医用電子と生体工学
Online ISSN : 2185-5498
Print ISSN : 0021-3292
ISSN-L : 0021-3292
ニューラルネットワークを応用したMR画像の表示ウィンドウの自動設定
大橋 昭南南部 恭二郎
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ジャーナル フリー

1992 年 30 巻 2 号 p. 111-120

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We have developed a system to automatically adjust the display window width and level (WWL) for MR images using neural networks. There were three main points in the development of our system as follows: 1) We defined an index for the clarity of a displayed image, and called “EW” EW is a quantitative measure of the clarity of an image displayed in a certain WWL, and can be derived from the different between gray-level with the WWL adjusted by a human expert and with a certain WWL. 2) We extracted a group of six features from a gray-level histogram of a displayed image. We designed two neural networks which are able to learn the relationship between these features and the desired output (teaching signal), “EQ, ” which is normalized to 0 to 1.0 from EW. Two neural networks were used to share the patterns to be learned; one learns a variety of patterns with less accuracy, and the other learns similar patterns with accuracy. Learning was performed using a back-propagation method. As a result, the neural networks after learning are able to provide a quantitative measure, “Q, ” of the clarity of images displayed in the designated WWL. 3) Using the “Hill climbing” method, we have been able to determine the best possible WWL for a displaying image. We have tested this technique for MR brain images. The results show that this system can adjust WWL comparable to that adjusted by a human expert for the majority of test images. The neural network is effective for the automatic adjustment of the display window for MR images, We are now studying the application of this method to MR images of another regions.
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© 日本生体医工学会
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