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Open AccessJournal ArticleDOI

Machine learning for medical ultrasound: status, methods, and future opportunities.

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TLDR
Leading machine learning approaches and research directions in US are reviewed, with an emphasis on recent ML advances, and an outlook on future opportunities for ML techniques to further improve clinical workflow and US-based disease diagnosis and characterization is presented.
Abstract
Ultrasound (US) imaging is the most commonly performed cross-sectional diagnostic imaging modality in the practice of medicine. It is low-cost, non-ionizing, portable, and capable of real-time image acquisition and display. US is a rapidly evolving technology with significant challenges and opportunities. Challenges include high inter- and intra-operator variability and limited image quality control. Tremendous opportunities have arisen in the last decade as a result of exponential growth in available computational power coupled with progressive miniaturization of US devices. As US devices become smaller, enhanced computational capability can contribute significantly to decreasing variability through advanced image processing. In this paper, we review leading machine learning (ML) approaches and research directions in US, with an emphasis on recent ML advances. We also present our outlook on future opportunities for ML techniques to further improve clinical workflow and US-based disease diagnosis and characterization.

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References
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Journal ArticleDOI

Image Segmentation and Machine Learning for Detection of Abdominal Free Fluid in Focused Assessment With Sonography for Trauma Examinations: A Pilot Study.

TL;DR: The findings suggest that computerized detection of free fluid on abdominal ultrasound images may be sensitive and specific enough to aid clinicians in their interpretation of a FAST examination.
Journal ArticleDOI

Application of Artificial Neural Network Models in Segmentation and Classification of Nodules in Breast Ultrasound Digital Images

TL;DR: The proposed classifier proved to be an important tool for the diagnosis in breast ultrasound, both to simulators and to clinical trials, resulting in an accuracy of 90% and 81%, respectively.
Journal ArticleDOI

Reliability of Shear-Wave Elastography Estimates of the Young Modulus of Tissue in Follicular Thyroid Neoplasms

TL;DR: ROI placement is a reliable method for estimating the Young modulus of tissue in follicular thyroid nodules, and intra- and interrater reliability was reported using the Guidelines for Reporting Reliability and Agreement Studies.
Book ChapterDOI

Registration of CT and Ultrasound Images of the Spine with Neural Network and Orientation Code Mutual Information

TL;DR: A novel 2D US and 3D CT registration method is proposed, in which convolutional neural network (CNN) classification of US images is reported for the first time to achieve rough image registration, by combining automatic rough registration with fine registration refinement.
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