| Literature DB >> 28149925 |
Franklin Pereira1, Alejandra Bueno2, Andrea Rodriguez2, Douglas Perrin2, Gerald Marx2, Michael Cardinale1, Ivan Salgo1, Pedro Del Nido2.
Abstract
Coarctation of aorta (CoA) is a critical congenital heart defect (CCHD) that requires accurate and immediate diagnosis and treatment. Current newborn screening methods to detect CoA lack both in sensitivity and specificity, and when suspected in a newborn, it must be confirmed using specialized imaging and expert diagnosis, both of which are usually unavailable at tertiary birthing centers. We explore the feasibility of applying machine learning methods to reliably determine the presence of this difficult-to-diagnose cardiac abnormality from ultrasound image data. We propose a framework that uses deep learning-based machine learning methods for fully automated detection of CoA from two-dimensional ultrasound clinical data acquired in the parasternal long axis view, the apical four chamber view, and the suprasternal notch view. On a validation set consisting of 26 CoA and 64 normal patients our algorithm achieved a total error rate of 12.9% (11.5% false-negative error and 13.6% false-positive error) when combining decisions of classifiers over three standard echocardiographic view planes. This compares favorably with published results that combine clinical assessments with pulse oximetry to detect CoA (71% sensitivity).Entities:
Keywords: 2-D ultrasound; coarctation of aorta; critical congenital heart disease; deep learning; feature extraction; neural networks
Year: 2017 PMID: 28149925 PMCID: PMC5260631 DOI: 10.1117/1.JMI.4.1.014502
Source DB: PubMed Journal: J Med Imaging (Bellingham) ISSN: 2329-4302