Computer-implemented natural language understanding of medical reports
A natural language understanding method begins with a radiological report text containing clinical findings. Errors in the text are corrected by analyzing character- level optical transformation costs weighted by a frequency analysis over a corpus corresponding to the report text. For each word with...
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Zusammenfassung: | A natural language understanding method begins with a radiological report text containing clinical findings. Errors in the text are corrected by analyzing character- level optical transformation costs weighted by a frequency analysis over a corpus corresponding to the report text. For each word within the report text, a word embedding is obtained, character-level embeddings are determined, and the word and character-level embeddings are concatenated to a neural network which generates a plurality of NER tagged spans for the report text. A set of linked relationships are calculated for the NER tagged spans by generating masked text sequences based on the report text and determined pairs of potentially linked NER spans. A dense adjacency matrix is calculated based on attention weights obtained from providing the one or more masked text sequences to a Transformer deep learning network, and graph convolutions are then performed over the calculated dense adjacency matrix. |
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