Over 16 years we help organization to thrive and deliver quality patient care. Arihant Healthcare Technology is growing healthcare IT consulting firm which believes in delivering value, growth and customer satisfaction.

Case Studies

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Published:
March 20th 2024
Category:
AI/ML in Healthcare
Client:
Healthcare Startup
TECHNOLOGY
AWS & GCP
Public Health Data

Project Overview

Arihant Healthcare Technology is a leading healthcare IT consulting firm with 16 years of experience in interoperability and digital health strategies. In this case study, we delve into our collaboration with a startup company focused on developing an AI/ML-based tool for health index calculation. Let’s explore how we seamlessly integrated various components to create a robust solution.

Problem Statement

Our goal was to create a comprehensive health index system that could process large volumes of public health data from various sources, including TEFCA organizations. The data needed to be transformed, analyzed, and presented in a user-friendly format for healthcare professionals and patients.

Process

  1. Data Ingestion and Translation:

    • HL7 FHIR Format: We ingested public health data in HL7 FHIR format.
    • AWS Cloud and Containerization: A containerized application on AWS translated the data efficiently.
  2. Data Storage:

    • Vector SQL Database: Transformed data found a home in a vector SQL database on the cloud.
    • Scalability: The architecture ensures scalability as data volumes grow.
  3. AI/ML Models:

    • LLM Model: Leveraged for time-series analysis of health data.
    • Transformer Model: Enhanced NLP capabilities for extracting insights.
  4. Health Index Calculation:

    • LLM and Transformer Integration: These models collaborated to calculate a comprehensive health index.
    • Feature Engineering: Extracted relevant features from patient data.
  5. Middleware and API Endpoint:

    • Custom Middleware (JAVA): Responsible for data transformation and security.
    • API Endpoint Creation: Secure endpoints exposed health index information.
  6. User Interface:

    • ReactJS Application: The UI displayed health indexes based on patients’ healthcare history.

Results

Our collaborative effort resulted in a powerful health index system that:

  • Enhances Decision-Making: Healthcare professionals can quickly assess patient health using the calculated index.
  • Empowers Patients: Patients gain insights into their overall health and can proactively manage their well-being.
  • Complies with Standards: Our solution adheres to HL7 FHIR standards and TEFCA guidelines.

Technologies Used

  • AWS Cloud: For data translation and storage.
  • LLM and Transformer Models: AI/ML components for health index calculation.
  • ReactJS: UI development.
  • JAVA Middleware: Data transformation and API creation.

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