PREDICTING INTRAUTERINE GROWTH RESTRICTION: A PILOT STUDY WITH FEED-FORWARD BACK PROPAGATION NETWORK

被引:0
|
作者
Scripcariu, Ioana-Sadyie [1 ]
Vasilache, Ingrid-Andrada [1 ]
Pavaleanu, Ioana [1 ]
Doroftei, B. [1 ]
Carauleanu, A. [1 ]
Socolov, Demetra [1 ]
Melinte-Popescu, Alina-Sinziana [2 ]
Vicoveanu, Petronela [1 ]
Harabor, V. [3 ]
Mihalceanu, Elena [1 ]
Melinte-Popescu, M. [2 ]
Harabor, Anamaria [3 ]
Stuparu-Cretu, Mariana [3 ]
Nemescu, D. [1 ]
机构
[1] Grigore T Popa Univ Med & Pharm Iasi, Dept Med, Dept Mother & Child Med, Iasi, Romania
[2] Univ Galatzi, Fac Med & Pharm, Galati, Romania
[3] Stefan Cel Mare Univ, Fac Med & Biol Sci, Suceava, Romania
来源
关键词
INTRAUTERINE GROWTH RESTRICTION PREDICTION; NEURAL NETWORK; FEED-FORWARD BACKPROPAGATION; FETAL-GROWTH; DIAGNOSIS; MANAGEMENT;
D O I
10.22551/MSJ.2023.04.07
中图分类号
R5 [内科学];
学科分类号
1002 ; 100201 ;
摘要
The prediction of intrauterine growth restriction (IUGR) represents a challenge for obstetricians throughout pregnancy, and the use of artificial intelligence could improve its screening. The aim of this pilot study was to prospectively design and test a Feed-Forward Backpropagation neural network (FFBPN) for the prediction of IUGR and its subtypes. Materials and methods: Between January and September 2023, we included 108 pregnant patients with singleton pregnancies who underwent conventional first trimester screening. Clinical and paraclinical data was used to construct a FFBPN, and its predictive performance was assessed using a sensitivity analysis. Results: Our results indicated that the FFBPN predicted the development of IUGR during pregnancy with a sensitivity ( Se) of 94.7%, specificity (Sp) of 97.7%, and a false positive rate of 2%. The value of the area under the curve for this neural network was 0.978. On the other hand, when used for the prediction of IUGR subtypes, the FFBPN achieved lower predictive performance. Also, the sensitivity analysis revealed that the FFBPN could better predict early IUGR, with a Se of 71.4%, Sp of 94%, and accuracy of 90.7%. Conclusions: The FFBPN could be an important tool for the prediction and stratification of various disorders, including IUGR.
引用
收藏
页码:550 / 558
页数:9
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