scholarly journals Fetal heart ultrasound image-oriented adaptive classification deep model based on differentiable architecture search

Author(s):  
Xianhua Zeng ◽  
Yunjiu Zhang ◽  
Wei Huang

Abstract Prenatal ultrasound examination is used for screening congenital heart defects and fetal genetic diseases. Unfavorable factors such as low signal-to-noise ratio, artifact and poor fetal posture in ultrasound images make it a very complicated task to identify and interpret the standard scan plane of the fetal heart in prenatal ultrasound examinations. Deep learning related methods are widely used to process and analyze medical images. However, designing an effective network structure for a specific task is a time-consuming and relies on expert knowledge. In order to obtain an effective fetal ultrasound image classification model in a short time, this paper collects and organizes the Fetal Heart Standard Plane(FHSP) level III screening dataset, and we use the Differentiable Architecture Search(DARTS) method for FHSP classification task to automatically obtain an efficient adaptive classification deep model called Ultrasound Image Adaptive Classification model(UIAC) for assisting the diagnosis of fetal congenital heart disease. This new model is a deep neural network consisting of two automatically searched optimal blocks. Our UIAC model has fewer parameters than the mainstream manned classification networks. Moreover, it has achieved the best recognition results on the FHSP classification task: top1-accuracy 89.84%, macro-f1 89.72%, kappa score 88.82%.

2011 ◽  
Vol 204 (1) ◽  
pp. S259-S260
Author(s):  
Priyadarshini Koduri ◽  
Maria Adelaida Giraldo ◽  
Phillip Shlossman ◽  
Anthony Sciscione ◽  
Vincenzo Berghella ◽  
...  

2019 ◽  
Vol 220 (1) ◽  
pp. 104.e1-104.e15 ◽  
Author(s):  
Takekazu Miyoshi ◽  
Hiroshi Hosoda ◽  
Michikazu Nakai ◽  
Kunihiro Nishimura ◽  
Mikiya Miyazato ◽  
...  

2015 ◽  
Vol 41 (4) ◽  
pp. S140
Author(s):  
Nelangi Pinto ◽  
William Grobman ◽  
Sarah Ellestad ◽  
Amen Ness ◽  
Stephen Miller ◽  
...  

2019 ◽  
Vol 9 (6) ◽  
pp. 1083-1085
Author(s):  
Yi Zhou ◽  
Wenqian Qiu ◽  
Shuqing Jiang ◽  
Danqing He ◽  
Chaoxue Zhang

Congenital heart defects (CHDs) are a global health burden and a leading cause of infant morbidity and mortality. Fetal echocardiography is currently the best method for diagnosing CHDs prenatally, but it is not yet widely used for all fetuses because it is a time-consuming process that requires a highly skilled sonographer. We propose a dynamic sequential cross-section analysis as a screening method for CHDs; this screening method can systematically evaluate the fetal heart effectively and quickly.


1999 ◽  
Vol 13 (2) ◽  
pp. 117-126 ◽  
Author(s):  
C. V. Isaksen ◽  
S. H. Eik-Nes ◽  
H.-G. Blaas ◽  
E. Tegnander ◽  
S. H. Torp

Sensors ◽  
2021 ◽  
Vol 21 (23) ◽  
pp. 8007
Author(s):  
Siti Nurmaini ◽  
Muhammad Naufal Rachmatullah ◽  
Ade Iriani Sapitri ◽  
Annisa Darmawahyuni ◽  
Bambang Tutuko ◽  
...  

Accurate segmentation of fetal heart in echocardiography images is essential for detecting the structural abnormalities such as congenital heart defects (CHDs). Due to the wide variations attributed to different factors, such as maternal obesity, abdominal scars, amniotic fluid volume, and great vessel connections, this process is still a challenging problem. CHDs detection with expertise in general are substandard; the accuracy of measurements remains highly dependent on humans’ training, skills, and experience. To make such a process automatic, this study proposes deep learning-based computer-aided fetal heart echocardiography examinations with an instance segmentation approach, which inherently segments the four standard heart views and detects the defect simultaneously. We conducted several experiments with 1149 fetal heart images for predicting 24 objects, including four shapes of fetal heart standard views, 17 objects of heart-chambers in each view, and three cases of congenital heart defect. The result showed that the proposed model performed satisfactory performance for standard views segmentation, with a 79.97% intersection over union and 89.70% Dice coefficient similarity. It also performed well in the CHDs detection, with mean average precision around 98.30% for intra-patient variation and 82.42% for inter-patient variation. We believe that automatic segmentation and detection techniques could make an important contribution toward improving congenital heart disease diagnosis rates.


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