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机器学习模型作为预测甲状腺结节组织学、侵袭性及治疗相关并发症的有用工具。

Machine Learning Model as a Useful Tool for Prediction of Thyroid Nodules Histology, Aggressiveness and Treatment-Related Complications.

作者信息

Dell'Era Valeria, Perotti Alan, Starnini Michele, Campagnoli Massimo, Rosa Maria Silvia, Saino Irene, Aluffi Valletti Paolo, Garzaro Massimiliano

机构信息

ENT Division, Novara Maggiore Hospital, 28100 Novara, Italy.

CENTAI Institute, 10138 Turin, Italy.

出版信息

J Pers Med. 2023 Nov 17;13(11):1615. doi: 10.3390/jpm13111615.

Abstract

Thyroid nodules are very common, 5-15% of which are malignant. Despite the low mortality rate of well-differentiated thyroid cancer, some variants may behave aggressively, making nodule differentiation mandatory. Ultrasound and fine-needle aspiration biopsy are simple, safe, cost-effective and accurate diagnostic tools, but have some potential limits. Recently, machine learning (ML) approaches have been successfully applied to healthcare datasets to predict the outcomes of surgical procedures. The aim of this work is the application of ML to predict tumor histology (HIS), aggressiveness and post-surgical complications in thyroid patients. This retrospective study was conducted at the ENT Division of Eastern Piedmont University, Novara (Italy), and reported data about 1218 patients who underwent surgery between January 2006 and December 2018. For each patient, general information, HIS and outcomes are reported. For each prediction task, we trained ML models on pre-surgery features alone as well as on both pre- and post-surgery data. The ML pipeline included data cleaning, oversampling to deal with unbalanced datasets and exploration of hyper-parameter space for random forest models, testing their stability and ranking feature importance. The main results are (i) the construction of a rich, hand-curated, open dataset including pre- and post-surgery features (ii) the development of accurate yet explainable ML models. Results highlight pre-screening as the most important feature to predict HIS and aggressiveness, and that, in our population, having an out-of-range (Low) fT3 dosage at pre-operative examination is strongly associated with a higher aggressiveness of the disease. Our work shows how ML models can find patterns in thyroid patient data and could support clinicians to refine diagnostic tools and improve their accuracy.

摘要

甲状腺结节非常常见,其中5%-15%为恶性。尽管分化型甲状腺癌的死亡率较低,但一些变体可能具有侵袭性,因此必须对结节进行鉴别。超声和细针穿刺活检是简单、安全、经济高效且准确的诊断工具,但有一些潜在局限性。最近,机器学习(ML)方法已成功应用于医疗保健数据集,以预测手术结果。这项工作的目的是应用ML来预测甲状腺患者的肿瘤组织学(HIS)、侵袭性和术后并发症。这项回顾性研究在意大利诺瓦拉东皮埃蒙特大学耳鼻喉科进行,报告了2006年1月至2018年12月期间接受手术的1218例患者的数据。报告了每位患者的一般信息、HIS和结果。对于每个预测任务,我们仅根据术前特征以及术前和术后数据训练ML模型。ML流程包括数据清理、过采样以处理不平衡数据集以及探索随机森林模型的超参数空间,测试其稳定性并对特征重要性进行排名。主要结果是:(i)构建了一个丰富的、人工整理的、开放的数据集,包括术前和术后特征;(ii)开发了准确且可解释的ML模型。结果强调术前筛查是预测HIS和侵袭性的最重要特征,并且在我们的人群中,术前检查时游离三碘甲状腺原氨酸(fT3)剂量超出范围(低)与疾病的更高侵袭性密切相关。我们的工作展示了ML模型如何在甲状腺患者数据中找到模式,并可以支持临床医生改进诊断工具并提高其准确性。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/3f81/10672369/e7271ae12820/jpm-13-01615-g001.jpg

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