Anatomic evaluation of Pancoast tumors using three-dimensional models for surgical strategy development

Pancoast tumor resection planning requires precise interpretation of 2-dimensional images. We hypothesized that patient-specific 3-dimensional reconstructions, providing intuitive views of anatomy, would enable superior anatomic assessment. Cross-sectional images from 9 patients with representative...

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Veröffentlicht in:The Journal of thoracic and cardiovascular surgery 2023-03, Vol.165 (3), p.842-852.e5
Hauptverfasser: Chen, Zhenchian, Bernards, Nicholas, Gregor, Alexander, Vannelli, Claire, Kitazawa, Shinsuke, de Perrot, Marc, Yasufuku, Kazuhiro
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Sprache:eng
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Zusammenfassung:Pancoast tumor resection planning requires precise interpretation of 2-dimensional images. We hypothesized that patient-specific 3-dimensional reconstructions, providing intuitive views of anatomy, would enable superior anatomic assessment. Cross-sectional images from 9 patients with representative Pancoast tumors, selected from an institutional database, were randomly assigned to presentation as 2-dimensional images, 3-dimensional virtual reconstruction, or 3-dimensional physical reconstruction. Thoracic surgeons (n = 15) completed questionnaires on the tumor extent and a zone-based algorithmic surgical approach for each patient. Responses were compared with surgical pathology, documented surgical approach, and the optimal “zone-specific” approach. A 5-point Likert scale assessed participants' opinions regarding data presentation and potential benefits of patient-specific 3-dimensional models. Identification of tumor invasion of segmented neurovascular structures was more accurate with 3-dimensional physical reconstruction (2-dimensional 65.56%, 3-dimensional virtual reconstruction 58.52%, 3-dimensional physical reconstruction 87.50%, P 
ISSN:0022-5223
1097-685X
DOI:10.1016/j.jtcvs.2022.08.037