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Fully automated intracardiac 4D flow MRI post-processing using deep learning for biventricular segmentation.
Corrado, Philip A; Wentland, Andrew L; Starekova, Jitka; Dhyani, Archana; Goss, Kara N; Wieben, Oliver.
Afiliação
  • Corrado PA; University of Wisconsin-Madison, 1111 Highland Ave, Madison, WI, 53705, USA. pcorrado2@wisc.edu.
  • Wentland AL; University of Wisconsin-Madison, 1111 Highland Ave, Madison, WI, 53705, USA.
  • Starekova J; University of Wisconsin-Madison, 1111 Highland Ave, Madison, WI, 53705, USA.
  • Dhyani A; University of Wisconsin-Madison, 1111 Highland Ave, Madison, WI, 53705, USA.
  • Goss KN; UT Southwestern Medical Center, 5323 Harry Hines Blvd., Dallas, TX, 75390, USA.
  • Wieben O; University of Wisconsin-Madison, 1111 Highland Ave, Madison, WI, 53705, USA.
Eur Radiol ; 32(8): 5669-5678, 2022 Aug.
Article em En | MEDLINE | ID: mdl-35175379
ABSTRACT

OBJECTIVES:

4D flow MRI allows for a comprehensive assessment of intracardiac blood flow, useful for assessing cardiovascular diseases, but post-processing requires time-consuming ventricular segmentation throughout the cardiac cycle and is prone to subjective errors. Here, we evaluate the use of automatic left and right ventricular (LV and RV) segmentation based on deep learning (DL) network that operates on short-axis cine bSSFP images.

METHODS:

A previously published DL network was fine-tuned via retraining on a local database of 106 subjects scanned at our institution. In 26 test subjects, the ventricles were segmented automatically by the network and manually by 3 human observers on bSSFP MRI. The bSSFP images were then registered to the corresponding 4D flow images to apply the segmentation to 4D flow velocity data. Dice coefficients and the relative deviation between measurements (automatic vs. manual and interobserver manual) of various hemodynamic parameters were assessed.

RESULTS:

The automated segmentation resulted in similar Dice scores (LV 0.92, RV 0.86) and lower relative deviations from manual segmentation in left ventricular (LV) average kinetic energy (KE) (8%) and RV KE (15%) than the Dice scores (LV 0.91, RV 0.87) and relative deviations between manual segmentation observers (LV KE 11%, p = 0.01; RV KE 19%, p = 0.03).

CONCLUSIONS:

The automated post-processing method using deep learning resulted in hemodynamic measurements that differ from a manual observer's measurements equally or less than the variation between manual observers. This approach can be used to decrease post-processing time on intraventricular 4D flow data and mitigate interobserver variability. KEY POINTS • Our proposed method allows for fully automated post-processing of intraventricular 4D flow MRI data. • Our method resulted in hemodynamic measurements that matched those derived from manual segmentation equally as well as interobserver variability. • Our method can be used to greatly accelerate intraventricular 4D flow post-processing and improve interobserver repeatability.
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Texto completo: 1 Coleções: 01-internacional Base de dados: MEDLINE Assunto principal: Aprendizado Profundo Limite: Humans Idioma: En Revista: Eur Radiol Assunto da revista: RADIOLOGIA Ano de publicação: 2022 Tipo de documento: Article País de afiliação: Estados Unidos

Texto completo: 1 Coleções: 01-internacional Base de dados: MEDLINE Assunto principal: Aprendizado Profundo Limite: Humans Idioma: En Revista: Eur Radiol Assunto da revista: RADIOLOGIA Ano de publicação: 2022 Tipo de documento: Article País de afiliação: Estados Unidos