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Dive into the research topics where Andrew J. McMurry is active.

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Featured researches published by Andrew J. McMurry.


PLOS ONE | 2012

The co-morbidity burden of children and young adults with autism spectrum disorders.

Isaac S. Kohane; Andrew J. McMurry; Griffin M. Weber; Douglas MacFadden; Leonard Rappaport; Louis M. Kunkel; Jonathan Bickel; Nich Wattanasin; Sarah J. Spence; Shawn N. Murphy; Susanne Churchill

Objectives Use electronic health records Autism Spectrum Disorder (ASD) to assess the comorbidity burden of ASD in children and young adults. Study Design A retrospective prevalence study was performed using a distributed query system across three general hospitals and one pediatric hospital. Over 14,000 individuals under age 35 with ASD were characterized by their co-morbidities and conversely, the prevalence of ASD within these comorbidities was measured. The comorbidity prevalence of the younger (Age<18 years) and older (Age 18–34 years) individuals with ASD was compared. Results 19.44% of ASD patients had epilepsy as compared to 2.19% in the overall hospital population (95% confidence interval for difference in percentages 13.58–14.69%), 2.43% of ASD with schizophrenia vs. 0.24% in the hospital population (95% CI 1.89–2.39%), inflammatory bowel disease (IBD) 0.83% vs. 0.54% (95% CI 0.13–0.43%), bowel disorders (without IBD) 11.74% vs. 4.5% (95% CI 5.72–6.68%), CNS/cranial anomalies 12.45% vs. 1.19% (95% CI 9.41–10.38%), diabetes mellitus type I (DM1) 0.79% vs. 0.34% (95% CI 0.3–0.6%), muscular dystrophy 0.47% vs 0.05% (95% CI 0.26–0.49%), sleep disorders 1.12% vs. 0.14% (95% CI 0.79–1.14%). Autoimmune disorders (excluding DM1 and IBD) were not significantly different at 0.67% vs. 0.68% (95% CI −0.14-0.13%). Three of the studied comorbidities increased significantly when comparing ages 0–17 vs 18–34 with p<0.001: Schizophrenia (1.43% vs. 8.76%), diabetes mellitus type I (0.67% vs. 2.08%), IBD (0.68% vs. 1.99%) whereas sleeping disorders, bowel disorders (without IBD) and epilepsy did not change significantly. Conclusions The comorbidities of ASD encompass disease states that are significantly overrepresented in ASD with respect to even the patient populations of tertiary health centers. This burden of comorbidities goes well beyond those routinely managed in developmental medicine centers and requires broad multidisciplinary management that payors and providers will have to plan for.


Journal of the American Medical Informatics Association | 2009

The Shared Health Research Information Network (SHRINE): A Prototype Federated Query Tool for Clinical Data Repositories

Griffin M. Weber; Shawn N. Murphy; Andrew J. McMurry; Douglas MacFadden; Daniel J. Nigrin; Susanne Churchill; Isaac S. Kohane

The authors developed a prototype Shared Health Research Information Network (SHRINE) to identify the technical, regulatory, and political challenges of creating a federated query tool for clinical data repositories. Separate Institutional Review Boards (IRBs) at Harvards three largest affiliated health centers approved use of their data, and the Harvard Medical School IRB approved building a Query Aggregator Interface that can simultaneously send queries to each hospital and display aggregate counts of the number of matching patients. Our experience creating three local repositories using the open source Informatics for Integrating Biology and the Bedside (i2b2) platform can be used as a road map for other institutions. The authors are actively working with the IRBs and regulatory groups to develop procedures that will ultimately allow investigators to obtain identified patient data and biomaterials through SHRINE. This will guide us in creating a future technical architecture that is scalable to a national level, compliant with ethical guidelines, and protective of the interests of the participating hospitals.


