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Automated MRI Lung Segmentation and 3D Morphologic Features for Quantification of Neonatal Lung Disease.
Mairhörmann, Benedikt; Castelblanco, Alejandra; Häfner, Friederike; Koliogiannis, Vanessa; Haist, Lena; Winter, Dominik; Flemmer, Andreas; Ehrhardt, Harald; Stöcklein, Sophia; Dietrich, Olaf; Förster, Kai; Hilgendorff, Anne; Schubert, Benjamin.
Afiliação
  • Mairhörmann B; From the Computational Health Center (B.M., A.C., D.W., B.S.), Institute for Lung Health and Immunity and Comprehensive Pneumology Center (F.H., L.H., A.H.), and Institute of AI for Health (D.W.), Helmholtz Zentrum München, Member of the German Center for Lung Research (DZL), Ingolstädter Landstrass
  • Castelblanco A; From the Computational Health Center (B.M., A.C., D.W., B.S.), Institute for Lung Health and Immunity and Comprehensive Pneumology Center (F.H., L.H., A.H.), and Institute of AI for Health (D.W.), Helmholtz Zentrum München, Member of the German Center for Lung Research (DZL), Ingolstädter Landstrass
  • Häfner F; From the Computational Health Center (B.M., A.C., D.W., B.S.), Institute for Lung Health and Immunity and Comprehensive Pneumology Center (F.H., L.H., A.H.), and Institute of AI for Health (D.W.), Helmholtz Zentrum München, Member of the German Center for Lung Research (DZL), Ingolstädter Landstrass
  • Koliogiannis V; From the Computational Health Center (B.M., A.C., D.W., B.S.), Institute for Lung Health and Immunity and Comprehensive Pneumology Center (F.H., L.H., A.H.), and Institute of AI for Health (D.W.), Helmholtz Zentrum München, Member of the German Center for Lung Research (DZL), Ingolstädter Landstrass
  • Haist L; From the Computational Health Center (B.M., A.C., D.W., B.S.), Institute for Lung Health and Immunity and Comprehensive Pneumology Center (F.H., L.H., A.H.), and Institute of AI for Health (D.W.), Helmholtz Zentrum München, Member of the German Center for Lung Research (DZL), Ingolstädter Landstrass
  • Winter D; From the Computational Health Center (B.M., A.C., D.W., B.S.), Institute for Lung Health and Immunity and Comprehensive Pneumology Center (F.H., L.H., A.H.), and Institute of AI for Health (D.W.), Helmholtz Zentrum München, Member of the German Center for Lung Research (DZL), Ingolstädter Landstrass
  • Flemmer A; From the Computational Health Center (B.M., A.C., D.W., B.S.), Institute for Lung Health and Immunity and Comprehensive Pneumology Center (F.H., L.H., A.H.), and Institute of AI for Health (D.W.), Helmholtz Zentrum München, Member of the German Center for Lung Research (DZL), Ingolstädter Landstrass
  • Ehrhardt H; From the Computational Health Center (B.M., A.C., D.W., B.S.), Institute for Lung Health and Immunity and Comprehensive Pneumology Center (F.H., L.H., A.H.), and Institute of AI for Health (D.W.), Helmholtz Zentrum München, Member of the German Center for Lung Research (DZL), Ingolstädter Landstrass
  • Stöcklein S; From the Computational Health Center (B.M., A.C., D.W., B.S.), Institute for Lung Health and Immunity and Comprehensive Pneumology Center (F.H., L.H., A.H.), and Institute of AI for Health (D.W.), Helmholtz Zentrum München, Member of the German Center for Lung Research (DZL), Ingolstädter Landstrass
  • Dietrich O; From the Computational Health Center (B.M., A.C., D.W., B.S.), Institute for Lung Health and Immunity and Comprehensive Pneumology Center (F.H., L.H., A.H.), and Institute of AI for Health (D.W.), Helmholtz Zentrum München, Member of the German Center for Lung Research (DZL), Ingolstädter Landstrass
  • Förster K; From the Computational Health Center (B.M., A.C., D.W., B.S.), Institute for Lung Health and Immunity and Comprehensive Pneumology Center (F.H., L.H., A.H.), and Institute of AI for Health (D.W.), Helmholtz Zentrum München, Member of the German Center for Lung Research (DZL), Ingolstädter Landstrass
  • Hilgendorff A; From the Computational Health Center (B.M., A.C., D.W., B.S.), Institute for Lung Health and Immunity and Comprehensive Pneumology Center (F.H., L.H., A.H.), and Institute of AI for Health (D.W.), Helmholtz Zentrum München, Member of the German Center for Lung Research (DZL), Ingolstädter Landstrass
  • Schubert B; From the Computational Health Center (B.M., A.C., D.W., B.S.), Institute for Lung Health and Immunity and Comprehensive Pneumology Center (F.H., L.H., A.H.), and Institute of AI for Health (D.W.), Helmholtz Zentrum München, Member of the German Center for Lung Research (DZL), Ingolstädter Landstrass
Radiol Artif Intell ; 5(6): e220239, 2023 Nov.
Article em En | MEDLINE | ID: mdl-38074782
ABSTRACT

Purpose:

To analyze the performance of deep learning (DL) models for segmentation of the neonatal lung in MRI and investigate the use of automated MRI-based features for assessment of neonatal lung disease. Materials and

Methods:

Quiet-breathing MRI was prospectively performed in two independent cohorts of preterm infants (median gestational age, 26.57 weeks; IQR, 25.3-28.6 weeks; 55 female and 48 male infants) with (n = 86) and without (n = 21) chronic lung disease (bronchopulmonary dysplasia [BPD]). Convolutional neural networks were developed for lung segmentation, and a three-dimensional reconstruction was used to calculate MRI features for lung volume, shape, pixel intensity, and surface. These features were explored as indicators of BPD and disease-associated lung structural remodeling through correlation with lung injury scores and multinomial models for BPD severity stratification.

Results:

The lung segmentation model reached a volumetric Dice coefficient of 0.908 in cross-validation and 0.880 on the independent test dataset, matching expert-level performance across disease grades. MRI lung features demonstrated significant correlations with lung injury scores and added structural information for the separation of neonates with BPD (BPD vs no BPD average area under the receiver operating characteristic curve [AUC], 0.92 ± 0.02 [SD]; no or mild BPD vs moderate or severe BPD average AUC, 0.84 ± 0.03).

Conclusion:

This study demonstrated high performance of DL models for MRI neonatal lung segmentation and showed the potential of automated MRI features for diagnostic assessment of neonatal lung disease while avoiding radiation exposure.Keywords Bronchopulmonary Dysplasia, Chronic Lung Disease, Preterm Infant, Lung Segmentation, Lung MRI, BPD Severity Assessment, Deep Learning, Lung Imaging Biomarkers, Lung Topology Supplemental material is available for this article. Published under a CC BY 4.0 license.See also the commentary by Parraga and Sharma in this issue.
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Texto completo: 1 Coleções: 01-internacional Base de dados: MEDLINE Idioma: En Revista: Radiol Artif Intell Ano de publicação: 2023 Tipo de documento: Article

Texto completo: 1 Coleções: 01-internacional Base de dados: MEDLINE Idioma: En Revista: Radiol Artif Intell Ano de publicação: 2023 Tipo de documento: Article
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