Background While low back pain occurs in nearly everybody and is the leading cause of disability worldwide, we lack instruments to accurately predict persistence of acute low back pain. We aimed to develop and internally validate a machine learning model predicting non-recovery in acute low back pain and to compare this with current practice and 'traditional' prediction modeling. Methods Prognostic cohort-study in primary care physiotherapy. Patients (n = 247) with acute low back pain ( 2/10). Machine learning models to predict non-recovery were developed and internally validated, and compared with two current practices in physiotherapy (STarT Back tool and physiotherapists' expectation) and 'traditional' logistic regression analysis. Resul...
Question: Do negative expectations in patients after the onset of acute low back pain increase the o...
Background Research investigating prognosis in musculoskeletal pain conditions has only been moderat...
(1) Background: Predicting chronic low back pain (LBP) is of clinical and economic interest as LBP l...
Background While low back pain occurs in nearly everybody and is the leading cause of disability wor...
Background: Low back pain (LBP) is a major health problem. Globally it is responsible for the most y...
OBJECTIVE: This study aimed to (i) identify subpopulations of patients in an occupational setting wh...
Abstract Artificial intelligence and machine learning (AI/ML) could enhance the ability to detect pa...
OBJECTIVE: This study aimed to (i) identify subpopulations of patients in an occupational setting wh...
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 Clinical prediction rules can assist clinicians to identify patients with low back pain (...
Background: Clinical prediction rules can assist clinicians to identify patients with low back pain ...
OBJECTIVE: The purpose of this study was to develop and externally validate multivariable prediction...
ABSTRACT: Back pain is a leading cause of disability worldwide and is common in older adults. No cli...
Question: Do negative expectations in patients after the onset of acute low back pain increase the o...
Background Research investigating prognosis in musculoskeletal pain conditions has only been moderat...
(1) Background: Predicting chronic low back pain (LBP) is of clinical and economic interest as LBP l...
Background While low back pain occurs in nearly everybody and is the leading cause of disability wor...
Background: Low back pain (LBP) is a major health problem. Globally it is responsible for the most y...
OBJECTIVE: This study aimed to (i) identify subpopulations of patients in an occupational setting wh...
Abstract Artificial intelligence and machine learning (AI/ML) could enhance the ability to detect pa...
OBJECTIVE: This study aimed to (i) identify subpopulations of patients in an occupational setting wh...
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 Clinical prediction rules can assist clinicians to identify patients with low back pain (...
Background: Clinical prediction rules can assist clinicians to identify patients with low back pain ...
OBJECTIVE: The purpose of this study was to develop and externally validate multivariable prediction...
ABSTRACT: Back pain is a leading cause of disability worldwide and is common in older adults. No cli...
Question: Do negative expectations in patients after the onset of acute low back pain increase the o...
Background Research investigating prognosis in musculoskeletal pain conditions has only been moderat...
(1) Background: Predicting chronic low back pain (LBP) is of clinical and economic interest as LBP l...