PLOS ONE | 2013

SHRINE: Enabling Nationally Scalable Multi-Site Disease Studies

Andrew J. McMurry; Shawn N. Murphy; Douglas MacFadden; Griffin M. Weber; william Simons; John Orechia; Jonathan Bickel; Nich Wattanasin; Clint Gilbert; Philip Trevvett; Susanne Churchill; Isaac S. Kohane

Results of medical research studies are often contradictory or cannot be reproduced. One reason is that there may not be enough patient subjects available for observation for a long enough time period. Another reason is that patient populations may vary considerably with respect to geographic and demographic boundaries thus limiting how broadly the results apply. Even when similar patient populations are pooled together from multiple locations, differences in medical treatment and record systems can limit which outcome measures can be commonly analyzed. In total, these differences in medical research settings can lead to differing conclusions or can even prevent some studies from starting. We thus sought to create a patient research system that could aggregate as many patient observations as possible from a large number of hospitals in a uniform way. We call this system the ‘Shared Health Research Information Network’, with the following properties: (1) reuse electronic health data from everyday clinical care for research purposes, (2) respect patient privacy and hospital autonomy, (3) aggregate patient populations across many hospitals to achieve statistically significant sample sizes that can be validated independently of a single research setting, (4) harmonize the observation facts recorded at each institution such that queries can be made across many hospitals in parallel, (5) scale to regional and national collaborations. The purpose of this report is to provide open source software for multi-site clinical studies and to report on early uses of this application. At this time SHRINE implementations have been used for multi-site studies of autism co-morbidity, juvenile idiopathic arthritis, peripartum cardiomyopathy, colorectal cancer, diabetes, and others. The wide range of study objectives and growing adoption suggest that SHRINE may be applicable beyond the research uses and participating hospitals named in this report.


Journal of the American Medical Informatics Association | 2007

A self-scaling, distributed information architecture for public health, research, and clinical care.

Andrew J. McMurry; Clint A. Gilbert; Ben Y. Reis; Henry C. Chueh; Isaac S. Kohane; Kenneth D. Mandl

OBJECTIVE This study sought to define a scalable architecture to support the National Health Information Network (NHIN). This architecture must concurrently support a wide range of public health, research, and clinical care activities. STUDY DESIGN The architecture fulfils five desiderata: (1) adopt a distributed approach to data storage to protect privacy, (2) enable strong institutional autonomy to engender participation, (3) provide oversight and transparency to ensure patient trust, (4) allow variable levels of access according to investigator needs and institutional policies, (5) define a self-scaling architecture that encourages voluntary regional collaborations that coalesce to form a nationwide network. RESULTS Our model has been validated by a large-scale, multi-institution study involving seven medical centers for cancer research. It is the basis of one of four open architectures developed under funding from the Office of the National Coordinator of Health Information Technology, fulfilling the biosurveillance use case defined by the American Health Information Community. The model supports broad applicability for regional and national clinical information exchanges. CONCLUSIONS This model shows the feasibility of an architecture wherein the requirements of care providers, investigators, and public health authorities are served by a distributed model that grants autonomy, protects privacy, and promotes participation.


Journal of the American Medical Informatics Association | 2013

An i2b2-based, generalizable, open source, self-scaling chronic disease registry

Marc Natter; Justin Quan; David M Ortiz; Athos Bousvaros; Norman T. Ilowite; Christi J Inman; Keith Marsolo; Andrew J. McMurry; Christy Sandborg; Laura E. Schanberg; Carol A. Wallace; Robert W. Warren; Griffin M. Weber; Kenneth D. Mandl

