Navigation überspringen
Universitätsbibliothek Heidelberg
Standort: ---
Exemplare: ---
heiBIB
 Online-Ressource
Verfasst von:Fink, Matthias A. [VerfasserIn]   i
 Seibold, Constantin [VerfasserIn]   i
 Kauczor, Hans-Ulrich [VerfasserIn]   i
 Stiefelhagen, Rainer [VerfasserIn]   i
 Kleesiek, Jens Philipp [VerfasserIn]   i
Titel:Jointly optimized deep neural networks to synthesize monoenergetic images from single-energy CT angiography for improving classification of pulmonary embolism
Verf.angabe:Matthias A. Fink, Constantin Seibold, Hans-Ulrich Kauczor, Rainer Stiefelhagen and Jens Kleesiek
E-Jahr:2022
Jahr:13 May 2022
Umfang:11 S.
Fussnoten:Gesehen am 10.06.2022
Titel Quelle:Enthalten in: Diagnostics
Ort Quelle:Basel : MDPI, 2011
Jahr Quelle:2022
Band/Heft Quelle:12(2022), 5, Artikel-ID 1224, Seite 1-11
ISSN Quelle:2075-4418
Abstract:Detector-based spectral CT offers the possibility of obtaining spectral information from which discrete acquisitions at different energy levels can be derived, yielding so-called virtual monoenergetic images (VMI). In this study, we aimed to develop a jointly optimized deep-learning framework based on dual-energy CT pulmonary angiography (DE-CTPA) data to generate synthetic monoenergetic images (SMI) for improving automatic pulmonary embolism (PE) detection in single-energy CTPA scans. For this purpose, we used two datasets: our institutional DE-CTPA dataset D1, comprising polyenergetic arterial series and the corresponding VMI at low-energy levels (40 keV) with 7892 image pairs, and a 10% subset of the 2020 RSNA Pulmonary Embolism CT Dataset D2, which consisted of 161,253 polyenergetic images with dichotomous slice-wise annotations (PE/no PE). We trained a fully convolutional encoder-decoder on D1 to generate SMI from single-energy CTPA scans of D2, which were then fed into a ResNet50 network for training of the downstream PE classification task. The quantitative results on the reconstruction ability of our framework revealed high-quality visual SMI predictions with reconstruction results of 0.984 ± 0.002 (structural similarity) and 41.706 ± 0.547 dB (peak signal-to-noise ratio). PE classification resulted in an AUC of 0.84 for our model, which achieved improved performance compared to other naïve approaches with AUCs up to 0.81. Our study stresses the role of using joint optimization strategies for deep-learning algorithms to improve automatic PE detection. The proposed pipeline may prove to be beneficial for computer-aided detection systems and could help rescue CTPA studies with suboptimal opacification of the pulmonary arteries from single-energy CT scanners.
DOI:doi:10.3390/diagnostics12051224
URL:kostenfrei: Volltext: https://doi.org/10.3390/diagnostics12051224
 kostenfrei: Volltext: https://www.mdpi.com/2075-4418/12/5/1224
 DOI: https://doi.org/10.3390/diagnostics12051224
Datenträger:Online-Ressource
Sprache:eng
K10plus-PPN:1806754320
Verknüpfungen:→ Zeitschrift
 
 
Lokale URL UB: Zum Volltext

Permanenter Link auf diesen Titel (bookmarkfähig):  https://katalog.ub.uni-heidelberg.de/titel/68929638   QR-Code
zum Seitenanfang