Prediction of mortality of premature neonates using neural network and logistic regression

被引:0
|
作者
Aramesh Rezaeian
Marzieh Rezaeian
Seyede Fatemeh Khatami
Fatemeh Khorashadizadeh
Farshid Pouralizadeh Moghaddam
机构
[1] Mashhad University of Medical Sciences,Nursing and Midwifery Care Research Center
[2] Mashhad University of Medical Sciences,Department of Pediatrics, School of Nursing and Midwifery
[3] Eshragh University of Bojnord,Robotic and Artificial Intelligence Engineering
[4] Mashhad University of Medical Sciences,Department of Pediatrics
[5] Neyshabur University of Medical Sciences,Department of Epidemiology and Biostatistics
[6] Shahrood University of Technology,Electrical
关键词
Neural networks; Logistic regression; Premature neonate; Mortality;
D O I
暂无
中图分类号
学科分类号
摘要
Neonatal mortality is one of the important health indicators and mortality prediction is applied for auditing and benchmarking, comparing the outcomes in neonatal intensive care units (NICUs), controlling individual differences in populations in clinical trials and evaluating efficacy. In this research work, we aimed to establish and compare two models (neural network and logistic regression models) for prediction of mortality in premature neonates upon admission to the NICU. This modeling research was conducted based on the information of 1618 neonates for prediction of mortality risk until the 28th day of life. In total, 80% and 20% of the data were considered for training and testing of the designed models, respectively. Finally, we achieved to predict the probability of infant mortality based on the 5th minute after birth data. Modeling was performed with two methods; neural network [multi layer perceptron (MLP) with education of back-propagation (BP)] and logistic regression (binominal form in MATLAB R2016a). The results showed that the MLP (with 60 neurons in the hidden layer) had more acceptable indices compared to logistic regression. While both neural network and logistic regression were able to predict the neonatal mortality risk, the neural network is more effective than logistic regression model in performance comparison.
引用
收藏
页码:1269 / 1277
页数:8
相关论文
共 50 条
  • [21] A dynamic logistic regression for network link prediction
    ZHOU Jing
    HUANG DanYang
    WANG HanSheng
    Science China(Mathematics), 2017, 60 (01) : 165 - 176
  • [22] A dynamic logistic regression for network link prediction
    Jing Zhou
    DanYang Huang
    HanSheng Wang
    Science China Mathematics, 2017, 60 : 165 - 176
  • [23] Prediction of adverse outcome in pediatric meningococcal disease using artificial neural network or logistic regression analyses.
    Nguyen, TP
    Kuppermann, N
    PEDIATRICS, 1998, 102 (03) : 716 - 716
  • [24] Predication of Premature Neonates Prognosis Based on their Electroencephalogram using Artificial Neural Network
    Al Hajjar, Yasser
    Al Hajjar, Abd El Salam
    Daya, Bassam
    Chauvet, Pierre
    2015 SAI INTELLIGENT SYSTEMS CONFERENCE (INTELLISYS), 2015, : 527 - 531
  • [25] Comparison of neural network and logistic regression for dementia prediction: results from the PREADViSE trial
    Ding, Xiuhua
    Schmitt, Frederick
    Kryscio, Richard
    Charnigo, Richard
    JOURNAL OF GERONTOLOGY AND GERIATRICS, 2021, 69 (02): : 137 - 146
  • [26] Prediction of stage in colorectal adenocarcinoma biopsies utilizing probabilistic neural network and logistic regression
    Singson, RPC
    Alsabeh, R
    Geller, SA
    Marchevsky, A
    MODERN PATHOLOGY, 1998, 11 (01) : 70A - 70A
  • [27] Prediction of Rainfall Using Logistic Regression
    Imon, A. H. M. Rahmatullah
    Roy, Manos C.
    Bhattacharjee, S. K.
    PAKISTAN JOURNAL OF STATISTICS AND OPERATION RESEARCH, 2012, 8 (03) : 655 - 667
  • [28] Prediction of Extremely Low Birth Weight (ELBW) Neonatal Mortality by Neural Networks and Logistic Regression
    Namasivayam Ambalavanan
    Waldemar A Carlo
    Pediatric Research, 1999, 45 : 236 - 236
  • [29] Prediction of extremely low birth weight (ELBW) neonatal mortality by neural networks and logistic regression
    Ambalavanan, N
    Carlo, WA
    PEDIATRIC RESEARCH, 1999, 45 (04) : 236A - 236A
  • [30] Traffic Congestion Prediction using Decision Tree, Logistic Regression and Neural Networks
    Tamir, Tariku Sinshaw
    Xiong, Gang
    Li, Zhishuai
    Tao, Hao
    Shen, Zhen
    Hu, Bin
    Menkir, Heruye Mulugeta
    IFAC PAPERSONLINE, 2020, 53 (05): : 512 - 517