Clinic for Nuclear Medicine and Molecular Imaging, Imaging Institute of Southern Switzerland, Ente Ospedaliero Cantonale, Ospedale San Giovanni, Via A. Gallino 6, 6500, Bellinzona, CH, Switzerland.
Clinic for Nuclear Medicine, University Hospital Zürich, Zurich, Switzerland.
Eur J Nucl Med Mol Imaging. 2023 Jul;50(9):2767-2774. doi: 10.1007/s00259-023-06239-8. Epub 2023 May 1.
An accurate postoperative assessment is pivotal to inform postoperative I treatment in patients with differentiated thyroid cancer (DTC). We developed a predictive model for post-treatment whole-body scintigraphy (PT-WBS) results (as a proxy for persistent disease) by adopting a decision tree model.
Age, sex, histology, T stage, N stage, risk classes, remnant estimation, TSH, and Tg were identified as potential predictors and were put into regression algorithm (conditional inference tree, ctree) to develop a risk stratification model for predicting the presence of metastases in PT-WBS.
The lymph node (N) stage identified a partition of the population into two subgroups (N-positive vs N-negative). Among N-positive patients, a Tg value > 23.3 ng/mL conferred a 83% probability to have metastatic disease compared to those with lower Tg values. Additionally, N-negative patients were further substratified in three subgroups with different risk rates according to their Tg values. The model remained stable and reproducible in the iterative process of cross validation.
We developed a simple and robust decision tree model able to provide reliable informations on the probability of persistent/metastatic DTC after surgery. These information may guide post-surgery I administration and select patients requiring curative rather than adjuvant I therapy schedules.
准确的术后评估对于分化型甲状腺癌(DTC)患者的术后碘治疗至关重要。我们通过采用决策树模型为治疗后全身闪烁扫描(PT-WBS)结果(作为持续性疾病的替代指标)开发了一个预测模型。
年龄、性别、组织学、T 期、N 期、风险等级、残余物估计、TSH 和 Tg 被确定为潜在的预测因子,并被放入回归算法(条件推理树,ctree)中,以开发预测 PT-WBS 中转移存在的风险分层模型。
淋巴结(N)期将人群分为两个亚组(N 阳性 vs N 阴性)。在 N 阳性患者中,Tg 值 >23.3 ng/mL 与较低 Tg 值相比,发生转移性疾病的概率为 83%。此外,N 阴性患者根据 Tg 值进一步分为三个亚组,具有不同的风险率。该模型在交叉验证的迭代过程中保持稳定和可复制。
我们开发了一种简单而强大的决策树模型,能够提供关于手术后持续性/转移性 DTC 的概率的可靠信息。这些信息可以指导术后 I 治疗的管理,并选择需要治愈而不是辅助 I 治疗方案的患者。