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Review
. 2021 Nov-Dec;45(6):805-811.
doi: 10.1097/RCT.0000000000001183.

Machine Learning and Deep Learning in Oncologic Imaging: Potential Hurdles, Opportunities for Improvement, and Solutions-Abdominal Imagers' Perspective

Affiliations
Review

Machine Learning and Deep Learning in Oncologic Imaging: Potential Hurdles, Opportunities for Improvement, and Solutions-Abdominal Imagers' Perspective

Sireesha Yedururi et al. J Comput Assist Tomogr. 2021 Nov-Dec.

Abstract

The applications of machine learning in clinical radiology practice and in particular oncologic imaging practice are steadily evolving. However, there are several potential hurdles for widespread implementation of machine learning in oncologic imaging, including the lack of availability of a large number of annotated data sets and lack of use of consistent methodology and terminology for reporting the findings observed on the staging and follow-up imaging studies that apply to a wide spectrum of solid tumors. This short review discusses some potential hurdles to the implementation of machine learning in oncologic imaging, opportunities for improvement, and potential solutions that can facilitate robust machine learning from the vast number of radiology reports and annotations generated by the dictating radiologists.

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Conflict of interest statement

The authors declare no conflict of interest.

References

    1. Erickson BJ, Korfiatis P, Akkus Z, et al. Machine learning for medical imaging. Radiographics. 2017;37:505–515. doi:10.1148/rg.2017160130. - DOI
    1. Chassagnon G, Vakalopoulou M, Paragios N, et al. Artificial intelligence applications for thoracic imaging. Eur J Radiol. 2020;123:108774. doi:10.1016/j.ejrad.2019.108774. - DOI
    1. Kohli MD, Summers RM, Geis JR. Medical image data and datasets in the era of machine learning—whitepaper from the 2016 C-MIMI meeting dataset session. J Digit Imaging. 2017;30:392–399. doi:10.1007/s10278-017-9976-3. - DOI
    1. Willemink MJ, Koszek WA, Hardell C, et al. Preparing medical imaging data for machine learning. Radiology. 2020;295:4–15. doi:10.1148/radiol.2020192224. - DOI
    1. Folio LR, Machado LB, Dwyer AJ. Multimedia-enhanced radiology reports: concept, components, and challenges. Radiographics. 2018;38:462–482. doi:10.1148/rg.2017170047. - DOI

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