Department of Electric, Electronic and Computer Engineering, University of Catania, Viale Andrea Doria 6, 95125, Catania, Italy.
Unit of Radiology, Department of Advanced Diagnostic-Therapeutic Technologies, "Bianchi-Melacrino-Morelli" Hospital, Reggio Calabria, Via Giuseppe Melacrino, 21, 89124, Reggio Calabria, Italy.
Sci Rep. 2023 Dec 18;13(1):22471. doi: 10.1038/s41598-023-49534-y.
Preprocessing is an essential task for the correct analysis of digital medical images. In particular, X-ray imaging might contain artifacts, low contrast, diffractions or intensity inhomogeneities. Recently, we have developed a procedure named PACE that is able to improve chest X-ray (CXR) images including the enforcement of clinical evaluation of pneumonia originated by COVID-19. At the clinical benchmark state of this tool, there have been found some peculiar conditions causing a reduction of details over large bright regions (as in ground-glass opacities and in pleural effusions in bedridden patients) and resulting in oversaturated areas. Here, we have significantly improved the overall performance of the original approach including the results in those specific cases by developing PACE2.0. It combines 2D image decomposition, non-local means denoising, gamma correction, and recursive algorithms to improve image quality. The tool has been evaluated using three metrics: contrast improvement index, information entropy, and effective measure of enhancement, resulting in an average increase of 35% in CII, 7.5% in ENT, 95.6% in EME and 13% in BRISQUE against original radiographies. Additionally, the enhanced images were fed to a pre-trained DenseNet-121 model for transfer learning, resulting in an increase in classification accuracy from 80 to 94% and recall from 89 to 97%, respectively. These improvements led to a potential enhancement of the interpretability of lesion detection in CXRs. PACE2.0 has the potential to become a valuable tool for clinical decision support and could help healthcare professionals detect pneumonia more accurately.
预处理是正确分析数字医学图像的一项基本任务。特别是,X 射线成像可能包含伪影、低对比度、衍射或强度不均匀性。最近,我们开发了一种名为 PACE 的程序,能够改善胸部 X 光(CXR)图像,包括加强对 COVID-19 引起的肺炎的临床评估。在该工具的临床基准状态下,已经发现了一些特殊情况,这些情况导致在大面积亮区(如磨玻璃混浊和卧床患者的胸腔积液)上降低了细节,并导致过饱和区域。在这里,我们通过开发 PACE2.0 显著提高了原始方法的整体性能,包括在这些特定情况下的结果。它结合了 2D 图像分解、非局部均值去噪、伽马校正和递归算法来提高图像质量。该工具使用三个指标进行了评估:对比度改善指数、信息熵和增强有效度量,结果表明 CII 平均增加了 35%,ENT 增加了 7.5%,EME 增加了 95.6%,BRISQUE 增加了 13%,而原始射线照片则减少了。此外,增强后的图像被输入到经过预训练的 DenseNet-121 模型中进行迁移学习,分类准确率从 80%提高到 94%,召回率从 89%提高到 97%。这些改进提高了 CXR 中病变检测的可解释性。PACE2.0 有可能成为临床决策支持的有价值工具,并有助于医疗保健专业人员更准确地检测肺炎。