Center for Infectious Disease Imaging, Radiology and Imaging Sciences, Clinical Center, National Institutes of Health, Bethesda, Maryland.
Center for Interventional Oncology, Radiology and Imaging Sciences, NIH Clinical Center and National Cancer Institute, Center for Cancer Research, National Institutes of Health, Bethesda, Maryland.
Acad Radiol. 2023 Sep;30(9):2037-2045. doi: 10.1016/j.acra.2023.02.027. Epub 2023 Feb 27.
Animal modeling of infectious diseases such as coronavirus disease 2019 (COVID-19) is important for exploration of natural history, understanding of pathogenesis, and evaluation of countermeasures. Preclinical studies enable rigorous control of experimental conditions as well as pre-exposure baseline and longitudinal measurements, including medical imaging, that are often unavailable in the clinical research setting. Computerized tomography (CT) imaging provides important diagnostic, prognostic, and disease characterization to clinicians and clinical researchers. In that context, automated deep-learning systems for the analysis of CT imaging have been broadly proposed, but their practical utility has been limited. Manual outlining of the ground truth (i.e., lung-lesions) requires accurate distinctions between abnormal and normal tissues that often have vague boundaries and is subject to reader heterogeneity in interpretation. Indeed, this subjectivity is demonstrated as wide inconsistency in manual outlines among experts and from the same expert. The application of deep-learning data-science tools has been less well-evaluated in the preclinical setting, including in nonhuman primate (NHP) models of severe acute respiratory syndrome coronavirus 2 (SARS-CoV-2) infection/COVID-19, in which the translation of human-derived deep-learning tools is challenging. The automated segmentation of the whole lung and lung lesions provides a potentially standardized and automated method to detect and quantify disease.
We used deep-learning-based quantification of the whole lung and lung lesions on CT scans of NHPs exposed to SARS-CoV-2. We proposed a novel multi-model ensemble technique to address the inconsistency in the ground truths for deep-learning-based automated segmentation of the whole lung and lung lesions. Multiple models were obtained by training the convolutional neural network (CNN) on different subsets of the training data instead of having a single model using the entire training dataset. Moreover, we employed a feature pyramid network (FPN), a CNN that provides predictions at different resolution levels, enabling the network to predict objects with wide size variations.
We achieved an average of 99.4 and 60.2% Dice coefficients for whole-lung and lung-lesion segmentation, respectively. The proposed multi-model FPN outperformed well-accepted methods U-Net (50.5%), V-Net (54.5%), and Inception (53.4%) for the challenging lesion-segmentation task. We show the application of segmentation outputs for longitudinal quantification of lung disease in SARS-CoV-2-exposed and mock-exposed NHPs.
Deep-learning methods should be optimally characterized for and targeted specifically to preclinical research needs in terms of impact, automation, and dynamic quantification independently from purely clinical applications.
动物模型对于研究传染病(例如 2019 年冠状病毒病(COVID-19))的自然史、发病机制和评估对策非常重要。临床前研究能够严格控制实验条件以及预暴露基线和纵向测量,包括临床研究环境中通常无法获得的医学影像学。计算机断层扫描(CT)成像可为临床医生和临床研究人员提供重要的诊断,预后和疾病特征。在这种情况下,已经广泛提出了用于分析 CT 成像的自动化深度学习系统,但其实际应用受到限制。对地面真相(即肺病变)进行手动勾画需要准确区分异常组织和正常组织,而异常组织和正常组织的边界往往很模糊,并且读者的解释存在异质性。实际上,这种主观性表现为专家之间以及同一专家之间手动轮廓之间的广泛不一致。在包括严重急性呼吸系统综合症冠状病毒 2(SARS-CoV-2)感染/COVID-19 的非人类灵长类动物(NHP)模型在内的临床前环境中,对深度学习数据科学工具的应用评估较少,在该模型中,人类衍生的深度学习工具的翻译具有挑战性。整个肺部和肺部病变的自动分割提供了一种潜在的标准化和自动化方法,可用于检测和量化疾病。
我们使用针对暴露于 SARS-CoV-2 的 NHP 的 CT 扫描对整个肺部和肺部病变进行基于深度学习的定量分析。我们提出了一种新颖的多模型集成技术,以解决整个肺部和肺部病变的基于深度学习的自动分割的地面真相不一致的问题。通过在训练数据的不同子集上训练卷积神经网络(CNN),而不是使用整个训练数据集来获得单个模型,从而获得多个模型。此外,我们采用了特征金字塔网络(FPN),这是一种 CNN,可以提供不同分辨率水平的预测,从而使网络能够预测具有广泛尺寸变化的对象。
我们分别实现了整个肺和肺病变分割的平均 99.4%和 60.2%的 Dice 系数。与广泛接受的 U-Net(50.5%),V-Net(54.5%)和 Inception(53.4%)方法相比,所提出的多模型 FPN在具有挑战性的病变分割任务中表现出色。我们展示了在 SARS-CoV-2 暴露和模拟暴露的 NHP 中,分割输出在肺疾病的纵向定量中的应用。
从纯粹的临床应用角度出发,针对影响,自动化和动态量化等方面,深度学习方法应针对临床前研究的需求进行优化,并针对这些需求进行专门设计。