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Recognition of Thyroid Ultrasound Standard Plane Images Based on Residual Network

机译:基于残差网络的甲状腺超声标准平面图像识别

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摘要

Ultrasound is one of the critical methods for diagnosis and treatment in thyroid examination. In clinical application, many reasons, such as large outpatient traffic, time-consuming training of sonographers, and uneven professional level of physicians, often cause irregularities during the ultrasonic examination, leading to misdiagnosis or missed diagnosis. In order to standardize the thyroid ultrasound examination process, this paper proposes using a deep learning method based on residual network to recognize the Thyroid Ultrasound Standard Plane (TUSP). At first, referring to multiple relevant guidelines, eight TUSP were determined with the advice of clinical ultrasound experts. A total of 5,500 TUSP images of 8 categories were collected with the approval and review of the Ethics Committee and the patient's informed consent. Then, after desensitizing and filling the images, the 18-layer residual network model (ResNet-18) was trained for TUSP image recognition, and five-fold cross-validation was performed. Finally, through indicators like accuracy rate, we compared the recognition effect of other mainstream deep con-volutional neural network models. Experimental results showed that ResNet-18 has the best recognition effect on TUSP images with an average accuracy rate of 91.07. The average macro precision, average macro recall, and average macro Fl-score are 91.39, 91.34, and 91.30, respectively. It proves that the deep learning method based on residual network can effectively recognize TUSP images, which is expected to standardize clinical thyroid ultrasound examination and reduce misdiagnosis and missed diagnosis.
机译:超声是甲状腺检查中诊断和治疗的关键方法之一。在临床应用中,门诊人流量大、超声医师培训耗时、医师专业水平参差不齐等多种原因,往往造成超声检查过程中的不规则性,导致误诊或漏诊。为了规范甲状腺超声检查流程,本文提出一种基于残差网络的深度学习方法对甲状腺超声标准平面(TUSP)进行识别。首先,参考多个相关指南,在临床超声专家的建议下确定了8个TUSP。经伦理委员会批准和审查,并征得患者知情同意,共收集8个类别的5,500张TUSP图像。然后,对图像进行脱敏和填充后,训练18层残差网络模型(ResNet-18)进行TUSP图像识别,并进行5次交叉验证。最后,通过准确率等指标,对比了其他主流深度卷积神经网络模型的识别效果。实验结果表明,ResNet-18对TUSP图像的识别效果最好,平均准确率为91.07%。平均宏观准确率、平均宏观召回率和平均宏观 Fl 得分分别为 91.39%、91.34% 和 91.30%。结果表明,基于残差网络的深度学习方法能够有效识别TUSP图像,有望规范临床甲状腺超声检查,减少误诊漏诊。

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