scholarly journals Prostate segmentation on pelvic CT images using a genetic algorithm

Author(s):  
Payel Ghosh ◽  
Melanie Mitchell
Author(s):  
Luke A Matkovic ◽  
Tonghe Wang ◽  
Yang Lei ◽  
Oladunni O Akin-Akintayo ◽  
Olayinka A Abiodun Ojo ◽  
...  

Abstract Focal dose boost to dominant intraprostatic lesions (DILs) has recently been proposed for prostate radiation therapy. Accurate and fast delineation of the prostate and DILs is thus required during treatment planning. We propose a learning-based method using positron emission tomography (PET)/computed tomography (CT) images to automatically segment the prostate and its DILs. To enable end-to-end segmentation, a deep learning-based method, called cascaded regional-Net, is utilized. The first network, referred to as dual attention network (DAN), is used to segment the prostate via extracting comprehensive features from both PET and CT images. A second network, referred to as mask scoring regional convolutional neural network (MSR-CNN), is used to segment the DILs from the PET and CT within the prostate region. Scoring strategy is used to diminish the misclassification of the DILs. For DIL segmentation, the proposed cascaded regional-Net uses two steps to remove normal tissue regions, with the first step cropping images based on prostate segmentation and the second step using MSR-CNN to further locate the DILs. The binary masks of DILs and prostates of testing patients are generated from PET/CT by the trained network. To evaluate the proposed method, we retrospectively investigated 49 PET/CT datasets. On each dataset, the prostate and DILs were delineated by physicians and set as the ground truths and training targets. The proposed method was trained and evaluated using a five-fold cross-validation and a hold-out test. The mean surface distance and DSC values were 0.666±0.696mm and 0.932±0.059 for the prostate and 1.209±1.954mm and 0.757±0.241 for the DILs among all 49 patients. The proposed method has demonstrated great potential for improving the efficiency and reducing the observer variability of prostate and DIL contouring for DIL focal boost prostate radiation therapy.


2020 ◽  
pp. 1016-1026
Author(s):  
W. A. Abbas

Medical imaging is a technique that has been used for diagnosis and treatment of a large number of diseases. Therefore it has become necessary to conduct a good image processing to extract the finest desired result and information. In this study, genetic algorithm (GA)-based clustering technique (K-means and Fuzzy C Means (FCM)) were used to segment thyroid Computed Tomography (CT) images to an extraction thyroid tumor. Traditional GA, K-means and FCM algorithms were applied separately on the original images and on the enhanced image with Anisotropic Diffusion Filter (ADF). The resulting cluster centers from K-means and FCM were used as the initial population in GA for the implementation of GAK-Mean and GAFCM. Jaccard index was used to study resemblance, dissimilarity, distance between two sets of images, and effect of ADF on enhancing the CT images. The results showed that ADF increases the segmentation accuracy, where the value of Jaccard index of similarity between the ground truth image and segmented image was increased for all segmentation algorithms, in particular for FCM  and GAFCM where  similarity percent was up to 88%.


2021 ◽  
Vol 2021 ◽  
pp. 1-9
Author(s):  
Yuan Niu ◽  
Xuejie He ◽  
Guijuan Hao ◽  
Liang Wang

The purpose of this study was to investigate the diagnosis of patients in the early low-incidence area of coronavirus disease 2019 (COVID-19) and the mental health of staff based on genetic algorithm- (GA-) based computed tomography (CT) images. In this study, 136 COVID-19 patients admitted to our hospital were divided into a critical group (94 cases) and a general group (42 cases). In addition, a questionnaire was used to investigate the mental health of COVID-19 patients in early low-incidence areas, including 147 medical staff members and 213 nonmedical staff members. The effects were compared between the optimized GA template matching (OGATM) algorithm proposed in this study and traditional GATM, which were applied in CT images of COVID-19 patients. The results showed that the proposed algorithm could improve the accuracy of pneumonia detection and reduce the false-positive rate. The average age of patients in the severe group was markedly higher than that of the general group ( P < 0.05 ). The number of cases with diabetes mellitus (49.6%) from the severe group was more than that from the general group (12.4%) ( P < 0.05 ). Lymphocyte count in patients from the severe group (0.68 ± 0.26 × 109/L) was sharply lower than that of the general group (1.12 ± 0.34 × 109/L) ( P < 0.05 ). The total T lymphocyte count in patients from the severe group reduced steeply in contrast to that of the general group ( P < 0.05 ). The anxiety and depression scores of medical patients (39.45 ± 9.45 points and 47.58 ± 10.47 points) were obviously lower than the scores of nonmedical patients (43.57 ± 9.54 points and 52.48 ± 10.25 points) ( P < 0.05 ). In conclusion, the elderly and staffs with diabetes mellitus were more likely to develop severe COVID-19. Moreover, the total T lymphocytes of COVID-19 patients were lower than their normal levels, and nonmedical staffs had more psychological stress than medical staffs.


2017 ◽  
Vol 44 (11) ◽  
pp. 5768-5781 ◽  
Author(s):  
Ling Ma ◽  
Rongrong Guo ◽  
Guoyi Zhang ◽  
David M. Schuster ◽  
Baowei Fei

2016 ◽  
Author(s):  
Ling Ma ◽  
Rongrong Guo ◽  
Zhiqiang Tian ◽  
Rajesh Venkataraman ◽  
Saradwata Sarkar ◽  
...  

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