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--- |
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task_categories: |
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- summarization |
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- conversational |
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language: |
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- en |
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pretty_name: MediQA |
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size_categories: |
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- 1K<n<10K |
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--- |
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# MEDIQA-Chat 2023 Training/Validation Data |
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# Task A |
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The training set consists of 1,201 pairs of conversations and associated section headers and contents. |
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The validation set consists of 100 pairs of conversations and their summaries. |
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The full list of normalized section headers: |
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1. fam/sochx [FAMILY HISTORY/SOCIAL HISTORY] |
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2. genhx [HISTORY of PRESENT ILLNESS] |
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3. pastmedicalhx [PAST MEDICAL HISTORY] |
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4. cc [CHIEF COMPLAINT] |
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5. pastsurgical [PAST SURGICAL HISTORY] |
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6. allergy |
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7. ros [REVIEW OF SYSTEMS] |
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8. medications |
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9. assessment |
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10. exam |
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11. diagnosis |
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12. disposition |
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13. plan |
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14. edcourse [EMERGENCY DEPARTMENT COURSE] |
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15. immunizations |
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16. imaging |
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17. gynhx [GYNECOLOGIC HISTORY] |
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18. procedures |
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19. other_history |
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20. labs |
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# Task B |
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The training set consists of 67 pairs of conversations and full notes. The validation set includes 20 pairs of conversations and clinical notes. |
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Full encounter notes are expected to have at least one of four overall section divisions demarked by the first-occuring of its related section headers: |
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> | note_division | section_headers |
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> | subjective | chief complaint, history of present illness, hpi, subjective |
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> | objective_exam | physical exam, exam |
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> | objective_results | results, findings |
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> | assessment_and_plan | assessment, plan |
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Depending on the encounter, objective_exam and objective_results may not be relevant. |
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We encourage review the sample data as well as the evaluation script to understand the best demarkation headers for your generated note. |
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# Task C |
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The training set consists of 67 pairs of full doctor-patient conversations and notes and the validation set includes 20 pairs of full conversations and clinical notes (same as Task-B datasets). The Task-A training and validation sets (1,301 pairs) could be used as additional training data. |
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