Title :
Features Based IUGR Diagnosis Using Variational Level Set Method and Classification Using Artificial Neural Networks
Author :
Gadagkar, Akhilraj V. ; Shreedhara, K.S.
Author_Institution :
Dept. of C.S. & E., U.B.D.T. Coll. of Eng., Davangere, India
Abstract :
Intrauterine growth restriction (IUGR) is the failure of the fetus to achieve his/her intrinsic growth potential. IUGR results in significant perinatal and long-term complications, including the development of insulin resistance/metabolic syndrome in adulthood [5]. Accurate and effective monitoring of fetal growth is one of the key component of prenatal care [3]. Ultrasound evaluation is considered the cornerstone of diagnosis and surveillance of the growth-restricted fetus [2]. Ultrasound measurements play a significant role in obstetrics as an accurate means for the estimation of the fetal age. Several parameters are used as aging parameters, the most important of which are the biparietal diameter (BPD), head circumference (HC), abdominal circumference (AC) and femur length (FL). Serial measurement of these parameters over time is used to determine the fetal condition. Hence, consistency and reproducibility of measurements is an important issue. Consequently the automatic segmentation of anatomical structures in ultrasound imagery is a real challenge due to acoustic interferences (speckle noise) and artifacts which are inherent in these images. In this paper, a novel method is proposed for developing a Computer Aided Diagnosis (CAD) system for diagnosis and classification of IUGR foetuses. Diagnosis is performed by segmenting and extracting the required foetus features from an ultrasound image, using the Re-initialization free level set with Reaction Diffusion (RD) technique. An artificial neural network (ANN) classifier is developed, the features extracted are provided to the designed ANN model. The ANN then classifies normal and abnormal fetuses based on features provided.
Keywords :
biomedical measurement; biomedical ultrasonics; feature extraction; image classification; image segmentation; medical image processing; neural nets; patient care; patient diagnosis; set theory; AC; ANN; BPD; CAD; FL; HC; IUGR fetus classification; IUGR fetus diagnosis; abdominal circumference; abnormal fetus classification; accurate fetal growth monitoring; acoustic interferences; aging parameters; artificial neural network classifier; automatic anatomical structure segmentation; biparietal diameter; computer aided diagnosis system; features based IUGR diagnosis; femur length; fetal age estimation; fetus failure; fetus feature extraction; fetus feature segmentation; growth-restricted fetus diagnosis; growth-restricted fetus surveillance; head circumference; insulin resistance development; intrauterine growth restriction; intrinsic growth potential; metabolic syndrome development; normal fetus classification; prenatal care; reaction diffusion technique; reinitialization free level set; speckle noise; ultrasound evaluation; ultrasound imagery; ultrasound measurement consistency; ultrasound measurement reproducibility; variational level set method; Artificial neural networks; Equations; Feature extraction; Level set; Mathematical model; Ultrasonic imaging; Ultrasonic variables measurement; Artificial Neural Network; Fetus; Reaction Diffusion; Ultrasound;
Conference_Titel :
Signal and Image Processing (ICSIP), 2014 Fifth International Conference on
Conference_Location :
Jeju Island
DOI :
10.1109/ICSIP.2014.54