LDCT image biomarkers that matter most for the deep learning classification of indeterminate pulmonary nodules.

IF 2.2 4区 医学 Q3 ONCOLOGY Cancer Biomarkers Pub Date : 2024-05-22 DOI:10.3233/CBM-230444
Axel H Masquelin, Nick Cheney, Raúl San José Estépar, Jason H T Bates, C Matthew Kinsey
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Abstract

Background: Continued improvement in deep learning methodologies has increased the rate at which deep neural networks are being evaluated for medical applications, including diagnosis of lung cancer. However, there has been limited exploration of the underlying radiological characteristics that the network relies on to identify lung cancer in computed tomography (CT) images.

Objective: In this study, we used a combination of image masking and saliency activation maps to systematically explore the contributions of both parenchymal and tumor regions in a CT image to the classification of indeterminate lung nodules.

Methods: We selected individuals from the National Lung Screening Trial (NLST) with solid pulmonary nodules 4-20 mm in diameter. Segmentation masks were used to generate three distinct datasets; 1) an Original Dataset containing the complete low-dose CT scans from the NLST, 2) a Parenchyma-Only Dataset in which the tumor regions were covered by a mask, and 3) a Tumor-Only Dataset in which only the tumor regions were included.

Results: The Original Dataset significantly outperformed the Parenchyma-Only Dataset and the Tumor-Only Dataset with an AUC of 80.80 ± 3.77% compared to 76.39 ± 3.16% and 78.11 ± 4.32%, respectively. Gradient-weighted class activation mapping (Grad-CAM) of the Original Dataset showed increased attention was being given to the nodule and the tumor-parenchyma boundary when nodules were classified as malignant. This pattern of attention remained unchanged in the case of the Parenchyma-Only Dataset. Nodule size and first-order statistical features of the nodules were significantly different with the average malignant and benign nodule maximum 3d diameter being 23 mm and 12 mm, respectively.

Conclusion: We conclude that network performance is linked to textural features of nodules such as kurtosis, entropy and intensity, as well as morphological features such as sphericity and diameter. Furthermore, textural features are more positively associated with malignancy than morphological features.

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对不确定肺结节深度学习分类最重要的 LDCT 图像生物标志物。
背景:深度学习方法的不断改进提高了深度神经网络在医疗应用(包括肺癌诊断)方面的评估速度。然而,人们对网络在计算机断层扫描(CT)图像中识别肺癌所依赖的基本放射学特征的探索还很有限:在这项研究中,我们结合使用了图像遮蔽和显著性激活图,系统地探索了 CT 图像中实质和肿瘤区域对不确定肺结节分类的贡献:我们从国家肺部筛查试验(NLST)中选取了直径为 4-20 毫米的实性肺结节患者。使用分割掩膜生成三个不同的数据集:1)原始数据集,包含 NLST 的完整低剂量 CT 扫描图像;2)仅包含实质组织的数据集,其中肿瘤区域被掩膜覆盖;3)仅包含肿瘤的数据集,其中只包含肿瘤区域:结果:原始数据集的 AUC 为 80.80 ± 3.77%,明显优于仅包含实质组织的数据集和仅包含肿瘤的数据集,而原始数据集和原始数据集的 AUC 分别为 76.39 ± 3.16% 和 78.11 ± 4.32%。原始数据集的梯度加权类激活图谱(Grad-CAM)显示,当结节被归类为恶性时,结节和肿瘤-实质边界会受到更多关注。在仅实质数据集的情况下,这种关注模式保持不变。结节的大小和一阶统计特征存在显著差异,恶性和良性结节的平均最大 3d 直径分别为 23 毫米和 12 毫米:我们得出结论,网络性能与结节的纹理特征(如峰度、熵和强度)以及形态特征(如球形度和直径)有关。此外,与形态特征相比,纹理特征与恶性程度的正相关性更高。
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来源期刊
Cancer Biomarkers
Cancer Biomarkers ONCOLOGY-
CiteScore
5.20
自引率
3.20%
发文量
195
审稿时长
3 months
期刊介绍: Concentrating on molecular biomarkers in cancer research, Cancer Biomarkers publishes original research findings (and reviews solicited by the editor) on the subject of the identification of markers associated with the disease processes whether or not they are an integral part of the pathological lesion. The disease markers may include, but are not limited to, genomic, epigenomic, proteomics, cellular and morphologic, and genetic factors predisposing to the disease or indicating the occurrence of the disease. Manuscripts on these factors or biomarkers, either in altered forms, abnormal concentrations or with abnormal tissue distribution leading to disease causation will be accepted.
期刊最新文献
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