Rajaraman Sivaramakrishnan, Yang Feng, Zamzmi Ghada, Xue Zhiyun, Antani Sameer
Computational Health Research Branch, National Library of Medicine, National Institutes of Health, Bethesda, MD 20894, USA.
Expert Syst Appl. 2023 Nov 1;229(Pt A). doi: 10.1016/j.eswa.2023.120531. Epub 2023 May 24.
Lung segmentation in chest X-rays (CXRs) is an important prerequisite for improving the specificity of diagnoses of cardiopulmonary diseases in a clinical decision support system. Current deep learning models for lung segmentation are trained and evaluated on CXR datasets in which the radiographic projections are captured predominantly from the adult population. However, the shape of the lungs is reported to be significantly different across the developmental stages from infancy to adulthood. This might result in age-related data domain shifts that would adversely impact lung segmentation performance when the models trained on the adult population are deployed for pediatric lung segmentation. In this work, our goal is to (i) analyze the generalizability of deep adult lung segmentation models to the pediatric population and (ii) improve performance through a stage-wise, systematic approach consisting of CXR modality-specific weight initializations, stacked ensembles, and an ensemble of stacked ensembles. To evaluate segmentation performance and generalizability, novel evaluation metrics consisting of mean lung contour distance (MLCD) and average hash score (AHS) are proposed in addition to the multi-scale structural similarity index measure (MS-SSIM), the intersection of union (IoU), Dice score, 95% Hausdorff distance (HD95), and average symmetric surface distance (ASSD). Our results showed a significant improvement ( < 0.05) in cross-domain generalization through our approach. This study could serve as a paradigm to analyze the cross-domain generalizability of deep segmentation models for other medical imaging modalities and applications.
胸部X光(CXR)中的肺部分割是提高临床决策支持系统中心肺疾病诊断特异性的重要前提。当前用于肺部分割的深度学习模型是在CXR数据集上进行训练和评估的,这些数据集中的放射影像主要来自成年人群。然而,据报道,从婴儿期到成年期的不同发育阶段,肺部形状存在显著差异。当将在成年人群上训练的模型应用于儿科肺部分割时,这可能会导致与年龄相关的数据域偏移,从而对肺部分割性能产生不利影响。在这项工作中,我们的目标是:(i)分析深度成人肺部分割模型对儿科人群的通用性;(ii)通过一种分阶段、系统的方法来提高性能,该方法包括特定于CXR模态的权重初始化、堆叠集成以及堆叠集成的集成。为了评估分割性能和通用性,除了多尺度结构相似性指数测量(MS-SSIM)、交并比(IoU)、Dice分数、95%豪斯多夫距离(HD95)和平均对称表面距离(ASSD)之外,还提出了由平均肺轮廓距离(MLCD)和平均哈希分数(AHS)组成的新型评估指标。我们的结果表明,通过我们的方法,跨域通用性有显著提高(<0.05)。这项研究可以作为一个范例,用于分析深度分割模型在其他医学成像模态和应用中的跨域通用性。