Machine-to-Machine Transfer Function in Deep Learning-Based Quantitative Ultrasound

Ufuk Soylu;Michael L. Oelze
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Abstract

A transfer function approach was recently demonstrated to mitigate data mismatches at the acquisition level for a single ultrasound scanner in deep learning (DL)-based quantitative ultrasound (QUS). As a natural progression, we further investigate the transfer function approach and introduce a machine-to-machine (M2M) transfer function, which possesses the ability to mitigate data mismatches at a machine level. This ability opens the door to unprecedented opportunities for reducing DL model development costs, enabling the combination of data from multiple sources or scanners, or facilitating the transfer of DL models between machines. We tested the proposed method utilizing a SonixOne machine and a Verasonics machine with an L9-4 array and an L11-5 array. We conducted two types of acquisitions to obtain calibration data: stable and free-hand, using two different calibration phantoms. Without the proposed method, the mean classification accuracy when applying a model on data acquired from one system to data acquired from another system was 50%, and the mean average area under the receiver operator characteristic (ROC) curve (AUC) was 0.405. With the proposed method, mean accuracy increased to 99%, and the AUC rose to the 0.999. Additional observations include the choice of the calibration phantom led to statistically significant changes in the performance of the proposed method. Moreover, robust implementation inspired by Wiener filtering provided an effective method for transferring the domain from one machine to another machine, and it can succeed using just a single calibration view. Lastly, the proposed method proved effective when a different transducer was used in the test machine.
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基于深度学习的定量超声中的机器对机器传递函数
在基于深度学习(DL)的定量超声(QUS)中,最近展示了一种传递函数方法,可以在采集层面上减少单个超声扫描仪的数据错配。作为一个自然的进步,我们进一步研究了传递函数方法,并引入了机器对机器(M2M)传递函数,它具有在机器层面缓解数据不匹配的能力。这种能力为降低 DL 模型开发成本、实现来自多个来源或扫描仪的数据组合或促进机器间 DL 模型的传输打开了一扇前所未有的大门。我们利用一台 SonixOne 机器和一台配备 L9-4 阵列和 L11-5 阵列的 Verasonics 机器对所提出的方法进行了测试。我们使用两种不同的校准模型进行了两种类型的采集以获得校准数据:稳定采集和自由采集。如果不采用建议的方法,将一个系统采集的数据模型应用于另一个系统采集的数据时,平均分类准确率为 50%,接收器运算特征曲线(ROC)下的平均面积(AUC)为 0.405。采用建议的方法后,平均准确率提高到 99%,AUC 上升到 0.999。其他观察结果包括,校准模型的选择导致了所提方法性能的显著统计学变化。此外,受维纳滤波启发的鲁棒性实施为将域从一台机器转移到另一台机器提供了有效的方法,而且只需使用单个校准视图即可成功。最后,当测试机器使用不同的传感器时,所提出的方法证明是有效的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
7.70
自引率
16.70%
发文量
583
审稿时长
4.5 months
期刊介绍: IEEE Transactions on Ultrasonics, Ferroelectrics and Frequency Control includes the theory, technology, materials, and applications relating to: (1) the generation, transmission, and detection of ultrasonic waves and related phenomena; (2) medical ultrasound, including hyperthermia, bioeffects, tissue characterization and imaging; (3) ferroelectric, piezoelectric, and piezomagnetic materials, including crystals, polycrystalline solids, films, polymers, and composites; (4) frequency control, timing and time distribution, including crystal oscillators and other means of classical frequency control, and atomic, molecular and laser frequency control standards. Areas of interest range from fundamental studies to the design and/or applications of devices and systems.
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