Multi-institutional development and testing of attention-enhanced deep learning segmentation of thyroid nodules on ultrasound.

IF 2.3 3区 医学 Q3 ENGINEERING, BIOMEDICAL
Joseph L Cozzi, Hui Li, Jordan D Fuhrman, Li Lan, Jelani Williams, Brendan Finnerty, Thomas J Fahey, Abhinay Tumati, Joshua Genender, Xavier M Keutgen, Maryellen L Giger
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引用次数: 0

Abstract

Purpose: Thyroid nodules are common, and ultrasound-based risk stratification using ACR's TIRADS classification is a key step in predicting nodule pathology. Determining thyroid nodule contours is necessary for the calculation of TIRADS scores and can also be used in the development of machine learning nodule diagnosis systems. This paper presents the development, validation, and multi-institutional independent testing of a machine learning system for the automatic segmentation of thyroid nodules on ultrasound.

Methods: The datasets, containing a total of 1595 thyroid ultrasound images from 520 patients with thyroid nodules, were retrospectively collected under IRB approval from University of Chicago Medicine (UCM) and Weill Cornell Medical Center (WCMC). Nodules were manually contoured by a team of UCM and WCMC physicians for ground truth. An AttU-Net, a U-Net architecture with additional attention weighting functions, was trained for the segmentations. The algorithm was validated through fivefold cross-validation by nodule and was tested on two independent test sets: one from UCM and one from WCMC. Dice similarity coefficient (DSC) and percent Hausdorff distance (%HD), Hausdorff distance reported as a percent of the nodule's effective diameter, served as the performance metrics.

Results: On multi-institutional independent testing, the AttU-Net yielded average DSCs (std. deviation) of 0.915 (0.04) and 0.922 (0.03) and %HDs (std. deviation) of 12.9% (4.6) and 13.4% (6.3) on the UCM and WCMC test sets, respectively. Similarity testing showed the algorithm's performance on the two institutional test sets was equivalent up to margins of Δ DSC 0.013 and Δ %HD 1.73%.

Conclusions: This work presents a robust automatic thyroid nodule segmentation algorithm that could be implemented for risk stratification systems. Future work is merited to incorporate this segmentation method within an automatic thyroid classification system.

多机构开发和测试的注意增强深度学习分割甲状腺结节超声。
目的:甲状腺结节是常见的,使用ACR的TIRADS分级进行基于超声的风险分层是预测结节病理的关键步骤。确定甲状腺结节轮廓对于TIRADS评分的计算是必要的,也可用于机器学习结节诊断系统的开发。本文介绍了一种用于甲状腺结节超声自动分割的机器学习系统的开发、验证和多机构独立测试。方法:经芝加哥大学医学院(UCM)和威尔康奈尔医学中心(WCMC)的IRB批准,回顾性收集520例甲状腺结节患者的1595张甲状腺超声图像。由UCM和WCMC医生组成的团队手动绘制结节轮廓,以获得真实的基础。我们训练了一个带有额外注意力加权函数的U-Net架构来进行分割。通过五重交叉验证验证了该算法,并在两个独立的测试集上进行了测试:一个来自UCM,一个来自WCMC。骰子相似系数(DSC)和百分比豪斯多夫距离(%HD),豪斯多夫距离报告为结节有效直径的百分比,作为性能指标。结果:在多机构独立测试中,AttU-Net在UCM和WCMC测试集上的平均dsc(标准偏差)分别为0.915(0.04)和0.922 (0.03),% hd(标准偏差)分别为12.9%(4.6)和13.4%(6.3)。相似度测试表明,该算法在两个机构测试集上的性能相当,直到Δ DSC≤0.013和Δ %HD≤1.73%的边际。结论:这项工作提出了一种鲁棒的甲状腺结节自动分割算法,可用于风险分层系统。未来的工作值得将这种分割方法纳入自动甲状腺分类系统。
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来源期刊
International Journal of Computer Assisted Radiology and Surgery
International Journal of Computer Assisted Radiology and Surgery ENGINEERING, BIOMEDICAL-RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING
CiteScore
5.90
自引率
6.70%
发文量
243
审稿时长
6-12 weeks
期刊介绍: The International Journal for Computer Assisted Radiology and Surgery (IJCARS) is a peer-reviewed journal that provides a platform for closing the gap between medical and technical disciplines, and encourages interdisciplinary research and development activities in an international environment.
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