Recent Publications by CFE Educators

Recent Published articles, books, and other scholarship by Academy members, CFE Education Scientists, and CFE Faculty.
Masseter Muscle Size in Chronic Parotid Sialadenitis.
2025
Authors: Stephens EM, Nesmith WE, Ogden MA, Chang JL
Actionable Wearables Data for the Neurology Clinic: A Proof-of-Concept Tool.
2025
Authors: Miller N, Chinedu-Eneh E, Wijangco J, Henderson K, Sisodia N, Sara N, Reihm J, Poole S, Rowson J, Guo CY, Gelfand JM, Block VJ, Bove R
Automated detection of spinal bone marrow oedema in axial spondyloarthritis: training and validation using two large phase 3 trial datasets.
2025
Authors: Jamaludin A, Windsor R, Ather S, Kadir T, Zisserman A, Braun J, Gensler LS, Østergaard M, Poddubnyy D, Coroller T, Porter B, Ligozio G, Readie A, Machado PM
OBJECTIVE
To evaluate the performance of machine learning (ML) models for the automated scoring of spinal MRI bone marrow oedema (BMO) in patients with axial spondyloarthritis (axSpA) and compare them with expert scoring.
METHODS
ML algorithms using SpineNet software were trained and validated on 3483 spinal MRIs from 686 axSpA patients across two clinical trial datasets. The scoring pipeline involved (i) detection and labelling of vertebral bodies and (ii) classification of vertebral units for the presence or absence of BMO. Two models were tested: Model 1, without manual segmentation, and Model 2, incorporating an intermediate manual segmentation step. Model outputs were compared with those of human experts using kappa statistics, balanced accuracy, sensitivity, specificity and AUC.
RESULTS
Both models performed comparably to expert readers, regarding presence vs absence of BMO. Model 1 outperformed Model 2, with an AUC of 0.94 (vs 0.88), accuracy of 75.8% (vs 70.5%) and kappa of 0.50 (vs 0.31) using absolute reader consensus scoring as the external reference; this performance was similar to the expert inter-reader accuracy of 76.8% and kappa of 0.47 in a radiographic axSpA dataset. In a non-radiographic axSpA dataset, Model 1 achieved an AUC of 0.97 (vs 0.91 for Model 2), accuracy of 74.6% (vs 70%) and kappa of 0.52 (vs 0.27), comparable to the expert inter-reader accuracy of 74.2% and kappa of 0.46.
CONCLUSION
ML software shows potential for automated MRI BMO assessment in axSpA, offering benefits such as improved consistency, reduced labour costs and minimized inter- and intra-reader variability.
TRIAL REGISTRATION
Clinicaltrials.gov, http://clinicaltrials.gov, MEASURE 1 study (NCT01358175); PREVENT study (NCT02696031).
View on PubMedOral JAK inhibitors for pediatric inflammatory skin disease.
2025
Authors: Lee EB, Cordoro KM
LLM-based generation of USMLE-style questions with ASPET/AMSPC knowledge objectives: All RAGs and no riches.
2025
Authors: Thesen T, Tuan RL, Blumer J, Lee MW
"It's Always There, Right?" Exploring Internal Medicine Teams' Use of Basic Science Knowledge on Inpatient Rounds.
2025
Authors: Fulton TB, Penner JC, Collins SA, van der Schaaf M, O'Brien BC
ASO Author Reflections: Reassessing Positive Margins in Breast-Conserving Surgery: The Role of Histology and Oncoplastic Surgery.
2025
Authors: Switalla KM, Mukhtar RA
Payer type and prediction of the time from epilepsy onset to neurosurgical intervention and from first diagnostic MRI to neurosurgical consultation in lesional drug-resistant epilepsy at a California level IV epilepsy center.
2025
Authors: Lai GY, Sullivan JE, Numis AL, Singhal NS, Gonzalez-Giraldo E, Bernardo D, Auguste KI
Coccidioides Fungemia in Central California: A 10-Years Experience.
2025
Authors: Hwang SJ, Fayed M, Mitchell M, Sivasubramanian G
Trust of Artificial Intelligence-Augmented Point-of-Care Ultrasound Among Pediatric Emergency Physicians.
2025
Authors: Lin-Martore M, Kornblith A, Firnberg M, Haque A, O'Brien B