RAPTOR: Generative AI for Parsing Colorectal Cancer Referrals to Streamline Faster Diagnostic Standard Pathways

Bilal, Muhammad and Abioye, Sofiat and Akanbi, Lukman A. (2025) RAPTOR: Generative AI for Parsing Colorectal Cancer Referrals to Streamline Faster Diagnostic Standard Pathways. In: 28th International Conference on Medical Image Computing and Computer Assisted Intervention, 23rd-27th Sept 2025, Daejeon, Democratic People's Republic of Korea. (In Press)

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Abstract

Delays in processing urgent cancer referrals hinder Faster Diagnostic Standards (FDS), with manual extraction of patient data (demographics, symptoms and test results) remaining a bottleneck in colorectal two-week wait (2WW) pathways. We evaluate generative AI (GenAI) for automating structured data extraction from colorectal cancer (CRC) 2WW referrals, comparing the reasoning capabilities of GPT-4o-Mini and DeepSeek-R1 against clinician-led extraction. Both models achieved near-human precision (GPT-4o-Mini: 94.83%, DeepSeek-R1: 93.72%) while reducing the processing time by 10-fold. Key challenges included non-deterministic output, OCR noise (e.g. handwritten annotations, overlapping text), and contextual ambiguity, notably misclassified checkboxes, symptom misattribution, and numerical inconsistencies (e.g. fecal immunochemical test (FIT) unit conversions). We also proposed an uncertainty quantification mechanism to flag uncertain extractions for human review. Despite residual limitations, GenAI shows the potential to improve efficiency, standardisation, and equity in cancer pathways by alleviating administrative burdens. Future work should prioritise hybrid AI-clinician workflows, domain-specific fine-tuning, and real-world validation to ensure reliable clinical integration.

Item Type: Conference or Workshop Item (Paper)
Dates:
Date
Event
17 June 2025
Accepted
Subjects: CAH17 - business and management > CAH17-01 - business and management > CAH17-01-04 - management studies
Divisions: Faculty of Business, Law and Social Sciences > College of Business, Digital Transformation & Entrepreneurship
Depositing User: Gemma Tonks
Date Deposited: 02 Jul 2025 14:01
Last Modified: 02 Jul 2025 14:01
URI: https://www.open-access.bcu.ac.uk/id/eprint/16464

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