PRAnCER is a web platform that enables the rapid annotation of medical terms within clinical notes.

Overview

PRAnCER

PRAnCER (Platform enabling Rapid Annotation for Clinical Entity Recognition) is a web platform that enables the rapid annotation of medical terms within clinical notes. A user can highlight spans of text and quickly map them to concepts in large vocabularies within a single, intuitive platform. Users can use the search and recommendation features to find labels without ever needing to leave the interface. Further, the platform can take in output from existing clinical concept extraction systems as pre-annotations, which users can accept or modify in a single click. These features allow users to focus their time and energy on harder examples instead.

Usage

Installation Instructions

Detailed installation instructions are provided below; PRAnCER can operate on Mac, Windows, and Linux machines.

Linking to UMLS Vocabulary

Use of the platform requires a UMLS license, as it requires several UMLS-derived files to surface recommendations. Please email magrawal (at) mit (dot) edu to request these files, along with your API key so we may confirm. You can sign up here. Surfacing additional information in the UI also requires you enter your UMLS API key in application/utils/constants.py.

Loading in and Exporting Data

To load in data, users directly place any clinical notes as .txt files in the /data folder; an example file is provided. The output of annotation is .json file in the /data folder with the same file prefix as the .txt. To start annotating a note from scratch, a user can just delete the corresponding .json file.

Pre-filled Suggestions

Two options exist for pre-filled suggestions; users specify which they want to use in application/utils/constants.py. The default is "MAP". Option 1 for pre-filled suggestions is "MAP", if users want to preload annotations based on a dictionary of high-precision text to CUI for their domain, e.g. {hypertension: "C0020538"}. A pre-created dictionary will be provided alongside the UMLS files described above. Option 2 for pre-filled suggestions is "CSV", if users want to load in pre-computed pre-annotations (e.g. from their own algorithm, scispacy, cTAKES, MetaMap). Users simply place a CSV of spans and CUIs, with the same prefix as the data .txt file, and our scripts will automatically incorporate those annotations. example.csv in the /data file provides an example.

Installation

The platform requires python3.7, node.js, and several other python and javascript packages. Specific installation instructions for each follow!

Backend requirements

1) First check if python3 is installed.

You can check to see if it is installed:

$ python3 --version

If it is installed, you should see Python 3.7.x

If you need to install it, you can easily do that with a package manager like Homebrew:

$ brew install python3

2) With python3 installed, install necessary python packages.

You can install packages with the python package installer pip:

$ pip3 install flask flask_script flask_migrate flask_bcrypt nltk editdistance requests lxml

Frontend requirements

3) Check to see if npm and node.js are installed:

$ npm -v
$ node -v

If they are, you can skip to Step 4. If not, to install node, first install nvm:

curl -o- https://raw.githubusercontent.com/nvm-sh/nvm/v0.35.1/install.sh | bash

Source: https://github.com/nvm-sh/nvm

Re-start your terminal and confirm nvm installation with:

command -v nvm

Which will return nvm if successful

Then install node version 10.15.1:

$ nvm install 10.15.1

4) Install the node dependencies:

$ cd static
$ npm install --save

For remote server applications, permissions errors may be triggered.
If so, try adding --user to install commands.

Run program

Run the backend

Open one terminal tab to run the backend server:

$ python3 manage.py runserver

If all goes well, you should see * Running on http://127.0.0.1:5000/ (Press CTRL+C to quit) followed by a few more lines in the terminal.

Run the frontend

Open a second terminal tab to run the frontend:

$ cd static
$ npm start

After this, open your browser to http://localhost:3000 and you should see the homepage!

Contact

If you have any questions, please email Monica Agrawal [[email protected]]. Credit belongs to Ariel Levy for the development of this platform.

Based on React-Redux-Flask boilerplate.

Owner
Sontag Lab
Machine learning algorithms and applications to health care.
Sontag Lab
keras implement of transformers for humans

keras implement of transformers for humans

苏剑林(Jianlin Su) 4.8k Jan 03, 2023
A python script to prefab your scripts/text files, and re create them with ease and not have to open your browser to copy code or write code yourself

Scriptfab - What is it? A python script to prefab your scripts/text files, and re create them with ease and not have to open your browser to copy code

DevNugget 3 Jul 28, 2021
Indonesia spellchecker with python

indonesia-spellchecker Ganti kata yang terdapat pada file teks.txt untuk diperiksa kebenaran kata. Run on local machine python3 main.py

