2020
DOI: 10.1002/jmri.27332
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AI‐Enhanced Diagnosis of Challenging Lesions in Breast MRI: A Methodology and Application Primer

Abstract: Computer‐aided diagnosis (CAD) systems have become an important tool in the assessment of breast tumors with magnetic resonance imaging (MRI). CAD systems can be used for the detection and diagnosis of breast tumors as a “second opinion” review complementing the radiologist's review. CAD systems have many common parts, such as image preprocessing, tumor feature extraction, and data classification that are mostly based on machine‐learning (ML) techniques. In this review article, we describe applications of ML‐b… Show more

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Cited by 30 publications
(24 citation statements)
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“…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. AI has shown potential to improve the diagnosis of these type of lesions in breast MRI [57]. For example, Lo Gullo et al [58] evaluated sub-centimeter enhancing lesions in BRCA mutation carriers and showed that radiomics/ML improves diagnostic accuracy and could be used as an adjunct to spare unnecessary biopsies for benign-appearing small breast masses in this population (Figs.…”
Section: Ai-enhanced Mrimentioning
confidence: 99%
“…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. AI has shown potential to improve the diagnosis of these type of lesions in breast MRI [57]. For example, Lo Gullo et al [58] evaluated sub-centimeter enhancing lesions in BRCA mutation carriers and showed that radiomics/ML improves diagnostic accuracy and could be used as an adjunct to spare unnecessary biopsies for benign-appearing small breast masses in this population (Figs.…”
Section: Ai-enhanced Mrimentioning
confidence: 99%
“…A maximum of 5 features were selected to avoid over tting. Diagnostic models were then developed in MATLAB using a ne gaussian support vector machine (SVM), one of the most employed ML classi ers in medical imaging [23] and a 5-fold cross-validation. Data were initially standardized to prevent any particular dependence on an individual parameter.…”
Section: Radiomics Analysis and Model Developmentmentioning
confidence: 99%
“…Both modalities play a role primarily in oncological imaging. CADe techniques are used in the detection of pulmonary masses [5], prostate malignancies [35], breast cancer [3] and malignant brain tumours [36]. However, they have not yet found their way into ophthalmologic radiology.…”
Section: Optimising the Clinical Workflowmentioning
confidence: 99%
“…The term "machine learning" is a generic term for computer programmes that "learn" from sample data and can automatically improve through these "successes". On the one hand, this allows the identification of complex pathologic patterns, such as certain tumours [3]. However, it is also possible to quantify these changes.…”
Section: Introductionmentioning
confidence: 99%