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Main Authors: Maqsood, Muhammad Hammad, Sajid, Mubashir, Ahmed, Khubaib, Shahid, Muhammad Usamah, Farooq, Muddassar
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2603.14876
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author Maqsood, Muhammad Hammad
Sajid, Mubashir
Ahmed, Khubaib
Shahid, Muhammad Usamah
Farooq, Muddassar
author_facet Maqsood, Muhammad Hammad
Sajid, Mubashir
Ahmed, Khubaib
Shahid, Muhammad Usamah
Farooq, Muddassar
contents This research paper outlines the development and implementation of a novel Clinical Decision Support System (CDSS) that integrates AI predictive modeling with medical knowledge bases. It utilizes the quantifiable information elements in lab results for inferring likely diagnoses a patient might have. Subsequently, suggesting investigations to confirm the likely diagnoses -- an assistive tool for physicians. The system fuses knowledge contained in a rule-base expert system with inferences of data driven predictors based on the features in labs. The data for 593,055 patients was collected from 547 primary care centers across the US to model our decision support system and derive Real-Word Evidence (RWE) to make it relevant for a large demographic of patients. Our Rule-Base comprises clinically validated rules, modeling 59 health conditions that can directly confirm one or more of diseases and assign ICD-10 codes to them. The Likely Diagnosis system uses multi-class classification, covering 37 ICD-10 codes, which are grouped together into 11 categories based on the labs that physicians prescribe to confirm the diagnosis. This research offers a novel system that assists a physician by utilizing medical profile of a patient and routine lab investigations to predict a group of likely diseases and then confirm them, coupled with providing explanations for inferences, thereby assisting physicians to reduce misdiagnosis of patients in clinical decision-making.
format Preprint
id arxiv_https___arxiv_org_abs_2603_14876
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle A Hybrid AI and Rule-Based Decision Support System for Disease Diagnosis and Management Using Labs
Maqsood, Muhammad Hammad
Sajid, Mubashir
Ahmed, Khubaib
Shahid, Muhammad Usamah
Farooq, Muddassar
Artificial Intelligence
This research paper outlines the development and implementation of a novel Clinical Decision Support System (CDSS) that integrates AI predictive modeling with medical knowledge bases. It utilizes the quantifiable information elements in lab results for inferring likely diagnoses a patient might have. Subsequently, suggesting investigations to confirm the likely diagnoses -- an assistive tool for physicians. The system fuses knowledge contained in a rule-base expert system with inferences of data driven predictors based on the features in labs. The data for 593,055 patients was collected from 547 primary care centers across the US to model our decision support system and derive Real-Word Evidence (RWE) to make it relevant for a large demographic of patients. Our Rule-Base comprises clinically validated rules, modeling 59 health conditions that can directly confirm one or more of diseases and assign ICD-10 codes to them. The Likely Diagnosis system uses multi-class classification, covering 37 ICD-10 codes, which are grouped together into 11 categories based on the labs that physicians prescribe to confirm the diagnosis. This research offers a novel system that assists a physician by utilizing medical profile of a patient and routine lab investigations to predict a group of likely diseases and then confirm them, coupled with providing explanations for inferences, thereby assisting physicians to reduce misdiagnosis of patients in clinical decision-making.
title A Hybrid AI and Rule-Based Decision Support System for Disease Diagnosis and Management Using Labs
topic Artificial Intelligence
url https://arxiv.org/abs/2603.14876