Automatic Liver Tumor Detection from CT
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概要
- 論文の詳細を見る
This paper proposes an automatic system which can perform the entire diagnostic process from the extraction of the liver to the recognition of a tumor. In particular, the proposed technique uses shape information to identify and recognize a lesion adjacent to the border of the liver, which can otherwise be missed. Because such an area is concave like a bay, morphological operations can be used to find the bay. In addition, since the intensity of a lesion can vary greatly according to the patient and the slice taken, a decision on the threshold for extraction is not easy. Accordingly, the proposed method extracts the lesion by means of a Fuzzy c-Means clustering technique, which can determine the threshold regardless of a changing intensity. Furthermore, in order to decrease any erroneous diagnoses, the proposed system performs a 3-D consistency check based on three-dimensional information that a lesion mass cannot appear in a single slice independently. Based on experimental results, these processes produced a high recognition rate above 91%.
- 社団法人電子情報通信学会の論文
- 2001-06-01
著者
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Park Kil-houm
The Graduate School Of Electronics Kyungpook National University
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SEKIGUCHI Ryuzo
Department of Diagnostic Radiology, National Cancer Center Hospital East
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Sekiguchi Ryuzo
Department Of Radiology East Hospital National Cancer Center
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HONG Jae-Sung
The Graduate School of Electronics, Kyungpook National University
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KANEKO Toyohisa
Department of Information and Computer Sciences, Toyohashi University of Technology
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Hong Jae-sung
The Graduate School Of Electronics Kyungpook National University
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Kaneko Toyohisa
Department Of Information And Computer Sciences Toyohashi University Of Technology
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Sekiguchi Ryuzo
Department Of Diagnostic Imaging Tochigi Cancer Center
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