| Literature DB >> 33772149 |
Sarah E Hickman1, Gabrielle C Baxter1, Fiona J Gilbert2,3.
Abstract
Retrospective studies have shown artificial intelligence (AI) algorithms can match as well as enhance radiologist's performance in breast screening. These tools can facilitate tasks not feasible by humans such as the automatic triage of patients and prediction of treatment outcomes. Breast imaging faces growing pressure with the exponential growth in imaging requests and a predicted reduced workforce to provide reports. Solutions to alleviate these pressures are being sought with an increasing interest in the adoption of AI to improve workflow efficiency as well as patient outcomes. Vast quantities of data are needed to test and monitor AI algorithms before and after their incorporation into healthcare systems. Availability of data is currently limited, although strategies are being devised to harness the data that already exists within healthcare institutions. Challenges that underpin the realisation of AI into everyday breast imaging cannot be underestimated and the provision of guidance from national agencies to tackle these challenges, taking into account views from a societal, industrial and healthcare prospective is essential. This review provides background on the evaluation and use of AI in breast imaging in addition to exploring key ethical, technical, legal and regulatory challenges that have been identified so far.Entities:
Mesh:
Year: 2021 PMID: 33772149 PMCID: PMC8257639 DOI: 10.1038/s41416-021-01333-w
Source DB: PubMed Journal: Br J Cancer ISSN: 0007-0920 Impact factor: 7.640
Fig. 1AI applications to breast imaging.
The central part of the figure shows the relationship between commonly used terms in the field of AI. The arrows point to the two categories, “Broad AI” and “Narrow AI”, where AI is applied in breast imaging. Examples of these applications are outlined in the lists under each heading.
Datasets publicly and privately available for breast imaging.
| Dataset | Country | Year of studies | Modality | Number of cases | Number of images |
|---|---|---|---|---|---|
| The Mammographic Image Analysis Society Digital Mammogram Database (MIAS)[ | UK | 1994 | SF-MG | 161 | 322 |
| Curated Breast Imaging Subset of the Digital Database for Screening Mammography (CBIS-DDSM)[ | USA | 1999 (updated 2016) | SF-MG | 1566 | 10,239 |
| Investigation of Serial Studies to Predict Your Therapeutic Response with Imaging and Molecular Analysis (ISPY1 (ACRIN 6657))[ | USA | 2002–2006 | MRI | 222 | 386,528 |
| InBreast[ | Portugal | 2008–2010 | FFDM | 115 | 410 |
| Cohort of Screen-Aged Women (CSAW)[ | Sweden | 2008–2015 | FFDM | 499,807 | >2,000,000 |
| The OPTIMAM Mammography Image Database (OMI-DB)[ | UK | 2010–2019 | FFDM | 151,403 | >2,000,000 |
| New York University Breast Cancer Screening Dataset (NYU BCSD v1.0)[ | USA | 2010–2017 | FFDM | 141,473 | 1,001,093 |
| Breast Cancer Digital Repository (BCDR)[ | Portugal | NA | SF-MG FFDM | 1010 724 | 3703 3612 |
| The Cancer Genome Atlas Breast Invasive Carcinoma (TCGA-BRCA)[ | USA | NA | MRI MG | 139 | 230,167 |
FFDM full-field digital mammography, MG mammography, MRI magnetic resonance imaging, NA not available, SF screen film.
Prospective studies for the use of AI in breast imaging.
| AI | Country | Imaging modality | Stage of care pathway | Estimated completion | Trial ID (ClinicalTrials.gov) |
|---|---|---|---|---|---|
Samsung (Seoul, South Korea) S-Detect™ | China | Ultrasound | Diagnosis | February 2020 | NCT03887598 |
| Unknown | China | Mammography | Detection & diagnosis | November 2020 | NCT03708978 |
| Unknown | Russia | Mammography (+ others) | Detection | December 2020 | NCT04489992 |
| Unknown | China | ABUS | Screening | August 2025 | NCT04527510 |
| Kheiron (London, UK) Mia™ | UK | Mammography | Screening | Unknown | Unknown—part of the AI Award[ |
ABUS automated breast ultrasound.
Reporting criteria adapted for AI studies.
| Publication date | Application | Number of items | Link | |
|---|---|---|---|---|
| CONSORT-AI[ | 2020 | Randomised trials | 25 original 14 new | |
| SPIRIT-AI[ | 2020 | Clinical trial protocols | 51 original 15 new | |
| CLAIM[ | 2020 | AI studies in radiology | 42 | |
| TRIPOD-ML[ | Pending | Clinical prediction model evaluation | – | |
| STARD-AI[ | Pending | Diagnostic accuracy studies | – | – |