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一种用于改善胸部X光片中肺炎检测的深度特定模态集成方法。

A Deep Modality-Specific Ensemble for Improving Pneumonia Detection in Chest X-rays.

作者信息

Rajaraman Sivaramakrishnan, Guo Peng, Xue Zhiyun, Antani Sameer K

机构信息

Computational Health Research Branch, National Library of Medicine, National Institutes of Health, Bethesda, MD 20894, USA.

出版信息

Diagnostics (Basel). 2022 Jun 11;12(6):1442. doi: 10.3390/diagnostics12061442.

Abstract

Pneumonia is an acute respiratory infectious disease caused by bacteria, fungi, or viruses. Fluid-filled lungs due to the disease result in painful breathing difficulties and reduced oxygen intake. Effective diagnosis is critical for appropriate and timely treatment and improving survival. Chest X-rays (CXRs) are routinely used to screen for the infection. Computer-aided detection methods using conventional deep learning (DL) models for identifying pneumonia-consistent manifestations in CXRs have demonstrated superiority over traditional machine learning approaches. However, their performance is still inadequate to aid in clinical decision-making. This study improves upon the state of the art as follows. Specifically, we train a DL classifier on large collections of CXR images to develop a CXR modality-specific model. Next, we use this model as the classifier backbone in the RetinaNet object detection network. We also initialize this backbone using random weights and ImageNet-pretrained weights. Finally, we construct an ensemble of the best-performing models resulting in improved detection of pneumonia-consistent findings. Experimental results demonstrate that an ensemble of the top-3 performing RetinaNet models outperformed individual models in terms of the mean average precision (mAP) metric (0.3272, 95% CI: (0.3006,0.3538)) toward this task, which is markedly higher than the state of the art (mAP: 0.2547). This performance improvement is attributed to the key modifications in initializing the weights of classifier backbones and constructing model ensembles to reduce prediction variance compared to individual constituent models.

摘要

肺炎是一种由细菌、真菌或病毒引起的急性呼吸道传染病。该疾病导致肺部充满液体,引发痛苦的呼吸困难并减少氧气摄入。有效的诊断对于恰当及时的治疗以及提高生存率至关重要。胸部X光(CXR)常规用于筛查感染情况。使用传统深度学习(DL)模型在CXR中识别与肺炎相符表现的计算机辅助检测方法已证明优于传统机器学习方法。然而,它们的性能仍不足以辅助临床决策。本研究在现有技术水平上有如下改进。具体而言,我们在大量CXR图像集合上训练一个DL分类器,以开发一个特定于CXR模态的模型。接下来,我们将此模型用作RetinaNet目标检测网络中的分类器主干。我们还使用随机权重和在ImageNet上预训练的权重初始化这个主干。最后,我们构建表现最佳的模型的集成,从而改进对与肺炎相符发现的检测。实验结果表明,在该任务中,表现最佳的前3个RetinaNet模型的集成在平均精度均值(mAP)指标方面(0.3272,95%置信区间:(0.3006,0.3538))优于单个模型,这明显高于现有技术水平(mAP:0.2547)。这种性能提升归因于在初始化分类器主干权重和构建模型集成方面的关键改进,与单个组成模型相比减少了预测方差。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/bfac/9221627/48c8e43c1aae/diagnostics-12-01442-g001.jpg

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