1. Automated interpretation of fetal abnormalities over real-time sensory sonography using SVM classifier.
- Author
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Jiji, G. Wiselin, Rajesh, A., and Muthuraj, A.
- Subjects
FETAL abnormalities ,FETAL monitoring ,TECHNOLOGICAL innovations ,FEATURE extraction ,SUPPORT vector machines ,FETAL ultrasonic imaging - Abstract
Medical and healthcare institutions have embraced the utilization of fetal monitoring systems to evaluate the condition of fetus throughout pregnancy, with a particular emphasis on the labor and delivery phases. Technological advancements have facilitated the early detection of defects and irregularities in the initial stages of pregnancy, thereby amplifying the possibility of successful interventions. The primary objective of this study is to develop a system capable of detecting abnormalities in the fetus by analyzing ultrasound images obtained during routine ultrasonography sessions within the first 21 weeks of pregnancy. The developed system evaluates crucial parameters such as the dimensions of the head, abdomen, and femur, as well as the fetal weight. The diagnostic procedure encompasses the segmentation of the fetus's head, abdomen, and femur regions, followed by the extraction of feature descriptors from these segmented areas. To categorize these features as normal or abnormal, a Support Vector Machine (SVM) classifier is employed. Furthermore, the methodology is capable of detecting any structural anomalies that may be present. Notably, this approach has yielded an impressive accuracy rate of 95.238%, thus offering healthcare practitioners a valuable diagnostic aid. [ABSTRACT FROM AUTHOR]
- Published
- 2024
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