Department of Nuclear Medicine, Faculty of Health Sciences, University of Pretoria, Pretoria, South Africa.
Department of Statistics, Faculty of Natural and Agricultural Sciences, University of Pretoria, Pretoria, South Africa.
Radiol Med. 2023 Sep;128(9):1093-1102. doi: 10.1007/s11547-023-01681-y. Epub 2023 Jul 20.
Accurate segmentation (separating diseased portions of the lung from normal appearing lung) is a challenge in radiomic studies of non-neoplastic diseases, such as pulmonary tuberculosis (PTB). In this study, we developed a segmentation method, applicable to chest X-rays (CXR), that can eliminate the need for precise disease delineation, and that is effective for constructing radiomic models for automatic PTB cavity classification.
This retrospective study used a dataset of 266 posteroanterior CXR of patients diagnosed with laboratory confirmed PTB. The lungs were segmented using a U-net-based in-house automatic segmentation model. A secondary segmentation was developed using a sliding window, superimposed on the primary lung segmentation. Pyradiomics was used for feature extraction from every window which increased the dimensionality of the data, but this allowed us to accurately capture the spread of the features across the lung. Two separate measures (standard-deviation and variance) were used to consolidate the features. Pearson's correlation analysis (with a 0.8 cut-off value) was then applied for dimensionality reduction followed by the construction of Random Forest radiomic models.
Two almost identical radiomic signatures consisting of 10 texture features each (9 were the same plus 1 other feature) were identified using the two separate consolidation measures. Two well performing random forest models were constructed from these signatures. The standard-deviation model (AUC = 0.9444 (95% CI, 0.8762; 0.9814)) performed marginally better than the variance model (AUC = 0.9288 (95% CI, 0.9046; 0.9843)).
The introduction of the secondary sliding window segmentation on CXR could eliminate the need for disease delineation in pulmonary radiomic studies, and it could improve the accuracy of CXR reporting currently regaining prominence as a high-volume screening tool as the developed radiomic models correctly classify cavities from normal CXR.
在非肿瘤性疾病(如肺结核(PTB))的放射组学研究中,准确分割(将肺部的病变部分与正常的肺部分开)是一个挑战。在这项研究中,我们开发了一种适用于胸部 X 射线(CXR)的分割方法,该方法可以消除对精确疾病描绘的需求,并有效构建用于自动 PTB 空洞分类的放射组学模型。
这项回顾性研究使用了一组 266 例经实验室证实患有 PTB 的患者的前后位 CXR 数据集。使用基于 U 型网络的内部自动分割模型对肺部进行分割。使用叠加在初级肺分割上的滑动窗口开发了二次分割。Pyradiomics 用于从每个窗口提取特征,这增加了数据的维度,但这使我们能够准确地捕捉特征在肺部的传播。使用两种独立的度量方法(标准差和方差)对特征进行合并。然后应用 Pearson 相关分析(0.8 截止值)进行降维,然后构建随机森林放射组学模型。
使用两种独立的合并度量方法,分别确定了由 10 个纹理特征组成的两个几乎相同的放射组学特征(9 个相同,外加 1 个其他特征)。使用这两个特征,构建了两个性能良好的随机森林模型。标准差模型(AUC=0.9444(95%CI,0.8762;0.9814))的性能略优于方差模型(AUC=0.9288(95%CI,0.9046;0.9843))。
在 CXR 上引入二次滑动窗口分割可以消除肺部放射组学研究中对疾病描绘的需求,并可以提高当前作为大容量筛查工具重新受到重视的 CXR 报告的准确性,因为所开发的放射组学模型可以正确地对正常 CXR 中的空洞进行分类。