[使用人工智能软件诊断肺气肿和间质性肺病]。

Journal of the Korean Society of Radiology Pub Date : 2024-07-01 Epub Date: 2024-07-30 DOI:10.3348/jksr.2024.0050
Sang Hyun Paik, Gong Yong Jin
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引用次数: 0

摘要

研究人员利用人工智能(AI)开发了各种算法,可自动客观地诊断胸部 CT 扫描中肺气肿或间质性肺病的模式和程度。研究表明,基于人工智能的胸部 CT 扫描肺气肿量化显示,肺气肿相对百分比的增加与肺功能下降之间存在联系。值得注意的是,量化中心叶肺气肿已被证明有助于预测慢性阻塞性肺病的临床症状或死亡率。在间质性肺病方面,人工智能可将 CT 扫描上的常见间质性肺炎模式分为正常、磨玻璃不透明、网状不透明、蜂窝状、肺气肿和合并症等类别。这一分类准确率与胸部放射科医生(70%-80%)不相上下。然而,人工智能生成的结果受到扫描参数、重建算法、辐射剂量和用于开发人工智能的训练数据等因素的影响。目前,这些局限性限制了人工智能在日常临床实践中广泛应用于肺气肿和间质性肺疾病的定量分析。本文将通过案例研究展示作者使用人工智能诊断和量化肺气肿和肺间质疾病的经验。我们将主要关注人工智能在这两种疾病中的优势和局限性。
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[Using Artificial Intelligence Software for Diagnosing Emphysema and Interstitial Lung Disease].

Researchers have developed various algorithms utilizing artificial intelligence (AI) to automatically and objectively diagnose patterns and extent of pulmonary emphysema or interstitial lung diseases on chest CT scans. Studies show that AI-based quantification of emphysema on chest CT scans reveals a connection between an increase in the relative percentage of emphysema and a decline in lung function. Notably, quantifying centrilobular emphysema has proven helpful in predicting clinical symptoms or mortality rates of chronic obstructive pulmonary disease. In the context of interstitial lung diseases, AI can classify the usual interstitial pneumonia pattern on CT scans into categories like normal, ground-glass opacity, reticular opacity, honeycombing, emphysema, and consolidation. This classification accuracy is comparable to chest radiologists (70%-80%). However, the results generated by AI are influenced by factors such as scan parameters, reconstruction algorithms, radiation doses, and the training data used to develop the AI. These limitations currently restrict the widespread adoption of AI for quantifying pulmonary emphysema and interstitial lung diseases in daily clinical practice. This paper will showcase the authors' experience using AI for diagnosing and quantifying emphysema and interstitial lung diseases through case studies. We will primarily focus on the advantages and limitations of AI for these two diseases.

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[Announcement of the Establishment of the 'Healthcare Policy' Section and Introduction of the New Section Editor]. [Annual Report of J Korean Soc Radiol in the 80th Korean Congress of Radiology, 2024]. [Medical Radiation Safety: Are We Doing It Right?] [Preface for Special Issue on Medical Policy and Radiology]. [Rules Regarding Special Medical Equipment and Exclusively Affiliated Radiologists in Korea].
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