2011
DOI: 10.2174/1874431101105010058
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Prototypes for Content-Based Image Retrieval in Clinical Practice

Abstract: Content-based image retrieval (CBIR) has been proposed as key technology for computer-aided diagnostics (CAD). This paper reviews the state of the art and future challenges in CBIR for CAD applied to clinical practice.We define applicability to clinical practice by having recently demonstrated the CBIR system on one of the CAD demonstration workshops held at international conferences, such as SPIE Medical Imaging, CARS, SIIM, RSNA, and IEEE ISBI. From 2009 to 2011, the programs of CADdemo@CARS and the CAD Demo… Show more

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Cited by 17 publications
(10 citation statements)
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References 49 publications
(52 reference statements)
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“…1. computer-aided diagnostics (CAD): CBIR methods have been proposed as an effective technology for CAD systems, which have the capacity of relieving the workload of doctors and to offer more reliable and consist analysis of medical images (Akgül et al, 2011;Depeursinge et al, 2011). Despite most retrieval systems are not routinely used, CBIR based CAD are rather research prototypes for medical image analytics.…”
Section: Opportunitiesmentioning
confidence: 99%
“…1. computer-aided diagnostics (CAD): CBIR methods have been proposed as an effective technology for CAD systems, which have the capacity of relieving the workload of doctors and to offer more reliable and consist analysis of medical images (Akgül et al, 2011;Depeursinge et al, 2011). Despite most retrieval systems are not routinely used, CBIR based CAD are rather research prototypes for medical image analytics.…”
Section: Opportunitiesmentioning
confidence: 99%
“…Doctors learn the relationships between a specific disease and anatomical phenotypes; such knowledge is not always reproducible or specific, but it may provide an important clue about a patient’s pathological state. To achieve similar connections using an MRI brain database, machine-learning approaches, such as linear discriminant analysis (LDA) or support vector machines (5759), can be used to index the anatomical data with diagnostic labelings from the groups; for example, in Figure 5, we entered information about clinical labels (clinically normal for PPA) and calculated the anatomical features that were associated with a specific disease. In Figure 6, the results of discriminant analysis are shown, and PPA patients are differentiated from controls with high sensitivity and specificity.…”
Section: Technologies Required For Next-generation Image-based Diamentioning
confidence: 99%
“…Mandal et al [1] put efforts into combining pragmatic solutions to palliate the lack of cardiologists in remote rural areas in India, which results in a portable cardiac sound analysis system to detect heart anomalies and subsequently determines the importance of getting further assistance. Other researchers have systematically analyzed the usability requirements of image-based computer-aided diagnosis systems in clinical routine [4,5] with the aim of reducing the gap between Sensors, Medical Images and Signal Processing: Ubiquitous Personalized Health Monitoring…”
Section: Focusing On the Clinical Impactmentioning
confidence: 99%