Detection of early-stage liver diseases is a challenge in medical field. Automated diagnostics based on machine learning therefore could be very important for liver tests of patients. This paper investigates 225 liver function test records (each record include 14 features), which is a subset from 1000 patients' liver function test records that include the records of 25 patients with liver disease from a community hospital. We combine support vector data description (SVDD) with data visualisation techniques and the glowworm swarm optimisation (GSO) algorithm to improve diagnostic accuracy. The results show that the proposed method can achieve 96% sensitivity, 86.28% specificity, and 84.28% accuracy. The new method is thus well-suited for...
The main goal of this research is to determine the optimum method for diagnosing and identifying hep...
In this work the identification and diagnosis of various stages of chronic liver disease is addresse...
AbstractAccuracy in data classification depends on the dataset used for learning. Now-a-days the mos...
Detection of early-stage liver diseases is a challenge in medical field. Automated diagnostics based...
Medical Data Mining (MDM) is one of the most critical aspects of automated disease diagnosis and dis...
In this work the use of machine learning in medicine, with a particular focus on liver disease, is i...
Hepatitis is an infection that causes inflammation of liver tissue. Many studies have developed mach...
Diagnosis of liver disease at early stage is vital for efficient therapy. It is a demanding issue in...
Advances in data mining and machine learning methods for classification and regression open the door...
Around a million deaths occur due to liver diseases globally. There are several traditional methods ...
In the recent era, a liver syndrome that causes any damage in life capacity is exceptionally normal ...
Liver diseases are among the most common diseases worldwide. Because of the high incidence and high ...
Medical diagnoses have important implications for improving patient care, research, and policy. For ...
In the healthcare industry, machine learning is critical. It's crucial in computer-assisted treatmen...
Chronic liver disease (CLD) is most of the time an asymptomatic, progressive, and ultimately potenti...
The main goal of this research is to determine the optimum method for diagnosing and identifying hep...
In this work the identification and diagnosis of various stages of chronic liver disease is addresse...
AbstractAccuracy in data classification depends on the dataset used for learning. Now-a-days the mos...
Detection of early-stage liver diseases is a challenge in medical field. Automated diagnostics based...
Medical Data Mining (MDM) is one of the most critical aspects of automated disease diagnosis and dis...
In this work the use of machine learning in medicine, with a particular focus on liver disease, is i...
Hepatitis is an infection that causes inflammation of liver tissue. Many studies have developed mach...
Diagnosis of liver disease at early stage is vital for efficient therapy. It is a demanding issue in...
Advances in data mining and machine learning methods for classification and regression open the door...
Around a million deaths occur due to liver diseases globally. There are several traditional methods ...
In the recent era, a liver syndrome that causes any damage in life capacity is exceptionally normal ...
Liver diseases are among the most common diseases worldwide. Because of the high incidence and high ...
Medical diagnoses have important implications for improving patient care, research, and policy. For ...
In the healthcare industry, machine learning is critical. It's crucial in computer-assisted treatmen...
Chronic liver disease (CLD) is most of the time an asymptomatic, progressive, and ultimately potenti...
The main goal of this research is to determine the optimum method for diagnosing and identifying hep...
In this work the identification and diagnosis of various stages of chronic liver disease is addresse...
AbstractAccuracy in data classification depends on the dataset used for learning. Now-a-days the mos...