An Intelligent Diagnosis of Liver Diseases using Different Decision Tree Models
Liver cancer is the third most common cause of cancer mortality. Artificial intelligence, as a diagnostic tool, can reduce physicians’ working load. However, the main fear is that due to the existence of many causes and factors, liver diseases are not easily diagnosed. This study analyzes liver disease intelligently. Various decision tree models were used in this research.
The records of 583 patients in the North East of Andhra Pradesh, India, registered at the University of California in 2012, were collected. Decision tree models were compared by three measures of sensitivity, accuracy, and area under the ROC curve.
In this study, Decision-Stump showed better results than other models. Accuracy, sensitivity, and ROC curve of Decision-Stump were 71.3058, 1, and 0.646, respectively.
The superior model with the highest precision is the Decision-Stump model. Therefore, the Decision-Stump model is recommended for liver disease diagnosis. This paper is invaluable for the allocation of health resources for risky people.
-
Exploring Common Symptoms in Patients with Respiratory Allergies Using K-Means Algorithm in the North-East of Iran in 2012–2015
Somaye Norouzi, Samane Sistani, Maryam Khoshkhui, Reza Faridhosseini, Payam Payandeh, Fahimeh Ghasemian, , Mohammadhosein Pourasad, Farahzad Jabbari Azad *
Tanaffos Respiration Journal, Winter 2023 -
The Development of a minimum data set to implement a national sports injury Registration system in Iran
MOJTABA Abolhasannezhad, MohammadHosein Alizadeh *, , Hooman Monoonejad
Journal for Research in Sport Rehabilitation,