Abstract

BackgroundMedicine 2.0—the adoption of Web 2.0 technologies such as social networks in health care—creates the need for apps that can find other patients with similar experiences and health conditions based on a patient’s electronic health record (EHR). Concurrently, there is an increasing number of longitudinal EHR data sets with rich information, which are essential to fulfill this need.ObjectiveThis study aimed to evaluate the hypothesis that we can leverage similar EHRs to predict possible future medical concepts (eg, disorders) from a patient’s EHR.MethodsWe represented patients’ EHRs using time-based prefixes and suffixes, where each prefix or suffix is a set of medical concepts from a medical ontology. We compared the prefixes of other patients in the collection with the state of the current patient using various interpatient distance measures. The set of similar prefixes yields a set of suffixes, which we used to determine probable future concepts for the current patient’s EHR.ResultsWe evaluated our methods on the Multiparameter Intelligent Monitoring in Intensive Care II data set of patients, where we achieved precision up to 56.1% and recall up to 69.5%. For a limited set of clinically interesting concepts, specifically a set of procedures, we found that 86.9% (353/406) of the true-positives are clinically useful, that is, these procedures were actually performed later on the patient, and only 4.7% (19/406) of true-positives were completely irrelevant.ConclusionsThese initial results indicate that predicting patients’ future medical concepts is feasible. Effectively predicting medical concepts can have several applications, such as managing resources in a hospital.

Highlights

  • Medicine 2.0—the intersection of Web 2.0 and health care services, apps, and tools—brings new opportunities for patients to actively contribute to their own care [1]

  • Of the suffixes of patients with similar electronic health record (EHR) prefixes, 50% contain the concepts of pneumonia and pulmonary aspiration, whereas 29% and 23% of all patients in the general intensive care unit (ICU) population contained the concepts of pneumonia and pulmonary aspiration, respectively

  • We evaluated the interpatient distance measures bag-of-concept CA (BoC), CA, average path length (APL), and APL_SYM on the aforementioned admissions of the Multiparameter Intelligent Monitoring in Intensive Care (MIMIC) II database using our framework of EHR prefixes and EHR suffixes

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Summary

Introduction

Background Medicine 2.0—the intersection of Web 2.0 and health care services, apps, and tools—brings new opportunities for patients to actively contribute to their own care [1]. With the rapid adoption of patients’ electronic health records (EHRs) [2], allowing users to find patients with similar experiences and health conditions based on their EHR has the potential to improve the quality of care and expand options for health care solutions [3]. This approach may lead to novel apps for patients, such as self-management recommendations based on big data aggregation across cohorts [4]. There is an increasing number of longitudinal EHR data sets with rich information, which are essential to fulfill this need

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