| |
|
| | --- |
| | language: |
| | - en |
| | bigbio_language: |
| | - English |
| | license: other |
| | multilinguality: monolingual |
| | bigbio_license_shortname: DUA |
| | pretty_name: n2c2 2018 Selection Criteria |
| | homepage: https://portal.dbmi.hms.harvard.edu/projects/n2c2-nlp/ |
| | bigbio_pubmed: False |
| | bigbio_public: False |
| | bigbio_tasks: |
| | - TEXT_CLASSIFICATION |
| | --- |
| | |
| |
|
| | # Dataset Card for n2c2 2018 Selection Criteria |
| |
|
| | ## Dataset Description |
| |
|
| | - **Homepage:** https://portal.dbmi.hms.harvard.edu/projects/n2c2-nlp/ |
| | - **Pubmed:** False |
| | - **Public:** False |
| | - **Tasks:** TXTCLASS |
| |
|
| |
|
| | Track 1 of the 2018 National NLP Clinical Challenges shared tasks focused |
| | on identifying which patients in a corpus of longitudinal medical records |
| | meet and do not meet identified selection criteria. |
| |
|
| | This shared task aimed to determine whether NLP systems could be trained to identify if patients met or did not meet |
| | a set of selection criteria taken from real clinical trials. The selected criteria required measurement detection ( |
| | “Any HbA1c value between 6.5 and 9.5%”), inference (“Use of aspirin to prevent myocardial infarction”), |
| | temporal reasoning (“Diagnosis of ketoacidosis in the past year”), and expert judgment to assess (“Major |
| | diabetes-related complication”). For the corpus, we used the dataset of American English, longitudinal clinical |
| | narratives from the 2014 i2b2/UTHealth shared task 4. |
| |
|
| | The final selected 13 selection criteria are as follows: |
| | 1. DRUG-ABUSE: Drug abuse, current or past |
| | 2. ALCOHOL-ABUSE: Current alcohol use over weekly recommended limits |
| | 3. ENGLISH: Patient must speak English |
| | 4. MAKES-DECISIONS: Patient must make their own medical decisions |
| | 5. ABDOMINAL: History of intra-abdominal surgery, small or large intestine |
| | resection, or small bowel obstruction. |
| | 6. MAJOR-DIABETES: Major diabetes-related complication. For the purposes of |
| | this annotation, we define “major complication” (as opposed to “minor complication”) |
| | as any of the following that are a result of (or strongly correlated with) uncontrolled diabetes: |
| | a. Amputation |
| | b. Kidney damage |
| | c. Skin conditions |
| | d. Retinopathy |
| | e. nephropathy |
| | f. neuropathy |
| | 7. ADVANCED-CAD: Advanced cardiovascular disease (CAD). |
| | For the purposes of this annotation, we define “advanced” as having 2 or more of the following: |
| | a. Taking 2 or more medications to treat CAD |
| | b. History of myocardial infarction (MI) |
| | c. Currently experiencing angina |
| | d. Ischemia, past or present |
| | 8. MI-6MOS: MI in the past 6 months |
| | 9. KETO-1YR: Diagnosis of ketoacidosis in the past year |
| | 10. DIETSUPP-2MOS: Taken a dietary supplement (excluding vitamin D) in the past 2 months |
| | 11. ASP-FOR-MI: Use of aspirin to prevent MI |
| | 12. HBA1C: Any hemoglobin A1c (HbA1c) value between 6.5% and 9.5% |
| | 13. CREATININE: Serum creatinine > upper limit of normal |
| | |
| | The training consists of 202 patient records with document-level annotations, 10 records |
| | with textual spans indicating annotator’s evidence for their annotations while test set contains 86. |
| |
|
| | Note: |
| | * The inter-annotator average agreement is 84.9% |
| | * Whereabouts of 10 records with textual spans indicating annotator’s evidence are unknown. |
| | However, author did a simple script based validation to check if any of the tags contained any text |
| | in any of the training set and they do not, which confirms that atleast train and test do not |
| | have any evidence tagged alongside corresponding tags. |
| |
|
| |
|
| |
|
| | ## Citation Information |
| |
|
| | ``` |
| | @article{DBLP:journals/jamia/StubbsFSHU19, |
| | author = { |
| | Amber Stubbs and |
| | Michele Filannino and |
| | Ergin Soysal and |
| | Samuel Henry and |
| | Ozlem Uzuner |
| | }, |
| | title = {Cohort selection for clinical trials: n2c2 2018 shared task track 1}, |
| | journal = {J. Am. Medical Informatics Assoc.}, |
| | volume = {26}, |
| | number = {11}, |
| | pages = {1163--1171}, |
| | year = {2019}, |
| | url = {https://doi.org/10.1093/jamia/ocz163}, |
| | doi = {10.1093/jamia/ocz163}, |
| | timestamp = {Mon, 15 Jun 2020 16:56:11 +0200}, |
| | biburl = {https://dblp.org/rec/journals/jamia/StubbsFSHU19.bib}, |
| | bibsource = {dblp computer science bibliography, https://dblp.org} |
| | } |
| | |
| | ``` |
| |
|