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深度卷积神经网络在甲状腺疾病检测中的应用:超声与计算机断层扫描的多分类比较

Deep convolutional neural networks in thyroid disease detection: A multi-classification comparison by ultrasonography and computed tomography.

作者信息

Zhang Xinyu, Lee Vincent Cs, Rong Jia, Lee James C, Liu Feng

机构信息

Department of Data Science and AI, Faculty of IT, Monash University, Wellington Rd, Clayton, Melbourne, VIC 3800, Australia.

Department of Data Science and AI, Faculty of IT, Monash University, Wellington Rd, Clayton, Melbourne, VIC 3800, Australia.

出版信息

Comput Methods Programs Biomed. 2022 Jun;220:106823. doi: 10.1016/j.cmpb.2022.106823. Epub 2022 Apr 19.

Abstract

BACKGROUND AND OBJECTIVE

As one of the largest endocrine organs in the human body, the thyroid gland regulates daily metabolism. Early detection of thyroid disease leads to reduced mortality rates. The diagnosis of thyroid disease is usually made by radiologists and pathologists, which heavily relies on their experience and expertise. To mitigate human false-positive diagnostic rates, this paper proves that deep learning-driven techniques yield promising performance for automatic detection of thyroid diseases which offers clinicians assistance regarding diagnostic decision-making.

METHOD

This research study is the first of its kind, which adopts two pre-operative medical image modalities for multi-classifying thyroid disease types (i.e., normal, thyroiditis, cystic, multi-nodular goiter, adenoma, and cancer). Using the current state-of-the-art performing deep convolutional neural network (CNN) architecture, this study builds a thyroid disease diagnostic model for distinguishing among the disease types.

RESULTS

The model obtains unprecedented performance for both medical image sets, and it reaches an accuracy of 0.972 and 0.942 for ultrasound images and computed tomography (CT) scans correspondingly.

CONCLUSION

The experimental results illustrate that the selected CNN can be adapted to both image modalities, indicating the feasibility of the deep learning model and emphasizing its further applications in clinics.

摘要

背景与目的

甲状腺作为人体最大的内分泌器官之一,调节着日常新陈代谢。甲状腺疾病的早期检测可降低死亡率。甲状腺疾病的诊断通常由放射科医生和病理科医生进行,这在很大程度上依赖于他们的经验和专业知识。为了降低人为假阳性诊断率,本文证明深度学习驱动的技术在甲状腺疾病自动检测方面具有良好的性能,可为临床医生的诊断决策提供帮助。

方法

本研究首次采用两种术前医学图像模态对甲状腺疾病类型(即正常、甲状腺炎、囊肿、多结节性甲状腺肿、腺瘤和癌症)进行多分类。利用当前性能最先进的深度卷积神经网络(CNN)架构,本研究构建了一个用于区分疾病类型的甲状腺疾病诊断模型。

结果

该模型在两个医学图像集上均取得了前所未有的性能,在超声图像和计算机断层扫描(CT)上分别达到了0.972和0.942的准确率。

结论

实验结果表明,所选用的CNN可适用于两种图像模态,表明深度学习模型的可行性,并强调了其在临床中的进一步应用。

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