Prediction of mortality of premature neonates using neural network and logistic regression
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Aramesh Rezaeian | Marzieh Rezaeian | Seyede Fatemeh Khatami | Fatemeh Khorashadizadeh | Farshid Pouralizadeh Moghaddam | Fatemeh Khorashadizadeh | A. Rezaeian | S. Khatami | M. Rezaeian | F. P. Moghaddam
[1] Kevin N. Gurney,et al. An introduction to neural networks , 2018 .
[2] Luciana B. Abiuzi,et al. Establishing the risk of neonatal mortality using a fuzzy predictive model. , 2009, Cadernos de saude publica.
[3] E Michel,et al. Artificial neural network for risk assessment in preterm neonates , 1998, Archives of disease in childhood. Fetal and neonatal edition.
[4] M Jaiyeola,et al. Assessing Infant Mortality in Nigeria Using Artificial Neural Network and Logistic Regression Models , 2016 .
[5] P. Chow,et al. Application of artificial neural networks to establish a predictive mortality risk model in children admitted to a paediatric intensive care unit. , 2006, Singapore medical journal.
[6] M. Shokouhi,et al. Neonatal Mortality and its Main Determinants in Premature Infants Hospitalized in Neonatal Intensive Care Unit in Fatemieh Hospital, Hamadan, Iran , 2015 .
[7] Gautam Srivastava,et al. Hybrid genetic algorithm and a fuzzy logic classifier for heart disease diagnosis , 2019, Evolutionary Intelligence.
[8] S. Mazlom,et al. Factors associated with perinatal mortality in preterm infants in NICU Ghaem Hospital, Mashhad , 2012 .
[9] Stefania Tomasiello,et al. A granular functional network classifier for brain diseases analysis , 2020, Comput. methods Biomech. Biomed. Eng. Imaging Vis..
[10] N. Ambalavanan,et al. Comparison of the prediction of extremely low birth weight neonatal mortality by regression analysis and by neural networks. , 2001, Early human development.
[11] Matthew M Davis,et al. Methods of Mortality Risk Adjustment in the NICU: A 20-Year Review , 2013, Pediatrics.
[12] V. Bhateja,et al. Data augmentation for cancer classification in oncogenomics: an improved KNN based approach , 2019, Evolutionary Intelligence.
[13] Jinwu Gao,et al. Using local learning with fuzzy transform: application to short term forecasting problems , 2019, Fuzzy Optimization and Decision Making.
[14] M. Sudha,et al. Predicting bipolar disorder and schizophrenia based on non-overlapping genetic phenotypes using deep neural network , 2020, Evol. Intell..
[15] C. Michelo,et al. Factors associated with neonatal mortality in the general population: evidence from the 2007 Zambia Demographic and Health Survey (ZDHS); a cross sectional study , 2015, The Pan African medical journal.
[16] L. Gagliardi,et al. Assessing mortality risk in very low birthweight infants: a comparison of CRIB, CRIB-II, and SNAPPE-II , 2004, Archives of Disease in Childhood - Fetal and Neonatal Edition.
[17] Babita Majhi,et al. A novel improved prediction of protein structural class using deep recurrent neural network , 2018, Evolutionary Intelligence.