Clinical efficacy of 99mTc-MIBI SPECT/CT compared with CBCT in lung biopsies: a retrospective cohort study
Kai Yuan, Li Long, Guangqiang Yang, Haiying Wang, Shi Yang, Yang Jiang, Tiangang Hu, Yakun Wu, Wei Qin

TL;DR
This study compares the effectiveness of 99mTc-MIBI SPECT/CT and CBCT for guiding lung biopsies, finding that SPECT/CT may offer higher diagnostic accuracy for certain tumor sizes.
Contribution
The study introduces 99mTc-MIBI SPECT/CT as a novel imaging method for lung biopsies, showing potential for improved accuracy in intermediate-sized masses.
Findings
99mTc-MIBI SPECT/CT-guided biopsy achieved 100% diagnostic accuracy compared to 93.83% with CBCT.
Higher TBR ratios on SPECT/CT strongly predicted malignancy with an AUC of 1.0.
SPECT/CT guidance showed significantly higher accuracy for mass-type lesions 3–3.99 cm in diameter.
Abstract
This study aimed to evaluate the clinical value of 99mTc-MIBI SPECT/CT (Single-Photon Emission Computed Tomography/Computed Tomography) imaging-guided percutaneous lung aspiration biopsy by comparing its diagnostic accuracy and complication rates to those of CBCT-guided biopsy. A total of 115 patients who underwent percutaneous lung aspiration biopsy at Suining Central Hospital from September 2019 to December 2020 were included. Patients were assigned to either the 99mTc-MIBI SPECT/CT-guided group (n = 34) or the CBCT-guided group (n = 81). Baseline characteristics, including age, sex, lesion location, type, and size, were statistically analyzed to ensure comparability. Bayesian multilevel logistic regression was utilized for subgroup analyses, and Clopper-Pearson exact intervals were calculated for accuracy metrics. Diagnostic accuracy and post-procedure complications were evaluated.…
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Taxonomy
TopicsLung Cancer Diagnosis and Treatment · Radiomics and Machine Learning in Medical Imaging · MRI in cancer diagnosis
