Risk of bias in studies on prediction models developed using supervised machine learning techniques: systematic review

CLA Navarro, JAA Damen, T Takada, SWJ Nijman… - bmj, 2021 - bmj.com
Objective To assess the methodological quality of studies on prediction models developed
using machine learning techniques across all medical specialties. Design Systematic …

[HTML][HTML] Missing data is poorly handled and reported in prediction model studies using machine learning: a literature review

SWJ Nijman, AM Leeuwenberg, I Beekers… - Journal of clinical …, 2022 - Elsevier
Objectives Missing data is a common problem during the development, evaluation, and
implementation of prediction models. Although machine learning (ML) methods are often …

[HTML][HTML] Clinical prediction models in psychiatry: a systematic review of two decades of progress and challenges

AJ Meehan, SJ Lewis, S Fazel, P Fusar-Poli… - Molecular …, 2022 - nature.com
Recent years have seen the rapid proliferation of clinical prediction models aiming to
support risk stratification and individualized care within psychiatry. Despite growing interest …

[HTML][HTML] Systematic review identifies the design and methodological conduct of studies on machine learning-based prediction models

CLA Navarro, JAA Damen, M van Smeden… - Journal of Clinical …, 2023 - Elsevier
Abstract Background and Objectives We sought to summarize the study design, modelling
strategies, and performance measures reported in studies on clinical prediction models …

[HTML][HTML] Completeness of reporting of clinical prediction models developed using supervised machine learning: a systematic review

CL Andaur Navarro, JAA Damen, T Takada… - BMC medical research …, 2022 - Springer
Background While many studies have consistently found incomplete reporting of regression-
based prediction model studies, evidence is lacking for machine learning-based prediction …

[HTML][HTML] Systematic review finds “spin” practices and poor reporting standards in studies on machine learning-based prediction models

CLA Navarro, JAA Damen, T Takada… - Journal of clinical …, 2023 - Elsevier
Objectives We evaluated the presence and frequency of spin practices and poor reporting
standards in studies that developed and/or validated clinical prediction models using …

Enhancing trust in AI through industry self-governance

J Roski, EJ Maier, K Vigilante, EA Kane… - Journal of the …, 2021 - academic.oup.com
Artificial intelligence (AI) is critical to harnessing value from exponentially growing health
and healthcare data. Expectations are high for AI solutions to effectively address current …

[HTML][HTML] Review of study reporting guidelines for clinical studies using artificial intelligence in healthcare

SC Shelmerdine, OJ Arthurs, A Denniston… - BMJ Health & Care …, 2021 - ncbi.nlm.nih.gov
High-quality research is essential in guiding evidence-based care, and should be reported
in a way that is reproducible, transparent and where appropriate, provide sufficient detail for …

[HTML][HTML] Contributions of artificial intelligence reported in obstetrics and gynecology journals: systematic review

F Dhombres, J Bonnard, K Bailly, P Maurice… - Journal of medical …, 2022 - jmir.org
Background The applications of artificial intelligence (AI) processes have grown significantly
in all medical disciplines during the last decades. Two main types of AI have been applied in …

[HTML][HTML] Prediction models for the prediction of unplanned hospital admissions in community-dwelling older adults: a systematic review

JH Klunder, SL Panneman, E Wallace, R de Vries… - Plos one, 2022 - journals.plos.org
Background Identification of community-dwelling older adults at risk of unplanned
hospitalizations is of importance to facilitate preventive interventions. Our objective was to …