Background: The number of patients with fragility fracture has been increasing. Although the increasing number of patients with fragility fracture increased the rate of fracture (refracture), the causes of refracture are multifactorial, and its predictors are still not clarified. In this issue, we collected a registry-based longitudinal dataset that contained more than 7000 patients with fragility fractures treated surgically to detect potential predictors for clinical refracture. Methods: Based on the fact that machine learning algorithms are often used for the analysis of a large-scale dataset, we developed automatic prediction models and clarified the relevant features for patients with clinical refracture. Formats of input data containi...
Identifying patients with high risk of hip fracture is a great challenge in osteoporosis clinical as...
Osteoporosis and its clinical consequence, bone fracture, is a multifactorial disease that has been ...
Background: Statistical models using machine learning (ML) have the potential for more accurate esti...
OBJECTIVES: To develop an accurate machine learning (ML) predictive model incorporating patient, fra...
Background: A current challenge in osteoporosis is identifying patients at risk of bone fracture. Pu...
OBJECTIVES: To develop an accurate machine learning (ML) predictive model incorporating patient, fra...
BACKGROUND: Distal radius (wrist) fractures are the second most common fracture admitted to hospital...
Purpose: Preoperative prediction of mortality in femoral neck fracture patients aged 65 years or abo...
Fractures of pelvis and acetabulum are at high risk of death worldwide. However, the capability of m...
Introduction: Machine learning (ML) is a set of models and methods that can detect patterns in vast ...
Background: The common treatment methods for vertebral compression fractures with osteoporosis are v...
BACKGROUND: A preoperative estimation of survival is critical for deciding on the operative manageme...
Purpose. Distal radius fractures are common fractures of the wrist. These fractures are often displa...
Introduction:. Machine learning (ML) is a set of models and methods that can detect patterns in vast...
Background and purpose — Advancements in software and hardware have enabled the rise of clinical pre...
Identifying patients with high risk of hip fracture is a great challenge in osteoporosis clinical as...
Osteoporosis and its clinical consequence, bone fracture, is a multifactorial disease that has been ...
Background: Statistical models using machine learning (ML) have the potential for more accurate esti...
OBJECTIVES: To develop an accurate machine learning (ML) predictive model incorporating patient, fra...
Background: A current challenge in osteoporosis is identifying patients at risk of bone fracture. Pu...
OBJECTIVES: To develop an accurate machine learning (ML) predictive model incorporating patient, fra...
BACKGROUND: Distal radius (wrist) fractures are the second most common fracture admitted to hospital...
Purpose: Preoperative prediction of mortality in femoral neck fracture patients aged 65 years or abo...
Fractures of pelvis and acetabulum are at high risk of death worldwide. However, the capability of m...
Introduction: Machine learning (ML) is a set of models and methods that can detect patterns in vast ...
Background: The common treatment methods for vertebral compression fractures with osteoporosis are v...
BACKGROUND: A preoperative estimation of survival is critical for deciding on the operative manageme...
Purpose. Distal radius fractures are common fractures of the wrist. These fractures are often displa...
Introduction:. Machine learning (ML) is a set of models and methods that can detect patterns in vast...
Background and purpose — Advancements in software and hardware have enabled the rise of clinical pre...
Identifying patients with high risk of hip fracture is a great challenge in osteoporosis clinical as...
Osteoporosis and its clinical consequence, bone fracture, is a multifactorial disease that has been ...
Background: Statistical models using machine learning (ML) have the potential for more accurate esti...