Negro Roberto, Rucco Matteo, Creanza Annalisa, Mormile Alberto, Limone Paolo Piero, Garberoglio Roberto, Spiezia Stefano, Monti Salvatore, Cugini Christian, El Dalati Ghassan, Deandrea Maurilio
Division of Endocrinology, V. Fazzi Hospital, Lecce, Italy.
United Technology Research Center, Trento, Italy.
Eur Thyroid J. 2020 Jul;9(4):205-212. doi: 10.1159/000504882. Epub 2019 Dec 19.
Radiofrequency (RF) is a therapeutic modality for reducing the volume of large benign thyroid nodules. If thermal therapies are interpreted as an alternative strategy to surgery, critical issues in their use are represented by the extent of nodule reduction and by the durability of nodule reduction over a long period of time.
To assess the ability of machine learning to discriminate nodules with volume reduction rate (VRR) < or ≥50% at 12 months following RF treatment.
A machine learning model was trained with a dataset of 402 cytologically benign thyroid nodules subjected to RF at six Italian Institutions. The model was trained with the following variables: baseline nodule volume, echostructure, macrocalcalcifications, vascularity, and 12-month VRR.
After training, the model could distinguish between nodules having VRR <50% from those having VRR ≥50% in 85% of cases (accuracy: 0.85; 95% confidence interval [CI]: 0.80-0.90; sensitivity: 0.70; 95% CI: 0.62-0.75; specificity: 0.99; 95% CI: 0.98-1.0; positive predictive value: 0.95; 95% CI: 0.92-0.98; negative predictive value: 0.95; 95% CI: 0.92-0.98).
This study demonstrates that a machine learning model can reliably identify those nodules that will have VRR < or ≥50% at 12 months after one RF treatment session. Predicting which nodules will be poor or good responders represents valuable data that may help physicians and patients decide on the best treatment option between thermal ablation and surgery or in predicting if more than one session might be necessary to obtain a significant volume reduction.
射频(RF)是一种用于减少大型良性甲状腺结节体积的治疗方式。如果将热疗视为手术的替代策略,那么在其应用中的关键问题在于结节缩小的程度以及长期结节缩小的持久性。
评估机器学习在射频治疗后12个月区分体积缩小率(VRR)<或≥50%的结节的能力。
使用来自意大利六个机构接受射频治疗的402个细胞学良性甲状腺结节的数据集训练机器学习模型。该模型使用以下变量进行训练:基线结节体积、回声结构、粗大钙化、血管分布和12个月的VRR。
训练后,该模型在85%的病例中能够区分VRR<50%的结节和VRR≥50%的结节(准确率:0.85;95%置信区间[CI]:0.80 - 0.90;敏感性:0.70;95% CI:0.62 - 0.75;特异性:0.99;95% CI:0.98 - 1.0;阳性预测值:0.95;95% CI:0.92 - 0.98;阴性预测值:0.95;95% CI:0.92 - 0.98)。
本研究表明,机器学习模型可以可靠地识别在一次射频治疗后12个月VRR<或≥50%的结节。预测哪些结节是反应不佳或良好的结节代表了有价值的数据,可能有助于医生和患者在热消融和手术之间决定最佳治疗方案,或预测是否需要不止一次治疗来实现显著的体积缩小。