深度学习在甲状腺伴钙化结节鉴别诊断中的应用:一项两中心研究。
Deep learning approaches for differentiating thyroid nodules with calcification: a two-center study.
机构信息
Department of Diagnostic Ultrasound Imaging & Interventional Therapy, Zhejiang Cancer Hospital, Hangzhou Institute of Medicine (HIM), Chinese Academy of Sciences, Hangzhou, 310022, China.
Wenling Big Data and Artificial Intelligence Institute in Medicine, Taizhou, 317502, China.
出版信息
BMC Cancer. 2023 Nov 23;23(1):1139. doi: 10.1186/s12885-023-11456-3.
BACKGROUND
Calcification is a common phenomenon in both benign and malignant thyroid nodules. However, the clinical significance of calcification remains unclear. Therefore, we explored a more objective method for distinguishing between benign and malignant thyroid calcified nodules.
METHODS
This retrospective study, conducted at two centers, involved a total of 631 thyroid nodules, all of which were pathologically confirmed. Ultrasound image sets were employed for analysis. The primary evaluation index was the area under the receiver-operator characteristic curve (AUROC). We compared the diagnostic performance of deep learning (DL) methods with that of radiologists and determined whether DL could enhance the diagnostic capabilities of radiologists.
RESULTS
The Xception classification model exhibited the highest performance, achieving an AUROC of up to 0.970, followed by the DenseNet169 model, which attained an AUROC of up to 0.959. Notably, both DL models outperformed radiologists (P < 0.05). The success of the Xception model can be attributed to its incorporation of deep separable convolution, which effectively reduces the model's parameter count. This feature enables the model to capture features more effectively during the feature extraction process, resulting in superior performance, particularly when dealing with limited data.
CONCLUSIONS
This study conclusively demonstrated that DL outperformed radiologists in differentiating between benign and malignant calcified thyroid nodules. Additionally, the diagnostic capabilities of radiologists could be enhanced with the aid of DL.
背景
钙化是良、恶性甲状腺结节的常见现象。然而,钙化的临床意义尚不清楚。因此,我们探索了一种更客观的方法来区分良、恶性甲状腺钙化结节。
方法
本回顾性研究在两个中心共纳入 631 个经病理证实的甲状腺结节,对其超声图像集进行分析。主要评价指标为受试者工作特征曲线下面积(AUROC)。我们比较了深度学习(DL)方法与放射科医生的诊断性能,并确定 DL 是否可以增强放射科医生的诊断能力。
结果
Xception 分类模型的性能最高,AUROC 高达 0.970,其次是 DenseNet169 模型,AUROC 高达 0.959。值得注意的是,两种 DL 模型的表现均优于放射科医生(P<0.05)。Xception 模型的成功归因于其采用了深度可分离卷积,这有效地减少了模型的参数数量。该特性使模型在特征提取过程中更有效地捕获特征,从而获得更好的性能,尤其是在处理有限数据时。
结论
本研究明确表明,DL 在区分良、恶性钙化甲状腺结节方面优于放射科医生。此外,DL 可以增强放射科医生的诊断能力。