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Medico

AI-powered medical terms detection tool.

Install / Use

/learn @pranayjoshi/Medico

README

Medico

<p align="center"> <img width="300" height="300" src="/img/medico_round.png"> </p>

Medico:- Medico is a medical terms detection system via your Voice.

Current stable versions

Alt v1.0 licence Hitsstars forks issues tweet

Installation

Run these commands on Terminal/CMD/bash dpending on your OS

  • run git clone https://github.com/pranayjoshi/Medico. This will clone the Repo to your local system.
  • than run cd Medico .This will set Medico as your present directory.

Installing Dependencies

1. Windows Users

  • BASH Installed
    • Run the following command to install the dependencies required:- ./install.sh
  • BASH not Installed
    • Just run the setup.py by pip install -r requirements.txt or pip3 install -r requirements.txt depending on the pip version.
    • Install pyaudio by pip install install/PyAudio-0.2.11-cp37-cp37m-win_amd64.whl.

2. Mac OSX USers

  • Run the following command to install the dependencies required:- ./mac_install.sh

3. Debian based Linux Users( Ubuntu, Mint etc..)

  • Run the following command to install the dependencies required:- ./debian_install.sh

4. For NIX Users

  • Run the following command to install the dependencies required:- ./install.sh

Dependencies for Medico has succesfully installed on your system.

Running Files

1. Python Scripts/Commands

  • To run the software use:- python3 run.py or python run.py based on your python version.
  • To run the tests use:- python3 RunTests.py or python RunTests.py based on your python version.
  • Start Conversing after you hear I am ready for your command.

2. Bash Scripts/Commands

  • To run the software use:- ./start.sh.
  • To run the software use:- ./runtest.sh.
  • Start Conversing after you hear I am ready for your command.

Description

  • A software that recognize medical terms
  • Dataset used:- Snomed international(Sample)

Working.

  • Takes the Medical Conversation(Mainly between Doctor and Patient) as the input.
  • Use that Voice Conversation and Convert it to text using Speech To Text.
  • Than the fetch_recent.py takes the file containg all the conversation and returns the latest conversation.
  • After that the Punctuator Model takes the latest conversation and does the Magic(adds the punctuations) to the conversation.
  • Than we use the Punctuated Conversation and the whole conversation/document gets divided into particular sentences, by the Sentence Tokenizer Model.
  • After that we use the Tokenized Sentence, and check them One by One wheter they are Medical Sentences(Contains Medical Terms) or not.
  • If they are considered Medical Statements than:-
    • The Medical Term Detection Model starts. It Further divides those Medical Sentences into 100000+ Categories.
    • After that a Printer Function prints all the necessary details.
  • Otherwise the sentence is Skipped.
  • At Last a Final Report is printed, Displaying all the Medical Terms found in the Whole Conversation.

Thank you

Related Skills

View on GitHub
GitHub Stars21
CategoryHealthcare
Updated9mo ago
Forks3

Languages

Python

Security Score

87/100

Audited on Jun 2, 2025

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