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利用临床和超声特征及机器学习方法预测甲状腺恶性风险

Prediction of thyroid malignancy risk using clinical and ultrasonography features and a machine learning approach.

作者信息

Hosseini Sarkhosh Seyed Mahdi, Shirzad Nooshin, Taghvaei Mahdieh, Tavangar Seyed Mohammad, Farhat Sara, Ebrahiminik Hojat, Hemmatabadi Mahboobeh, Pourashraf Maryam, Chegeni Hossein

机构信息

Department of Industrial Engineering, University of Garmsar, Garmsar, Iran.

Endocrinology and Metabolism Research Center (EMRC), Vali-Asr Hospital, Tehran University of Medical Sciences, Tehran, Iran.

出版信息

Eur Radiol. 2025 Feb 14. doi: 10.1007/s00330-025-11434-2.

Abstract

OBJECTIVE

This study aims to develop and validate a predictive model for thyroid nodule malignancy risks using clinical and ultrasonography features and a machine learning (ML) approach.

METHODS

This retrospective study is based on the clinical and ultrasound characteristics of 1035 thyroid nodules (845 benign and 190 malignant) to develop and validate the risk prediction model. Employing multiple logistic regression, key features were selected in developing the model. Eight ML algorithms were evaluated for predicting the risks of malignancy. Finally, the predictive ability of the best-performing algorithm was compared against American College of Radiology Thyroid Imaging Reporting and Data System (ACR TI-RADS) and American Thyroid Association (ATA) guidelines.

RESULTS

Based on AUC criteria (88.3, 95% CI: 81.2-94.2), sensitivity (84.2, 95% CI: 71.1-94.7), specificity (92.3, 95% CI: 88.2-95.9), positive predictive value, (71.4, 95% CI: 60.4-83.3) and negative predictive value (96.3, 95% CI: 93.5-98.8), the XGBoost algorithm exhibited superior performance over the other ML algorithms and ACR TI-RADS and ATA. These criteria were obtained for ACR TI-RADS at 54.2%, 63.2%, 48.5%, 21.1%, and 84.8%, while for ATA, they were 44.3%, 76.3%, 27.2%, 18.4%, and 81.6%. In addition, the unnecessary fine-needle aspiration (FNA) rate with ACR TI-RADS and ATA was 43% and 63%, respectively-significantly higher than the 7% obtained with XGBoost.

CONCLUSIONS

This study demonstrated the capability of ML approaches in enhancing the accuracy of predicting thyroid malignancy risks as well as their potential benefits in optimizing healthcare resources by reducing unnecessary FNA rates. Using the proposed model through a web-based tool can facilitate clinical judgments in thyroid nodule management and personalized treatment.

KEY POINTS

Question Current risk assessment systems have limitations, with high unnecessary FNA rates compared to machine learning (ML) models. Findings The XGBoost algorithm was compared to other ML algorithms, ACR TI-RADS, and ATA and demonstrated superior performance. Clinical relevance This study demonstrated the capability of ML approaches in enhancing the accuracy of predicting thyroid malignancy. The proposed web-based tool to facilitate the prediction of thyroid nodule risk is available at https://aimedlab.ir/tnr .

摘要

目的

本研究旨在利用临床和超声特征以及机器学习(ML)方法,开发并验证一种甲状腺结节恶性风险预测模型。

方法

这项回顾性研究基于1035个甲状腺结节(845个良性和190个恶性)的临床和超声特征来开发和验证风险预测模型。在开发模型时,采用多元逻辑回归选择关键特征。评估了八种ML算法用于预测恶性风险。最后,将表现最佳的算法的预测能力与美国放射学会甲状腺影像报告和数据系统(ACR TI-RADS)及美国甲状腺协会(ATA)指南进行比较。

结果

基于曲线下面积标准(88.3,95%置信区间:81.2 - 94.2)、灵敏度(84.2,95%置信区间:71.1 - 94.7)、特异性(92.3,95%置信区间:88.2 - 95.9)、阳性预测值(71.4,95%置信区间:60.4 - 83.3)和阴性预测值(96.3,95%置信区间:93.5 - 98.8),XGBoost算法表现出优于其他ML算法以及ACR TI-RADS和ATA的性能。ACR TI-RADS的这些标准分别为54.2%、63.2%、48.5%、21.1%和84.8%,而ATA的分别为44.3%、76.3%、27.2%、18.4%和81.6%。此外,ACR TI-RADS和ATA的不必要细针穿刺(FNA)率分别为43%和63%,显著高于XGBoost的7%。

结论

本研究证明了ML方法在提高甲状腺恶性风险预测准确性方面的能力,以及通过降低不必要的FNA率在优化医疗资源方面的潜在益处。通过基于网络的工具使用所提出的模型可以促进甲状腺结节管理中的临床判断和个性化治疗。

关键点

问题 当前的风险评估系统存在局限性,与机器学习(ML)模型相比,不必要的FNA率较高。发现 将XGBoost算法与其他ML算法、ACR TI-RADS和ATA进行比较,显示出优越的性能。临床意义 本研究证明了ML方法在提高甲状腺恶性预测准确性方面的能力。可通过https://aimedlab.ir/tnr获取用于促进甲状腺结节风险预测的基于网络的工具。

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