Objective Registries are a well-established mechanism for obtaining high quality, disease-specific data, but are often highly project-specific in their design, implementation, and policies for data use. In contrast to the conventional model of centralized data contribution, warehousing, and control, we design a self-scaling registry technology for collaborative data sharing, based upon the widely adopted Integrating Biology & the Bedside (i2b2) data warehousing framework and the Shared Health Research Information Network (SHRINE) peer-to-peer networking software. Materials and methods Focusing our design around creation of a scalable solution for collaboration within multi-site disease registries, we leverage the i2b2 and SHRINE open source software to create a modular, ontology-based, federated infrastructure that provides research investigators full ownership and access to their contributed data while supporting permissioned yet robust data sharing. We accomplish these objectives via web services supporting peer-group overlays, group-aware data aggregation, and administrative functions. Results The 56-site Childhood Arthritis & Rheumatology Research Alliance (CARRA) Registry and 3-site Harvard Inflammatory Bowel Diseases Longitudinal Data Repository now utilize i2b2 self-scaling registry technology (i2b2-SSR). This platform, extensible to federation of multiple projects within and between research networks, encompasses >6000 subjects at sites throughout the USA. Discussion We utilize the i2b2-SSR platform to minimize technical barriers to collaboration while enabling fine-grained control over data sharing. Conclusions The implementation of i2b2-SSR for the multi-site, multi-stakeholder CARRA Registry has established a digital infrastructure for community-driven research data sharing in pediatric rheumatology in the USA. We envision i2b2-SSR as a scalable, reusable solution facilitating interdisciplinary research across diseases.


Journal of the American Medical Informatics Association | 2007

AEGIS: a robust and scalable real-time public health surveillance system

Ben Y. Reis; Chaim Kirby; Lucy E. Hadden; Karen L. Olson; Andrew J. McMurry; James B. Daniel; Kenneth D. Mandl

In this report, we describe the Automated Epidemiological Geotemporal Integrated Surveillance system (AEGIS), developed for real-time population health monitoring in the state of Massachusetts. AEGIS provides public health personnel with automated near-real-time situational awareness of utilization patterns at participating healthcare institutions, supporting surveillance of bioterrorism and naturally occurring outbreaks. As real-time public health surveillance systems become integrated into regional and national surveillance initiatives, the challenges of scalability, robustness, and data security become increasingly prominent. A modular and fault tolerant design helps AEGIS achieve scalability and robustness, while a distributed storage model with local autonomy helps to minimize risk of unauthorized disclosure. The report includes a description of the evolution of the design over time in response to the challenges of a regional and national integration environment.


Human Pathology | 2007

A system for sharing routine surgical pathology specimens across institutions: the Shared Pathology Informatics Network

Thomas A. Drake; Jonathan Braun; Alberto M. Marchevsky; Isaac S. Kohane; Christopher D. M. Fletcher; Henry C. Chueh; Bruce A. Beckwith; David Berkowicz; Frank C. Kuo; Qing T. Zeng; Ulysses J. Balis; Ana Holzbach; Andrew J. McMurry; Connie E. Gee; Clement J. McDonald; Gunther Schadow; Mary M. Davis; Eyas M. Hattab; Lonnie Blevins; John Hook; Michael J. Becich; Rebecca S. Crowley; Sheila E. Taube; Jules J. Berman


BMC Medical Informatics and Decision Making | 2013

Improved de-identification of physician notes through integrative modeling of both public and private medical text

Andrew J. McMurry; Britt Fitch; Guergana Savova; Isaac S. Kohane; Ben Y. Reis


Clinical Medicine & Research | 2011

C-C4-02: Using a Natural Language Processor to Remove All Elements of Personal Health Information (PHI) to Deidentify Clinical Annotations for the Specimen Retrieval System (SRS)

Andrew G. Glass; Sheila E. Taube; Andrew J. McMurry; Chris Eddy; Pierre-Andre La Chance; Lisa M. McShane; Mei-Yin Polley; Isaac S. Kohane


Journal of the American Medical Informatics Association | 2007

Model Formulation: A Self-scaling, Distributed Information Architecture for Public Health, Research,

Andrew J. McMurry; Clint A. Gilbert; Ben Y. Reis; Henry C. Chueh; Isaac S. Kohane; Kenneth D. Mandl

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Ben Y. Reis

Boston Children's Hospital

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Kenneth D. Mandl

Boston Children's Hospital

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Chaim Kirby

Massachusetts Institute of Technology

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Clint A. Gilbert

Massachusetts Institute of Technology

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