Artificial intelligence in breast cancer imaging: risk stratification, lesion detection and classification, treatment planning and prognosis—a narrative review

Author:

Cè Maurizio1ORCID,Caloro Elena1,Pellegrino Maria E.1,Basile Mariachiara1,Sorce Adriana1,Fazzini Deborah2,Oliva Giancarlo3,Cellina Michaela3

Affiliation:

1. Postgraduate School in Diagnostic and Interventional Radiology, University of Milan, 20122 Milan, Italy

2. Centro Diagnostico Italiano, 20147 Milan, Italy

3. Department of Radiology, ASST Fatebenefratelli Sacco, 20121 Milan, Italy

Abstract

The advent of artificial intelligence (AI) represents a real game changer in today’s landscape of breast cancer imaging. Several innovative AI-based tools have been developed and validated in recent years that promise to accelerate the goal of real patient-tailored management. Numerous studies confirm that proper integration of AI into existing clinical workflows could bring significant benefits to women, radiologists, and healthcare systems. The AI-based approach has proved particularly useful for developing new risk prediction models that integrate multi-data streams for planning individualized screening protocols. Furthermore, AI models could help radiologists in the pre-screening and lesion detection phase, increasing diagnostic accuracy, while reducing workload and complications related to overdiagnosis. Radiomics and radiogenomics approaches could extrapolate the so-called imaging signature of the tumor to plan a targeted treatment. The main challenges to the development of AI tools are the huge amounts of high-quality data required to train and validate these models and the need for a multidisciplinary team with solid machine-learning skills. The purpose of this article is to present a summary of the most important AI applications in breast cancer imaging, analyzing possible challenges and new perspectives related to the widespread adoption of these new tools.

Publisher

Open Exploration Publishing

Subject

General Earth and Planetary Sciences,General Environmental Science

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