AI Article Synopsis

  • Breast ultrasound helps doctors check for problems in the breast, but it has some downsides like not being super specific and taking a long time to look at all the images.
  • There are four AI tools that have been approved to help make this process faster and more accurate for doctors who might not specialize in breast ultrasound.
  • In the future, these AI tools could be used in different ways, but there are still some challenges like needing better training data and finding ways to improve how the images are taken.

Article Abstract

Breast ultrasound is used in a wide variety of clinical scenarios, including both diagnostic and screening applications. Limitations of ultrasound, however, include its low specificity and, for automated breast ultrasound screening, the time necessary to review whole-breast ultrasound images. As of this writing, four AI tools that are approved or cleared by the FDA address these limitations. Current tools, which are intended to provide decision support for lesion classification and/or detection, have been shown to increase specificity among nonspecialists and to decrease interpretation times. Potential future applications include triage of patients with palpable masses in low-resource settings, preoperative prediction of axillary lymph node metastasis, and preoperative prediction of neoadjuvant chemotherapy response. Challenges in the development and clinical deployment of AI for ultrasound include the limited availability of curated training datasets compared with mammography, the high variability in ultrasound image acquisition due to equipment- and operator-related factors (which may limit algorithm generalizability), and the lack of postimplementation evaluation studies. Furthermore, current AI tools for lesion classification were developed based on 2D data, but diagnostic accuracy could potentially be improved if multimodal ultrasound data were used, such as color Doppler, elastography, cine clips, and 3D imaging.

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Source
http://dx.doi.org/10.2214/AJR.23.30645DOI Listing

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