| Literature DB >> 34809862 |
Navid Hasani1, Faraz Farhadi2, Michael A Morris3, Moozhan Nikpanah2, Arman Rhamim4, Yanji Xu5, Anne Pariser5, Michael T Collins6, Ronald M Summers2, Elizabeth Jones2, Eliot Siegel7, Babak Saboury8.
Abstract
Almost 1 in 10 individuals can suffer from one of many rare diseases (RDs). The average time to diagnosis for an RD patient is as high as 7 years. Artificial intelligence (AI)-based positron emission tomography (PET), if implemented appropriately, has tremendous potential to advance the diagnosis of RDs. Patient advocacy groups must be active stakeholders in the AI ecosystem if we are to avoid potential issues related to the implementation of AI into health care. AI medical devices must not only be RD-aware at each stage of their conceptualization and life cycle but also should be trained on diverse and augmented datasets representative of the end-user population including RDs. Inability to do so leads to potential harm and unsustainable deployment of AI-based medical devices (AIMDs) into clinical practice.Entities:
Keywords: Artificial intelligence; Medical imaging; Positron emission tomography; Rare diseases
Mesh:
Year: 2022 PMID: 34809862 PMCID: PMC8764708 DOI: 10.1016/j.cpet.2021.09.009
Source DB: PubMed Journal: PET Clin ISSN: 1556-8598