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兽医放射科医生与用于犬猫X光检查研究的先进商业人工智能软件的放射学解读比较。

Comparison of radiological interpretation made by veterinary radiologists and state-of-the-art commercial AI software for canine and feline radiographic studies.

作者信息

Ndiaye Yero S, Cramton Peter, Chernev Chavdar, Ockenfels Axel, Schwarz Tobias

机构信息

Department of Economics, University of Cologne, Cologne, Germany.

Max Planck Institute for Research on Collective Goods, Bonn, Germany.

出版信息

Front Vet Sci. 2025 Feb 21;12:1502790. doi: 10.3389/fvets.2025.1502790. eCollection 2025.

Abstract

INTRODUCTION

As human medical diagnostic expertise is scarcely available, especially in veterinary care, artificial intelligence (AI) has been increasingly used as a remedy. AI's promise comes from improving human diagnostics or providing good diagnostics at lower cost, increasing access. This study analyzed the diagnostic performance of a widely used AI radiology software vs. veterinary radiologists in interpreting canine and feline radiographs. We aimed to establish whether the performance of commonly used AI matches the performance of a typical radiologist and thus can be reliably used. Secondly, we try to identify in which cases AI is effective.

METHODS

Fifty canine and feline radiographic studies in DICOM format were anonymized and reported by 11 board-certified veterinary radiologists (ECVDI or ACVR) and processed with commercial and widely used AI software dedicated to small animal radiography (SignalRAY, SignalPET Dallas, TX, USA). The AI software used a deep-learning algorithm and returned a coded or diagnosis for each finding in the study. The radiologists provided a written report in English. All reports' findings were coded into categories matching the codes from the AI software and classified as or . The sensitivity, specificity, and accuracy of each radiologist and the AI software were calculated. The variance in agreement between each radiologist and the AI software was measured to calculate the ambiguity of each radiological finding.

RESULTS

AI matched the best radiologist in accuracy and was more specific but less sensitive than human radiologists. AI did better than the median radiologist overall in low- and high-ambiguity cases. In high-ambiguity cases, AI's accuracy remained high, though it was less effective at detecting abnormalities but better at identifying normal findings. The study confirmed AI's reliability, especially in low-ambiguity scenarios.

CONCLUSION

Our findings suggest that AI performs almost as well as the best veterinary radiologist in all settings of descriptive radiographic findings. However, its strengths lie more in confirming normality than detecting abnormalities, and it does not provide differential diagnoses. Therefore, the broader use of AI could reliably increase diagnostic availability but requires further human input. Given the unique strengths of human experts and AI and the differences in sensitivity vs. specificity and low-ambiguity vs. high-ambiguity settings, AI will likely complement rather than replace human experts.

摘要

引言

由于人类医学诊断专业知识稀缺,尤其是在兽医护理领域,人工智能(AI)越来越多地被用作一种解决方案。人工智能的前景在于改善人类诊断或降低成本提供良好诊断,从而增加诊断的可及性。本研究分析了一款广泛使用的人工智能放射学软件与兽医放射科医生在解读犬猫X光片方面的诊断性能。我们旨在确定常用人工智能的性能是否与典型放射科医生的性能相匹配,从而能否可靠使用。其次,我们试图确定人工智能在哪些情况下有效。

方法

50份DICOM格式的犬猫X光研究报告被匿名化处理,由11名获得委员会认证的兽医放射科医生(欧洲兽医诊断成像学院院士或美国兽医放射学会认证专家)进行报告,并使用一款专门用于小动物放射成像的商业且广泛使用的人工智能软件(SignalRAY,美国得克萨斯州达拉斯市的SignalPET)进行处理。该人工智能软件使用深度学习算法,并为研究中的每个发现返回一个编码诊断或文字诊断。放射科医生提供英文书面报告。所有报告中的发现都被编码为与人工智能软件代码匹配的类别,并分类为阳性或阴性。计算每位放射科医生和人工智能软件的敏感性、特异性和准确性。测量每位放射科医生与人工智能软件之间一致性的差异,以计算每个放射学发现的模糊性。

结果

人工智能在准确性方面与最佳放射科医生相当,比人类放射科医生更具特异性,但敏感性较低。在低模糊性和高模糊性病例中,人工智能总体上比中等水平的放射科医生表现更好。在高模糊性病例中,人工智能的准确性仍然很高,尽管它在检测异常方面效果较差,但在识别正常发现方面表现更好。该研究证实了人工智能的可靠性,尤其是在低模糊性场景中。

结论

我们的研究结果表明,在描述性放射学发现的所有情况下,人工智能的表现几乎与最佳兽医放射科医生一样好。然而,其优势更多地在于确认正常情况而非检测异常,并且它不提供鉴别诊断。因此,更广泛地使用人工智能可以可靠地提高诊断的可及性,但需要进一步的人工干预。鉴于人类专家和人工智能的独特优势以及敏感性与特异性、低模糊性与高模糊性场景的差异,人工智能可能会补充而不是取代人类专家。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/47b3/11886591/43147350b9c1/fvets-12-1502790-g0001.jpg

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