Rapid and automatic assessment of early gestational age using computer vision and biometric measurements based on ultrasound video

Early gestational age (GA) assessment using ultrasound is a routine and frequent examination performed in hospitals whereby clinicians manually measure the size of the gestational sac using ultrasound and calculate GA. However, the error is often substantial, and the process is laborious. To overcom...

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Veröffentlicht in:Quantitative imaging in medicine and surgery 2022-04, Vol.12 (4), p.2247-2260
Hauptverfasser: Pei, Yuanyuan, Gao, Wenjing, E, Longjiang, Dai, Changpin, Han, Jin, Wang, Haiyu, Liang, Huiying
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Sprache:eng
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Zusammenfassung:Early gestational age (GA) assessment using ultrasound is a routine and frequent examination performed in hospitals whereby clinicians manually measure the size of the gestational sac using ultrasound and calculate GA. However, the error is often substantial, and the process is laborious. To overcome these challenges, we propose a new system to assess early GA using a new end-to-end computer vision system and a new biometric measurement method based on ultrasound video. In this retrospective study, a new system was provided. B-ultrasound videos were first decomposed into two-dimensional (2D) images, and the contours of the gestational sac were extracted and drawn. The maximum length and short diameter of the gestational sac were then automatically measured and GA was calculated using the Hellman formula. Finally, through human-machine comparison, the clinicians' assessment errors were analyzed by SPSS 26. In this study, 29,829 2D images of 191 B-ultrasound videos were evaluated using the new system. Clinicians usually require 15-20 min to complete assessments of GA, whereas with the new system assessments can be completed in approximately 30 s. Moreover, a human-machine comparison showed that the system helped intermediate skills clinicians improve their relative diagnostic error by 13.45% with an absolute error of 7 days. In addition, the new system was used to identify other lesions in the uterus and measure their size as a "sanity check". The proposed new system is a practical, reproducible, and reliable approach for assessing early GA.
ISSN:2223-4292
2223-4306
DOI:10.21037/qims-21-837