(1) Background: Predicting chronic low back pain (LBP) is of clinical and economic interest as LBP leads to disabilities and health service utilization. This study aims to build a competitive and interpretable prediction model; (2) Methods: We used clinical and claims data of 3837 participants of a population-based cohort study to predict future LBP consultations (ICD-10: M40.XX-M54.XX). Best subset selection (BSS) was applied in repeated random samples of training data (75% of data); scoring rules were used to identify the best subset of predictors. The rediction accuracy of BSS was compared to randomforest and support vector machines (SVM) in the validation data (25% of data); (3) Results: The best subset comprised 16 out of 32 predictors...
In patients presenting with low back pain (LBP), once specific causes are excluded (fracture, infect...
Background: Low back pain (LBP) is a major health problem. Globally it is responsible for the most y...
BACKGROUND: Several instruments can be used to identify patients with an unfavourable course of low ...
The objective of this pilot study was to determine whether machine learning can be applied on patien...
The objective of this pilot study was to determine whether machine learning can be applied on patien...
Background and Objectives: Chronic lower back pain (LBP) is a common clinical disorder. The early id...
Background While low back pain occurs in nearly everybody and is the leading cause of disability wor...
This document provides supplementary information to the main manuscript and includes changes of revi...
Clinical decision support systems (CDSS) can support clinicians in selecting appropriate treatments ...
Background: Patient-reported outcome measurements (PROMs) are commonly used in clinical practice to ...
Background: Most people experience low back pain (LBP) at least once in their life and for some pati...
Abstract Artificial intelligence and machine learning (AI/ML) could enhance the ability to detect pa...
Background: Several prognostic factors have been reported for chronic low back pain (CLBP). However,...
In patients presenting with low back pain (LBP), once specific causes are excluded (fracture, infect...
Background: Low back pain (LBP) is a major health problem. Globally it is responsible for the most y...
BACKGROUND: Several instruments can be used to identify patients with an unfavourable course of low ...
The objective of this pilot study was to determine whether machine learning can be applied on patien...
The objective of this pilot study was to determine whether machine learning can be applied on patien...
Background and Objectives: Chronic lower back pain (LBP) is a common clinical disorder. The early id...
Background While low back pain occurs in nearly everybody and is the leading cause of disability wor...
This document provides supplementary information to the main manuscript and includes changes of revi...
Clinical decision support systems (CDSS) can support clinicians in selecting appropriate treatments ...
Background: Patient-reported outcome measurements (PROMs) are commonly used in clinical practice to ...
Background: Most people experience low back pain (LBP) at least once in their life and for some pati...
Abstract Artificial intelligence and machine learning (AI/ML) could enhance the ability to detect pa...
Background: Several prognostic factors have been reported for chronic low back pain (CLBP). However,...
In patients presenting with low back pain (LBP), once specific causes are excluded (fracture, infect...
Background: Low back pain (LBP) is a major health problem. Globally it is responsible for the most y...
BACKGROUND: Several instruments can be used to identify patients with an unfavourable course of low ...