论文标题
关于人工智能在甲状腺癌超声诊断中的作用的系统评价:过去,现在和未来
A systematic review on the role of artificial intelligence in sonographic diagnosis of thyroid cancer: Past, present and future
论文作者
论文摘要
甲状腺癌在全球范围内都是常见的,近年来北美的患病率迅速增加。尽管大多数通过体格检查出现明显结节的患者,但通过超声检查检测到大量中小型结节。然后通过细针吸入将可疑结节进行活检。由于活检是侵入性的,有时甚至没有定论,因此各种研究小组试图开发计算机辅助诊断系统。沿这些线路的早期方法依赖于放射科医生手动识别的临床相关特征。随着人工智能(AI)的最新成功,正在开发各种新方法以自动识别甲状腺超声波。在本文中,我们对甲状腺癌的超声诊断中的AI应用进行了系统的综述。这篇综述遵循基于方法论的分类,可用于甲状腺癌诊断的不同技术。本文中包含50多篇论文,我们反思了甲状腺恶性肿瘤的超声诊断领域的趋势和挑战,以及计算机辅助诊断的潜力,以增加超声应用对甲状腺癌诊断未来的影响。机器学习将继续在未来甲状腺癌诊断框架的发展中发挥基本作用。
Thyroid cancer is common worldwide, with a rapid increase in prevalence across North America in recent years. While most patients present with palpable nodules through physical examination, a large number of small and medium-sized nodules are detected by ultrasound examination. Suspicious nodules are then sent for biopsy through fine needle aspiration. Since biopsies are invasive and sometimes inconclusive, various research groups have tried to develop computer-aided diagnosis systems. Earlier approaches along these lines relied on clinically relevant features that were manually identified by radiologists. With the recent success of artificial intelligence (AI), various new methods are being developed to identify these features in thyroid ultrasound automatically. In this paper, we present a systematic review of state-of-the-art on AI application in sonographic diagnosis of thyroid cancer. This review follows a methodology-based classification of the different techniques available for thyroid cancer diagnosis. With more than 50 papers included in this review, we reflect on the trends and challenges of the field of sonographic diagnosis of thyroid malignancies and potential of computer-aided diagnosis to increase the impact of ultrasound applications on the future of thyroid cancer diagnosis. Machine learning will continue to play a fundamental role in the development of future thyroid cancer diagnosis frameworks.