2020
DOI: 10.1158/1538-7445.am2020-2101
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Abstract 2101: Deep learning for automatic extraction of tumor site and histology from unstructured pathology reports

Abstract: Introduction: Much of the information in electronic medical records (EMRs) required for the practice of clinical oncology is contained in unstructured text. While natural language processing (NLP) has been used to extract information from EMR text, accuracy is suboptimal. In late 2018 a powerful new deep-learning NLP algorithm was published: Bidirectional Encoder Representations from Transformers (BERT). BERT set new accuracy records and for the first time achieved human-level performance on several NLP benchm… Show more

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“…Such tools are beginning to be available, such as to coders for comorbidity or to assist cancer registries with pathologic diagnoses. 30 An essential element of GO is capturing data from geriatric assessment. Several centers have integrated data from short geriatric screening tools.…”
Section: Data Capturementioning
confidence: 99%
“…Such tools are beginning to be available, such as to coders for comorbidity or to assist cancer registries with pathologic diagnoses. 30 An essential element of GO is capturing data from geriatric assessment. Several centers have integrated data from short geriatric screening tools.…”
Section: Data Capturementioning
confidence: 99%