[HTML][HTML] Guidelines for artificial intelligence in medicine: literature review and content analysis of frameworks

NL Crossnohere, M Elsaid, J Paskett… - Journal of Medical …, 2022 - jmir.org
Background: Artificial intelligence (AI) is rapidly expanding in medicine despite a lack of
consensus on its application and evaluation. Objective: We sought to identify current …

Methods for clinical evaluation of artificial intelligence algorithms for medical diagnosis

SH Park, K Han, HY Jang, JE Park, JG Lee, DW Kim… - Radiology, 2023 - pubs.rsna.org
Adequate clinical evaluation of artificial intelligence (AI) algorithms before adoption in
practice is critical. Clinical evaluation aims to confirm acceptable AI performance through …

The importance of being external. methodological insights for the external validation of machine learning models in medicine

F Cabitza, A Campagner, F Soares… - Computer Methods and …, 2021 - Elsevier
Abstract Background and Objective Medical machine learning (ML) models tend to perform
better on data from the same cohort than on new data, often due to overfitting, or co-variate …

[HTML][HTML] Evaluation framework to guide implementation of AI systems into healthcare settings

S Reddy, W Rogers, VP Makinen, E Coiera… - BMJ health & care …, 2021 - ncbi.nlm.nih.gov
Objectives To date, many artificial intelligence (AI) systems have been developed in
healthcare, but adoption has been limited. This may be due to inappropriate or incomplete …

[HTML][HTML] Consolidated reporting guidelines for prognostic and diagnostic machine learning modeling studies: development and validation

W Klement, K El Emam - Journal of Medical Internet Research, 2023 - jmir.org
Background The reporting of machine learning (ML) prognostic and diagnostic modeling
studies is often inadequate, making it difficult to understand and replicate such studies. To …

[HTML][HTML] Generalizable machine learning for stress monitoring from wearable devices: A systematic literature review

G Vos, K Trinh, Z Sarnyai, MR Azghadi - International Journal of Medical …, 2023 - Elsevier
Introduction Wearable sensors have shown promise as a non-intrusive method for collecting
biomarkers that may correlate with levels of elevated stress. Stressors cause a variety of …

[HTML][HTML] Nine quick tips for pathway enrichment analysis

D Chicco, G Agapito - PLoS computational biology, 2022 - journals.plos.org
Pathway enrichment analysis (PEA) is a computational biology method that identifies
biological functions that are overrepresented in a group of genes more than would be …

Toward a perspectivist turn in ground truthing for predictive computing

V Basile, F Cabitza, A Campagner, M Fell - arXiv preprint arXiv …, 2021 - arxiv.org
Most Artificial Intelligence applications are based on supervised machine learning (ML),
which ultimately grounds on manually annotated data. The annotation process is often …

[HTML][HTML] Application of machine learning techniques for predicting survival in ovarian cancer

A Sorayaie Azar, S Babaei Rikan, A Naemi… - BMC medical informatics …, 2022 - Springer
Background Ovarian cancer is the fifth leading cause of mortality among women in the
United States. Ovarian cancer is also known as forgotten cancer or silent disease. The …

Machine learning techniques for periodontitis and dental caries detection: A Narrative Review

RC Radha, BS Raghavendra, BV Subhash… - International journal of …, 2023 - Elsevier
Objectives In recent years, periodontitis, and dental caries have become common in humans
and need to be diagnosed in the early stage to prevent severe complications and tooth loss …