Introduction Studies addressing the development and/or validation of diagnostic and prognostic prediction models are abundant in most clinical domains. Systematic reviews have shown that the methodological and reporting quality of prediction model studies is suboptimal. Due to the increasing availability of larger, routinely collected and complex medical data, and the rising application of Artificial Intelligence (AI) or machine learning (ML) techniques, the number of prediction model studies is expected to increase even further. Prediction models developed using AI or ML techniques are often labelled as a ‘black box’ and little is known about their methodological and reporting quality. Therefore, this comprehensive systematic review aims t...
BACKGROUND: Prognostic models are used widely in the oncology domain to guide medical decision-makin...
textabstractBackground: We investigated the reporting and methods of prediction studies, focusing on...
With the advances in technology and data science, machine learning (ML) is being rapidly adopted by ...
Introduction: Studies addressing the development and/or validation of diagnostic and prognostic pred...
INTRODUCTION: Studies addressing the development and/or validation of diagnostic and prognostic pred...
Objective To assess the methodological quality of studies on prediction models developed using machi...
Background Describe and evaluate the methodological conduct of prognostic prediction models develope...
Background While many studies have consistently found incomplete reporting of regression-based predi...
Introduction The Transparent Reporting of a multivariable prediction model of Individual Prognosis O...
BACKGROUND: While many studies have consistently found incomplete reporting of regression-based pred...
Objective Evaluate the completeness of reporting of prognostic prediction models developed using mac...
BACKGROUND: Describe and evaluate the methodological conduct of prognostic prediction models develop...
INTRODUCTION: The Transparent Reporting of a multivariable prediction model of Individual Prognosis ...
OBJECTIVE: We evaluated the presence and frequency of spin practices and poor reporting standards in...
Background Prognostic models are used widely in the oncology domain to guide medical decision-making...
BACKGROUND: Prognostic models are used widely in the oncology domain to guide medical decision-makin...
textabstractBackground: We investigated the reporting and methods of prediction studies, focusing on...
With the advances in technology and data science, machine learning (ML) is being rapidly adopted by ...
Introduction: Studies addressing the development and/or validation of diagnostic and prognostic pred...
INTRODUCTION: Studies addressing the development and/or validation of diagnostic and prognostic pred...
Objective To assess the methodological quality of studies on prediction models developed using machi...
Background Describe and evaluate the methodological conduct of prognostic prediction models develope...
Background While many studies have consistently found incomplete reporting of regression-based predi...
Introduction The Transparent Reporting of a multivariable prediction model of Individual Prognosis O...
BACKGROUND: While many studies have consistently found incomplete reporting of regression-based pred...
Objective Evaluate the completeness of reporting of prognostic prediction models developed using mac...
BACKGROUND: Describe and evaluate the methodological conduct of prognostic prediction models develop...
INTRODUCTION: The Transparent Reporting of a multivariable prediction model of Individual Prognosis ...
OBJECTIVE: We evaluated the presence and frequency of spin practices and poor reporting standards in...
Background Prognostic models are used widely in the oncology domain to guide medical decision-making...
BACKGROUND: Prognostic models are used widely in the oncology domain to guide medical decision-makin...
textabstractBackground: We investigated the reporting and methods of prediction studies, focusing on...
With the advances in technology and data science, machine learning (ML) is being rapidly adopted by ...