Golding Allan, Bimston David, Namiranian Emma, Marqusee Ellen, Correa Gabriel, Scheker Evana Valenzuela, Jiang Ruochen, Hao Yangyang, Alshalalfa Mohammed, Huang Jing, Klopper Joshua P, Kloos Richard T, Ahmadi Sara
Memorial Healthcare System, Interventional Endocrinology, Hollywood, FL, United States.
Memorial Healthcare System, Endocrine Surgery, Hollywood, FL, United States.
Front Endocrinol (Lausanne). 2025 Jul 16;16:1600815. doi: 10.3389/fendo.2025.1600815. eCollection 2025.
Molecular variants and fusions in thyroid nodules can provide prognostic information at a population level. However, thyroid cancers harboring the same molecular alterations may exhibit diverse clinical behavior. Leveraging exome-enriched gene expression analysis may overcome the limitations seen in models based on a small number of point mutations or fusions. Here, we developed and validated mRNA-based classifiers with high negative predictive values to preoperatively rule out thyroid tumor invasion and lymph node metastases.
In this retrospective cohort study, histopathology reports from the Afirma Genomic Sequencing Classifier (GSC) algorithm training and consecutive thyroid cancer patients with Bethesda III-VI thyroid nodules in clinical practice (total 697 and ~50%, respectively) were scored for invasion and metastases. mRNA expression-based classifiers were developed utilizing literature-derived signatures as well as differentially expressed genes between samples with or without clinically significant invasion/metastases as the basic building blocks. Machine learning algorithms were employed to develop the final candidate classifiers. The final locked classifiers were validated on a retrospective cohort of 259 patients with Afirma testing who had thyroid surgery and had invasion and metastasis scores assigned based on histopathology while blinded to the classifier results.
A total of 697 (88% female) patient Afirma samples and scored histology reports were used for classifier development. In development, patients had a median age of 51 years. Ten percent of samples were assigned a high risk for invasion label, and 11.3% were assigned a high risk for lymph node metastasis (LNM) label. A low-risk invasion classifier result was assigned to 41.3% of the cohort with a negative predictive value (NPV) of 97.6%, and a low-risk LNM classifier result was assigned to 49.8% of the cohort with an NPV of 98.6%. In the validation cohort, made up of 75% women with a median age of 53 years, 51% of the samples were ruled out for high risk for invasion label with a 99% [95-100] NPV, and 53% were ruled out for high risk for LNM label with 100% [97-100] NPV.
Gene expression-based classifiers that confidently, preoperatively rule out thyroid tumor invasion and lymph node metastasis may help personalize the surgical approach for individuals, reducing overtreatment, surgical complications, and postoperative hypothyroidism.
甲状腺结节中的分子变异和融合可在群体水平上提供预后信息。然而,具有相同分子改变的甲状腺癌可能表现出不同的临床行为。利用外显子富集基因表达分析可能克服基于少数点突变或融合的模型中存在的局限性。在此,我们开发并验证了具有高阴性预测值的基于mRNA的分类器,以术前排除甲状腺肿瘤侵犯和淋巴结转移。
在这项回顾性队列研究中,对来自Afirma基因组测序分类器(GSC)算法训练的组织病理学报告以及临床实践中连续的贝塞斯达III - VI级甲状腺结节的甲状腺癌患者(分别为697例和约50%)进行侵犯和转移评分。基于mRNA表达的分类器利用文献衍生的特征以及有或无临床显著侵犯/转移的样本之间的差异表达基因作为基本构建模块来开发。采用机器学习算法来开发最终的候选分类器。最终锁定的分类器在259例接受Afirma检测并接受甲状腺手术的患者的回顾性队列中进行验证,这些患者根据组织病理学分配了侵犯和转移评分,同时对分类器结果设盲。
总共697例(88%为女性)患者的Afirma样本和评分后的组织学报告用于分类器开发。在开发过程中,患者的中位年龄为51岁。10%的样本被判定为侵犯高风险标签,11.3%的样本被判定为淋巴结转移(LNM)高风险标签。该队列中41.3%的样本被判定为低风险侵犯分类器结果,阴性预测值(NPV)为97.6%,49.8%的样本被判定为低风险LNM分类器结果,NPV为98.6%。在验证队列中,75%为女性,中位年龄为53岁,51%的样本被排除为侵犯高风险标签,NPV为99% [95 - 100],53%的样本被排除为LNM高风险标签,NPV为100% [97 - 100]。
基于基因表达的分类器能够在术前可靠地排除甲状腺肿瘤侵犯和淋巴结转移,这可能有助于为个体制定个性化的手术方案,减少过度治疗、手术并发症和术后甲状腺功能减退。