Overview

Relatient is a US-based patient engagement SaaS that supports hundreds of healthcare groups and reaches millions of patients each year. Its platform spans appointment scheduling, patient messaging, and reminders, which, over time, required integrations with a wide range of EHR systems. The integration layer had grown fragmented, with overlapping connectors slowing engineering work. Bacancy rebuilt it as a single canonical FHIR R4 engine with HL7 v2 fallback, deployed the company’s first MCP server, and shipped a Python-based no-show prediction model.

Technologies Used

Node.js
ASP.NET_Core_APIs
Next.js
MCP
Python
PostgreSQL

Project Highlights

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Canonical FHIR R4 Integration Engine

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MCP Server Exposing 18 Tools

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ML-Driven No-Show Prediction Model

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Automated Patient Intervention

The Challenges

1

Fragmented EHR integration layer with overlapping connectors slowing engineering velocity across the platform.

2

Enterprise customers demanded AI assistant access to platform data without internal AI engineering bandwidth.

3

High patient no-show rates were impacting clinic revenue and reducing daily appointment utilization.

4

Predictive no-show flags alone could not reduce missed appointments without automated patient intervention workflows.

Solutions by Bacancy

1

Bacancy rebuilt the integration layer as a single canonical FHIR R4 engine with HL7 v2 fallback support.

2

Our MCP developers deployed the company’s first MCP server, which enables 18 tools across appointments, messaging, and reporting.

3

Our ML engineers shipped a Python prediction model trained on three years of historical appointment data.

4

Bacancy built an auto-intervention engine that escalates reminder cadence and suggests telehealth swaps based on patient risk.

Core Features

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Appointment Scheduling Engine

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Automated Reminder Dispatch

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EHR Data Synchronization

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Outreach Rule Configuration

No. of Resource

4

No. of Resource

Time Frame

April 2025 - January 2026

Time Frame

Project Snapshot

Bacancy Cut Relatient’s EHR Integration Maintenance by 65% with a Unified FHIR R4 Engine

Outcomes

65% reduction in EHR integration maintenance overhead

4x faster engineering velocity across the platform

1.2M saved annually on platform infrastructure costs

9-day EHR onboarding, down from 6 weeks

31% lower no-show rate from ML model

18 MCP tools deployed across workflows

Technical Stack

Frontend Next.js
Backend Node.js, .NET Core, Python
Database PostgreSQL
In-memory Data Store Redis
Cloud Infrastructure AWS (EKS, RDS, S3)
Architecture Microservices, Event-Driven, MCP Layer
Authentication Keycloak,SSO
Healthcare Standards FHIR R4, HL7 v2
Messaging & Notifications: Twilio, SendGrid
ML & AI: Python, Model Context Protocol (MCP)
API Communication REST APIs, FHIR R4, HL7 v2
Project & Issue Tracking Jira

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