The National Cancer Institute and the Department of Energy strategic partnership applies advanced computing and predictive machine learning and deep learning models to automate the capture of information from unstructured clinical text for inclusion in cancer registries. Applications include extraction of key data elements from pathology reports, determination of whether a pathology or radiology report is related to cancer, extraction of relevant biomarker information, and identification of recurrence. With the growing complexity of cancer diagnosis and treatment, capturing essential information with purely manual methods is increasingly difficult. These new methods for applying advanced computational capabilities to automate data extraction represent an opportunity to close critical information gaps and create a nimble, flexible platform on which new information sources, such as genomics, can be added. This will ultimately provide a deeper understanding of the drivers of cancer and outcomes in the population and increase the timeliness of reporting. These advances will enable better understanding of how real-world patients are treated and the outcomes associated with those treatments in the context of our complex medical and social environment.
Keyphrases
- machine learning
- papillary thyroid
- deep learning
- squamous cell
- big data
- health information
- emergency department
- high throughput
- newly diagnosed
- type diabetes
- ejection fraction
- chronic kidney disease
- end stage renal disease
- young adults
- smoking cessation
- skeletal muscle
- insulin resistance
- data analysis
- social media
- molecularly imprinted
- mass spectrometry
- tandem mass spectrometry
- patient reported