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1.
  • Bora, K., et al. (author)
  • Pap smear image classification using convolutional neural network
  • 2016
  • In: ACM International Conference Proceeding Series. - New York, NY, USA : Association for Computing Machinery. - 9781450347532
  • Conference paper (peer-reviewed)abstract
    • This article presents the result of a comprehensive study on deep learning based Computer Aided Diagnostic techniques for classification of cervical dysplasia using Pap smear images. All the experiments are performed on a real indigenous image database containing 1611 images, generated at two diagnostic centres. Focus is given on constructing an effective feature vector which can perform multiple level of representation of the features hidden in a Pap smear image. For this purpose Deep Convolutional Neural Network is used, followed by feature selection using an unsupervised technique with Maximal Information Compression Index as similarity measure. Finally performance of two classifiers namely Least Square Support Vector Machine (LSSVM) and Softmax Regression are monitored and classifier selection is performed based on five measures along with five fold cross validation technique. Output classes reflects the established Bethesda system of classification for identifying pre-cancerous and cancerous lesion of cervix. The proposed system is also compared with two existing conventional systems and also tested on a publicly available database. Experimental results and comparison shows that proposed system performs efficiently in Pap smear classification.
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2.
  • Chowdhury, Manish, et al. (author)
  • An Efficient Radiographic Image Retrieval System Using Convolutional Neural Network
  • 2016
  • In: 2016 23rd International Conference on Pattern Recognition (ICPR). - : Institute of Electrical and Electronics Engineers (IEEE). - 9781509048472 ; , s. 3134-3139
  • Conference paper (peer-reviewed)abstract
    • Content-Based Medical Image Retrieval (CBMIR) is an important research field in the context of medical data management. In this paper we propose a novel CBMIR system for the automatic retrieval of radiographic images. Our approach employs a Convolutional Neural Network (CNN) to obtain high- level image representations that enable a coarse retrieval of images that are in correspondence to a query image. The retrieved set of images is refined via a non-parametric estimation of putative classes for the query image, which are used to filter out potential outliers in favour of more relevant images belonging to those classes. The refined set of images is finally re-ranked using Edge Histogram Descriptor, i.e. a low-level edge-based image descriptor that allows to capture finer similarities between the retrieved set of images and the query image. To improve the computational efficiency of the system, we employ dimensionality reduction via Principal Component Analysis (PCA). Experiments were carried out to evaluate the effectiveness of the proposed system on medical data from the “Image Retrieval in Medical Applications” (IRMA) benchmark database. The obtained results show the effectiveness of the proposed CBMIR system in the field of medical image retrieval.
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4.
  • Klionsky, Daniel J., et al. (author)
  • Guidelines for the use and interpretation of assays for monitoring autophagy
  • 2012
  • In: Autophagy. - : Informa UK Limited. - 1554-8635 .- 1554-8627. ; 8:4, s. 445-544
  • Research review (peer-reviewed)abstract
    • In 2008 we published the first set of guidelines for standardizing research in autophagy. Since then, research on this topic has continued to accelerate, and many new scientists have entered the field. Our knowledge base and relevant new technologies have also been expanding. Accordingly, it is important to update these guidelines for monitoring autophagy in different organisms. Various reviews have described the range of assays that have been used for this purpose. Nevertheless, there continues to be confusion regarding acceptable methods to measure autophagy, especially in multicellular eukaryotes. A key point that needs to be emphasized is that there is a difference between measurements that monitor the numbers or volume of autophagic elements (e.g., autophagosomes or autolysosomes) at any stage of the autophagic process vs. those that measure flux through the autophagy pathway (i.e., the complete process); thus, a block in macroautophagy that results in autophagosome accumulation needs to be differentiated from stimuli that result in increased autophagic activity, defined as increased autophagy induction coupled with increased delivery to, and degradation within, lysosomes (in most higher eukaryotes and some protists such as Dictyostelium) or the vacuole (in plants and fungi). In other words, it is especially important that investigators new to the field understand that the appearance of more autophagosomes does not necessarily equate with more autophagy. In fact, in many cases, autophagosomes accumulate because of a block in trafficking to lysosomes without a concomitant change in autophagosome biogenesis, whereas an increase in autolysosomes may reflect a reduction in degradative activity. Here, we present a set of guidelines for the selection and interpretation of methods for use by investigators who aim to examine macroautophagy and related processes, as well as for reviewers who need to provide realistic and reasonable critiques of papers that are focused on these processes. These guidelines are not meant to be a formulaic set of rules, because the appropriate assays depend in part on the question being asked and the system being used. In addition, we emphasize that no individual assay is guaranteed to be the most appropriate one in every situation, and we strongly recommend the use of multiple assays to monitor autophagy. In these guidelines, we consider these various methods of assessing autophagy and what information can, or cannot, be obtained from them. Finally, by discussing the merits and limits of particular autophagy assays, we hope to encourage technical innovation in the field.
