Search engine for discovering works of Art, research articles, and books related to Art and Culture
ShareThis
Javascript must be enabled to continue!

Spatial Predictive Modeling of Liver Fluke Opisthorchis viverrine (OV) Infection under the Mathematical Models in Hexagonal Symmetrical Shapes Using Machine Learning-Based Forest Classification Regression

View through CrossRef
Infection with liver flukes (Opisthorchis viverrini) is partly due to their ability to thrive in habitats in sub-basin areas, causing the intermediate host to remain in the watershed system throughout the year. Spatial modeling is used to predict water source infections, which involves designing appropriate area units with hexagonal grids. This allows for the creation of a set of independent variables, which are then covered using machine learning techniques such as forest-based classification regression methods. The independent variable set was obtained from the local public health agency and used to establish a relationship with a mathematical model. The ordinary least (OLS) model approach was used to screen the variables, and the most consistent set was selected to create a new set of variables using the principal of component analysis (PCA) method. The results showed that the forest classification and regression (FCR) model was able to accurately predict the infection rates, with the PCA factor yielding a reliability value of 0.915. This was followed by values of 0.794, 0.741, and 0.632, respectively. This article provides detailed information on the factors related to water body infection, including the length and density of water flow lines in hexagonal form, and traces the depth of each process.
Title: Spatial Predictive Modeling of Liver Fluke Opisthorchis viverrine (OV) Infection under the Mathematical Models in Hexagonal Symmetrical Shapes Using Machine Learning-Based Forest Classification Regression
Description:
Infection with liver flukes (Opisthorchis viverrini) is partly due to their ability to thrive in habitats in sub-basin areas, causing the intermediate host to remain in the watershed system throughout the year.
Spatial modeling is used to predict water source infections, which involves designing appropriate area units with hexagonal grids.
This allows for the creation of a set of independent variables, which are then covered using machine learning techniques such as forest-based classification regression methods.
The independent variable set was obtained from the local public health agency and used to establish a relationship with a mathematical model.
The ordinary least (OLS) model approach was used to screen the variables, and the most consistent set was selected to create a new set of variables using the principal of component analysis (PCA) method.
The results showed that the forest classification and regression (FCR) model was able to accurately predict the infection rates, with the PCA factor yielding a reliability value of 0.
915.
This was followed by values of 0.
794, 0.
741, and 0.
632, respectively.
This article provides detailed information on the factors related to water body infection, including the length and density of water flow lines in hexagonal form, and traces the depth of each process.

Related Results

Selection of Injectable Drug Product Composition using Machine Learning Models (Preprint)
Selection of Injectable Drug Product Composition using Machine Learning Models (Preprint)
BACKGROUND As of July 2020, a Web of Science search of “machine learning (ML)” nested within the search of “pharmacokinetics or pharmacodynamics” yielded over 100...
Prevalence and pathology of fish trematode Opisthorchis felineus in domestic cats in Mymensingh, Bangladesh
Prevalence and pathology of fish trematode Opisthorchis felineus in domestic cats in Mymensingh, Bangladesh
Background: Opisthorchis felineus infection is important both for health of cats and health of people. Objective of the research was to determine the prevalence of Opisthorchis fel...
Cystatins from the Human Liver Fluke Opisthorchis viverrini: Molecular Characterization and Functional Analysis
Cystatins from the Human Liver Fluke Opisthorchis viverrini: Molecular Characterization and Functional Analysis
A high incidence of cholangiocarcinoma (bile duct cancer) has been observed in Thailand. This usually rare cancer has been associated with infection with the human liver fluke, Opi...
Liver Cancer Prediction Using Machine Learning: Enhancing Early Detection and Survival Analysis
Liver Cancer Prediction Using Machine Learning: Enhancing Early Detection and Survival Analysis
Liver cancer is still one of the most lethal cancers in the world, with consistently increasing rates in the United States that are caused by rising rates of obesity, rates of hepa...
Factors influencing and patterns of forest utilization in communities around the Huay Tak Teak Biosphere Reserve, Lampang Province
Factors influencing and patterns of forest utilization in communities around the Huay Tak Teak Biosphere Reserve, Lampang Province
Background and Objectives: To establish the land regulation, it is necessary to know basic information of the surrounding community’s land use and to be aware of basic forest laws....

Back to Top