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--- |
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license: apache-2.0 |
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language: |
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- ar |
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pretty_name: s |
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task_categories: |
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- question-answering |
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- text-classification |
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- text-generation |
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- zero-shot-classification |
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tags: |
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- medical |
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size_categories: |
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- 10K<n<100K |
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--- |
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# Shifaa Arabic Medical Consultations ๐ฅ๐ |
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## Overview ๐ |
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Shifaa is **revolutionizing Arabic medical AI** by addressing the **critical gap** in Arabic medical datasets. Our first contribution is the **Shifaa Arabic Medical Consultations** dataset, a comprehensive collection of **84,422** real-world medical consultations covering **16 Main Specializations** and **585 Hierarchical Diagnoses**. |
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๐ **Why is this dataset important?** |
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- **First large-scale Arabic medical dataset** for AI applications. |
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- **Highly structured and clean** โ no missing values, duplicates, or unnecessary columns. |
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- **Hierarchical categorization** of medical specialties for better **NLP and AI training**. |
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- **Detailed responses** (273 words on average) provide **deep medical insights**. |
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## Dataset Details ๐ |
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- **Number of consultations:** `84,422` |
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- **Main Specializations:** `16` |
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- **Hierarchical Diagnoses:** `585` |
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- **Average answer length:** `273 words` |
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- **Languages:** `Arabic` |
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### Data Distribution ๐ |
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The dataset covers a **wide range of medical fields**, making it suitable for various AI-driven applications such as: |
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**Medical Chatbots** ๐ค |
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**Predictive Models** ๐ฎ |
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**AI-powered Recommendation Systems** ๐ฅ |
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**Arabic Medical NLP Research** ๐ |
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### Data Hierarchy ๐ |
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Our dataset follows a **hierarchical structure** to enhance precision and usability. Example for **Obstetrics and Gynecology**: |
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### Word Cloud ๐ |
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This **word cloud** visualizes the most frequently used words in **questions and answers related to muscle diseases**. |
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## Data Source ๐ |
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The dataset was collected from the [Islam Web](https://www.islamweb.net/) website using web-scraping tools. |
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## Preprocessing & Cleaning ๐ ๏ธ |
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โ **Removed duplicates and null values** |
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โ **Corrected corrupted data** |
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โ **Standardized hierarchical categories for consistency** |
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โ **Eliminated hidden spaces and excess words** |
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## Usage & Applications ๐ |
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Shifaa Arabic Medical Consultations is **designed for AI and NLP applications**, making it ideal for: |
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- **Medical Question Answering Systems** |
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- **Arabic Medical Chatbots** |
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- **AI-powered Medical Assistants** |
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- **Healthcare Research & AI-driven Text Analysis** |
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## How to Use ๐ฅ |
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Download the dataset from **Hugging Face** and start building your **Arabic medical AI applications**! |
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```python |
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from datasets import load_dataset |
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dataset = load_dataset("Ahmed-Selem/Shifaa_Arabic_Medical_Consultations") |