2021
DOI: 10.1007/s00330-021-07787-z
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An A.I. classifier derived from 4D radiomics of dynamic contrast-enhanced breast MRI data: potential to avoid unnecessary breast biopsies

Abstract: Objectives Due to its high sensitivity, DCE MRI of the breast (bMRI) is increasingly used for both screening and assessment purposes. The high number of detected lesions poses a significant logistic challenge in clinical practice. The aim was to evaluate a temporally and spatially resolved (4D) radiomics approach to distinguish benign from malignant enhancing breast lesions and thereby avoid unnecessary biopsies. Methods This retrospective study included c… Show more

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Cited by 22 publications
(19 citation statements)
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References 41 publications
(74 reference statements)
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“…Thus, the application of AI in multiparametric breast MRI may improve its specificity and thereby reduce the number of unnecessary breast biopsies. A similar conclusion was achieved with a DCE-MRI radiomics AI 4D classifier which could avoid up to 36.2% of unnecessary biopsies [56]. This is particularly important in the setting of challenging lesions such as sub-centimeter lesions, non-mass like lesions, or those pertaining to high-risk patient groups.…”
Section: Ai-enhanced Mrisupporting
confidence: 59%
“…Thus, the application of AI in multiparametric breast MRI may improve its specificity and thereby reduce the number of unnecessary breast biopsies. A similar conclusion was achieved with a DCE-MRI radiomics AI 4D classifier which could avoid up to 36.2% of unnecessary biopsies [56]. This is particularly important in the setting of challenging lesions such as sub-centimeter lesions, non-mass like lesions, or those pertaining to high-risk patient groups.…”
Section: Ai-enhanced Mrisupporting
confidence: 59%
“…Improving the positive predictive value is of course desirable as it will result in fewer benign biopsies and fewer follow-up imaging recommendations. The study by Pötsch et al in this issue of European Radiology [8] seeks to increase the positive predictive value of MRI using a neural network classifier of radiomic features.…”
mentioning
confidence: 99%
“…Radiomics studies in general follow a methodology of (1) image acquisition, (2) image segmentation, (3) feature extraction, (4) feature selection, and (5) predictive modeling [9]. In the study by Pötsch et al [8], the authors extracted 86 radiomic features including the enhancement characteristics of the entire volume of a breast lesion over several post-contrast time-points. The authors then trained an artificial intelligence (AI) classifier to predict benignity or malignancy based on the radiomic features.…”
mentioning
confidence: 99%
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