| Literature DB >> 32279157 |
Lena Davidson1, Mary Regina Boland2,3,4,5.
Abstract
The role of artificial intelligence (AI) in healthcare for pregnant women. To assess the role of AI in women's health, discover gaps, and discuss the future of AI in maternal health. A systematic review of English articles using EMBASE, PubMed, and SCOPUS. Search terms included pregnancy and AI. Research articles and book chapters were included, while conference papers, editorials and notes were excluded from the review. Included papers focused on pregnancy and AI methods, and pertained to pharmacologic interventions. We identified 376 distinct studies from our queries. A final set of 31 papers were included for the review. Included papers represented a variety of pregnancy concerns and multidisciplinary applications of AI. Few studies relate to pregnancy, AI, and pharmacologics and therefore, we review carefully those studies. External validation of models and techniques described in the studies is limited, impeding on generalizability of the studies. Our review describes how AI has been applied to address maternal health, throughout the pregnancy process: preconception, prenatal, perinatal, and postnatal health concerns. However, there is a lack of research applying AI methods to understand how pharmacologic treatments affect pregnancy. We identify three areas where AI methods could be used to improve our understanding of pharmacological effects of pregnancy, including: (a) obtaining sound and reliable data from clinical records (15 studies), (b) designing optimized animal experiments to validate specific hypotheses (1 study) to (c) implementing decision support systems that inform decision-making (11 studies). The largest literature gap that we identified is with regards to using AI methods to optimize translational studies between animals and humans for pregnancy-related drug exposures.Entities:
Keywords: Artificial intelligence; Decision support systems; Literature review; Machine learning; Pregnancy
Year: 2020 PMID: 32279157 PMCID: PMC7473961 DOI: 10.1007/s10928-020-09685-1
Source DB: PubMed Journal: J Pharmacokinet Pharmacodyn ISSN: 1567-567X Impact factor: 2.745
Artificial intelligence abbreviations
| Abbreviation | Description |
|---|---|
| ANN | Artificial neural network |
| CART | Classification and regression tree |
| CDSS | Clinical decision support system |
| DL | Deep learning |
| DT | Decision tree |
| EM | Expectation-maximation |
| k-NN | k nearest neighbor |
| LDA | Linear discriminant analysis |
| LR | Logistic regression |
| MLP | Multi-layer perceptron |
| NB | Naïve bayes |
| RF | Random forest |
| RBF | Radial basis function |
| SVM | Support vector machines |
Fig. 1Prisma review
Studies by identified category and overall topic
| Category | Topic | References | # of papers |
|---|---|---|---|
| A: Analysis with clinical data | ART | [ | 7 |
| Biomarkers | [ | 1 | |
| Imaging | [ | 1 | |
| Prediction | [ | 6 | |
| Total | 15 | ||
| B: Translating results from animals models humans | Translational | [ | 1 |
| Total | 1 | ||
| C: Clinical decision support/alerting | Diagnosis | [ | 3 |
| Disease management | [ | 4 | |
| Pregnancy outcome | [ | 1 | |
| Expert system | [ | 3 | |
| Total | 11 | ||
| Other | Review | [ | 4 |
| Total count | 31 | ||
Fig. 2Artificial intelligence and machine learning can enable better informed decisions for pregnant women in multiple ways. a illustrates how artificial intelligence and machine learning couple be utilized to process multiple data modalities present in clinical data to derive sound and reliable results pertaining to maternal and fetal outcomes. b illustrates how artificial intelligence or machine learning methods could be used to design optimal animal models for experiments that validate retrospective findings obtained from clinical records or other sources. c illustrates how artificial intelligence or machine learning methods could be used to alert physicians and their patients at the appropriate time pertaining to specific details related to pregnant or nursing women