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A new model based on artificial intelligence to screening preterm birth
被引:2
|作者:
de Andrade Junior, Valter Lacerda
[1
]
Franca, Marcelo Santucci
[2
]
Santos, Roberto Angelo Fernandes
[1
]
Hatanaka, Alan Roberto
[2
]
Cruz, Jader de Jesus
[3
]
Hamamoto, Tatiana Emy Kawanami
[2
]
Traina, Evelyn
[2
]
Sarmento, Stephanno Gomes Pereira
[4
]
Elito Junior, Julio
[2
]
Pares, David Baptista da Silva
[2
]
Mattar, Rosiane
[2
]
Araujo Junior, Edward
[2
,5
]
Moron, Antonio Fernandes
[2
]
机构:
[1] Impacta Sch Technol, Grad & Postgrad Dept, Sao Paulo, Brazil
[2] Fed Univ Sao Paulo EPM UNIFESP, Paulista Sch Med, Dept Obstet, Discipline Fetal Med,Screening & Prevent Preterm B, Sao Paulo, Brazil
[3] Ctr Hosp Univ Lisboa Cent, Fetal Med Unit, Lisbon, Portugal
[4] Med Sch Jundiai FMJ, Dept Obstet & Gynecol, Jundiai, Brazil
[5] Fed Univ Sao Paulo EPM UNIFESP, Paulista Sch Med, Dept Obstet, Discipline Fetal Med,Screening & Prevent Preterm B, Rua Napoleao Barros, 875 Vila Clementino, BR-04024002 Sao Paulo, Brazil
关键词:
Preterm birth;
cervical length;
transvaginal ultrasound;
artificial intelligence;
VAGINAL PROGESTERONE;
OBSTETRIC HISTORY;
CERVICAL LENGTH;
RISK;
PREDICTION;
DELIVERY;
ENSEMBLE;
PESSARY;
WOMEN;
D O I:
10.1080/14767058.2023.2241100
中图分类号:
R71 [妇产科学];
学科分类号:
100211 ;
摘要:
Objective The objective of this study is to create a new screening for spontaneous preterm birth (sPTB) based on artificial intelligence (AI). Methods This study included 524 singleton pregnancies from 18th to 24th-week gestation after transvaginal ultrasound cervical length (CL) analyzes for screening sPTB < 35 weeks. AI model was created based on the stacking-based ensemble learning method (SBELM) by the neural network, gathering CL < 25 mm, multivariate unadjusted logistic regression (LR), and the best AI algorithm. Receiver Operating Characteristics (ROC) curve to predict sPTB < 35 weeks and area under the curve (AUC), sensitivity, specificity, accuracy, predictive positive and negative values were performed to evaluate CL < 25 mm, LR, the best algorithms of AI and SBELM. Results The most relevant variables presented by LR were cervical funneling, index straight CL/internal angle inside the cervix (& LE; 0.200), previous PTB < 37 weeks, previous curettage, no antibiotic treatment during pregnancy, and weight (& LE; 58 kg), no smoking, and CL < 30.9 mm. Fixing 10% of false positive rate, CL < 25 mm and SBELM present, respectively: AUC of 0.318 and 0.808; sensitivity of 33.3% and 47,3%; specificity of 91.8 and 92.8%; positive predictive value of 23.1 and 32.7%; negative predictive value of 94.9 and 96.0%. This machine learning presented high statistical significance when compared to CL < 25 mm after T-test (p < .00001). Conclusion AI applied to clinical and ultrasonographic variables could be a viable option for screening of sPTB < 35 weeks, improving the performance of short cervix, with a low false-positive rate.
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页数:17
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