BioImaging Lab, Bioengineering Department, University of Louisville, Louisville, KY 40292, USA.
College of Natural Sciences & Mathematics, Louisiana State University at Alexandria, Alexandria, LA 71302, USA.
Comput Methods Programs Biomed. 2023 Oct;240:107692. doi: 10.1016/j.cmpb.2023.107692. Epub 2023 Jul 7.
Lung cancer is an important cause of death and morbidity around the world. Two of the primary computed tomography (CT) imaging markers that can be used to differentiate malignant and benign lung nodules are the inhomogeneity of the nodules' texture and nodular morphology. The objective of this paper is to present a new model that can capture the inhomogeneity of the detected lung nodules as well as their morphology.
We modified the local ternary pattern to use three different levels (instead of two) and a new pattern identification algorithm to capture the nodule's inhomogeneity and morphology in a more accurate and flexible way. This modification aims to address the wide Hounsfield unit value range of the detected nodules which decreases the ability of the traditional local binary/ternary pattern to accurately classify nodules' inhomogeneity. The cut-off values defining these three levels of the novel technique are estimated empirically from the training data. Subsequently, the extracted imaging markers are fed to a hyper-tuned stacked generalization-based classification architecture to classify the nodules as malignant or benign. The proposed system was evaluated on in vivo datasets of 679 CT scans (364 malignant nodules and 315 benign nodules) from the benchmark Lung Image Database Consortium and Image Database Resource Initiative (LIDC-IDRI) and an external dataset of 100 CT scans (50 malignant and 50 benign). The performance of the classifier was quantitatively assessed using a Leave-one-out cross-validation approach and externally validated using the unseen external dataset based on sensitivity, specificity, and accuracy.
The overall accuracy of the system is 96.17% with 97.14% sensitivity and 95.33% specificity. The area under the receiver-operating characteristic curve was 0.98, which highlights the robustness of the system. Using the unseen external dataset for validating the system led to consistent results showing the generalization abilities of the proposed approach. Moreover, applying the original local binary/ternary pattern or using other classification structures achieved inferior performance when compared against the proposed approach.
These experimental results demonstrate the feasibility of the proposed model as a novel tool to assist physicians and radiologists for lung nodules' early assessment based on the new comprehensive imaging markers.
肺癌是全球范围内导致死亡和发病的重要原因。两种主要的计算机断层扫描(CT)成像标志物可用于区分恶性和良性肺结节,分别是结节纹理的不均匀性和结节形态。本文旨在提出一种新的模型,可以更准确和灵活地捕捉检测到的肺结节的不均匀性及其形态。
我们修改了局部三元模式,使用三个不同的级别(而不是两个)和一种新的模式识别算法,以更准确和灵活的方式捕捉结节的不均匀性和形态。这种修改旨在解决检测到的结节的宽亨斯菲尔德单位值范围,这降低了传统的局部二进制/三元模式准确分类结节不均匀性的能力。新方法的三个级别定义的截止值是根据训练数据经验估计的。随后,提取的成像标志物被输入到超调堆叠泛化分类架构中,以分类结节为恶性或良性。该系统在来自基准肺影像数据库联盟和影像数据库资源倡议(LIDC-IDRI)的 679 次 CT 扫描的体内数据集(364 个恶性结节和 315 个良性结节)和 100 次 CT 扫描的外部数据集(50 个恶性和 50 个良性)上进行了评估。使用留一交叉验证方法对分类器的性能进行了定量评估,并基于敏感性、特异性和准确性,使用未见的外部数据集进行了外部验证。
该系统的整体准确率为 96.17%,敏感性为 97.14%,特异性为 95.33%。接收器操作特征曲线下的面积为 0.98,这突出了系统的稳健性。使用未见的外部数据集验证系统可得到一致的结果,显示了所提出方法的泛化能力。此外,与所提出的方法相比,应用原始的局部二进制/三元模式或使用其他分类结构的性能较差。
这些实验结果证明了所提出的模型作为一种新工具的可行性,可用于根据新的综合成像标志物辅助医生和放射科医生对肺结节进行早期评估。