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人工智能在肺功能测试解读中的应用。

Application of Artificial Intelligence in the Interpretation of Pulmonary Function Tests.

作者信息

Saad Talha, Pandey Ramesh, Padarya Surendra, Singh Puja, Singh Satish, Mishra Nitu

机构信息

Department of Pulmonary Medicine, Bundelkhand Medical College, Sagar, IND.

Department of Medicine, Bundelkhand Medical College, Sagar, IND.

出版信息

Cureus. 2025 Apr 11;17(4):e82056. doi: 10.7759/cureus.82056. eCollection 2025 Apr.

Abstract

Background As per the Global Burden of Disease Study (GBD) 2019, chronic obstructive pulmonary disease (COPD) and asthma had a significant global burden. COPD is the fourth leading cause of death in the world and the second leading cause of death and disability-adjusted life years (DALYs) in India. Pulmonary function tests (PFTs) are commonly used diagnostic tools. They include spirometry, body plethysmography, and diffusion capacity. In regions with limited resources, pulmonologists often only have access to spirometry. Additionally, PFT pattern interpretation is usually unreliable and subjective. Recent rapid advances in artificial intelligence (AI) algorithms can bridge the gaps. Objectives This study aims to compare the accuracy of the predictions made by AI algorithms with pulmonologists using limited clinical data and spirometry. It also examines the consistency and accuracy of pulmonologists' predictions based on the same information. Methodology Different AI algorithms were trained, and their accuracy was evaluated. Spirometry and limited clinical data from 440 patients were interpreted by an AI algorithm and eight senior pulmonologists. Accuracy, sensitivity, specificity, positive predictive value (PPV), and negative predictive value (NPV) were calculated for the different patterns. Results Approximately 60% of the cases involved male patients, and about 70% were between the ages of 21 and 60. The Fleiss's kappa was 0.46. While the accuracy of pulmonologists against the gold standard was 65.82%, the accuracy of the AI was 86.59%. Conclusions PFTs, when interpreted by pulmonologists with limited clinical and spirometry data, have lower accuracy and higher variability. AI algorithms can consistently produce high accuracy. Adopting such technology among clinicians, especially in resource-constrained regions, could be pivotal for offering quality healthcare. In addition, it will also help in getting rid of inter-observer variability.

摘要

背景 根据《2019年全球疾病负担研究》(GBD 2019),慢性阻塞性肺疾病(COPD)和哮喘在全球造成了重大负担。COPD是全球第四大死因,在印度是第二大死因及伤残调整生命年(DALY)的主要原因。肺功能测试(PFT)是常用的诊断工具。它们包括肺活量测定法、体容积描记法和弥散功能测定。在资源有限的地区,肺科医生通常只能使用肺活量测定法。此外,PFT模式的解读通常不可靠且主观。人工智能(AI)算法最近的快速发展可以弥补这些差距。目的 本研究旨在比较使用有限临床数据和肺活量测定法时,AI算法与肺科医生预测的准确性。它还基于相同信息检查肺科医生预测的一致性和准确性。方法 训练了不同的AI算法,并评估其准确性。一个AI算法和八位资深肺科医生对440例患者的肺活量测定法和有限临床数据进行了解读。计算了不同模式的准确性、敏感性、特异性、阳性预测值(PPV)和阴性预测值(NPV)。结果 约60%的病例为男性患者,约70%的患者年龄在21至60岁之间。Fleiss卡方值为0.46。肺科医生相对于金标准的准确性为65.82%,而AI的准确性为86.59%。结论 当肺科医生根据有限的临床和肺活量测定数据进行解读时,PFT的准确性较低且变异性较高。AI算法可以持续产生高准确性。在临床医生中采用这种技术,尤其是在资源有限的地区,对于提供高质量医疗保健可能至关重要。此外,它还将有助于消除观察者间的变异性。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/318a/12066014/c0067d9b0293/cureus-0017-00000082056-i01.jpg

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