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---
license: mit
task_categories:
- text-classification
- token-classification
- feature-extraction
language:
- en
tags:
- medical
- biology
- research
---
This dataset is highly valuable for medical research, categorization, and analysis. The structured format allows for efficient information retrieval and classification, making it a well-maintained reference for academic and clinical research. A rigorous validation process ensures credibility, making this dataset reliable for further study and application.
1. General Overview
Total Number of Rows and Columns
The dataset consists of 50 rows (excluding the header row) and 4 columns.
Summary of Column Headers and Their Data Types
The dataset includes the following columns:
Title (String): The name of the clinical procedure..
Category (String): The broader classification under which the procedure falls.
Source Link (String): A reference link to external guidelines or studies.
Each column contains textual data, with no numerical fields.
2. Statistical Insights
Count and Percentage of Unique Values in Categorical Columns
Total Unique Categories: 4 unique categories.
Unique Source Links: 50 (each procedure has a unique reference link).
Most Frequently Occurring Values
Top 4 Categories:
IV Cannulization: 16 procedures (32%)
Nasogastric Tube Insertion: 12 procedures (24%)
Suctioning: 11 procedures (22%)
Urinary Catheterization: 11 procedures (22%)
Missing or Inconsistent Data Points
There are no missing values across any of the columns.
3. Data Trends & Patterns
Distribution of Values Across Different Categories
The dataset is highly concentrated in a few categories, with IV Cannulization being the most frequent.
Other categories are also well-represented but are limited to fundamental clinical procedures.
Relationships Between Different Fields
Categories follow a logical structure, grouping similar clinical techniques together.
Each procedure is tied to a relevant external reference, ensuring credibility.
Anomalies and Outliers
The dataset does not contain numerical data, making traditional outlier detection difficult.
4. Approach to Data Collection & Review
How the Dataset Was Collected and Structured
The dataset consists of clinical procedure guidelines, each stored as a PDF document.
Source links were gathered from trusted medical institutions and online databases.
Procedures were grouped into categories based on their nature (e.g., suctioning, catheterization).
Role of Data Annotators, Reviewers, and Validation Processes
Data Annotators: Collected the data, assigned categories and linked appropriate references.
Reviewers: Ensured correct classification, checked for errors in formatting or missing entries.
Validation Processes:
Verified that each procedure had a corresponding reference link.
Checked for duplicate or redundant entries.
Standardized naming conventions for categories where inconsistencies were found.
5. Final Summary
Key Observations
The dataset provides a focused collection of 50 clinical procedures under 4 major categories.
There is no missing value.
Categories and references were well-structured.
Comprehensive Conclusion
This dataset serves as a valuable reference for clinical training and procedural standardization.
The structured format, along with validated reference links, makes this dataset a credible resource for medical professionals and students. |