Department of Clinical Radiology, Ioannina University Hospital, Ioannina, Greece.
Department of Medical Imaging, Metaxa Anticancer Hospital, Athens, Greece.
Acta Radiol. 2021 Dec;62(12):1601-1609. doi: 10.1177/0284185120973630. Epub 2020 Nov 17.
Cardiomegaly is a relatively common incidental finding on chest X-rays; if left untreated, it can result in significant complications. Using Artificial Intelligence for diagnosing cardiomegaly could be beneficial, as this pathology may be underreported, or overlooked, especially in busy or under-staffed settings.
To explore the feasibility of applying four different transfer learning methods to identify the presence of cardiomegaly in chest X-rays and to compare their diagnostic performance using the radiologists' report as the gold standard.
Two thousand chest X-rays were utilized in the current study: 1000 were normal and 1000 had confirmed cardiomegaly. Of these exams, 80% were used for training and 20% as a holdout test dataset. A total of 2048 deep features were extracted using Google's Inception V3, VGG16, VGG19, and SqueezeNet networks. A logistic regression algorithm optimized in regularization terms was used to classify chest X-rays into those with presence or absence of cardiomegaly.
Diagnostic accuracy is reported by means of sensitivity, specificity, positive predictive value (PPV), and negative predictive value (NPV), with the VGG19 network providing the best values of sensitivity (84%), specificity (83%), PPV (83%), NPV (84%), and overall accuracy (84,5%). The other networks presented sensitivity at 64.1%-82%, specificity at 77.1%-81.1%, PPV at 74%-81.4%, NPV at 68%-82%, and overall accuracy at 71%-81.3%.
Deep learning using transfer learning methods based on VGG19 network can be used for the automatic detection of cardiomegaly on chest X-ray images. However, further validation and training of each method is required before application to clinical cases.
心脏增大是胸部 X 光片上常见的偶然发现,如果不加以治疗,可能会导致严重的并发症。使用人工智能诊断心脏增大可能是有益的,因为这种病理可能报告不足或被忽视,特别是在繁忙或人手不足的情况下。
探索应用四种不同的迁移学习方法来识别胸部 X 光片中是否存在心脏增大,并比较使用放射科医生报告作为金标准的诊断性能。
本研究共使用了 2000 张胸部 X 光片:1000 张正常,1000 张确认心脏增大。这些检查中,80%用于训练,20%作为保留测试数据集。使用 Google 的 Inception V3、VGG16、VGG19 和 SqueezeNet 网络提取了 2048 个深度特征。使用正则化项优化的逻辑回归算法对胸部 X 光片进行分类,分为存在或不存在心脏增大。
以敏感性、特异性、阳性预测值(PPV)和阴性预测值(NPV)报告诊断准确性,VGG19 网络提供了最佳的敏感性(84%)、特异性(83%)、PPV(83%)、NPV(84%)和总体准确性(84.5%)值。其他网络的敏感性为 64.1%-82%,特异性为 77.1%-81.1%,PPV 为 74%-81.4%,NPV 为 68%-82%,总体准确性为 71%-81.3%。
基于 VGG19 网络的迁移学习方法的深度学习可用于自动检测胸部 X 光片中的心脏增大。然而,在应用于临床病例之前,需要对每种方法进行进一步的验证和培训。