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Comparison of AI-integrated pathways with human-AI interaction in population mammographic screening for breast cancer.

Helen M L FrazerCarlos A Peña-SolórzanoChun Fung KwokMichael S ElliottYuanhong ChenChong Wangnull nullJocelyn F LippeyJohn L HopperPeter BrotchieGustavo CarneiroDavis J McCarthy
Published in: Nature communications (2024)
Artificial intelligence (AI) readers of mammograms compare favourably to individual radiologists in detecting breast cancer. However, AI readers cannot perform at the level of multi-reader systems used by screening programs in countries such as Australia, Sweden, and the UK. Therefore, implementation demands human-AI collaboration. Here, we use a large, high-quality retrospective mammography dataset from Victoria, Australia to conduct detailed simulations of five potential AI-integrated screening pathways, and examine human-AI interaction effects to explore automation bias. Operating an AI reader as a second reader or as a high confidence filter improves current screening outcomes by 1.9-2.5% in sensitivity and up to 0.6% in specificity, achieving 4.6-10.9% reduction in assessments and 48-80.7% reduction in human reads. Automation bias degrades performance in multi-reader settings but improves it for single-readers. This study provides insight into feasible approaches for AI-integrated screening pathways and prospective studies necessary prior to clinical adoption.
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