Introduction: To investigate the potential of using artificial intelligence (AI), specifically large language models (LLMs), for synthesizing information in a simulated randomized clinical trial (RCT) for an anti-seizure medication, cenobamate, demonstrating the feasibility of inductive reasoning via medical chart review.
Methods: An LLM-generated simulated RCT was conducted, featuring a placebo arm and a full-strength drug arm with a cohort of 240 patients divided 1:1. Seizure counts were simulated using a realistic seizure diary simulator. The study utilized LLMs to generate clinical notes with four neurologist writing styles and random extraneous details. A secondary LLM pipeline synthesized data from these notes. The efficacy and safety of cenobamate in seizure control were evaluated by both an LLM-based pipeline and a human reader.
Results: The AI analysis closely mirrored human analysis, demonstrating the drug's efficacy with marginal differences (<3 %) in identifying both drug efficacy and reported symptoms. The AI successfully identified the number of seizures, symptom reports, and treatment efficacy, with statistical analysis comparing the 50 %-responder rate and median percentage change between the placebo and drug arms, as well as side effect rates in each arm.
Discussion: This study highlights the potential of AI to accurately analyze noisy clinical notes to inductively produce clinical knowledge. Here, treatment effect sizes and symptom frequencies derived from unstructured simulated notes were inferred despite many distractors. The findings emphasize the relevance of AI in future clinical research, offering a scalable and efficient alternative to traditional labor-intensive data mining.
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http://dx.doi.org/10.1016/j.eplepsyres.2025.107532 | DOI Listing |
JDR Clin Trans Res
March 2025
College of Dental Medicine, QU Health, Qatar University, Doha, Qatar.
Evidence-based medicine (EBM) enhances clinical decision-making but faces implementation challenges, particularly in dentistry, where patient-specific complexities limit its effectiveness. This article examines EBM through the lens of Aristotelian logic, exploring its use of deductive and inductive reasoning and its limitations in addressing real-world variability. We then discuss how artificial intelligence (AI) can enhance EBM by synthesizing data, automating evidence appraisal, and generating personalized treatment insights.
View Article and Find Full Text PDFAJPM Focus
April 2025
Center for Evidence and Practice Improvement, Agency for Healthcare Research and Quality, Rockville, Maryland.
Introduction: Clinical preventive services, such as screening tests, vaccinations, behavioral counseling, or preventive medication, are offered to most people on the basis of age, sex, health behaviors, or clinical risk factors, with goals of detecting early disease, preventing future disease, or mitigating the impact of unhealthy behaviors on future health. However, many people do not receive all the recommended services for which they are eligible.
Methods: The Agency for Healthcare Research and Quality identified 4 topics for gathering stakeholder input on evidence and implementation for the equitable delivery of clinical preventive services.
J Neuroeng Rehabil
March 2025
Royal Rehab Group, Sydney, Australia.
Background: Technology is gaining momentum in rehabilitation. While evidence is emerging, a growing number of rehabilitation facilities are implementing devices, though with variable success. A public-private rehabilitation provider in Australia recently opened a technology therapy centre with robotic and virtual reality devices.
View Article and Find Full Text PDFAnnu Int Conf IEEE Eng Med Biol Soc
July 2024
Clinical studies have shown that infant crying is a crucial signal containing physical and mental information, such as hunger and pain, which can provide valuable insights into infants' pathology and demand. However, existing studies either focused on infant crying detection or reasoning (needs/diseases), where the limited data and label types hinder the model's generalization to unknown infants and reasons. To this end, we propose a multi-task Infant Crying Detection and Reasoning (ICDR) model for both the tasks of cry detection and reasoning, which utilizes a shared extractor to extract the deep representations and incorporates two classifiers for different tasks.
View Article and Find Full Text PDFNurs Open
March 2025
Division of Nursing Science and Medical Technology, Institution of Health, Education and Technology, Luleå University of Technology, Luleå, Sweden.
Aim: This study aimed to describe supervisors' reasoning about conditions for nursing students' learning and development of clinical competence during their clinical education.
Design: A qualitative design with an inductive approach.
Methods: This study used a focus group methodology.
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