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Enterprise AI Analysis: Artificial intelligence for breast cancer screening in mammography (AI-STREAM): preliminary analysis of a prospective multicenter cohort study

AI-STREAM: Preliminary Analysis

Artificial intelligence for breast cancer screening in mammography

Published in Nature Communications on March 06, 2025 by Yun-Woo Chang et al. (DOI)

This preliminary analysis of the AI-STREAM study, a prospective multicenter cohort, demonstrates that integrating AI-CAD significantly improves cancer detection rates (CDRs) for breast radiologists (BRs) in a single-read setting without increasing recall rates (RRs). The study found a 13.8% higher CDR for BRs using AI-CAD compared to those without, highlighting AI's potential to enhance diagnostic performance for early breast cancer detection.

Quantifiable Enterprise Impact

Key metrics from the AI-STREAM study showcase the tangible benefits of AI integration in mammography screening.

0 Increased CDR for BRs with AI-CAD
0 p-value for RR (BRs with/without AI-CAD)
0 Increased CDR for GRs with AI-CAD

Deep Analysis & Enterprise Applications

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Performance Metrics
Clinical Impact
Methodology & Workflow

Examine the core diagnostic accuracy improvements across different reading strategies.

Diagnostic Performance Comparison (CDR & RR)

Reading Strategy CDR (%) Recall Rate (%)
BRs without AI-CAD5.014.48
BRs with AI-CAD5.704.53
AI Standalone5.216.25
GRs without AI-CAD3.876.31
GRs with AI-CAD4.896.89

Conclusion: Breast Radiologists using AI-CAD showed a significant increase in CDR (5.70% vs 5.01%) without a significant change in RR. General Radiologists saw a larger CDR increase but also an increase in RR. Standalone AI had comparable CDRs to BRs but with significantly higher RRs.

Understand how AI-CAD influences the detection of specific cancer types and characteristics.

+13.3% Increased detection of node-negative cancers with AI-CAD (p=0.001)
+13.3% Increased detection of small-sized cancers (<20mm) with AI-CAD (p=0.002)

AI-Assisted DCIS Detection Example

Figure 2 illustrates a case where a Breast Radiologist initially interpreted a mammogram as non-recall (malignant scale 2) without AI. Upon automatic presentation of AI-CAD results, which marked an abnormal score of 75%, the BR re-evaluated the mammography. With AI-CAD assistance, the BR then interpreted focal asymmetry as malignant scale 4, leading to a recall decision. Subsequent ultrasonography and guided biopsy confirmed Ductal Carcinoma In Situ (DCIS) with microinvasion, highlighting AI-CAD's role in upgrading initial interpretations and enabling earlier diagnosis.

Key Takeaway: AI-CAD can act as a crucial 'second look' for radiologists, prompting re-evaluation of subtle findings and improving the detection of early-stage cancers like DCIS, which might otherwise be missed during initial interpretation.

Explore the study's design and how AI-CAD integrates into existing screening workflows.

Enterprise Process Flow

25,008 women screened (2021-2022)
Exclusions (parenchymal change, consent withdrawal, data errors)
24,543 participants included
BRs read without AI-CAD (Test 1)
BRs read with AI-CAD (Test 2) / GRs read with/without AI-CAD (Exploratory)
AI Standalone assessment
Recall/Non-Recall Decision
Diagnostic Work-up (imaging, biopsy)
Pathologically confirmed cancer (1-year follow-up)
Final evaluation for interval cancers (2-year follow-up linkage to Registry)

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Estimated Annual Savings $0
Annual Hours Reclaimed 0

AI Implementation Roadmap

A phased approach to integrate AI into your breast cancer screening program, ensuring a smooth transition and maximizing diagnostic benefits.

Phase 1: Pilot & Integration

Conduct a small-scale pilot with AI-CAD in a single-read setting. Integrate AI-CAD into existing mammography workstations and train radiologists on its use and interpretation guidance. Establish data collection protocols for performance monitoring.

Phase 2: Expanded Deployment & Monitoring

Roll out AI-CAD to additional screening centers. Continuously monitor CDRs, RRs, and interval cancer rates. Implement regular calibration and quality assurance processes for AI thresholds to maintain optimal operating points.

Phase 3: Workflow Optimization & Advanced AI

Evaluate and refine screening workflows based on AI-CAD insights, potentially incorporating AI for triage or as an independent reader for low-risk cases. Explore integration with DBT and other imaging modalities for enhanced diagnostic accuracy.

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