Tech4Biz

AI-Powered Insurance Claims Automation (InsurTech)

Client

A health insurance in Thailand offering both group and individual plans, managing 1M+ customers.

Business Challenge

  • Claims processing time was 5–8 days on average.
  • High volume of fraudulent or exaggerated medical claims.
  • Manual document validation created bottlenecks in operations.

Objectives

  • Reduce claim processing time to under 24 hours.
  • Use AI/ML to detect anomalies and prevent fraud.
  • Digitize and automate medical document intake and validation.

Solution by Tech4Biz

1. AI-Driven Document Extraction & Validation

  • Built an OCR + NLP pipeline using Tesseract + BERT.
  • Parsed and verified documents (hospital bills, discharge summaries, lab reports).
  • Trained models to identify suspicious billing patterns and duplicate claims.

2. Claims Scoring Engine

  • Developed a fraud scoring algorithm using historical claims and external datasets.
  • Risk scores fed into a workflow engine to auto-approve, reject, or escalate claims.

3. Patient & Hospital Behavior Analytics

  • Built anomaly graphs using Neo4j to detect fraudulent clusters.
  • Deployed models that learned from hospital treatment cost deviations and flagged outliers.
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Results & Impact

KPI Before After Impact
Average Claim Settlement Time 5–8 days 18 hours -75%
Fraudulent Claims Caught ~3% 11.2% +274%
Manual Review Workload 100% < 20% 80% Automated
Customer Satisfaction (NPS) 52 82 Major jump

Tools & Stack

  • ML Models: XGBoost, BERT, PyTorch-based CNNs for document image matching
  • Workflow: n8n + Airflow
  • Infra: AWS (SageMaker, Textract, DynamoDB)
  • Data Privacy: DLP tools, HIPAA-ready compliance pipelines

Key Differentiators

  • End-to-end AI workflow from document ingestion to payout decision.
  • Dynamic scoring based on both structured and unstructured data.
  • Plug-in system for adding new insurance verticals (life, motor, etc.).