| Literature DB >> 34905872 |
Abstract
This study reviews recent advances on the application of artificial intelligence for the early diagnosis of various maternal-fetal conditions such as preterm birth and abnormal fetal growth. It is found in this study that various machine learning methods have been successfully employed for different kinds of data capture with regard to early diagnosis of maternal-fetal conditions. With the more popular use of artificial intelligence, ethical issues should also be considered accordingly.Entities:
Keywords: Artificial intelligence; Diagnosis; Disease; Fetus; Mother
Year: 2021 PMID: 34905872 PMCID: PMC8942755 DOI: 10.5468/ogs.21234
Source DB: PubMed Journal: Obstet Gynecol Sci ISSN: 2287-8572
Summary of this study
| Study | Method | Sample size | Data type | Performance | Important predictors |
|---|---|---|---|---|---|
| Goodwin et al. [ | ANN | 19,970 | Numeric | AUC: 0.65–0.68 | For the prediction of preterm birth |
| Lee and Ahn [ | ANN | 596 | Numeric | Accuracy: 0.89–0.92 | For the prediction of preterm birth
- Body mass index - Hypertension - Diabetes mellitus - Prior cone biopsy - Parity - Cervical length age - Prior preterm birth - Myomas & adenomyosis |
| Lee et al. [ | ANN | 731 | Numeric | Accuracy: 0.79–0.87 | For the prediction of preterm birth - Body mass index delivery/pregestational - Age - Parity - Blood pressure predelivery systolic/diastolic - Twin - Education (below high school graduation) - Newborn sex - Prior preterm birth - Medication history - Progesterone - Upper gastrointestinal tract symptom - Gastroesophageal reflux disease - Helicobacter pylori - Region (urban) - Medication history - Calcium-channel-blocker - Gestational diabetes mellitus |
| Koivu and Sairanen [ | ANN | 16,340,661 | Numeric | Sensitivity: 0.22–0.24 | For the prediction of preterm birth - Age - Body mass index - Education - Marital status - Pre-pregnancy smoking - Previous terminations - Race - Special Nutritional program - Weight - Diabetes pre-pregnancy/gestational - Hypertension pre-pregnancy/gestational - Hypertension eclampsia - Infertility medication/treatment - Parity - Previous cesarean section - Previous preterm birth - Assisted reproductive technology - Chlamydia - Gonorrhea - Hepatitis C - Syphilis |
| Fergus et al. [ | DT | 300 | Electrohysterogram | Specificity: 0.86–1.00 | For the prediction of preterm birth |
| Gao et al. [ | LR | 25,689 | Text (5,602,792 medical concepts) | Sensitivity: 0.66–0.97 | For the prediction of preterm birth |
| Grigorescu et al. [ | CNN | 157 | Magnetic resonance imaging | Accuracy: 0.94 | For the prediction of preterm birth |
| Naimi et al. [ | DT | 24,910 | Numeric | RMSE: 96.2–127.5 | For the prediction of estimated fetal weight |
| Fung et al. [ | LR | 4,299 | Numeric | Accuracy: 0.99 | For the prediction of gestational weeks |
| Signorini et al. [ | DT | 120 | Numeric | Accuracy: 0.85–0.91 | For the prediction of intrauterine growth restriction |
| Pini et al. [ | SVM | 262 | Numeric | Accuracy: 0.93 | For the prediction of intrauterine growth restriction |
| Lee et al. [ | ANN | 3,159 | Numeric | RMSE: 1.44–12.44 | For the prediction of newborn’s body mass index |
| Sridar et al. [ | CNN | 4,074 | Red-green-blue imaging | Accuracy: 0.97 | For the prediction of fetal structures |
ANN, artificial neural network; DT, decision tree; LR, linear regression (fetal growth)/logistic regression (preterm birth); AUC, area under the receiver operating characteristic curve; NB, naïve bayes; RF, random forest; SVM, support vector machine; RNN, recurrent neural network; CNN, (3-dimensional) convolutional neural network; RMSE, root mean squared error.
Method with the best performance;
Predictors listed on the basis of the variable importance ranking of the random forest.