Computing Institute, Federal University of Alagoas (UFAL), Maceió, AL, Brazil.
Ribeirão Preto Medical School, University of Sao Paulo (USP), Ribeirão Preto, SP, Brazil.
J Digit Imaging. 2021 Aug;34(4):798-810. doi: 10.1007/s10278-021-00453-2. Epub 2021 Mar 31.
Lung cancer is the most lethal malignant neoplasm worldwide, with an annual estimated rate of 1.8 million deaths. Computed tomography has been widely used to diagnose and detect lung cancer, but its diagnosis remains an intricate and challenging work, even for experienced radiologists. Computer-aided diagnosis tools and radiomics tools have provided support to the radiologist's decision, acting as a second opinion. The main focus of these tools has been to analyze the intranodular zone; nevertheless, recent works indicate that the interaction between the nodule and its surroundings (perinodular zone) could be relevant to the diagnosis process. However, only a few works have investigated the importance of specific attributes of the perinodular zone and have shown how important they are in the classification of lung nodules. In this context, the purpose of this work is to evaluate the impact of using the perinodular zone on the characterization of lung lesions. Motivated by reproducible research, we used a large public dataset of solid lung nodule images and extracted fine-tuned radiomic attributes from the perinodular and intranodular zones. Our best-evaluated model obtained an average AUC of 0.916, an accuracy of 84.26%, a sensitivity of 84.45%, and specificity of 83.84%. The combination of attributes from the perinodular and intranodular zones in the image characterization resulted in an improvement in all the metrics analyzed when compared to intranodular-only characterization. Therefore, our results highlighted the importance of using the perinodular zone in the solid pulmonary nodules classification process.
肺癌是全球最致命的恶性肿瘤之一,年死亡人数估计为 180 万。计算机断层扫描已广泛用于诊断和检测肺癌,但即使对于经验丰富的放射科医生,其诊断仍然是一项复杂而具有挑战性的工作。计算机辅助诊断工具和放射组学工具为放射科医生的决策提供了支持,充当了第二意见。这些工具的主要重点是分析结节内区;然而,最近的研究表明,结节与其周围环境(结节周围区)之间的相互作用可能与诊断过程相关。然而,只有少数研究探讨了结节周围区特定属性的重要性,并展示了它们在肺结节分类中的重要性。在这种情况下,本研究的目的是评估使用结节周围区对肺病变特征描述的影响。受可重复性研究的启发,我们使用了一个大型公共实性肺结节图像数据集,并从结节周围区和结节内区提取了微调的放射组学属性。我们评估最好的模型获得了平均 AUC 为 0.916、准确率为 84.26%、敏感度为 84.45%和特异性为 83.84%。与仅结节内区特征描述相比,在图像特征描述中组合结节周围区和结节内区的属性可提高所有分析指标的性能。因此,我们的结果强调了在实性肺结节分类过程中使用结节周围区的重要性。