| Literature DB >> 35694277 |
Guowei Han1,2, Tianliang Jin1, Li Zhang1, Chen Guo3, Hua Gui4, Risu Na4, Xuesong Wang4, Haihua Bai2,5.
Abstract
This research was aimed at exploring the diagnostic and screening effect of composite echocardiography based on the artificial intelligence (AI) segmentation algorithm on fetal congenital heart disease (CHD) during pregnancy, so as to reduce the birth rate of newborns with CHD. A total of 204 fetuses with abnormal heart conditions were divided into group II, group C (optimized with the AI algorithm), and group W (not optimized with the AI algorithm). In addition, 9,453 fetuses with normal heart conditions were included in group I. The abnormal distribution of fetal heart and the difference of cardiac Z score between group II and group I were analyzed, and the diagnostic value of group C and group W for CHD was compared. The results showed that the segmentation details of the proposed algorithm were better than those of the convolutional neural network (CNN), and the Dice coefficient, precision, and recall values were higher than those of the CNN. In fetal CHD, the incidence of abnormal ultrasonic manifestations was ventricular septal defect (98/48.04%), abnormal right subclavian artery (29/14.22%), and persistent left superior vena cava (25/12.25%). The diagnostic sensitivity (75.0% vs. 51.5%), specificity (99.6% vs. 99.2%), accuracy (99.0% vs. 98.2%), negative predictive value (88.5% vs. 78.5%), and positive predictive value (99% vs. 57.7%) of echocardiography segmentation in group C were significantly higher than those in group W. To sum up, echocardiography segmented by the AI algorithm could obviously improve the diagnostic efficiency of fetal CHD during gestation. Cardiac ultrasound parameters of children with CHD changed greatly.Entities:
Year: 2022 PMID: 35694277 PMCID: PMC9177317 DOI: 10.1155/2022/6410103
Source DB: PubMed Journal: Appl Bionics Biomech ISSN: 1176-2322 Impact factor: 1.664
Figure 1Double network echocardiography segmentation model.
Calculation method of diagnostic effect evaluation indicators.
| Indicator | Calculation method |
|---|---|
| Sensitivity |
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| Specificity |
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| Accuracy | ( |
| Negative predictive value |
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| Positive predictive value |
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Comparison of basic data between the two groups of pregnant women.
| Group | Age (years old) | Gestational age (weeks) | Number of births (times) |
|---|---|---|---|
| Group I ( | 28.03 ± 2.15 | 12.35 ± 0.55 | 1.08 ± 0.22 |
| Group II ( | 27.79 ± 3.04 | 12.18 ± 0.41 | 1.12 ± 0.30 |
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| -0.155 | 0.121 | -0.037 |
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| 0.978 | 0.744 | 0.826 |
Figure 2Segmentation of abnormal cardiac structures. (a) showed the original echocardiogram, (b) showed the segmentation effect of the CNN algorithm, and (c) showed the segmentation effect of the AI algorithm (the red curvilinear area referred to the segmented location of the lesion).
Figure 3Quantitative indexes of segmentation effect of cardiac abnormal structure.
Figure 4The disease type distribution of CHD in fetuses. (a) Persistent left superior vena cava. (b) Ventricular septal defect. (c) Single ventricle. (d) Single atrium. (e) Abnormal right subclavian artery. (f) Transposition of the great arteries. (g) Interrupted aortic arch. (h) Aortic coarctation. (i) Right-sided arcus aortae. (j) Absence of inferior vena cava. (k) Pulmonary artery stenosis. (l) Endocardium pad defect. (m) Persistent truncus arteriosus. (n) Pulmonary artery atresia. (o) Double-outlet right ventricle.
Figure 5Ultrasonic images of fetus with abnormal heart. (a) Persistent left superior vena cava. (b) Ventricular septal defect. (c) Abnormal right subclavian artery. (d) Pulmonary artery stenosis. (e) dextroaortic arch.
Figure 6Diagnostic value of echocardiography before and after segmentation.