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Dive into the research topics where Christopher Herrick is active.

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Featured researches published by Christopher Herrick.


Journal of Biomedical Informatics | 2014

Evaluation of matched control algorithms in EHR-based phenotyping studies

Victor M. Castro; W. Kay Apperson; Vivian S. Gainer; Ashwin N. Ananthakrishnan; Alyssa P. Goodson; Taowei David Wang; Christopher Herrick; Shawn N. Murphy

The success of many population studies is determined by proper matching of cases to controls. Some of the confounding and bias that afflict electronic health record (EHR)-based observational studies may be reduced by creating effective methods for finding adequate controls. We implemented a method to match case and control populations to compensate for sparse and unequal data collection practices common in EHR data. We did this by matching the healthcare utilization of patients after observing that more complete data was collected on high healthcare utilization patients vs. low healthcare utilization patients. In our results, we show that many of the anomalous differences in population comparisons are mitigated using this matching method compared to other traditional age and gender-based matching. As an example, the comparison of the disease associations of ulcerative colitis and Crohns disease show differences that are not present when the controls are chosen in a random or even a matched age/gender/race algorithm. In conclusion, the use of healthcare utilization-based matching algorithms to find adequate controls greatly enhanced the accuracy of results in EHR studies. Full source code and documentation of the control matching methods is available at https://community.i2b2.org/wiki/display/conmat/.


Journal of Digital Imaging | 2015

High Throughput Tools to Access Images from Clinical Archives for Research

Shawn N. Murphy; Christopher Herrick; Yanbing Wang; Taowei David Wang; Darren Sack; Katherine P. Andriole; Jesse Wei; Nathaniel Reynolds; Wendy J. Plesniak; Bruce R. Rosen; Steven D. Pieper; Randy L. Gollub

Historically, medical images collected in the course of clinical care have been difficult to access for secondary research studies. While there is a tremendous potential value in the large volume of studies contained in clinical image archives, Picture Archiving and Communication Systems (PACS) are designed to optimize clinical operations and workflow. Search capabilities in PACS are basic, limiting their use for population studies, and duplication of archives for research is costly. To address this need, we augment the Informatics for Integrating Biology and the Bedside (i2b2) open source software, providing investigators with the tools necessary to query and integrate medical record and clinical research data. Over 100 healthcare institutions have installed this suite of software tools that allows investigators to search medical record metadata including images for specific types of patients. In this report, we describe a new Medical Imaging Informatics Bench to Bedside (mi2b2) module (www.mi2b2.org), available now as an open source addition to the i2b2 software platform that allows medical imaging examinations collected during routine clinical care to be made available to translational investigators directly from their institution’s clinical PACS for research and educational use in compliance with the Health Insurance Portability and Accountability Act (HIPAA) Omnibus Rule. Access governance within the mi2b2 module is customizable per institution and PACS minimizing impact on clinical systems. Currently in active use at our institutions, this new technology has already been used to facilitate access to thousands of clinical MRI brain studies representing specific patient phenotypes for use in research.


Journal of the American Medical Informatics Association | 2018

Web services for data warehouses: OMOP and PCORnet on i2b2

Jeffrey G. Klann; Lori C. Phillips; Christopher Herrick; Matthew A. Joss; Kavishwar B. Wagholikar; Shawn N. Murphy

Abstract Objective Healthcare organizations use research data models supported by projects and tools that interest them, which often means organizations must support the same data in multiple models. The healthcare research ecosystem would benefit if tools and projects could be adopted independently from the underlying data model. Here, we introduce the concept of a reusable application programming interface (API) for healthcare and show that the i2b2 API can be adapted to support diverse patient-centric data models. Materials and Methods We develop methodology for extending i2b2’s pre-existing API to query additional data models, using i2b2’s recent “multi-fact-table querying” feature. Our method involves developing data-model-specific i2b2 ontologies and mapping these to query non-standard table structure. Results We implement this methodology to query OMOP and PCORnet models, which we validate with the i2b2 query tool. We implement the entire PCORnet data model and a five-domain subset of the OMOP model. We also demonstrate that additional, ancillary data model columns can be modeled and queried as i2b2 “modifiers.” Discussion i2b2’s REST API can be used to query multiple healthcare data models, enabling shared tooling to have a choice of backend data stores. This enables separation between data model and software tooling for some of the more popular open analytic data models in healthcare. Conclusion This methodology immediately allows querying OMOP and PCORnet using the i2b2 API. It is released as an open-source set of Docker images, and also on the i2b2 community wiki.


