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Dave's PCF WIP: Paragraphs

15036

Application APPARATUS, SYSTEM, AND METHOD FOR GENERATING PATIENT-SPECIFIC IMPLANTS AND/OR INSTRUMENTATION FOR OSTEOTOMIES
Matter Number PER-12 Reference Case 1 PER-12
Created 1/6/24, 10:03 PM Modified 1/6/24, 10:03 PM
Application Number
Paragraph Number

196

Content

Deep learning algorithms can be applied to unsupervised learning tasks. This is an important benefit because unlabeled data can more abundant than labeled data. For example, in a clinical environment, a deep learning system with a multi-layered ANN can initially be trained using a classification of outcomes in a supervised fashion. As the data grow, the system can optionally learn in an unsupervised manner, for example by utilizing pattern recognition across large clinical datasets, which can include pre-operative, intra-operative and post-operative data. (See US Patent 11,278,413 Para. 76-79).

Notes

Added by DJM Jan 2024