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LDCT image biomarkers that matter most for the deep learning classification of indeterminate pulmonary nodules.
Masquelin, Axel H; Cheney, Nick; José Estépar, Raúl San; Bates, Jason H T; Kinsey, C Matthew.
Afiliación
  • Masquelin AH; Electrical and Biomedical Engineering, University of Vermont, Burlington, VT, USA.
  • Cheney N; Computer Science, University of Vermont, Burlington, VT, USA.
  • José Estépar RS; Department of Radiology, Brigham and Women's Hospital, Somerville, MA, USA.
  • Bates JHT; Department of Medicine, College of Medicine, University of Vermont, Burlington, VT, USA.
  • Kinsey CM; Department of Medicine, Pulmonary and Critical Care, College of Medicine, University of Vermont, Burlington, VT, USA.
Cancer Biomark ; 2024 May 22.
Article en En | MEDLINE | ID: mdl-38848168
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.
Palabras clave

Texto completo: 1 Bases de datos: MEDLINE Idioma: En Revista: Cancer Biomark Asunto de la revista: BIOQUIMICA / NEOPLASIAS Año: 2024 Tipo del documento: Article País de afiliación: Estados Unidos

Texto completo: 1 Bases de datos: MEDLINE Idioma: En Revista: Cancer Biomark Asunto de la revista: BIOQUIMICA / NEOPLASIAS Año: 2024 Tipo del documento: Article País de afiliación: Estados Unidos