Confidence-Aware Severity Assessment of Lung Disease from Chest X-Rays Using Deep Neural Network on a Multi-Reader Dataset.

Mohammadreza Zandehshahvar, Marly van Assen, Eun Kim, Yashar Kiarashi, Vikranth Keerthipati, Giovanni Tessarin, Emanuele Muscogiuri, Arthur E Stillman, Peter Filev, Amir H Davarpanah, Eugene A Berkowitz, Stefan Tigges, Scott J Lee, Brianna L Vey, Carlo De Cecco, Ali Adibi
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Abstract

In this study, we present a method based on Monte Carlo Dropout (MCD) as Bayesian neural network (BNN) approximation for confidence-aware severity classification of lung diseases in COVID-19 patients using chest X-rays (CXRs). Trained and tested on 1208 CXRs from Hospital 1 in the USA, the model categorizes severity into four levels (i.e., normal, mild, moderate, and severe) based on lung consolidation and opacity. Severity labels, determined by the median consensus of five radiologists, serve as the reference standard. The model's performance is internally validated against evaluations from an additional radiologist and two residents that were excluded from the median. The performance of the model is further evaluated on additional internal and external datasets comprising 2200 CXRs from the same hospital and 1300 CXRs from Hospital 2 in South Korea. The model achieves an average area under the curve (AUC) of 0.94 ± 0.01 across all classes in the primary dataset, surpassing human readers in each severity class and achieves a higher Kendall correlation coefficient (KCC) of 0.80 ± 0.03. The performance of the model is consistent across varied datasets, highlighting its generalization. A key aspect of the model is its predictive uncertainty (PU), which is inversely related to the level of agreement among radiologists, particularly in mild and moderate cases. The study concludes that the model outperforms human readers in severity assessment and maintains consistent accuracy across diverse datasets. Its ability to provide confidence measures in predictions is pivotal for potential clinical use, underscoring the BNN's role in enhancing diagnostic precision in lung disease analysis through CXR.

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在多读取器数据集上使用深度神经网络对胸部 X 光片进行可信度感知的肺病严重程度评估
在本研究中,我们提出了一种基于蒙特卡洛剔除(MCD)的贝叶斯神经网络(BNN)近似方法,用于使用胸部 X 光片(CXR)对 COVID-19 患者的肺部疾病进行可信度感知严重程度分类。该模型对来自美国第一医院的 1208 张 CXR 进行了训练和测试,根据肺部合并症和肺不张将严重程度分为四级(即正常、轻度、中度和重度)。严重程度标签由五位放射科医生的中位共识确定,作为参考标准。该模型的性能根据另外一名放射科医生和两名住院医生的评估结果进行了内部验证,这些评估结果被排除在中位数之外。该模型的性能还在其他内部和外部数据集上进行了进一步评估,这些数据集包括来自同一医院的 2200 张 CXR 和来自韩国第二医院的 1300 张 CXR。该模型在主要数据集的所有等级中的平均曲线下面积(AUC)达到了 0.94 ± 0.01,在每个严重程度等级中都超过了人类读者,并达到了 0.80 ± 0.03 的较高 Kendall 相关系数(KCC)。该模型在不同数据集上的表现一致,突出了其通用性。该模型的一个关键方面是其预测不确定性(PU),它与放射科医生之间的一致程度成反比,尤其是在轻度和中度病例中。研究得出结论,该模型在严重程度评估方面优于人类读者,并在不同数据集中保持一致的准确性。它在预测中提供置信度的能力对潜在的临床应用至关重要,突出了 BNN 在通过 CXR 提高肺病分析诊断精确度方面的作用。
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