Scientific Reports (Jan 2023)

Artificial intelligence-based radiomics for the prediction of nodal metastasis in early-stage lung cancer

  • Yoshihisa Shimada,
  • Yujin Kudo,
  • Sachio Maehara,
  • Kentaro Fukuta,
  • Ryuhei Masuno,
  • Jinho Park,
  • Norihiko Ikeda

DOI
https://doi.org/10.1038/s41598-023-28242-7
Journal volume & issue
Vol. 13, no. 1
pp. 1 – 9

Abstract

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Abstract We aimed to investigate the value of computed tomography (CT)-based radiomics with artificial intelligence (AI) in predicting pathological lymph node metastasis (pN) in patients with clinical stage 0–IA non-small cell lung cancer (c-stage 0–IA NSCLC). This study enrolled 720 patients who underwent complete surgical resection for c-stage 0–IA NSCLC, and were assigned to the derivation and validation cohorts. Using the AI software Beta Version (Fujifilm Corporation, Japan), 39 AI imaging factors, including 17 factors from the AI ground-glass nodule analysis and 22 radiomics features from nodule characterization analysis, were extracted to identify factors associated with pN. Multivariate analysis showed that clinical stage IA3 (p = 0.028), solid-part size (p < 0.001), and average solid CT value (p = 0.033) were independently associated with pN. The receiver operating characteristic analysis showed that the area under the curve and optimal cut-off values of the average solid CT value relevant to pN were 0.761 and -103 Hounsfield units, and the threshold provided sensitivity, specificity, and negative predictive values of 69%, 65%, and 94% in the entire cohort, respectively. Measuring the average solid-CT value of tumors for pN may have broad applications such as guiding individualized surgical approaches and postoperative treatment.