Category Ranking

98%

Total Visits

921

Avg Visit Duration

2 minutes

Citations

20

Article Abstract

Background: Large Language Models (LLMs) have demonstrated significant capabilities to date in working with a neurosurgical knowledge-base and have the potential to enhance neurosurgical practice and education. However, their role in the clinical workspace is still being actively explored. As many neurosurgeons seek to incorporate this technology into their local practice environments, we explore pertinent questions about how to deploy these systems in a safe and efficacious manner.

Methods: The authors performed a literature search of LLM studies in neurosurgery in the PubMed database ("LLM" and "neurosurgery"). Papers were reviewed for LLM use cases, considerations taken for selection of specific LLMs, and challenges encountered, including processing of private health information.

Results: The authors provide a review of core principles underpinning model selection, including technical considerations such as model access, context windows, multimodality, retrieval-augmented generation, and benchmark performance, as well as relative advantages of current LLMs. Additionally, the authors discuss safety considerations and paths for institutional support in safe LLM inference on private health data. The resulting discussion forms a framework for key dimensions neurosurgeons employing LLMs should consider.

Conclusions: LLMs present promising opportunities to advance neurosurgical practice, but their clinical adoption necessitates careful consideration of technical, ethical, and regulatory hurdles. By thoughtfully evaluating model selection, deployment approaches, and compliance requirements, neurosurgeons can leverage the benefits of LLMs while minimizing potential risks.

Download full-text PDF

Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC11982131PMC
http://dx.doi.org/10.1007/s00701-025-06515-6DOI Listing

Publication Analysis

Top Keywords

large language
8
language models
8
neurosurgical practice
8
private health
8
model selection
8
llms
6
employing large
4
models safely
4
safely effectively
4
effectively practicing
4

Similar Publications

Brain Tumor Segmentation (BTS) is crucial for accurate diagnosis and treatment planning, but existing CNN and Transformer-based methods often struggle with feature fusion and limited training data. While recent large-scale vision models like Segment Anything Model (SAM) and CLIP offer potential, SAM is trained on natural images, lacking medical domain knowledge, and its decoder struggles with accurate tumor segmentation. To address these challenges, we propose the Medical SAM-Clip Grafting Network (MSCG), which introduces a novel SC-grafting module.

View Article and Find Full Text PDF

This AI-assisted review article offers a dual review: a book review of Living with Risk in the Late Roman World by Cam Grey, and a critical review of the current potential of large language models (LLMs), specifically ChatGPT's DeepResearch mode, to assist in thoughtful and scholarly book reviewing within risk science. Grey's book presents an innovative reconstruction of how communities in the late Roman Empire perceived and adapted to chronic environmental and societal risks, emphasizing spatial variability, cultural interpretation, and the normalization of uncertainty. Drawing on commentary from a human reviewer and a parallel AI-assisted analysis, we compare the distinct strengths and limitations of each approach.

View Article and Find Full Text PDF

Objective: This study evaluated the coherence, consistency, and diagnostic accuracy of eight AI-based chatbots in clinical scenarios related to dental implants.

Methods: A double-blind, clinical experimental study was carried out between February and March 2025, to evaluate eight AI-based chatbots using six fictional cases simulating peri-implant mucositis and peri-implantitis. Each chatbot answered five standardized clinical questions across three independent runs per case, generating 720 binary outputs.

View Article and Find Full Text PDF

Substitute economics and the threat of artificial intelligence providing pharmaceutical care.

Am J Pharm Educ

September 2025

Department of Pharmacotherapy, University of Utah College of Pharmacy, 30 South 2000 East, Salt Lake City, Utah 84112. Electronic address:

The accelerating adoption of artificial intelligence (AI), particularly large language models (LLMs) such as ChatGPT, has raised critical questions about the role of pharmacists and the potential for AI to substitute for human expertise in pharmaceutical care. Grounded in Porter's Five Forces framework-specifically the threat of substitutes-this commentary explores whether AI can adequately fulfill the complex and relational functions of pharmacists in delivering care to patients. Drawing from foundational definitions of pharmaceutical care and economic theories of substitution, the paper examines both historical and emerging competitors to pharmacist-provided services, including physicians, nurses, and now AI-powered tools.

View Article and Find Full Text PDF