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Deep Learning-Accelerated Prostate MRI: Improving Speed, Accuracy, and Sustainability

Articolo
Data di Pubblicazione:
2025
Abstract:
Rationale and Objectives This study aims to evaluate the effectiveness of a deep learning (DL)-enhanced four-fold parallel acquisition technique (P4) in improving prostate MR image quality while optimizing scan efficiency compared to the traditional two-fold parallel acquisition technique (P2). Materials and Methods Patients undergoing prostate MRI with DL-enhanced acquisitions were analyzed from January 2024 to July 2024. The participants prospectively received T2-weighted sequences in all imaging planes using both P2 and P4. Three independent readers assessed image quality, signal-to-noise ratio (SNR), contrast-to-noise ratio (CNR). Significant differences in contrast and gray-level properties between P2 and P4 were identified through radiomics analysis (p <.05). Results A total of 51 participants (mean age 69.4 years ± 10.5 years) underwent P2 and P4 imaging. P4 demonstrated higher CNR and SNR values compared to P2 (p <.001). P4 was consistently rated superior to P2, demonstrating enhanced image quality and greater diagnostic precision across all evaluated categories (p <.001). Furthermore, radiomics analysis confirmed that P4 significantly altered structural and textural differentiation in comparison to P2. The P4 protocol reduced T2w scan times by 50.8%, from 11:48 min to 5:48 min (p <.001). Conclusion In conclusion, P4 imaging enhances diagnostic quality and reduces scan times, improving workflow efficiency, and potentially contributing to a more patient-centered and sustainable radiology practice.
Tipologia CRIS:
14.a.1 Articolo su rivista
Keywords:
Deep Learning; Magnetic Resonance Imaging; Prostate; Sustainability
Elenco autori:
Reschke, Philipp; Koch, Vitali; Gruenewald, Leon D; Bachir, Ahmed Ait; Gotta, Jennifer; Booz, Christian; Alrahmoun, Mohamed Alaa; Strecker, Ralph; Nickel, Dominik; D'Angelo, Tommaso; Dahm, Daniel M; Konrad, Paul; Solim, Levent A; Holzer, Maximilian; Al-Saleh, Saber; Scholtz, Jan-Erik; Sommer, Christof M; Hammerstingl, Renate M; Eichler, Katrin; Vogl, Thomas J; Leistner, David M; Haberkorn, Sebastian M; Mahmoudi, Scherwin
Autori di Ateneo:
D'ANGELO Tommaso
Link alla scheda completa:
https://iris.unime.it/handle/11570/3345662
Pubblicato in:
ACADEMIC RADIOLOGY
Journal
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linkinghub.elsevier.com/retrieve/pii/S1076-6332(25)00571-9
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