基于超声的深度学习放射组学可以客观地评估甲状腺结节,有助于提高超声医生的诊断水平。

IF 2.9 2区 医学 Q2 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Quantitative Imaging in Medicine and Surgery Pub Date : 2024-08-01 Epub Date: 2024-07-30 DOI:10.21037/qims-23-1597
Hai Du, Feng Chen, Hao Li, Kaifeng Wang, Jian Zhang, Jian Meng, Huiwen Li, Xia Xu, Junpu Qu, Rong Wu, Jing Li, Meilan Zhang, Fengxiang Zhang, Xuelin Zhu
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引用次数: 0

摘要

背景:甲状腺结节的发病率已达 65%,但其中只有 5-15% 是恶性的。因此,准确判断甲状腺结节的良恶性可避免不必要的治疗。我们旨在开发一种基于超声(US)的深度学习(DL)放射组学模型,探索其对甲状腺结节良性和恶性的诊断效果,并验证其是否能提高医生的诊断水平:我们回顾性地纳入了三家机构 817 名患者的 1,076 个甲状腺结节。提取 US 图像的放射组学特征和深度学习特征,用于构建放射组学特征(Rad_sig)和深度学习特征(DL_sig)。特征选择采用了皮尔逊相关分析和最小绝对收缩与选择算子(LASSO)回归分析。临床 US 语义特征(C_US_sig)是根据临床信息和 US 语义特征构建的。接下来,根据上述三个特征以提名图的形式构建了一个组合模型。该模型使用一个开发集(机构 1:719 个结节)构建,并使用两个外部验证集(机构 2:74 个结节和机构 3:283 个结节)进行评估。利用决策曲线分析(DCA)和校准曲线对模型的性能进行了评估。此外,还构建了初级医师、高级医师和外科医生的 C_US_sigs。DL放射组学模型用于帮助不同经验水平的医生解释甲状腺结节:在开发集和验证集中,综合模型的性能最高,曲线下面积(AUC)分别为 0.947、0.917 和 0.929。DCA 结果显示,综合提名图的临床实用性最好。校准曲线显示所有模型都具有良好的校准性。初级医师、高级医师和专家区分甲状腺结节良性和恶性的AUC分别为0.714-0.752、0.740-0.824和0.891-0.908;但在DL放射组学的辅助下,AUC分别达到0.858-0.923、0.888-0.944和0.912-0.919:基于DL放射组学的提名图对甲状腺结节有很高的诊断效果,DL放射组学可以帮助不同经验水平的医生提高诊断水平。
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Deep-learning radiomics based on ultrasound can objectively evaluate thyroid nodules and assist in improving the diagnostic level of ultrasound physicians.

Background: The incidence rate of thyroid nodules has reached 65%, but only 5-15% of these modules are malignant. Therefore, accurately determining the benign and malignant nature of thyroid nodules can prevent unnecessary treatment. We aimed to develop a deep-learning (DL) radiomics model based on ultrasound (US), explore its diagnostic efficacy for benign and malignant thyroid nodules, and verify whether it improved the diagnostic level of physicians.

Methods: We retrospectively included 1,076 thyroid nodules from 817 patients at three institutions. The radiomics and DL features of the US images were extracted and used to construct radiomics signature (Rad_sig) and deep-learning signature (DL_sig). A Pearson correlation analysis and least absolute shrinkage and selection operator (LASSO) regression analysis were used for feature selection. Clinical US semantic signature (C_US_sig) was constructed based on clinical information and US semantic features. Next, a combined model was constructed based on the above three signatures in the form of a nomogram. The model was constructed using a development set (institution 1: 719 nodules), and the model was evaluated using two external validation sets (institution 2: 74 nodules, and institution 3: 283 nodules). The performance of the model was assessed using decision curve analysis (DCA) and calibration curves. Furthermore, the C_US_sigs of junior physicians, senior physicians, and expers were constructed. The DL radiomics model was used to assist the physicians with different levels of experience in the interpretation of thyroid nodules.

Results: In the development and validation sets, the combined model showed the highest performance, with areas under the curve (AUCs) of 0.947, 0.917, and 0.929, respectively. The DCA results showed that the comprehensive nomogram had the best clinical utility. The calibration curves indicated good calibration for all models. The AUCs for distinguishing between benign and malignant thyroid nodules by junior physicians, senior physicians, and experts were 0.714-0.752, 0.740-0.824, and 0.891-0.908, respectively; however, with the assistance of DL radiomics, the AUCs reached 0.858-0.923, 0.888-0.944, and 0.912-0.919, respectively.

Conclusions: The nomogram based on DL radiomics had high diagnostic efficacy for thyroid nodules, and DL radiomics could assist physicians with different levels of experience to improve their diagnostic level.

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来源期刊
Quantitative Imaging in Medicine and Surgery
Quantitative Imaging in Medicine and Surgery Medicine-Radiology, Nuclear Medicine and Imaging
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4.20
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17.90%
发文量
252
期刊介绍: Information not localized
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