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Creating Prognostic Systems for Well-Differentiated Thyroid Cancer Using Machine Learning

机译:使用机器学习为分化良好的甲状腺癌创建预后系统

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摘要

Updates to staging models are needed to reflect a greater understanding of tumor behavior and clinical outcomes for well-differentiated thyroid carcinomas. We used a machine learning algorithm and disease-specific survival data of differentiated thyroid carcinoma from the Surveillance, Epidemiology, and End Results Program of the National Cancer Institute to integrate clinical factors to improve prognostic accuracy. The concordance statistic (C-index) was used to cut dendrograms resulting from the learning process to generate prognostic groups. We created one computational prognostic model (7 prognostic groups with C-index = 0.8583) based on tumor size (T), regional lymph nodes (N), status of distant metastasis (M), and age to mirror the contemporary American Joint Committee on Cancer (AJCC) staging system (C-index = 0.8387). We showed that adding histologic type (papillary and follicular) improved the survival prediction of the model. We also showed that 55 is the best cutoff of age in the model, consistent with the changes from the most recent 8th edition staging manual from AJCC. The demonstrated approach has the potential to create prognostic systems permitting data driven and real time analysis that can aid decision-making in patient management and prognostication.
机译:需要对分期模型进行更新,以反映出对高分化甲状腺癌的肿瘤行为和临床结果的更多了解。我们使用机器学习算法和来自美国国家癌症研究所的监测,流行病学和最终结果计划的分化型甲状腺癌的疾病特异性生存数据来整合临床因素,以提高预后准确性。使用一致性统计量(C-index)来削减学习过程中产生的树状图以生成预后组。我们根据肿瘤大小(T),区域淋巴结(N),远处转移状态(M)和年龄创建了一个计算性预后模型(7个预后组,C指数= 0.8583),以反映当代美国联合委员会的意见。癌症(AJCC)分期系统(C-index = 0.8387)。我们显示,添加组织学类型(乳头状和滤泡状)可改善模型的生存期预测。我们还表明,55岁是模型中年龄的最佳截止点,这与AJCC最新的第8版分期手册中的更改一致。所证明的方法有可能创建允许数据驱动和实时分析的预后系统,从而有助于患者管理和预后的决策。

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