The Decision Platform Team
5 min read
Identify misrepresentation faster, audit more cases, and protect pricing integrity— while maintaining full underwriting transparency and reinsurer confidence.

During beta deployments with UK life insurers, AI Engine significantly increased post-issue audit capacity and improved detection of material misrepresentation, maintaining full underwriter oversight.
Misrepresentation-detection rate¹
Average underwriter time savings for clean cases²
Reduction in review time for flagged cases³
AI Engine links misrepresented application responses directly to the supporting medical evidence. Underwriters can immediately see the relevant documents and focus on material risk rather than document searching, enabling faster and more consistent post-issue audits.

AI Engine allows insurers to expand post-issue audit coverage without relaxing underwriting standards. Customizable detection tolerances ensure the system reflects your underwriting philosophy. Every finding is fully traceable and final decisions remain with the underwriter.

Deliver systematic, explainable audit outcomes that reduce mortality slippage and support transparent discussions with reinsurers. Every finding is traceable to source evidence, creating audit-ready documentation that withstands regulatory scrutiny and reinsurer challenge.

AI Engine supports the full post-issue audit workflow—from document ingestion and misrepresentation detection to evidence review and structured reporting.
AI Engine prioritizes transparency, traceability, and underwriting governance — ensuring every audit finding is explainable and fully evidence-backed.
Upload medical evidence documents at the start of an audit. Documents are processed in parallel, allowing large case files to be analyzed quickly without manual preparation.
Application disclosures can be uploaded via PDF or ingested directly through UnderwriteMe’s Underwriting Engine integration. This ensures application responses are captured accurately and aligned with the audit review.
Application disclosures are automatically compared against medical evidence to identify inconsistencies and potential misrepresentation. Clean cases are cleared quickly while cases with misrepresentation are flagged for underwriter review.
Each flagged finding links directly to the relevant section of the medical evidence. Underwriters can immediately view the supporting text, eliminating document searching and speeding up audit review.
Detection thresholds can be configured for specific disclosures (e.g., BMI, blood pressure, medical history). This ensures audit findings align with each insurer’s underwriting philosophy and definition of materiality.
Personal identifiers are automatically removed from medical documents to support compliant data sharing with audit teams, reinsurers, or external reviewers. Original files are deleted immediately after anonymization.
Generate structured audit reports containing case metadata, findings, and linked evidence. Reports support internal governance reviews, reinsurer discussions, and portfolio-level audit analysis.
Each flagged finding includes a clear explanation describing why potential misrepresentation was detected, along with the supporting evidence. This ensures audit outcomes are transparent, defensible, and easy for underwriters to review.
AI Engine supports the full post-issue audit workflow—from document ingestion and misrepresentation detection to evidence review and structured reporting.
AI Engine prioritizes transparency, traceability, and underwriting governance — ensuring every audit finding is explainable and fully evidence-backed.
The Decision Platform Team
5 min read
The Decision Platform Team
Sydney, 18 December 2025
5 min read
The Decision Platform Team
UnderwriteMe has partnered with EQ Pathology, the pioneer of digital medical evidence collection for Australian life insurers. EQ Pathology's innovative platform transforms how medical information flows between doctors, insurers and customers - replacing outdated paper processes with intelligent digital solutions that work seamlessly across both underwriting and claims. This collaboration marks a major step forward in the digital transformation of insurance, enabling seamless integration that enhances underwriting and claims processes for insurers, doctors, and most importantly, customers.
5 min read
¹ Misrepresentation detection rate calculated as the percentage of cases in which an experienced underwriter agreed with AI Engine’s identification of misrepresentation, based on average beta test results with major UK insurers.
² Average underwriter time savings for clean cases (no misrepresentation detected).
³ Average underwriter time savings for flagged cases (misrepresentation detected), enabled by AI Engine’s automated linking of application answers to supporting medical evidence.