Effectiveness of congenital anomaly screening based on basic risk factors using supervised machine learning

In most of the developed countries the national prenatal screening policies for congenital abnormalities has resulted in the reduction of the prevalence rates. However, in most developing countries there is no national prenatal screening policy for congenital abnormalities. This study explores the e...

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Main Author: Khattak, Momina Tehreem
Format: Thesis
Language:English
Published: 2020
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Online Access:http://eprints.utm.my/id/eprint/102271/1/MominaTehreemKhattakMSBME2020.pdf.pdf
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spelling my-utm-ep.1022712023-08-14T06:29:26Z Effectiveness of congenital anomaly screening based on basic risk factors using supervised machine learning 2020 Khattak, Momina Tehreem TJ Mechanical engineering and machinery In most of the developed countries the national prenatal screening policies for congenital abnormalities has resulted in the reduction of the prevalence rates. However, in most developing countries there is no national prenatal screening policy for congenital abnormalities. This study explores the effect of prenatal screening on the prevalence rates of live birth, fetal death, and termination of pregnancy (TOPFA) on Trisomies and Neural tube defects in Europe. Meanwhile, the prevalence and existing methods for prenatal screening in Malaysia are reviewed. The data used is from the European Surveillance of Congenital Anomalies (EUROCAT) and the Malaysian neonatal registries. The analysis of prevalence rates showed that a prenatal screening policy can reduce the Live Birth (LB) and Fetal Death (FD) prevalence for Trisomies by 77% and 80% respectively, while, for Neural Tube Defects (NTD) by 36% and 38.5%, respectively. The prevalence of Trisomy 21 (T- 21) and Neural Tube Defects has increased by 72% and 32% respectively over a period of four years in Malaysia. For this, a risk prediction model using only basic risk factors is developed. This thesis used different supervised machine learning techniques, i.e., logistic regression, random forests, and artificial neural networks (ANN) for the model. Moreover, we also used k-means clustering on our training data and used it to create a Euclidean distance based (supervised) prediction model. The best model according to the results is logistic regression, which can predict T-21 with a sensitivity of 79.75%, specificity of 41.16% and a Balanced Classification Rate (BCR) of 60.46. It is observed that the specificity is low at 41.16% but sensitivity is high which means detection rate is high. The best model for NTD is also logistic regression, which can predict neural tube defect (NTD) with a sensitivity of 68.35%, specificity of 45.32% and a BCR of 59.84%. The risk prediction model of congenital anomalies has a sensitivity of 80%, specificity of 45% and BCR of 63%. The risk prediction model will help the doctors point out the high-risk woman. The accuracy of the prediction model may be improved by adding more predictors, which do not require expensive tests. 2020 Thesis http://eprints.utm.my/id/eprint/102271/ http://eprints.utm.my/id/eprint/102271/1/MominaTehreemKhattakMSBME2020.pdf.pdf application/pdf en public http://dms.library.utm.my:8080/vital/access/manager/Repository/vital:149041 masters Universiti Teknologi Malaysia Faculty of Engineering - School of Biomedical Engineering & Health Sciences
institution Universiti Teknologi Malaysia
collection UTM Institutional Repository
language English
topic TJ Mechanical engineering and machinery
spellingShingle TJ Mechanical engineering and machinery
Khattak, Momina Tehreem
Effectiveness of congenital anomaly screening based on basic risk factors using supervised machine learning
description In most of the developed countries the national prenatal screening policies for congenital abnormalities has resulted in the reduction of the prevalence rates. However, in most developing countries there is no national prenatal screening policy for congenital abnormalities. This study explores the effect of prenatal screening on the prevalence rates of live birth, fetal death, and termination of pregnancy (TOPFA) on Trisomies and Neural tube defects in Europe. Meanwhile, the prevalence and existing methods for prenatal screening in Malaysia are reviewed. The data used is from the European Surveillance of Congenital Anomalies (EUROCAT) and the Malaysian neonatal registries. The analysis of prevalence rates showed that a prenatal screening policy can reduce the Live Birth (LB) and Fetal Death (FD) prevalence for Trisomies by 77% and 80% respectively, while, for Neural Tube Defects (NTD) by 36% and 38.5%, respectively. The prevalence of Trisomy 21 (T- 21) and Neural Tube Defects has increased by 72% and 32% respectively over a period of four years in Malaysia. For this, a risk prediction model using only basic risk factors is developed. This thesis used different supervised machine learning techniques, i.e., logistic regression, random forests, and artificial neural networks (ANN) for the model. Moreover, we also used k-means clustering on our training data and used it to create a Euclidean distance based (supervised) prediction model. The best model according to the results is logistic regression, which can predict T-21 with a sensitivity of 79.75%, specificity of 41.16% and a Balanced Classification Rate (BCR) of 60.46. It is observed that the specificity is low at 41.16% but sensitivity is high which means detection rate is high. The best model for NTD is also logistic regression, which can predict neural tube defect (NTD) with a sensitivity of 68.35%, specificity of 45.32% and a BCR of 59.84%. The risk prediction model of congenital anomalies has a sensitivity of 80%, specificity of 45% and BCR of 63%. The risk prediction model will help the doctors point out the high-risk woman. The accuracy of the prediction model may be improved by adding more predictors, which do not require expensive tests.
format Thesis
qualification_level Master's degree
author Khattak, Momina Tehreem
author_facet Khattak, Momina Tehreem
author_sort Khattak, Momina Tehreem
title Effectiveness of congenital anomaly screening based on basic risk factors using supervised machine learning
title_short Effectiveness of congenital anomaly screening based on basic risk factors using supervised machine learning
title_full Effectiveness of congenital anomaly screening based on basic risk factors using supervised machine learning
title_fullStr Effectiveness of congenital anomaly screening based on basic risk factors using supervised machine learning
title_full_unstemmed Effectiveness of congenital anomaly screening based on basic risk factors using supervised machine learning
title_sort effectiveness of congenital anomaly screening based on basic risk factors using supervised machine learning
granting_institution Universiti Teknologi Malaysia
granting_department Faculty of Engineering - School of Biomedical Engineering & Health Sciences
publishDate 2020
url http://eprints.utm.my/id/eprint/102271/1/MominaTehreemKhattakMSBME2020.pdf.pdf
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