scholarly journals Deep learning for computer-assisted diagnosis of hereditary diffuse gastric cancer

Author(s):  
Sean A. Rasmussen ◽  
Thomas Arnason ◽  
Weei-Yuarn Huang
Author(s):  
Akella S. Narasimha Raju ◽  
Kayalvizhi Jayavel ◽  
Tulasi Rajalakshmi

<span>The malignancy of the colorectal testing methods has been exposed triumph to decrease the occurrence and death rate; this cancer is the relatively sluggish rising and has an extremely peculiar to develop the premalignant lesions. Now, many patients are not going to colorectal cancer screening, and people who do, are able to diagnose existing tests and screening methods. The most important concept of this motivation for this research idea is to evaluate the recognized data from the immediately available colorectal cancer screening methods. The data provided to laboratory technologists is important in the formulation of appropriate recommendations that will reduce colorectal cancer. With all standard colon cancer tests can be recognized agitatedly, the treatment of colorectal cancer is more efficient. The intelligent computer assisted diagnosis (CAD) is the most powerful technique for recognition of colorectal cancer in recent advances. It is a lot to reduce the level of interference nature has contributed considerably to the advancement of the quality of cancer treatment. To enhance diagnostic accuracy intelligent CAD has a research always active, ongoing with the deep learning and machine learning approaches with the associated convolutional neural network (CNN) scheme.</span>


1977 ◽  
Vol 16 (02) ◽  
pp. 89-92 ◽  
Author(s):  
N. Zoltie ◽  
J. C. Horrocks ◽  
F. T. de Dombal

This paper reports a retrospective study of computer-assisted diagnosis of 86 cases of >dyspepsia< in Bristol, England; the computer-assisted diagnosis making use of a database provided by 360 patients from Leeds, England. The computer’s diagnostic prediction proved to be correct in 63 out of the 86 cases — an overall accuracy of 73.3%. The system correctly diagnosed 14 out of 18 cases of gastric cancer (77.8%) at the expense of only three false positives.These results (1) confirm that gastric cancer can be diagnosed in most cases on the history alone; (2) suggest that this method of assisting diagnosis can be transferred successfully to different localities without loss of accuracy; and (3) indicate that a detailed structured computer-assisted analysis of the patient’s symptoms may be of value in selecting high-risk patients for intensive investigation.


2017 ◽  
Vol 266 (6) ◽  
pp. 1006-1012 ◽  
Author(s):  
Vivian E. Strong ◽  
Sepideh Gholami ◽  
Manish A. Shah ◽  
Laura H. Tang ◽  
Yelena Y. Janjigian ◽  
...  

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