20 research outputs found

    RiIG Modeled WCP Image-Based CNN Architecture and Feature-Based Approach in Breast Tumor Classification from B-Mode Ultrasound

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    This study presents two new approaches based on Weighted Contourlet Parametric (WCP) images for the classification of breast tumors from B-mode ultrasound images. The Rician Inverse Gaussian (RiIG) distribution is considered for modeling the statistics of ultrasound images in the Contourlet transform domain. The WCP images are obtained by weighting the RiIG modeled Contourlet sub-band coefficient images. In the feature-based approach, various geometrical, statistical, and texture features are shown to have low ANOVA p-value, thus indicating a good capacity for class discrimination. Using three publicly available datasets (Mendeley, UDIAT, and BUSI), it is shown that the classical feature-based approach can yield more than 97% accuracy across the datasets for breast tumor classification using WCP images while the custom-made convolutional neural network (CNN) can deliver more than 98% accuracy, sensitivity, specificity, NPV, and PPV values utilizing the same WCP images. Both methods provide superior classification performance, better than those of several existing techniques on the same datasets

    RiIG Modeled WCP Image-Based CNN Architecture and Feature-Based Approach in Breast Tumor Classification from B-Mode Ultrasound

    No full text
    This study presents two new approaches based on Weighted Contourlet Parametric (WCP) images for the classification of breast tumors from B-mode ultrasound images. The Rician Inverse Gaussian (RiIG) distribution is considered for modeling the statistics of ultrasound images in the Contourlet transform domain. The WCP images are obtained by weighting the RiIG modeled Contourlet sub-band coefficient images. In the feature-based approach, various geometrical, statistical, and texture features are shown to have low ANOVA p-value, thus indicating a good capacity for class discrimination. Using three publicly available datasets (Mendeley, UDIAT, and BUSI), it is shown that the classical feature-based approach can yield more than 97% accuracy across the datasets for breast tumor classification using WCP images while the custom-made convolutional neural network (CNN) can deliver more than 98% accuracy, sensitivity, specificity, NPV, and PPV values utilizing the same WCP images. Both methods provide superior classification performance, better than those of several existing techniques on the same datasets

    RiIG Modeled WCP Image-Based CNN Architecture and Feature-Based Approach in Breast Tumor Classification from B-Mode Ultrasound

    No full text
    This study presents two new approaches based on Weighted Contourlet Parametric (WCP) images for the classification of breast tumors from B-mode ultrasound images. The Rician Inverse Gaussian (RiIG) distribution is considered for modeling the statistics of ultrasound images in the Contourlet transform domain. The WCP images are obtained by weighting the RiIG modeled Contourlet sub-band coefficient images. In the feature-based approach, various geometrical, statistical, and texture features are shown to have low ANOVA p-value, thus indicating a good capacity for class discrimination. Using three publicly available datasets (Mendeley, UDIAT, and BUSI), it is shown that the classical feature-based approach can yield more than 97% accuracy across the datasets for breast tumor classification using WCP images while the custom-made convolutional neural network (CNN) can deliver more than 98% accuracy, sensitivity, specificity, NPV, and PPV values utilizing the same WCP images. Both methods provide superior classification performance, better than those of several existing techniques on the same datasets.</jats:p

    Statistical Model Based Breast Tumor Classification in Contourlet Transform Domain

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    Determination of breast tumors from B-Mode Ultrasound (US) image is a perplexing one. Researches employing statistical modeling such as Nakagami, Normal Inverse Gaussian (NIG) distributed parametric images in this classification task have already explored but experimentation of those statistical models on contourlet transformed coefficient image in breast tumor classification task has not reported yet. The proposed method is established by considering 250 clinical cases from a publicly available database. In this database each clinical case exists as *.bmp format. In the preprocessing step firstly, the ultrasound B-Mode image is binarized to detect the lesion contour. Then contourlet transformation is employed. These contourlet sub band coefficients are shown to be modeled effectively by Nakagami and NIG distributions. These Nakagami and NIG parametric images are obtained by estimating the parameters of those prior statistical distributions locally. Few shape and statistical features are chosen according to their effectiveness on those parametric images. The benign and malignant breast tumors are classified utilizing these features with different classifiers such as the support vector machine, k-nearest neighbors, fitted binary classification decision tree, binary Gaussian kernel classification model, linear classification models for binary learning with high-dimensional etc. It is observed that classification performance of NIG statistical model based parametric version of contourlet coefficient images gained better accuracy than those of Nakagami statistical model.&#x0D; GUB JOURNAL OF SCIENCE AND ENGINEERING, Vol 7, Dec 2020 P 21-26</jats:p

    Evaluation of Bone Marrow Trephine Biopsy: 134 Cases Over 8 Years -A Single Centre Experience

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    Background: Trephine biopsy is a core biopsy of bone marrow using a special needle to evaluate the marrow architecture. Taking bone marrow biopsy alongside aspirate is still the most preferred practice for precise diagnosis and evaluation of various haematological and non- haematological disorders. Aims and objective: This study was carried out to evaluate the importance of this procedure in the diagnosis of various haematological and non-haematological disorders especially when bone marrow aspirates alone are non-diagnostic and to assess the prognostic significance of haematological malignancy. Materials and Methods: This was a retrospective study using the trephine biopsy and aspiration reports extracted from hospital records of Delta Medical College Hospital, Dhaka, over an 8years period from May 2009 to December 2016.The patient's profiles along with corresponding diagnoses and the necessary investigation reports were analysed. Result: Eighteen (26.47%) patients had bone marrow involvement for non-Hodgkin's lymphoma, three (4.41%) patients for Hodgkin's lymphoma, and acute lymphoblastic leukaemia was diagnosed in 18 (13.43%) patients, metastatic deposits in 6 (4.5%) patients, acute promyelocytic leukaemia in 3 (2.2%) cases, aplastic anaemia in 7 (5.2%) cases, chronic lymphocytic leukaemia in 1 (0.75%) case, multiple myeloma in 3 (2.2%) cases, myelofibrosis in 6 (4.5%) cases and chronic myeloid leukaemia and immune thrombocytopenic purpura were found in less than 1% cases. Total 37 patients (54.41 %) were reported as normocellular marrow with normal maturation among all the cases of lymphomas (N=68). One trephine biopsy was carried out to assess remission after induction chemotherapy in ALL. Conclusion: Trephine biopsy is an invaluable diagnostic tool in case of diagnostic dilemma and for follow up of patients undergoing chemotherapy and bone marrow transplantation. An expert haematopathological evaluation of the bone marrow trephine can impart light on actual diagnosis and have tremendous impact regarding patient management.  </jats:p
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