A CAD of fully automated colonic polyp detection for contrasted and non-contrasted CT scans
Künye
Tulum, G., Bolat, B., & Osman, O. (2017). A CAD of fully automated colonic polyp detection for contrasted and non-contrasted CT scans. International Journal of Computer Assisted Radiology and Surgery, 12(4), 627-644. doi:10.1007/s11548-017-1521-9Özet
Computer-aided detection (CAD) systems are developed to help radiologists detect colonic polyps over CT scans. It is possible to reduce the detection time and increase the detection accuracy rates by using CAD systems. In this paper, we aimed to develop a fully integrated CAD system for automated detection of polyps that yields a high polyp detection rate with a reasonable number of false positives. The proposed CAD system is a multistage implementation whose main components are: automatic colon segmentation, candidate detection, feature extraction and classification. The first element of the algorithm includes a discrete segmentation for both air and fluid regions. Colon-air regions were determined based on adaptive thresholding, and the volume/length measure was used to detect air regions. To extract the colon-fluid regions, a rule-based connectivity test was used to detect the regions belong to the colon. Potential polyp candidates were detected based on the 3D Laplacian of Gaussian filter. The geometrical features were used to reduce false-positive detections. A 2D projection image was generated to extract discriminative features as the inputs of an artificial neural network classifier. Our CAD system performs at 100% sensitivity for polyps larger than 9 mm, 95.83% sensitivity for polyps 6-10 mm and 85.71% sensitivity for polyps smaller than 6 mm with 5.3 false positives per dataset. Also, clinically relevant polyps (6 mm) were identified with 96.67% sensitivity at 1.12 FP/dataset.To the best of our knowledge, the novel polyp candidate detection system which determines polyp candidates with LoG filters is one of the main contributions. We also propose a new 2D projection image calculation scheme to determine the distinctive features. We believe that our CAD system is highly effective for assisting radiologist interpreting CT.
Kaynak
International Journal of Computer Assisted Radiology and SurgeryCilt
12Sayı
4Koleksiyonlar
İlgili Öğeler
Başlık, yazar, küratör ve konuya göre gösterilen ilgili öğeler.
-
Opimization of the magnetic anomaly signals from a new land mine detection device
Söyler, Salih; Kurt, Erol; Dağ, Oben (2012)Magnetic optimization studies have been carried out for a new magnetic anomaly (MA) device in order to detect the land mines. This device will use an artificial neural network algorithm for the classification of magnetic ... -
Occupancy detection from temperature, humidity, light, CO2 and humidity ratio measurements using machine learning techniques
Palabaş, Tuğba; Eroğlu, Kübra (Institute of Electrical and Electronics Engineers Inc., 2018)Order to save energy and to use energy resources efficiently, automatic occupancy determination based on sensor information is performed and energy is adjusted according to the demand in a closed area. In this study is ... -
Computed aided detection of traumatized kidneys in CT images
Tulum, Gökalp; Teomete, Uygar; Ergin, Tuncer; Dandin, Özgür; Cüce, Ferhat; Osman, Onur (Institute of Electrical and Electronics Engineers Inc., 2017)In this work, we developed a novel method to diagnose traumatized kidney in the presence of laceration, contusion and active bleeding due to abdominal trauma. Our CAD system performs 94,44% of sensitivity at 0.13 false ...