LGMar 30

Automating Early Disease Prediction Via Structured and Unstructured Clinical Data

arXiv:2603.2816717.0h-index: 21
AI Analysis

This work addresses data quality issues in clinical settings for healthcare professionals, though it is incremental as it builds on existing NLP techniques.

This study tackled the problem of missing data in electronic health records by automating early disease prediction using unstructured discharge reports, showing that models enriched with this information achieved higher accuracy and correlation with true outcomes in predicting atrial fibrillation progression compared to those using only structured data.

This study presents a fully automated methodology for early prediction studies in clinical settings, leveraging information extracted from unstructured discharge reports. The proposed pipeline uses discharge reports to support the three main steps of early prediction: cohort selection, dataset generation, and outcome labeling. By processing discharge reports with natural language processing techniques, we can efficiently identify relevant patient cohorts, enrich structured datasets with additional clinical variables, and generate high-quality labels without manual intervention. This approach addresses the frequent issue of missing or incomplete data in codified electronic health records (EHR), capturing clinically relevant information that is often underrepresented. We evaluate the methodology in the context of predicting atrial fibrillation (AF) progression, showing that predictive models trained on datasets enriched with discharge report information achieve higher accuracy and correlation with true outcomes compared to models trained solely on structured EHR data, while also surpassing traditional clinical scores. These results demonstrate that automating the integration of unstructured clinical text can streamline early prediction studies, improve data quality, and enhance the reliability of predictive models for clinical decision-making.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

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