3D Pulmonary Artery Segmentation from CTA Scans Using Deep Learning with Realistic Data Augmentation.
Karen López-Linares RománIsaac de La BruereJorge OnievaLasse AndresenJakob Qvortrup HolstingFarbod N RahaghiIván MacíaMiguel A González BallesterRaúl San José EsteparPublished in: Image analysis for moving organ, breast, and thoracic images : third International Workshop, RAMBO 2018, fourth International Workshop, BIA 2018, and first International Workshop, TIA 2018, held in conjunction with MICCAI 2018, Granada,... (2018)
The characterization of the vasculature in the mediastinum, more specifically the pulmonary artery, is of vital importance for the evaluation of several pulmonary vascular diseases. Thus, the goal of this study is to automatically segment the pulmonary artery (PA) from computed tomography angiography images, which opens up the opportunity for more complex analysis of the evolution of the PA geometry in health and disease and can be used in complex fluid mechanics models or individualized medicine. For that purpose, a new 3D convolutional neural network architecture is proposed, which is trained on images coming from different patient cohorts. The network makes use a strong data augmentation paradigm based on realistic deformations generated by applying principal component analysis to the deformation fields obtained from the affine registration of several datasets. The network is validated on 91 datasets by comparing the automatic segmentations with semi-automatically delineated ground truths in terms of mean Dice and Jaccard coefficients and mean distance between surfaces, which yields values of 0.89, 0.80 and 1.25 mm, respectively. Finally, a comparison against a Unet architecture is also included.
Keyphrases
- pulmonary artery
- deep learning
- convolutional neural network
- pulmonary hypertension
- coronary artery
- pulmonary arterial hypertension
- artificial intelligence
- electronic health record
- big data
- machine learning
- computed tomography
- public health
- healthcare
- case report
- mental health
- health information
- magnetic resonance
- data analysis
- biofilm formation
- high intensity
- pseudomonas aeruginosa
- staphylococcus aureus
- escherichia coli
- contrast enhanced
- network analysis