scholarly journals A Classification Diagnosis of Cervical Cancer Medical Data Based on Various Artificial Neural Networks

Author(s):  
Yong Qi ◽  
Zhijian Zhao ◽  
Lizeqing Zhang ◽  
Haozhe Liu ◽  
Kai Lei
Author(s):  
K.Deepa , Et. al.

Artificial neural networks (ANN) assume a significant part in numerous clinical imaging applications. Cervical cancer ranks the 4th dangerous women cancers in less developed countries due to insufficient trained staffs and medical procedures. The location of cervical malignancy cells utilizes ANN for characterizing the typical and unusual cells in the cervix wall of the uterus. Cervical malignancy location is exceptionally difficult on the grounds that this disease happens with no manifestations.  The order between the typical,unusual and malignant cells produces exact outcomes than other manual screening techniques.The ANN utilizes a few models for a simple and precise identification of cervical cells. The main aim of artificial neural networks is to supply right information at a right time. Hence we implement artificial neural techniques with collected data Analysis,to improve the life of an individual and to decrease the death rate of the society respectively.   


2019 ◽  
Vol 8 (4) ◽  
pp. 3832-3835

In rapid growth of medical informatics, patient data need to be organized and used for medical diagnosis and other uses such as disease prediction and drug discovery. There are many more traditional methods used for text based information such as K-NN, K-Means and other clustering algorithms, but image based medical data (or) signals based medical data is needed. So there is a need of new approaches for efficient classification and knowledge generation process. Artificial neural network based methods are mostly suited for deep learning, since there are many more approaches available in artificial neural networks. Deep learning and Machine learning techniques requires efficient pattern or feature extraction and pattern identification. Auto encoders and deep auto encoders works based on artificial neural networks and most suitable multimodal data feature extraction and identification. In this paper we have to show deep learning methods such as auto encoder and deep auto encoders for classifying multimodal medical data.


2016 ◽  
Vol 89 ◽  
pp. 465-472 ◽  
Author(s):  
M. Anousouya Devi ◽  
S. Ravi ◽  
J. Vaishnavi ◽  
S. Punitha

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