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Construction of a Standardized Benchmark Evaluation System for Intelligent Breast Ultrasound Image Interpretation and Systematic Performance Assessment of Multimodal Artificial Intelligence Models Based on ACR BI-RADS v2025 Criteria

Status: Recruiting
Location: See location...
Intervention Type: Diagnostic test
Study Type: Observational
SUMMARY

This single-center, retrospective, observational study aims to construct a standardized benchmark evaluation system for intelligent breast ultrasound image interpretation and to systematically assess the diagnostic performance of current mainstream multimodal artificial intelligence (AI) models. De-identified B-mode breast ultrasound images with confirmed pathological diagnoses will be retrospectively collected from the institutional archive (2018-2025) and supplemented with images from published open-access datasets. Expert radiologists with varying experience levels will independently annotate all images according to the American College of Radiology (ACR) Breast Imaging Reporting and Data System (BI-RADS) v2025 criteria, including glandular tissue composition, lesion characterization (mass vs. non-mass lesion), morphological descriptors, and final BI-RADS classification. Baseline deep learning models (CNN-based ResNet-50 and Transformer-based USFM) will be trained to establish performance baselines and to stratify cases by diagnostic difficulty through cross-architecture consensus. Multiple multimodal large language models (MLLMs), including both general-purpose and medical-domain models, will then be evaluated via standardized API calls using BI-RADS-guided chain-of-thought prompts at temperature 0 for reproducibility. Primary endpoints include BI-RADS classification accuracy and diagnostic AUC for benign-malignant differentiation. Model robustness and safety will be assessed through out-of-distribution rejection testing, temperature-stability experiments, and thinking-mode ablation studies. This study adheres to the FLAIR and TRIPOD-LLM reporting guidelines.

Eligibility
Participation Requirements
Sex: Female
Minimum Age: 18
Maximum Age: 75
Healthy Volunteers: t
View:

• B-mode breast ultrasound grayscale images from the institutional PACS database or from published open-access breast ultrasound datasets with documented original institutional ethics approval

• Image quality adequate for clinical diagnosis with clear visualization of the region of interest

• Pathological diagnosis confirmed (for benign and malignant lesion groups), or normal breast status confirmed by a senior radiologist with \>15 years of breast ultrasound experience (for the normal group)

• Complete de-identification with removal of all personally identifiable information

Locations
Other Locations
China
Peking Union Medical College Hospital
RECRUITING
Beijing
Contact Information
Primary
Qingli Zhu, MD
zqlpumch@126.com
+86 13621376699
Backup
Yinglan Wu, MD
wuylan7@gmail.com
+86 15626121076
Time Frame
Start Date: 2026-03-12
Estimated Completion Date: 2027-03-01
Participants
Target number of participants: 1380
Treatments
Normal Breast
Breast ultrasound images showing normal glandular tissue across different tissue composition types, with no focal lesions identified. Confirmed by senior radiologist review.
Benign Lesion
Breast ultrasound images containing pathologically confirmed benign lesions (BI-RADS 2-4B), including fibroadenoma, cyst, lipoma, sclerosing adenosis, intraductal papilloma, and selected non-mass lesions (NML).
Malignant Lesion
Breast ultrasound images containing pathologically confirmed malignant lesions (BI-RADS 3-5), including invasive ductal carcinoma, invasive lobular carcinoma, mucinous carcinoma, and selected non-mass lesions (NML).
Related Therapeutic Areas
Sponsors
Collaborators: Chinese Academy of Medical Sciences
Leads: Peking Union Medical College Hospital

This content was sourced from clinicaltrials.gov