ISSN 1004-4140
CN 11-3017/P
Li Jianding, Zhang Wenai, Chen Yongxin, Chen Yingli, Zhang Yaozhen. A Computer CT MRI Images Analysis and Diagnosis System for Cerebrovascular Disease[J]. CT Theory and Applications, 2000, 9(3): 12-14.
Citation: Li Jianding, Zhang Wenai, Chen Yongxin, Chen Yingli, Zhang Yaozhen. A Computer CT MRI Images Analysis and Diagnosis System for Cerebrovascular Disease[J]. CT Theory and Applications, 2000, 9(3): 12-14.

A Computer CT MRI Images Analysis and Diagnosis System for Cerebrovascular Disease

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  • Received Date: January 17, 2000
  • Available Online: December 28, 2022
  • Purpose To build a computer aide d analysis and diagnosis system and using this system to help doctors quickly diagnose a Cerebrovascular disease it also can be used as a education system. Materials and methods Images and expert radial doctors are from the CT department of the First Hospital of Shan'Xi Medical University and and others,etc. A Visual Fox pro 3.0 program based on Win 3.2 perform the sequential diagnosis method Results the system can diagnose 23 kinds of Cerebrovascular disease from 29 CT characters and 23 MRI characters. The result replete can be printed. It has developed a Archive of Cerebrovascular diseases, concluding images and words. Conclusion it is proved that the CAAD system is a good aided diagnosis system and a good education system.
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