Journal of Clinical Medicine (Jun 2023)

Diagnostic Performance of Dynamic Whole-Body Patlak [<sup>18</sup>F]FDG-PET/CT in Patients with Indeterminate Lung Lesions and Lymph Nodes

  • Matthias Weissinger,
  • Max Atmanspacher,
  • Werner Spengler,
  • Ferdinand Seith,
  • Sebastian Von Beschwitz,
  • Helmut Dittmann,
  • Lars Zender,
  • Anne M. Smith,
  • Michael E. Casey,
  • Konstantin Nikolaou,
  • Salvador Castaneda-Vega,
  • Christian la Fougère

DOI
https://doi.org/10.3390/jcm12123942
Journal volume & issue
Vol. 12, no. 12
p. 3942

Abstract

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Background: Static [18F]FDG-PET/CT is the imaging method of choice for the evaluation of indeterminate lung lesions and NSCLC staging; however, histological confirmation of PET-positive lesions is needed in most cases due to its limited specificity. Therefore, we aimed to evaluate the diagnostic performance of additional dynamic whole-body PET. Methods: A total of 34 consecutive patients with indeterminate pulmonary lesions were enrolled in this prospective trial. All patients underwent static (60 min p.i.) and dynamic (0–60 min p.i.) whole-body [18F]FDG-PET/CT (300 MBq) using the multi-bed-multi-timepoint technique (Siemens mCT FlowMotion). Histology and follow-up served as ground truth. Kinetic modeling factors were calculated using a two-compartment linear Patlak model (FDG influx rate constant = Ki, metabolic rate = MR-FDG, distribution volume = DV-FDG) and compared to SUV using ROC analysis. Results: MR-FDGmean provided the best discriminatory power between benign and malignant lung lesions with an AUC of 0.887. The AUC of DV-FDGmean (0.818) and SUVmean (0.827) was non-significantly lower. For LNM, the AUCs for MR-FDGmean (0.987) and SUVmean (0.993) were comparable. Moreover, the DV-FDGmean in liver metastases was three times higher than in bone or lung metastases. Conclusions: Metabolic rate quantification was shown to be a reliable method to detect malignant lung tumors, LNM, and distant metastases at least as accurately as the established SUV or dual-time-point PET scans.

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