A role for breast ultrasound Artificial Intelligence decision support in the evaluation of small invasive lobular carcinomas.

TitleA role for breast ultrasound Artificial Intelligence decision support in the evaluation of small invasive lobular carcinomas.
Publication TypeJournal Article
Year of Publication2023
AuthorsAmir T, Coffey K, Sevilimedu V, Fardanesh R, Mango VL
JournalClin Imaging
Volume101
Pagination77-85
Date Published2023 Sep
ISSN1873-4499
KeywordsArtificial Intelligence, Breast, Breast Neoplasms, Carcinoma, Lobular, Female, Humans, Retrospective Studies, Ultrasonography, Mammary
Abstract

OBJECTIVE: To evaluate the diagnostic performance of an Artificial Intelligence (AI) decision support (DS) system in the ultrasound (US) assessment of invasive lobular carcinoma (ILC) of the breast, a cancer that can demonstrate variable appearance and present insidiously.

METHODS: Retrospective review was performed of 75 patients with 83 ILC diagnosed by core biopsy or surgery between November 2017 and November 2019. ILC characteristics (size, shape, echogenicity) were recorded. AI DS output (lesion characteristics, likelihood of malignancy) was compared to radiologist assessment.

RESULTS: The AI DS system interpreted 100% of ILCs as suspicious or probably malignant (100% sensitivity, and 0% false negative rate). 99% (82/83) of detected ILCs were initially recommended for biopsy by the interpreting breast radiologist, and 100% (83/83) were recommended for biopsy after one additional ILC was identified on same-day repeat diagnostic ultrasound. For lesions in which the AI DS output was probably malignant, but assigned a BI-RADS 4 assessment by the radiologist, the median lesion size was 1 cm, compared with a median lesion size of 1.4 cm for those given a BI-RADS 5 assessment (p = 0.006). These results suggest that AI may offer more useful DS in smaller sub-centimeter lesions in which shape, margin status, or vascularity is more difficult to discern. Only 20% of patients with ILC were assigned a BI-RADS 5 assessment by the radiologist.

CONCLUSION: The AI DS accurately characterized 100% of detected ILC lesions as suspicious or probably malignant. AI DS may be helpful in increasing radiologist confidence when assessing ILC on ultrasound.

DOI10.1016/j.clinimag.2023.05.005
Alternate JournalClin Imaging
PubMed ID37311398

Weill Cornell Medicine
Department of Radiology
525 East 68th Street New York, NY 10065