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5.
  • Kundu, M. K., et al. (author)
  • Interactive radiographic image retrieval system
  • 2017
  • In: Computer Methods and Programs in Biomedicine. - : Elsevier. - 0169-2607 .- 1872-7565. ; 139, s. 209-220
  • Journal article (peer-reviewed)abstract
    • Background and Objective Content based medical image retrieval (CBMIR) systems enable fast diagnosis through quantitative assessment of the visual information and is an active research topic over the past few decades. Most of the state-of-the-art CBMIR systems suffer from various problems: computationally expensive due to the usage of high dimensional feature vectors and complex classifier/clustering schemes. Inability to properly handle the “semantic gap” and the high intra-class versus inter-class variability problem of the medical image database (like radiographic image database). This yields an exigent demand for developing highly effective and computationally efficient retrieval system. Methods We propose a novel interactive two-stage CBMIR system for diverse collection of medical radiographic images. Initially, Pulse Coupled Neural Network based shape features are used to find out the most probable (similar) image classes using a novel “similarity positional score” mechanism. This is followed by retrieval using Non-subsampled Contourlet Transform based texture features considering only the images of the pre-identified classes. Maximal information compression index is used for unsupervised feature selection to achieve better results. To reduce the semantic gap problem, the proposed system uses a novel fuzzy index based relevance feedback mechanism by incorporating subjectivity of human perception in an analytic manner. Results Extensive experiments were carried out to evaluate the effectiveness of the proposed CBMIR system on a subset of Image Retrieval in Medical Applications (IRMA)-2009 database consisting of 10,902 labeled radiographic images of 57 different modalities. We obtained overall average precision of around 98% after only 2–3 iterations of relevance feedback mechanism. We assessed the results by comparisons with some of the state-of-the-art CBMIR systems for radiographic images. Conclusions Unlike most of the existing CBMIR systems, in the proposed two-stage hierarchical framework, main importance is given on constructing efficient and compact feature vector representation, search-space reduction and handling the “semantic gap” problem effectively, without compromising the retrieval performance. Experimental results and comparisons show that the proposed system performs efficiently in the radiographic medical image retrieval field.
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7.
  • Aad, G., et al. (author)
  • 2011
  • swepub:Mat__t (peer-reviewed)
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8.
  • Aad, G., et al. (author)
  • 2011
  • Journal article (peer-reviewed)
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9.
  • Aad, G., et al. (author)
  • 2012
  • swepub:Mat__t (peer-reviewed)
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10.
  • Aad, G., et al. (author)
  • 2012
  • swepub:Mat__t (peer-reviewed)
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  • Result 1-10 of 129
Type of publication
journal article (21)
conference paper (2)
research review (1)
Type of content
peer-reviewed (128)
Author/Editor
Abi, B. (123)
Abramowicz, H. (123)
Abreu, H. (123)
Adelman, J. (123)
Adomeit, S. (123)
Adye, T. (123)
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Akimoto, G. (123)
Akimov, A. V. (123)
Aleksa, M. (123)
Alexandre, G. (123)
Alhroob, M. (123)
Allport, P. P. (123)
Almond, J. (123)
Amelung, C. (123)
Anastopoulos, C. (123)
Angerami, A. (123)
Annovi, A. (123)
Antonaki, A. (123)
Antonelli, M. (123)
Arabidze, G. (123)
Aracena, I. (123)
Arai, Y. (123)
Arguin, J-F. (123)
Arnaez, O. (123)
Artamonov, A. (123)
Asai, S. (123)
Asquith, L. (123)
Assamagan, K. (123)
Azuma, Y. (123)
Bachacou, H. (123)
Bachas, K. (123)
Backes, M. (123)
Backhaus, M. (123)
Bain, T. (123)
Baker, O. K. (123)
Banas, E. (123)
Barak, L. (123)
Barbero, M. (123)
Barillari, T. (123)
Barisonzi, M. (123)
Barklow, T. (123)
Bartoldus, R. (123)
Battistin, M. (123)
Bawa, H. S. (123)
Beau, T. (123)
Beck, H. P. (123)
Beckingham, M. (123)
Bella, G. (123)
Belotskiy, K. (123)
Beltramello, O. (123)
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University
Royal Institute of Technology (6)
Uppsala University (5)
Lund University (4)
Stockholm University (3)
University of Gothenburg (1)
Linköping University (1)
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Karolinska Institutet (1)
Swedish University of Agricultural Sciences (1)
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Language
English (128)
Swedish (1)
Research subject (UKÄ/SCB)
Natural sciences (4)
Engineering and Technology (3)
Medical and Health Sciences (1)

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