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Related Concept Videos

Radiological Investigation III: Pulmonary Angiogram and PET Scan01:13

Radiological Investigation III: Pulmonary Angiogram and PET Scan

86
Radiological investigations are paramount in the diagnosis and management of various pulmonary diseases. Two essential investigations are the Pulmonary Angiogram and the Positron Emission Tomography (PET) Scan.
Pulmonary Angiogram
A Pulmonary Angiogram is an invasive procedure involving injecting a contrast medium through a catheter threaded into the pulmonary artery or the right side of the heart to visualize the pulmonary vasculature. Computed Tomography (CT) scans have mainly replaced this...
86

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Related Experiment Video

Updated: Jun 10, 2025

Augmenting Large Language Models via Vector Embeddings to Improve Domain-Specific Responsiveness
03:14

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Published on: December 6, 2024

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[Large Language Models: A Comprehensive Guide for Radiologists].

Sunkyu Kim, Choong-Kun Lee, Seung-Seob Kim

    Journal of the Korean Society of Radiology
    |October 17, 2024
    PubMed
    Summary
    This summary is machine-generated.

    Large language models (LLMs) offer advanced capabilities for radiology, even without fine-tuning. Smaller, open-source LLMs show promise for medical applications, addressing efficiency and privacy concerns.

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    Area of Science:

    • Artificial Intelligence
    • Natural Language Processing
    • Medical Imaging

    Context:

    • Large language models (LLMs) demonstrate significant advancements beyond natural language processing.
    • LLMs can perform domain-specific tasks, including radiology, without requiring additional fine-tuning due to extensive pre-training.
    • The field of LLMs is rapidly evolving, with ongoing efforts to mitigate challenges like hallucination, data bias, high training costs, performance drift, and privacy concerns, while incorporating multimodal inputs.

    Purpose:

    • To provide radiologists with a comprehensive understanding of large language models.
    • To offer practical guidance and an overview of the current technological landscape for LLMs in radiology.
    • To explore future directions for LLM integration in medical imaging and radiological practice.

    Summary:

    • Contemporary LLMs, pre-trained on vast datasets, can handle diverse tasks, including specialized areas like radiology, without immediate fine-tuning.
    • Emerging trends focus on small, on-premise, open-source LLMs to efficiently address medical domain knowledge, enhance privacy, and manage performance drift.
    • This review synthesizes conceptual knowledge, practical advice, and a technological overview for radiologists navigating the evolving LLM landscape.

    Impact:

    • Empowers radiologists with knowledge of advanced AI tools for enhanced diagnostic capabilities.
    • Facilitates the adoption of efficient and privacy-preserving AI solutions in clinical radiology workflows.
    • Informs future research and development of LLMs tailored for the medical domain, improving patient care.