Abstract Osteoporosis is a global health problem for ageing populations. The goals of osteoporosis treatment are to improve bone mineral density (BMD) and prevent fractures. One major obstacle that remains a great challenge to achieve the goals is how to select the best treatment regimen for individual patients. We developed a computational model from 8981 clinical variables, including demographic data, diagnoses, laboratory results, medications, and initial BMD results, taken from 10-year period of electronic medical records to predict BMD response after treatment. We trained 7 machine learning models with 13,562 osteoporosis treatment instances [comprising 5080 (37.46%) inadequate treatment responses and 8482 (62.54%) adequate responses] ...
Graduate Program in Biomedical Engineering/석사Osteoporosis is a major public health concern worldwide...
The purpose of this thesis was to develop an artificial intelligence algorithm to classify patient s...
The study aimed to utilize machine learning (ML) approaches and genomic data to develop a prediction...
Osteoporosis and its clinical consequence, bone fracture, is a multifactorial disease that has been ...
Osteoporosis is treatable but often overlooked in clinical practice. We aimed to construct predictio...
Abstract Osteoporosis is a skeletal disease that is commonly seen in older people but often neglecte...
We designed, implemented, and tested a clinical decision support system at the Research Center for t...
Osteoporosis is a prevailing bone disease, which weakens the bone and is one of the major factors of...
Background: A current challenge in osteoporosis is identifying patients at risk of bone fracture. Pu...
The most widely-used method for diagnosis of osteoporosis is to determine bone mineral density (B...
A relationship exists between metabolic syndrome (MetS) and human bone health; however, whether the ...
Abstract: This paper presents the research in developing an ensemble of data mining techniques for p...
In this unprecedented era of the overwhelming volume of medical data, machine learning can be a prom...
Abstract Objective Predictions of the future bone mineral density and bone loss rate are important t...
In this paper we propose a low cost prevention strategy for osteoporosis. Osteoporosis is a disease ...
Graduate Program in Biomedical Engineering/석사Osteoporosis is a major public health concern worldwide...
The purpose of this thesis was to develop an artificial intelligence algorithm to classify patient s...
The study aimed to utilize machine learning (ML) approaches and genomic data to develop a prediction...
Osteoporosis and its clinical consequence, bone fracture, is a multifactorial disease that has been ...
Osteoporosis is treatable but often overlooked in clinical practice. We aimed to construct predictio...
Abstract Osteoporosis is a skeletal disease that is commonly seen in older people but often neglecte...
We designed, implemented, and tested a clinical decision support system at the Research Center for t...
Osteoporosis is a prevailing bone disease, which weakens the bone and is one of the major factors of...
Background: A current challenge in osteoporosis is identifying patients at risk of bone fracture. Pu...
The most widely-used method for diagnosis of osteoporosis is to determine bone mineral density (B...
A relationship exists between metabolic syndrome (MetS) and human bone health; however, whether the ...
Abstract: This paper presents the research in developing an ensemble of data mining techniques for p...
In this unprecedented era of the overwhelming volume of medical data, machine learning can be a prom...
Abstract Objective Predictions of the future bone mineral density and bone loss rate are important t...
In this paper we propose a low cost prevention strategy for osteoporosis. Osteoporosis is a disease ...
Graduate Program in Biomedical Engineering/석사Osteoporosis is a major public health concern worldwide...
The purpose of this thesis was to develop an artificial intelligence algorithm to classify patient s...
The study aimed to utilize machine learning (ML) approaches and genomic data to develop a prediction...