Journal of Medical Systems | 2018

Extraction of Ejection Fraction from Echocardiography Notes for Constructing a Cohort of Patients having Heart Failure with reduced Ejection Fraction (HFrEF)

Kavishwar B. Wagholikar; Christina M. Fischer; Alyssa P. Goodson; Christopher Herrick; Martin Rees; Eloy Toscano; Calum A. MacRae; Benjamin M. Scirica; Akshay S. Desai; Shawn N. Murphy

Left ventricular ejection fraction (LVEF) is an important prognostic indicator of cardiovascular outcomes. It is used clinically to determine the indication for several therapeutic interventions. LVEF is most commonly derived using in-line tools and some manual assessment by cardiologists from standardized echocardiographic views. LVEF is typically documented in free-text reports, and variation in LVEF documentation pose a challenge for the extraction and utilization of LVEF in computer-based clinical workflows. To address this problem, we developed a computerized algorithm to extract LVEF from echocardiography reports for the identification of patients having heart failure with reduced ejection fraction (HFrEF) for therapeutic intervention at a large healthcare system. We processed echocardiogram reports for 57,158 patients with coded diagnosis of Heart Failure that visited the healthcare system over a two-year period. Our algorithm identified a total of 3910 patients with reduced ejection fraction. Of the 46,634 echocardiography reports processed, 97% included a mention of LVEF. Of these reports, 85% contained numerical ejection fraction values, 9% contained ranges, and the remaining 6% contained qualitative descriptions. Overall, 18% of extracted numerical LVEFs were ≤ 40%. Furthermore, manual validation for a sample of 339 reports yielded an accuracy of 1.0. Our study demonstrates that a regular expression-based approach can accurately extract LVEF from echocardiograms, and is useful for delineating heart-failure patients with reduced ejection fraction.


F1000Research | 2014

Developmental brain ADC atlas creation from clinical images

Yangming Ou; Nathaniel Reynolds; Randy L. Gollub; Rudolph Pienaar; Yanbing Wang; T. David Wang; Darren Sack; Katherine P. Andriole; Steven Pieper; Christopher Herrick; Shawn N. Murphy; P. Ellen Grant; Lilla Zöllei


CRI | 2017

i2b2 on OMOP CDM.

Lori C. Phillips; Christopher Herrick; Shawn N. Murphy


CRI | 2017

Creating a Patient Information Commons from Multiple Research Informatics Platforms.

Shawn N. Murphy; Christopher Herrick; Michael Mendis; Lori C. Phillips; Wayne Chan; Alyssa Porter; Griffin M. Weber; Susanne Churchill; Isaac S. Kohane


AMIA | 2017

Integrating Patient Registries into Enterprise wide Patient-Discovery Strategies.

Christopher Herrick; Alyssa P. Goodson; Wayne Chan; Lori C. Phillips; Michael Mendis; Shawn N. Murphy


CRI | 2016

Defining a Statistically Valid Type 2 Diabetes Cohort in the Partners HealthCare EMR.

Alyssa P. Goodson; Vivian S. Gainer; Christopher Herrick; Kelly Bell; Tianxi Cai; Shawn N. Murphy


AMIA | 2014

Integrating Information from Unstructured Text with Structured Clinical Data from an Electronic Medical Record to Improve Patient Cohort Identification.

Victor M. Castro; Sergey Goryachev; Christopher Herrick; Vivian S. Gainer; Martin Rees; Shawn N. Murphy

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Vivian S. Gainer

Brigham and Women's Hospital

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