Artículo
Fully automated lumen and vessel contour segmentation in intravascular ultrasound datasets
Blanco, Pablo Javier; Ziemer, Paulo G. P.; Bulant, Carlos Alberto
; Ueki, Yasushi; Bass, Ronald; Räber, Lorenz; Lemos, Pedro A.; García García, Héctor M.
Fecha de publicación:
01/2022
Editorial:
Elsevier Science
Revista:
Medical Image Analysis
ISSN:
1361-8415
Idioma:
Inglés
Tipo de recurso:
Artículo publicado
Clasificación temática:
Resumen
egmentation of lumen and vessel contours in intravascular ultrasound (IVUS) pullbacks is an arduous and time-consuming task, which demands adequately trained human resources. In the present study, we propose a machine learning approach to automatically extract lumen and vessel boundaries from IVUS datasets. The proposed approach relies on the concatenation of a deep neural network to deliver a preliminary segmentation, followed by a Gaussian process (GP) regressor to construct the final lumen and vessel contours. A multi-frame convolutional neural network (MFCNN) exploits adjacency information present in longitudinally neighboring IVUS frames, while the GP regression method filters high-dimensional noise, delivering a consistent representation of the contours. Overall, 160 IVUS pullbacks (63 patients) from the IBIS-4 study (Integrated Biomarkers and Imaging Study-4, Trial NCT00962416), were used in the present work. The MFCNN algorithm was trained with 100 IVUS pullbacks (8427 manually segmented frames), was validated with 30 IVUS pullbacks (2583 manually segmented frames) and was blindly tested with 30 IVUS pullbacks (2425 manually segmented frames). Image and contour metrics were used to characterize model performance by comparing ground truth (GT) and machine learning (ML) contours. Median values (interquartile range, IQR) of the Jaccard index for lumen and vessel were 0.913, [0.882,0.935] and 0.940, [0.917,0.957], respectively. Median values (IQR) of the Hausdorff distance for lumen and vessel were , and , , respectively. Also, the mean value of lumen area predictions, and limits of agreement were , , while the mean value and limits of agreement of plaque burden were 0.0022, . The results obtained with the model developed in this work allow us to conclude that the proposed machine learning approach delivers accurate segmentations in terms of image metrics, contour metrics and clinically relevant variables, enabling its use in clinical routine by mitigating the costs involved in the manual management of IVUS datasets.
Palabras clave:
IVUS
,
Lumen
,
Vessel
,
Segmentation
,
Deep learning
,
Gaussian process
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Identificadores
Colecciones
Articulos(CCT - TANDIL)
Articulos de CTRO CIENTIFICO TECNOLOGICO CONICET - TANDIL
Articulos de CTRO CIENTIFICO TECNOLOGICO CONICET - TANDIL
Citación
Blanco, Pablo Javier; Ziemer, Paulo G. P.; Bulant, Carlos Alberto; Ueki, Yasushi; Bass, Ronald; et al.; Fully automated lumen and vessel contour segmentation in intravascular ultrasound datasets; Elsevier Science; Medical Image Analysis; 75; 1-2022; 1-13
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