Nomogram for Intermediate-Risk Differentiated Thyroid Cancer After Fixed 3.7GBq(100mCi) Radioiodine Remnant Ablation

This study aims to establish a risk nomogram utilizing clinicopathologic data from 265 intermediate-risk differentiated thyroid carcinoma (DTC) patients who underwent a fixed dose of 3.7GBq (100mCi) radioiodine remnant ablation.

Research authors: Lu Lu
Version: 1.2
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