3.X Reference Docs

  1. User Guide 
  2. Human annotation with Protege
  3. Machine Annotations and Data Dictionary


NEWS

Scrubber now uses Apache cTakes to provide parallel concept extraction during de-idenification. Apache cTAKES graciously invited us to port the Scrubber de-identification pipeline to the Apache hosted codebase. The maintenance version of the 2.X will remain available as will the 3.0 release candidate. The publication describing this work has been accepted, this site will be updated shortly to reflect the described methods and results.

McMurry* AJ, Fitch* B, Savova G, Kohane IS, Reis BY. “Improved de-identification of physician notes through integrative modeling of both identifying and non-identifying medical text”, BMC Medical Informatics and Decision Making Accepted Jan 2013.

Overview

3.X is a new vision for the scrubber. As we approached diminishing returns for improving REGEX and whitelists/black lists, we have shifted towards a machine learning methods approach and learning from large bodies of medical information from publications and UMLS dictionaries.

Venn Diagram

Use Case: Tagging Noun Phrases and UMLS concepts

Precondition:

Steps:

  1. Block of text is sent to cTakes
  2. cTakes processing
    1. start & end position of all POS tags
    2. part of speech
      1. Most interested in Nouns because of PHI

Post-condition:

Use Case: Meta-analysis of text

Precondition:

Steps:

  1. Each "scrubber" implementation procudes Recorder output
    1. Passthrough Imp
      1. Regex
      2. Word lists
    2. cTakes Impl (OpenNLP)
      1. Noun Phrases
      2. UMLS cuids
  2. Performance evaluation (ROC)
    1. Scrubber standalone
    2. Scrubber word lists limited by detected noun phrases
    3. Scrubber word lists limited by detected noun phrases and non-UMLS concepts

Post-Condition

Example