Abstract Certain diseases have strong comorbidity and co-occurrence with others. Understanding disease–disease associations can potentially increase awareness among healthcare providers of co-occurring conditions and facilitate earlier diagnosis, prevention and treatment of patients. In this study, we utilized the valuable and large The Guideline Advantage (TGA) longitudinal electronic health record dataset from 70 outpatient clinics across the United States to investigate potential disease–disease associations. Specifically, the most prevalent 50 disease diagnoses were manually identified from 165,732 unique patients. To investigate the co-occurrence or dependency associations among the 50 diseases, the categorical disease terms were first...
Background: The vast amounts of clinical data collected in electronic health records (EHR) is analog...
Data mining technologies have been used extensively in the commercial retail sectors to extract data...
Understanding patient accumulation of comorbidities can facilitate healthcare strategy and personali...
Certain diseases have strong comorbidity and co-occurrence with others. Understanding disease-diseas...
Abstract Background Systems approaches in studying disease relationship have wide applications in bi...
The goal of this study is to discover disease co-occurrence and sequence patterns from large scale c...
Electronic health record (EHR) systems offer an exceptional opportunity for studying many diseases a...
Electronic health record (EHR) systems offer an exceptional opportunity for studying many diseases a...
Health information networks continue to expand under the Affordable Care Act yet little research has...
Increasing reliance on electronic medical records at large medical centers provides unique opportuni...
The presence of patients affected by different diseases at the same time is becoming a major health ...
Electronic health records (EHR) represent a rich and relatively untapped resource for characterizing...
Background. Comorbidity represents the co-occurrence of pathological conditions in the same individu...
Electronic health records (EHR) represent a rich and relatively untapped resource for characterizing...
Background: The vast amounts of clinical data collected in electronic health records (EHR) is analog...
Data mining technologies have been used extensively in the commercial retail sectors to extract data...
Understanding patient accumulation of comorbidities can facilitate healthcare strategy and personali...
Certain diseases have strong comorbidity and co-occurrence with others. Understanding disease-diseas...
Abstract Background Systems approaches in studying disease relationship have wide applications in bi...
The goal of this study is to discover disease co-occurrence and sequence patterns from large scale c...
Electronic health record (EHR) systems offer an exceptional opportunity for studying many diseases a...
Electronic health record (EHR) systems offer an exceptional opportunity for studying many diseases a...
Health information networks continue to expand under the Affordable Care Act yet little research has...
Increasing reliance on electronic medical records at large medical centers provides unique opportuni...
The presence of patients affected by different diseases at the same time is becoming a major health ...
Electronic health records (EHR) represent a rich and relatively untapped resource for characterizing...
Background. Comorbidity represents the co-occurrence of pathological conditions in the same individu...
Electronic health records (EHR) represent a rich and relatively untapped resource for characterizing...
Background: The vast amounts of clinical data collected in electronic health records (EHR) is analog...
Data mining technologies have been used extensively in the commercial retail sectors to extract data...
Understanding patient accumulation of comorbidities can facilitate healthcare strategy and personali...