Authors :
Seyed Masoud Ghoreishi Mokri; Newsha Valadbeygi; Khafaji Mohammed Balyasimovich
Volume/Issue :
Volume 9 - 2024, Issue 4 - April
Google Scholar :
https://tinyurl.com/t5xvanfn
Scribd :
https://tinyurl.com/m2atxpzz
DOI :
https://doi.org/10.38124/ijisrt/IJISRT24APR2513
Note : A published paper may take 4-5 working days from the publication date to appear in PlumX Metrics, Semantic Scholar, and ResearchGate.
Abstract :
Gastric cancer is an important health
problem and is the fourth most common cancer and the
second leading cause of cancer-related deaths worldwide.
The incidence of stomach cancer is increasing and it can
be dealt with using new methods in prediction and
diagnosis. Our goal is to implement an artificial neural
network to predict new cancer cases. Gastric cancer is
anatomically divided into true gastric adenocarcinomas
(non-cardiac gastric cancers) and gastric-esophageal-
connective cancer (adenocardia (cardiac) gastric
cancers). We use MATLAB R2018 software
(MathWorks) to implement an artificial neural network.
We used. The data were repeatedly and randomly
divided into training (70%) and validation (30%)
subsets. Our predictions emphasize the need for detailed
studies on the risk factors associated with gastric cell
carcinoma to reduce the incidence and has also provided
an accuracy of about 99.998%.
Keywords :
Gastric Cancer, Matlab, Prediction, Neural Network, Diagnosis, RNN Neural Network.
Gastric cancer is an important health
problem and is the fourth most common cancer and the
second leading cause of cancer-related deaths worldwide.
The incidence of stomach cancer is increasing and it can
be dealt with using new methods in prediction and
diagnosis. Our goal is to implement an artificial neural
network to predict new cancer cases. Gastric cancer is
anatomically divided into true gastric adenocarcinomas
(non-cardiac gastric cancers) and gastric-esophageal-
connective cancer (adenocardia (cardiac) gastric
cancers). We use MATLAB R2018 software
(MathWorks) to implement an artificial neural network.
We used. The data were repeatedly and randomly
divided into training (70%) and validation (30%)
subsets. Our predictions emphasize the need for detailed
studies on the risk factors associated with gastric cell
carcinoma to reduce the incidence and has also provided
an accuracy of about 99.998%.
Keywords :
Gastric Cancer, Matlab, Prediction, Neural Network, Diagnosis, RNN Neural Network.