4.6 Article

Automatic cardiac evaluations using a deep video object segmentation network

期刊

INSIGHTS INTO IMAGING
卷 13, 期 1, 页码 -

出版社

SPRINGER
DOI: 10.1186/s13244-022-01212-9

关键词

LV measurements; RV measurements; Segmentation; Deep learning; Convolutional neural network

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  1. Med Fanavaran Plus Co

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This study utilized the EchoRCNN method to accurately measure cardiac volume and function using neural network technology, including segmentation of the left and right ventricle regions and estimation of key parameters, providing important insights for clinical diagnosis.
Background Accurate cardiac volume and function assessment have valuable and significant diagnostic implications for patients suffering from ventricular dysfunction and cardiovascular disease. This study has focused on finding a reliable assistant to help physicians have more reliable and accurate cardiac measurements using a deep neural network. EchoRCNN is a semi-automated neural network for echocardiography sequence segmentation using a combination of mask region-based convolutional neural network image segmentation structure with reference-guided mask propagation video object segmentation network. Results The proposed method accurately segments the left and right ventricle regions in four-chamber view echocardiography series with a dice similarity coefficient of 94.03% and 94.97%, respectively. Further post-processing procedures on the segmented left and right ventricle regions resulted in a mean absolute error of 3.13% and 2.03% for ejection fraction and fractional area change parameters, respectively. Conclusion This study has achieved excellent performance on the left and right ventricle segmentation, leading to more accurate estimations of vital cardiac parameters such as ejection fraction and fractional area change parameters in the left and right ventricle functionalities, respectively. The results represent that our method can predict an assured, accurate, and reliable cardiac function diagnosis in clinical screenings.

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