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基于多幅乳突常规 X 线片的深度学习对乳突炎检测的性能。

Performance of deep learning to detect mastoiditis using multiple conventional radiographs of mastoid.

机构信息

Department of Radiology, Seoul National University Bundang Hospital, Gyeonggi-do, Korea.

Department of Radiology, Korea University Guro Hospital, Korea University College of Medicine, Seoul, Korea.

出版信息

PLoS One. 2020 Nov 11;15(11):e0241796. doi: 10.1371/journal.pone.0241796. eCollection 2020.

Abstract

OBJECTIVES

This study aimed to compare the diagnostic performance of deep learning algorithm trained by single view (anterior-posterior (AP) or lateral view) with that trained by multiple views (both views together) in diagnosis of mastoiditis on mastoid series and compare the diagnostic performance between the algorithm and radiologists.

METHODS

Total 9,988 mastoid series (AP and lateral views) were classified as normal or abnormal (mastoiditis) based on radiographic findings. Among them 792 image sets with temporal bone CT were classified as the gold standard test set and remaining sets were randomly divided into training (n = 8,276) and validation (n = 920) sets by 9:1 for developing a deep learning algorithm. Temporal (n = 294) and geographic (n = 308) external test sets were also collected. Diagnostic performance of deep learning algorithm trained by single view was compared with that trained by multiple views. Diagnostic performance of the algorithm and two radiologists was assessed. Inter-observer agreement between the algorithm and radiologists and between two radiologists was calculated.

RESULTS

Area under the receiver operating characteristic curves of algorithm using multiple views (0.971, 0.978, and 0.965 for gold standard, temporal, and geographic external test sets, respectively) showed higher values than those using single view (0.964/0.953, 0.952/0.961, and 0.961/0.942 for AP view/lateral view of gold standard, temporal external, and geographic external test sets, respectively) in all test sets. The algorithm showed statistically significant higher specificity compared with radiologists (p = 0.018 and 0.012). There was substantial agreement between the algorithm and two radiologists and between two radiologists (κ = 0.79, 0.8, and 0.76).

CONCLUSION

The deep learning algorithm trained by multiple views showed better performance than that trained by single view. The diagnostic performance of the algorithm for detecting mastoiditis on mastoid series was similar to or higher than that of radiologists.

摘要

目的

本研究旨在比较基于单视图(前后位(AP)或侧位)和多视图(两者结合)训练的深度学习算法在诊断乳突炎中的表现,并比较算法与放射科医生之间的诊断性能。

方法

根据影像学表现,将 9988 例乳突系列(AP 和侧位)分为正常或异常(乳突炎)。其中,792 个颞骨 CT 图像集被归类为金标准测试集,其余的图像集通过 9:1 的比例随机分为训练集(n=8276)和验证集(n=920),用于开发深度学习算法。还收集了颞部(n=294)和地理(n=308)外部测试集。比较了基于单视图和多视图训练的深度学习算法的诊断性能。评估了算法和两位放射科医生的诊断性能。计算了算法与放射科医生之间以及两位放射科医生之间的观察者间一致性。

结果

多视图算法的受试者工作特征曲线下面积(分别为金标准、颞部和地理外部测试集的 0.971、0.978 和 0.965)高于单视图算法(金标准、颞部和地理外部测试集的 0.964/0.953、0.952/0.961 和 0.961/0.942)。在所有测试集中,算法的特异性均显著高于放射科医生(p=0.018 和 0.012)。算法与两位放射科医生之间以及两位放射科医生之间具有高度一致性(κ=0.79、0.8 和 0.76)。

结论

基于多视图训练的深度学习算法表现优于基于单视图训练的算法。该算法在检测乳突系列中的乳突炎方面的诊断性能与放射科医生相当或更高。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/b4fd/7657495/25b193d22e56/pone.0241796.g001.jpg

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