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Accepted for/Published in: JMIR Formative Research

Date Submitted: Sep 26, 2024
Date Accepted: May 16, 2025

The final, peer-reviewed published version of this preprint can be found here:

Impact of AI on Breast Cancer Detection Rates in Mammography by Radiologists of Varying Experience Levels in Singapore: Preliminary Comparative Study

Goh SSN, Du H, Tan LY, Seah EZY, Lau WK, Ng A, Lim DSW, Ong HY, Lau S, Tan YL, Khaw Ms, Yap CW, Hui KYD, Tan WC, Abdul HSRB, Khoo VMH, Ge S, Pool FJ, Choo YS, Wang Y, Jagmohan P, Gopinathan PP, Hartman M, Feng ML

Impact of AI on Breast Cancer Detection Rates in Mammography by Radiologists of Varying Experience Levels in Singapore: Preliminary Comparative Study

JMIR Form Res 2025;9:e66931

DOI: 10.2196/66931

PMID: 41284978

PMCID: 12643397

Impact of Artificial Intelligence on Breast Cancer Detection Rates in Mammography by Radiologists of Varying Experience Levels in Singapore: A Preliminary Comparative Study

  • Serene Si Ning Goh; 
  • Hao Du; 
  • Loon Ying Tan; 
  • Edward Zhen Yu Seah; 
  • Wai Keat Lau; 
  • Alvin Ng; 
  • Desmond Shi Wei Lim; 
  • Han Yang Ong; 
  • Samuel Lau; 
  • Yi Liang Tan; 
  • Mun sze Khaw; 
  • Chee Woei Yap; 
  • Kei Yiu Douglas Hui; 
  • Wei Chuan Tan; 
  • Haziz Siti Rozana Binti Abdul; 
  • Vanessa Mei Hui Khoo; 
  • Shuliang Ge; 
  • Felicity Jane Pool; 
  • Yun Song Choo; 
  • Yi Wang; 
  • Pooja Jagmohan; 
  • Premilla Pillay Gopinathan; 
  • Mikael Hartman; 
  • Meng Ling Feng

ABSTRACT

Background:

Breast cancer is the most common cancer in women globally and mammograms are a primary method for diagnosing it. The challenge of interpreting mammograms is exacerbated by shortage of breast radiologists and lengthy training required.

Objective:

This study aims to evaluate the performance of AI assistance in mammographic reading.

Methods:

Methods:

A multi-reader multi-case study was conducted at the National University Hospital, Singapore from May to August 2023. De-identified mammograms of 500 women were included. Seventeen radiologists read mammograms for six weeks without and with AI assistance, with one-month washout period in between. FxMammo AI software provided heatmaps over areas of suspicion and malignancy risk scores. Diagnostic performance between resident and consultant radiologists were compared with and without AI assistance. Cost analysis was performed.

Results:

Of the 500 women included, 250 had breast cancer whilst 250 had normal or benign breast lesions. Majority had dense breasts (67·4%). The diagnostic performance of AI was significantly higher than consultant radiologists with AUROC of 0·93 (95% CI 0·91-0·95) versus 0·90 (95% CI 0·89-0·92), (p=0·049). With AI assistance, both junior and senior residents showed improvement in diagnostic performance, AUROC from 0·84 to 0·86, p=0·003), and AUROC 0·85 to 0·88, p<0·001) respectively. With AI assistance, AUROC of senior residents was comparable to consultant radiologists with difference in AUROC of 0·02 (95% CI 0·00 – 0·039, p=0·051). Time savings were observed with potential cost savings of SGD$1,361,092 – SGD$1,697,118 per annum.

Conclusions:

Conclusion: This study outlines a cost-saving workflow that utilizes AI assistance to improve diagnostic performance and efficiency of resident radiologists. Clinical Trial: na


 Citation

Please cite as:

Goh SSN, Du H, Tan LY, Seah EZY, Lau WK, Ng A, Lim DSW, Ong HY, Lau S, Tan YL, Khaw Ms, Yap CW, Hui KYD, Tan WC, Abdul HSRB, Khoo VMH, Ge S, Pool FJ, Choo YS, Wang Y, Jagmohan P, Gopinathan PP, Hartman M, Feng ML

Impact of AI on Breast Cancer Detection Rates in Mammography by Radiologists of Varying Experience Levels in Singapore: Preliminary Comparative Study

JMIR Form Res 2025;9:e66931

DOI: 10.2196/66931

PMID: 41284978

PMCID: 12643397

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