Rahmat Agung Julians 1 Sep 14, 2022
LSTM based Sentiment Classification using Tensorflow - Amazon Reviews Rating

LSTM based Sentiment Classification using Tensorflow - Amazon Reviews Rating (Dataset) The dataset is from Amazon Review Data (2018)

Immanuvel Prathap S 1 Jan 16, 2022
Comprehensive-E2E-TTS - PyTorch Implementation

A Non-Autoregressive End-to-End Text-to-Speech (text-to-wav), supporting a family of SOTA unsupervised duration modelings. This project grows with the research community, aiming to achieve the ultima

Keon Lee 114 Nov 13, 2022
An extension for asreview implements a version of the tf-idf feature extractor that saves the matrix and the vocabulary.

Extension - matrix and vocabulary extractor for TF-IDF and Doc2Vec An extension for ASReview that adds a tf-idf extractor that saves the matrix and th

ASReview 4 Jun 17, 2022
ASCEND Chinese-English code-switching dataset

ASCEND (A Spontaneous Chinese-English Dataset) introduces a high-quality resource of spontaneous multi-turn conversational dialogue Chinese-English code-switching corpus collected in Hong Kong.

CAiRE 11 Dec 09, 2022
中文問句產生器;使用台達電閱讀理解資料集(DRCD)

Transformer QG on DRCD The inputs of the model refers to we integrate C and A into a new C' in the following form. C' = [c1, c2, ..., [HL], a1, ..., a

Philip 1 Oct 22, 2021
This converter will create the exact measure for your cappuccino recipe from the grandiose Rafaella Ballerini!

About CappuccinoJs This converter will create the exact measure for your cappuccino recipe from the grandiose Rafaella Ballerini! Este conversor criar

Arthur Ottoni Ribeiro 48 Nov 15, 2022
Flexible interface for high-performance research using SOTA Transformers leveraging Pytorch Lightning, Transformers, and Hydra.

Flexible interface for high performance research using SOTA Transformers leveraging Pytorch Lightning, Transformers, and Hydra. What is Lightning Tran

Pytorch Lightning 581 Dec 21, 2022
StarGAN - Official PyTorch Implementation

StarGAN - Official PyTorch Implementation ***** New: StarGAN v2 is available at https://github.com/clovaai/stargan-v2 ***** This repository provides t

Yunjey Choi 5.1k Dec 30, 2022
Model parallel transformers in JAX and Haiku

Table of contents Mesh Transformer JAX Updates Pretrained Models GPT-J-6B Links Acknowledgments License Model Details Zero-Shot Evaluations Architectu

Ben Wang 4.9k Jan 04, 2023
BiQE: Code and dataset for the BiQE paper

BiQE: Bidirectional Query Embedding This repository includes code for BiQE and the datasets introduced in Answering Complex Queries in Knowledge Graph

Bhushan Kotnis 1 Oct 20, 2021
The following links explain a bit the idea of semantic search and how search mechanisms work by doing retrieve and rerank

Main Idea The following links explain a bit the idea of semantic search and how search mechanisms work by doing retrieve and rerank Semantic Search Re

Sergio Arnaud Gomez 2 Jan 28, 2022
[ICCV 2021] Instance-level Image Retrieval using Reranking Transformers

Instance-level Image Retrieval using Reranking Transformers Fuwen Tan, Jiangbo Yuan, Vicente Ordonez, ICCV 2021. Abstract Instance-level image retriev

UVA Computer Vision 86 Dec 28, 2022
Super Tickets in Pre-Trained Language Models: From Model Compression to Improving Generalization (ACL 2021)

Structured Super Lottery Tickets in BERT This repo contains our codes for the paper "Super Tickets in Pre-Trained Language Models: From Model Compress

Chen Liang 16 Dec 11, 2022
SimCSE: Simple Contrastive Learning of Sentence Embeddings

SimCSE: Simple Contrastive Learning of Sentence Embeddings This repository contains the code and pre-trained models for our paper SimCSE: Simple Contr

Princeton Natural Language Processing 2.5k Jan 07, 2023
Multilingual text (NLP) processing toolkit

polyglot Polyglot is a natural language pipeline that supports massive multilingual applications. Free software: GPLv3 license Documentation: http://p

RAMI ALRFOU 2.1k Jan 07, 2023
NLP topic mdel LDA - Gathered from New York Times website

NLP topic mdel LDA - Gathered from New York Times website

1 Oct 14, 2021