TY - JOUR
T1 - Semantic segmentation and PSO based method for segmenting liver and lesion from CT images
AU - Nayantara, P. Vaidehi
AU - Kamath, Surekha
AU - K N, Manjunath
AU - K V, Rajagopal
N1 - Funding Information:
We would like to thank KSTePS, DST, Government of Karnataka, India for their support. We are also grateful to Manipal Institute of Technology, MAHE, Manipal for providing the facilities to carry out the research and Kasturba Medical College and hospital, Manipal for providing the images.
Publisher Copyright:
© The Author(s).
PY - 2022
Y1 - 2022
N2 - The liver is a vital organ of the human body and hepatic cancer is one of the major causes of cancer deaths. Early and rapid diagnosis can reduce the mortality rate. It can be achieved through computerized cancer diagnosis and surgery planning systems. Segmentation plays a major role in these systems. This work evaluated the efficacy of the SegNet model in liver and particle swarm optimization-based clustering technique in liver lesion segmentation. Over 2400 CT images were used for training the deep learning network and ten CT datasets for validating the algorithm. The segmentation results were satisfactory. The values for Dice Coefficient and volumetric overlap error achieved were 0.940 ± 0.022 and 0.112 ± 0.038, respectively for liver and the results for lesion delineation were 0.4629 ± 0.287 and 0.6986 ± 0.203, respectively. The proposed method is effective for liver segmentation. However, lesion segmentation needs to be further improved for better accuracy.
AB - The liver is a vital organ of the human body and hepatic cancer is one of the major causes of cancer deaths. Early and rapid diagnosis can reduce the mortality rate. It can be achieved through computerized cancer diagnosis and surgery planning systems. Segmentation plays a major role in these systems. This work evaluated the efficacy of the SegNet model in liver and particle swarm optimization-based clustering technique in liver lesion segmentation. Over 2400 CT images were used for training the deep learning network and ten CT datasets for validating the algorithm. The segmentation results were satisfactory. The values for Dice Coefficient and volumetric overlap error achieved were 0.940 ± 0.022 and 0.112 ± 0.038, respectively for liver and the results for lesion delineation were 0.4629 ± 0.287 and 0.6986 ± 0.203, respectively. The proposed method is effective for liver segmentation. However, lesion segmentation needs to be further improved for better accuracy.
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U2 - 10.24425/ijet.2022.141283
DO - 10.24425/ijet.2022.141283
M3 - Article
SN - 2081-8491
VL - 68
SP - 635
EP - 640
JO - International Journal of Electronics and Telecommunications
JF - International Journal of Electronics and Telecommunications
IS - 3
ER -