![]() ![]() With rare exceptions – even in medical imaging – there are relatively few applications of AI directly used in widespread clinical care today. As a result, the overwhelming majority of successful healthcare applications currently support back-office functions ranging from payor operations, automated prior authorization processing, and management of supply chains and cybersecurity threats. Even when algorithms applicable to clinical care are developed, their quality tends to be highly variable, with many failing to generalize across settings due to limited technical, statistical, and conceptual reproducibility 4. The proliferation of clinical free-text fields combined with a lack of general interoperability between health IT systems contribute to a paucity of structured, machine-readable data required for the development of deep learning algorithms. While these technologies have made significant impacts across many industries, applications in clinical care remain limited. ![]() ![]() images, text, audio) has enabled widespread adoption of applications such as automated tagging of objects and users in photographs 1, near-human level text translation 2, automated scanning in bank ATMs, and even the generation of image captions 3. The ability to build highly accurate classification models rapidly and regardless of input data type (e.g. Over the past decade, advances in neural networks, deep learning, and artificial intelligence (AI) have transformed the way we approach a wide range of tasks and industries ranging from manufacturing and finance to consumer products. ![]()
0 Comments
Leave a Reply. |
AuthorWrite something about yourself. No need to be fancy, just an overview. ArchivesCategories |