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ehr
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OpenMRS API and web application code
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Aug 23, 2021 - Java
Monorepo that holds all of HospitalRun's v2 projects.
offline-first
monorepo
medical
global-health
ehr
medical-informatics-platform
medical-informatics
hospitalrun
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Feb 5, 2021 - JavaScript
智能办公OA系统[SpringBoot2-快速开发平台],适用于医院,学校,中小型企业等机构的管理。Activiti5.22+动态表单实现零java代码即可做到复杂业务的流程实施,同时包含文件在线操作、日志、考勤、CRM、ERP进销存、项目、拖拽式生成问卷、日程、笔记、计划、行政等多种复杂业务功能。同时,可进行授权二开。
mysql
nginx
redis
cms
erp
eclipse
websocket
privileges
crm
hr
springboot
approval-process
ehr
oa
layui
skyeye
springboot2
springcloud-vue
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Aug 23, 2021 - Java
Curated list of awesome papers for electronic health records(EHR) mining, machine learning, and deep learning.
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Jul 7, 2021
Code for "Graph Neural Network on Electronic Health Records for Predicting Alzheimer’s Disease"
deep-learning
pytorch
ehr
electronic-health-records
alzheimer-disease-prediction
graph-neural-networks
disease-prediction
gnn
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Mar 17, 2021 - Python
Open platform to manage and share standardized clinical data, designed by @ppazos at CaboLabs Health Informatics.
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Aug 20, 2021 - Groovy
The code repository for the prototypes included in the eBook "Inspired EHRs - Designing for Clinicians" (inspiredEHRs.gov). The code of the prototypes is made available under the Apache 2.0 open source license. This license agreement allows anyone to freely use the code and ideas presented in this book, subject to the conditions listed at http://opensource.org/licenses/Apache-2.0.
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Mar 17, 2021 - PHP
Patient2Vec: A Personalized Interpretable Deep Representation of the Longitudinal Electronic Health Record
deep-learning
personalization
healthcare
lstm
ehr
representation-learning
attention-mechanism
electronic-health-records
deep-feature-extraction
gated-recurrent-unit
hospitalization
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Nov 27, 2018 - Python
Free and open source Electronic Health Record
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Mar 13, 2018 - C++
Medkey Hospital Information System main repository: Practice Management for Practicioners & Hospitals, EHR, Patient Engagement
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Aug 11, 2021 - PHP
PDD Graph : Bridging MIMIC-III and Linked Data Cloud
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Sep 14, 2018 - CSS
NER and Relation Extraction from Electronic Health Records (EHR).
named-entity-recognition
ehr
ner
relation-extraction
bilstm-crf
biobert
adverse-drug-events
n2c2
ehr-records
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Jul 23, 2021 - Python
Natural language generation for discrete data in EHRs
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Aug 1, 2019 - Python
Redesigning the Patient Portal Experience with SMART on FHIR.
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Jan 14, 2021 - JavaScript
openEHR REST API Specifications
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Jun 4, 2021 - API Blueprint
Java library to map LOINC-encoded test results to Human Phenotype Ontology
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Jun 3, 2021 - Java
Library and CLI for randomly generating medical data like you might get out of an Electronic Health Records (EHR) system
cli
nuget
patient
tests
dataset
testing-tools
ehr
electronic-health-records
synthetic-data
hospital-admission
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Aug 16, 2021 - C#
A curated list of awesome Digital Global Health resources and software.
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Aug 23, 2018
Point of care system for AMPATH clinics
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Aug 23, 2021 - TypeScript
Development build for SMART Cancer Navigator
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May 26, 2021 - TypeScript
Thanks to digitization, we often have access to large databases, consisting of various fields of information, ranging from numbers to texts and even boolean values. Such databases lend themselves especially well to machine learning, classification and big data analysis tasks. We are able to train classifiers, using already existing data and use them for predicting the values of a certain field, given that we have information regarding the other fields. Most specifically, in this study, we look at the Electronic Health Records (EHRs) that are compiled by hospitals. These EHRs are convenient means of accessing data of individual patients, but there processing as a whole still remains a task. However, EHRs that are composed of coherent, well-tabulated structures lend themselves quite well to the application to machine language, via the usage of classifiers. In this study, we look at a Blood Transfusion Service Center Data Set (Data taken from the Blood Transfusion Service Center in Hsin-Chu City in Taiwan). We used scikit-learn machine learning in python. From Support Vector Machines(SVM), we use Support Vector Classification(SVC), from the linear model we import Perceptron. We also used the K.neighborsclassifier and the decision tree classifiers. We segmented the database into the 2 parts. Using the first, we trained the classifiers and the next part was used to verify if the classifier prediction matched that of the actual values.
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Aug 4, 2018 - Python
This repository contains automation to deploy OpenEMR on Azure.
emr
healthcare
fhir
ehr
openemr
medical-records
openemr-docker
azure-openemr
openemr-azure
azure-hls
azure-healthcare
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Jun 15, 2021 - Shell
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The insane docker development environment now allows testing of php 7.4(alpha):
openemr/openemr#2498
So, this opens the door for folks to test and fix warnings/errors for php 7.4(alpha). Go get em :)