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Main Authors: Khan, Shaheer Ahmad, Shahid, Muhammad Usamah, Abdullah, Ahmad, Hashmat, Ibrahim, Farooq, Muddassar
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2501.15969
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author Khan, Shaheer Ahmad
Shahid, Muhammad Usamah
Abdullah, Ahmad
Hashmat, Ibrahim
Farooq, Muddassar
author_facet Khan, Shaheer Ahmad
Shahid, Muhammad Usamah
Abdullah, Ahmad
Hashmat, Ibrahim
Farooq, Muddassar
contents This study addresses a critical gap in the healthcare system by developing a clinically meaningful, practical, and explainable disease surveillance system for multiple chronic diseases, utilizing routine EHR data from multiple U.S. practices integrated with CureMD's EMR/EHR system. Unlike traditional systems--using AI models that rely on features from patients' labs--our approach focuses on routinely available data, such as medical history, vitals, diagnoses, and medications, to preemptively assess the risks of chronic diseases in the next year. We trained three distinct models for each chronic disease: prediction models that forecast the risk of a disease 3, 6, and 12 months before a potential diagnosis. We developed Random Forest models, which were internally validated using F1 scores and AUROC as performance metrics and further evaluated by a panel of expert physicians for clinical relevance based on inferences grounded in medical knowledge. Additionally, we discuss our implementation of integrating these models into a practical EMR system. Beyond using Shapley attributes and surrogate models for explainability, we also introduce a new rule-engineering framework to enhance the intrinsic explainability of Random Forests.
format Preprint
id arxiv_https___arxiv_org_abs_2501_15969
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle An Explainable Disease Surveillance System for Early Prediction of Multiple Chronic Diseases
Khan, Shaheer Ahmad
Shahid, Muhammad Usamah
Abdullah, Ahmad
Hashmat, Ibrahim
Farooq, Muddassar
Machine Learning
Artificial Intelligence
This study addresses a critical gap in the healthcare system by developing a clinically meaningful, practical, and explainable disease surveillance system for multiple chronic diseases, utilizing routine EHR data from multiple U.S. practices integrated with CureMD's EMR/EHR system. Unlike traditional systems--using AI models that rely on features from patients' labs--our approach focuses on routinely available data, such as medical history, vitals, diagnoses, and medications, to preemptively assess the risks of chronic diseases in the next year. We trained three distinct models for each chronic disease: prediction models that forecast the risk of a disease 3, 6, and 12 months before a potential diagnosis. We developed Random Forest models, which were internally validated using F1 scores and AUROC as performance metrics and further evaluated by a panel of expert physicians for clinical relevance based on inferences grounded in medical knowledge. Additionally, we discuss our implementation of integrating these models into a practical EMR system. Beyond using Shapley attributes and surrogate models for explainability, we also introduce a new rule-engineering framework to enhance the intrinsic explainability of Random Forests.
title An Explainable Disease Surveillance System for Early Prediction of Multiple Chronic Diseases
topic Machine Learning
Artificial Intelligence
url https://arxiv.org/abs/2501.15969