Diagnostic Accuracy of Combined 3.0T Magnetic Resonance Imaging and Molybdenum Target X-Ray in Triple-Negative Breast Cancer: Correlation with Prognosis in Patients Undergoing Sentinel Lymph Node Biopsy
Li Xia, Ling Yang, Meng Hu

TL;DR
Combining 3.0T MRI and molybdenum target X-ray improves the diagnosis and prognosis of triple-negative breast cancer.
Contribution
Demonstrates the combined diagnostic accuracy of 3.0T MRI and molybdenum target X-ray in TNBC and its correlation with prognosis.
Findings
Combined 3.0T MRI and molybdenum target X-ray showed 90.70% sensitivity and 86.36% specificity for TNBC diagnosis.
Imaging techniques correlated well with pathological results and provided prognostic information.
Significant differences in imaging indicators were observed based on tumor size, grade, and lymph node metastasis.
Abstract
This study assessed the diagnostic efficacy of combining 3.0T MRI and molybdenum target X-ray in triple-negative breast carcinoma (TNBC) and its association with the prognosis of sentinel lymph node biopsy (SLNB). The retrospective analysis included 128 patients suspected of having TNBC, who underwent 3.0T MRI and molybdenum target X-ray. Sensitivity and specificity were calculated for each imaging technique, and their combined diagnosis was evaluated using the four-table method. Consistency between the imaging techniques and pathological examination was assessed using the consistency checking method. Additionally, changes in imaging indicators were compared among patients with different prognostic indicators. Among the 128 patients, 86 were diagnosed with TNBC through pathological examination. The sensitivity and specificity of 3.0T MRI for TNBC were 82.56% and 76.19%, respectively.…
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Taxonomy
TopicsMRI in cancer diagnosis · Radiomics and Machine Learning in Medical Imaging · Breast Cancer Treatment Studies
