic resonance imaging (MRI). 30 healthy volunteers were examined prospectively with a 3 T MRI scanner. We acquired CINE bSSFP sequences for short axis (SA, multi-breath-hold) and four-chamber (4CH)-view of the heart. For each sequence, four different CS accelerations and CS-AI reconstructions with three different denoising parameters, CS-AI medium, CS-AI strong, and CS-AI complete, were used. Cardiac left ventricular (LV) function (i.e., ejection fraction, end-diastolic volume, end-systolic volume, and LV mass) was analyzed using the SA sequences in every CS factor and each AI level. Two readers, blinded to the acceleration and denoising levels, evaluated all sequences regarding image quality and artifacts using a 5-point Likert scale. Friedman and Dunn's multiple comparison tests were used for qualitative evaluation, ANOVA and Tukey Kramer test for quantitative metrics. Scan time could be decreased up to 57 % for the SA-Sequences and up to 56 % for the 4CH-Sequences compared to the clinically established sequences consisting of SA-CS3 and 4CH-CS2,5 (SA-CS3: 112 s vs. SA-CS6: 48 s; 4CH-CS2,5: 9 s vs. 4CH-CS5: 4 s, p < 0.001). LV-functional analysis was not compromised by using accelerated MRI sequences combined with CS-AI reconstructions (all p > 0.05). The image quality loss and artifact increase accompanying increasing acceleration levels could be entirely compensated by CS-AI post-processing, with the best results for image quality using the combination of the highest CS factor with strong AI (SA-CINE: Coef.:1.31, 95 %CI:1.05-1.58; 4CH-CINE: Coef.:1.18, 95 %CI:1.05-1.58; both p < 0.001), and with complete AI regarding the artifact score (SA-CINE: Coef.:1.33, 95 %CI:1.06-1.60; 4CH-CINE: Coef.:1.31, 95 %CI:0.86-1.77; both p < 0.001). Combining CS sequences with AI-based image reconstruction for denoising significantly decreases scan time in cardiac imaging while upholding LV functional analysis accuracy and delivering stable outcomes for image quality and artifact reduction. This integration presents a promising advancement in cardiac MRI, promising improved efficiency without compromising diagnostic quality.