A Hybrid AI and Rule-Based Decision Support System for Disease Diagnosis and Management Using Labs
arXiv cs.AI / 3/17/2026
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Key Points
- The paper introduces a hybrid Clinical Decision Support System that fuses a rule-based expert system with data-driven AI predictors to infer likely diagnoses from routine lab results and propose confirmatory investigations.
- It uses real-world evidence from 593,055 patients across 547 primary care centers in the US to calibrate the model and ensure broad demographic applicability.
- The rule base covers 59 clinically validated conditions with ICD-10 mappings, while the AI classifier handles 37 ICD-10 codes grouped into 11 lab-based categories and provides explanations for its inferences.
- The system is designed to assist physicians in decision-making and reduce misdiagnosis by suggesting likely diseases and recommended investigations, with explanations to support trust and adoption.
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