Javascript must be enabled to continue!
Detection and Classification of Pregnancy StateUsing Deep Learning Technique
View through CrossRef
This work aims to design and develop a model that detects and classifies pregnancy health status. Ultrasound is one of the most prevalent developments in clinical imaging, as it enables a doctor to evaluate, analyze and treat diseases. Most complications from pregnancy lead to serious problems that restrict healthy growth, causing weakness or death. In this work, an image processing system was developed to recognize the health during pregnancy and classify it for all stages of its development. The technique in deep learning has been implemented, as CNN (Resnet50) image recognition model was applied to detect and classify fetal health status from ultrasound images. The proposed model contributed to providing an integrated solution for each pregnancy period that works to identify all stages of fetal development, starting from the pre-pregnancy stage (here it is known about the suitability of the uterus for pregnancy, the size of the ovum, and its ability to form the fetus) and up to the stage of birth, through training, verification and testing using the cross-verification technique that five folds of the diagnostic rudder were used under the patterns that distinguish each stage from the other and to verify that it is sound or unsound in the concerning stage. This study enhanced diagnostic accuracy by using transfer learning and novel accessory images that were not trained as feedback. The model achieved an accuracy of 96.5% in detecting the fetus and classifying it into any of the stages that were divided according to the features that appear from one stage to the next to eleven categories.
Omdurman Islamic University
Title: Detection and Classification of Pregnancy StateUsing Deep Learning Technique
Description:
This work aims to design and develop a model that detects and classifies pregnancy health status.
Ultrasound is one of the most prevalent developments in clinical imaging, as it enables a doctor to evaluate, analyze and treat diseases.
Most complications from pregnancy lead to serious problems that restrict healthy growth, causing weakness or death.
In this work, an image processing system was developed to recognize the health during pregnancy and classify it for all stages of its development.
The technique in deep learning has been implemented, as CNN (Resnet50) image recognition model was applied to detect and classify fetal health status from ultrasound images.
The proposed model contributed to providing an integrated solution for each pregnancy period that works to identify all stages of fetal development, starting from the pre-pregnancy stage (here it is known about the suitability of the uterus for pregnancy, the size of the ovum, and its ability to form the fetus) and up to the stage of birth, through training, verification and testing using the cross-verification technique that five folds of the diagnostic rudder were used under the patterns that distinguish each stage from the other and to verify that it is sound or unsound in the concerning stage.
This study enhanced diagnostic accuracy by using transfer learning and novel accessory images that were not trained as feedback.
The model achieved an accuracy of 96.
5% in detecting the fetus and classifying it into any of the stages that were divided according to the features that appear from one stage to the next to eleven categories.
.
Related Results
In utero undernourishment during WWII: Effects on height and weight of young adult women
In utero undernourishment during WWII: Effects on height and weight of young adult women
Under marginal nutritional conditions, growth in utero is related to subsequent growth and adult height. The aim of this research is to compare the young adult body size of women g...
Fusion of Machine learning for Detection of Rumor and False Information in Social Network
Fusion of Machine learning for Detection of Rumor and False Information in Social Network
In recent years, spreading social media platforms and mobile devices led to more social data, advertisements, political opinions, and celebrity news proliferating fake news. Fake n...
Temporal integration of monaural and dichotic frequency modulation
Temporal integration of monaural and dichotic frequency modulation
Frequency modulation (FM) detection at low modulation frequencies is commonly used as an index of temporal fine structure processing to demonstrate age- and hearing-related deficit...
They Say, “If You Don’t Relax…You’re Going to Make Something Bad Happen”: Women’s Emotion Management During Medically High-Risk Pregnancy
They Say, “If You Don’t Relax…You’re Going to Make Something Bad Happen”: Women’s Emotion Management During Medically High-Risk Pregnancy
Little is known about how women with medically high-risk pregnancy manage their emotions while worried about their pregnancies. This study aimed to phenomenologically explore 16 ho...
Intercultural Competence Development Among University Students From a Self-Regulated Learning Perspective
Intercultural Competence Development Among University Students From a Self-Regulated Learning Perspective
Abstract. Intercultural competence is defined as a lifelong learning task that can be developed in any intergroup situation. A self-regulated learning model is applied to better un...
Graphic Design for Children with Learning Disabilities Based on the Isaan Mural Painting
Graphic Design for Children with Learning Disabilities Based on the Isaan Mural Painting
The study of 'Graphic design for children with learning disabilities' is a study that delves into learning-disabled children in the Isaan region. The author used the survey to form...
Leukemia Cancer Detection Using Various Deep Learning Algorithms
Leukemia Cancer Detection Using Various Deep Learning Algorithms
Leukemia is a type of blood cancer. Leukemia is cancer that begins in the blood cells. The lymphocytes and other blood cells are created in the bone marrow. When a person has leuke...
Genetic Signatures of Chromosome 20 Mosaicism in Recurrent Pregnancy Loss
Genetic Signatures of Chromosome 20 Mosaicism in Recurrent Pregnancy Loss
Recurrent pregnancy loss (RPL) causes an immeasurable physical, emotional, and economical impact on the couple. RPL is a complicated challenging scenario in front of gynaecologists...