CT-derived body composition associated with lung cancer recurrence after surgery

•A comprehensive study of the impact of CT-derived image features on postoperative lung cancer recurrence.•Body composition is significantly associated with postoperative lung cancer recurrence.•A composite computer model for predicting postoperative lung cancer recurrence. To evaluate the impact of...

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Veröffentlicht in:Lung cancer (Amsterdam, Netherlands) Netherlands), 2023-05, Vol.179, p.107189-107189, Article 107189
Hauptverfasser: Gezer, Naciye S., Bandos, Andriy I., Beeche, Cameron A., Leader, Joseph K., Dhupar, Rajeev, Pu, Jiantao
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Sprache:eng
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Zusammenfassung:•A comprehensive study of the impact of CT-derived image features on postoperative lung cancer recurrence.•Body composition is significantly associated with postoperative lung cancer recurrence.•A composite computer model for predicting postoperative lung cancer recurrence. To evaluate the impact of body composition derived from computed tomography (CT) scans on postoperative lung cancer recurrence. We created a retrospective cohort of 363 lung cancer patients who underwent lung resections and had verified recurrence, death, or at least 5-year follow-up without either event. Five key body tissues and ten tumor features were automatically segmented and quantified based on preoperative whole-body CT scans (acquired as part of a PET-CT scan) and chest CT scans, respectively. Time-to-event analysis accounting for the competing event of death was performed to analyze the impact of body composition, tumor features, clinical information, and pathological features on lung cancer recurrence after surgery. The hazard ratio (HR) of normalized factors was used to assess individual significance univariately and in the combined models. The 5-fold cross-validated time-dependent receiver operating characteristics analysis, with an emphasis on the area under the 3-year ROC curve (AUC), was used to characterize the ability to predict lung cancer recurrence. Body tissues that showed a standalone potential to predict lung cancer recurrence include visceral adipose tissue (VAT) volume (HR = 0.88, p = 0.047), subcutaneous adipose tissue (SAT) density (HR = 1.14, p = 0.034), inter-muscle adipose tissue (IMAT) volume (HR = 0.83, p = 0.002), muscle density (HR = 1.27, p 
ISSN:0169-5002
1872-8332
DOI:10.1016/j.lungcan.2023.107189