人工智能在胆碱刺激下的胆管造影:一项初步研究。

IF 9.6 3区 医学 Q1 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING
Nghi C Nguyen, Jun Luo, Dooman Arefan, Anil K Vasireddi, Shandong Wu
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引用次数: 0

摘要

目的:通过计算胆囊射血分数(GBEF)来诊断功能性胆囊疾病。目前,人工智能(AI)驱动的集成实时图像处理和器官功能计算的工作流程在核医学实践中尚未得到探索。本初步研究探索了一种基于人工智能的胆囊放射性跟踪应用。方法回顾性分析20例SSC检查结果,分为10例简单病例和10例困难病例。在60分钟的SSC过程中,两名人工操作员(H1和H2)独立地手动注释感兴趣的胆囊区域。开发了一种基于u - net的深度学习模型来自动分割胆囊面罩,并对简单和具有挑战性的病例进行了10倍交叉验证。将人工智能生成的掩码与人类注释的掩码进行比较,使用Dice相似系数(Dice)来评估一致性。结果:AI对H1的平均DICE为0.746,对H2的平均DICE为0.676,在简单情况下(0.781)优于具有挑战性的情况(0.641)。目视检查显示,人工智能容易在患者运动或低计数活动方面出现错误。结论:本研究强调了人工智能在SSC过程中实时胆囊跟踪和GBEF计算方面的潜力。通过向技术人员提供即时的器官功能评估和反馈,人工智能支持的核成像数据实时评估有望推进临床工作流程。这种人工智能支持的工作流程可以提高诊断效率,缩短扫描时间,并通过减轻与SSC相关的症状(如因服用噻嗪类药物引起的腹部不适)来改善患者舒适度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Artificial Intelligence in Sincalide-Stimulated Cholescintigraphy: A Pilot Study.

Purpose: Sincalide-stimulated cholescintigraphy (SSC) calculates the gallbladder ejection fraction (GBEF) to diagnose functional gallbladder disorder. Currently, artificial intelligence (AI)-driven workflows that integrate real-time image processing and organ function calculation remain unexplored in nuclear medicine practice. This pilot study explored an AI-based application for gallbladder radioactivity tracking.

Methods: We retrospectively analyzed 20 SSC exams, categorized into 10 easy and 10 challenging cases. Two human operators (H1 and H2) independently annotated the gallbladder regions of interest manually over the course of the 60-minute SSC. A U-Net-based deep learning model was developed to automatically segment gallbladder masks, and a 10-fold cross-validation was performed for both easy and challenging cases. The AI-generated masks were compared with human-annotated ones, with Dice similarity coefficients (DICE) used to assess agreement.

Results: AI achieved an average DICE of 0.746 against H1 and 0.676 against H2, performing better in easy cases (0.781) than in challenging ones (0.641). Visual inspection showed AI was prone to errors with patient motion or low-count activity.

Conclusions: This study highlights AI's potential in real-time gallbladder tracking and GBEF calculation during SSC. AI-enabled real-time evaluation of nuclear imaging data holds promise for advancing clinical workflows by providing instantaneous organ function assessments and feedback to technologists. This AI-enabled workflow could enhance diagnostic efficiency, reduce scan duration, and improve patient comfort by alleviating symptoms associated with SSC, such as abdominal discomfort due to sincalide administration.

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来源期刊
Clinical Nuclear Medicine
Clinical Nuclear Medicine 医学-核医学
CiteScore
2.90
自引率
31.10%
发文量
1113
审稿时长
2 months
期刊介绍: Clinical Nuclear Medicine is a comprehensive and current resource for professionals in the field of nuclear medicine. It caters to both generalists and specialists, offering valuable insights on how to effectively apply nuclear medicine techniques in various clinical scenarios. With a focus on timely dissemination of information, this journal covers the latest developments that impact all aspects of the specialty. Geared towards practitioners, Clinical Nuclear Medicine is the ultimate practice-oriented publication in the field of nuclear imaging. Its informative articles are complemented by numerous illustrations that demonstrate how physicians can seamlessly integrate the knowledge gained into their everyday practice.
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