Thoracic Cancer (Jan 2023)

Nondiagnostic, radial‐probe endobronchial ultrasound‐guided biopsy for peripheral lung lesions: The added value of radiomics from ultrasound imaging for predicting malignancy

  • Jihwan Choi,
  • Sungmin Zo,
  • Jong Hoon Kim,
  • You Jin Oh,
  • Joong Hyun Ahn,
  • Myoungkyoung Kim,
  • Kyungjong Lee,
  • Ho Yun Lee

DOI
https://doi.org/10.1111/1759-7714.14730
Journal volume & issue
Vol. 14, no. 2
pp. 177 – 185

Abstract

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Abstract Objectives This study investigated whether radiomic features extracted from radial‐probe endobronchial ultrasound (radial EBUS) images can assist in decision‐making for subsequent clinical management in cases with indeterminate pathologic results. Methods A total of 494 patients who underwent radial EBUS biopsy for lung nodules between January 2017 and December 2018 were allocated to our training set. For the validation set, 229 patients with radial EBUS biopsy results from January 2019 to April 2020 were used. A multivariate logistic regression analysis was used for feature selection and prediction modeling. Results In the training set, 157 (67 benign and 90 malignant) of 212 patients pathologically diagnosed as indeterminate were analyzed. In the validation set, 213 patients were diagnosed as indeterminate, and 158 patients (63 benign and 95 malignant) were included in the analysis. The performance of the radiomics‐added model, which considered satellite nodules, linear arc, shape, patency of vessels and bronchi, echogenicity, spiculation, C‐reactive protein, and minimum histogram, was 0.929 for the training set and 0.877 for the validation set, whereas the performance of the model without radiomics was 0.910 and 0.891, respectively. Conclusion Although the next diagnostic step for indeterminate lung biopsy results remains controversial, integrating various factors, including radiomic features from radial EBUS, might facilitate decision‐making for subsequent clinical management.

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