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Improvement of Automated Detection Method of Lacunar Infarcts in Brain MR Images.

Improvement of Automated Detection Method of Lacunar Infarcts in Brain MR Images. Research Abstract Details 

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  • Improvement of Automated Detection Method of Lacunar Infarcts in Brain MR Images. Abstract Text:

    yoshikazu uchiyamaYoshikazu Uchiyama,ryujiro yokoyamaRyujiro Yokoyama,hiromichi andoHiromichi Ando,takahiko asanoTakahiko Asano,hiroki katoHiroki Kato,hiroyasu yamakawaHiroyasu Yamakawa,haruki yamakawaHaruki Yamakawa,takeshi haraTakeshi Hara,toru iwamaToru Iwama,hiroaki hoshiHiroaki Hoshi,hiroshi fujitaHiroshi Fujita,

    The detection of asymptomatic lacunar infarcts on magnetic resonance (MR) images are important tasks for radiologists to ensure the prevention of sever cerebral infarction. However, their accurate identification is often difficult task. Therefore, the purpose of this study is to develop a computer-aided diagnosis scheme for the detection of lacunar infarcts. Our database consisted of 1,143 T1- and 1,143 T2-weighted images obtained from 132 patients. We first segmented the cerebral region in the T1- weighted image by using a region growing technique. For identifying the initial lacunar infarcts candidates, white top-hat transform and multiple-phase binarization were then applied to the T2- weighted image. For eliminating false positives (FPs), we determined 12 features, i.e., the locations x and y, density differences in the T1- and T2- weighted images, nodular components (NC), and nodular & linear components (NLC) from a scale 1 to 4. The NCs and NLCs were obtained using filter bank technique. The rule-based scheme and a neural network with 12 features were employed as the first step for eliminating FPs. The modular classifier was then used for eliminating three typical sources of FPs. As a result, the sensitivity of the detection of lacunar infarcts was 96.8% with 0.30 FP per image. Our computerized scheme would assist radiologists in identifying lacunar infarcts on MR images.

    Improvement of Automated Detection Method of Lacunar Infarcts in Brain MR Images. Publishing Authors By Initials

    y uchiyamaY Uchiyama,r yokoyamaR Yokoyama,h andoH Ando,t asanoT Asano,h katoH Kato,h yamakawaH Yamakawa,h yamakawaH Yamakawa,t haraT Hara,t iwamaT Iwama,h hoshiH Hoshi,h fujitaH Fujita,

    For similar abstracts research abstracts see: abstracts research

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    Improvement of Automated Detection Method of Lacunar Infarcts in Brain MR Images. Journal Published:

    PUBLICATION TYPE: Journal Article

    Journal: Conference proceedings : ... Annual International

    VOLUME: 1

    Page Numbers: 1599-602

    Journal Abbreviation:

    ISSN: 1557-170X

    DAY: 16

    MONTH: 11

    YEAR: 2007

    Improvement of Automated Detection Method of Lacunar Infarcts in Brain MR Images. Information

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    LANGUAGE: eng

    NlmUniqueID: 101243413

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    AFFILIATION: Dept. of Intelligent Image Information, Graduate School of Medicine, Gifu University, Yanagido 1-1, Gifu, 501-1194, Japan.

    Country: United States

    United States Research PublicationUnited States Research Publication

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    MEDLINETA: Conf Proc IEEE Eng Med Biol So

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