Miland Palmer
University of Utah
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PLOS ONE | 2015
Rachel Peterson; Adi V. Gundlapalli; Stephen Metraux; Marjorie E. Carter; Miland Palmer; Andrew Redd; Matthew H. Samore; Jamison D. Fargo
Researchers at the U.S. Department of Veterans Affairs (VA) have used administrative criteria to identify homelessness among U.S. Veterans. Our objective was to explore the use of these codes in VA health care facilities. We examined VA health records (2002-2012) of Veterans recently separated from the military and identified as homeless using VA conventional identification criteria (ICD-9-CM code V60.0, VA specific codes for homeless services), plus closely allied V60 codes indicating housing instability. Logistic regression analyses examined differences between Veterans who received these codes. Health care services and co-morbidities were analyzed in the 90 days post-identification of homelessness. VA conventional criteria identified 21,021 homeless Veterans from Operations Enduring Freedom, Iraqi Freedom, and New Dawn (rate 2.5%). Adding allied V60 codes increased that to 31,260 (rate 3.3%). While certain demographic differences were noted, Veterans identified as homeless using conventional or allied codes were similar with regards to utilization of homeless, mental health, and substance abuse services, as well as co-morbidities. Differences were noted in the pattern of usage of homelessness-related diagnostic codes in VA facilities nation-wide. Creating an official VA case definition for homelessness, which would include additional ICD-9-CM and other administrative codes for VA homeless services, would likely allow improved identification of homeless and at-risk Veterans. This also presents an opportunity for encouraging uniformity in applying these codes in VA facilities nationwide as well as in other large health care organizations.
Journal of the American Medical Informatics Association | 2013
Adi V. Gundlapalli; Andrew Redd; Marjorie E. Carter; Guy Divita; Shuying Shen; Miland Palmer; Matthew H. Samore
OBJECTIVE To develop algorithms to improve efficiency of patient phenotyping using natural language processing (NLP) on text data. Of a large number of note titles available in our database, we sought to determine those with highest yield and precision for psychosocial concepts. MATERIALS AND METHODS From a database of over 1 billion documents from US Department of Veterans Affairs medical facilities, a random sample of 1500 documents from each of 218 enterprise note titles were chosen. Psychosocial concepts were extracted using a UIMA-AS-based NLP pipeline (v3NLP), using a lexicon of relevant concepts with negation and template format annotators. Human reviewers evaluated a subset of documents for false positives and sensitivity. High-yield documents were identified by hit rate and precision. Reasons for false positivity were characterized. RESULTS A total of 58 707 psychosocial concepts were identified from 316 355 documents for an overall hit rate of 0.2 concepts per document (median 0.1, range 1.6-0). Of 6031 concepts reviewed from a high-yield set of note titles, the overall precision for all concept categories was 80%, with variability among note titles and concept categories. Reasons for false positivity included templating, negation, context, and alternate meaning of words. The sensitivity of the NLP system was noted to be 49% (95% CI 43% to 55%). CONCLUSIONS Phenotyping using NLP need not involve the entire document corpus. Our methods offer a generalizable strategy for scaling NLP pipelines to large free text corpora with complex linguistic annotations in attempts to identify patients of a certain phenotype.
Studies in health technology and informatics | 2014
Andrew Redd; Marjorie E. Carter; Guy Divita; Shuying Shen; Miland Palmer; Matthew H. Samore; Adi V. Gundlapalli
Early warning indicators to identify US Veterans at risk of homelessness are currently only inferred from administrative data. References to indicators of risk or instances of homelessness in the free text of medical notes written by Department of Veterans Affairs (VA) providers may precede formal identification of Veterans as being homeless. This represents a potentially untapped resource for early identification. Using natural language processing (NLP), we investigated the idea that concepts related to homelessness written in the free text of the medical record precede the identification of homelessness by administrative data. We found that homeless Veterans were much higher utilizers of VA resources producing approximately 12 times as many documents as non-homeless Veterans. NLP detected mentions of either direct or indirect evidence of homelessness in a significant portion of Veterans earlier than structured data.
Studies in health technology and informatics | 2014
Guy Divita; Shuying Shen; Marjorie E. Carter; Andrew Redd; Tyler Forbush; Miland Palmer; Matthew H. Samore; Adi V. Gundlapalli
Templated boilerplate structures pose challenges to natural language processing (NLP) tools used for information extraction (IE). Routine error analyses while performing an IE task using Veterans Affairs (VA) medical records identified templates as an important cause of false positives. The baseline NLP pipeline (V3NLP) was adapted to recognize negation, questions and answers (QA) in various template types by adding a negation and slot:value identification annotator. The system was trained using a corpus of 975 documents developed as a reference standard for extracting psychosocial concepts. Iterative processing using the baseline tool and baseline+negation+QA revealed loss of numbers of concepts with a modest increase in true positives in several concept categories. Similar improvement was noted when the adapted V3NLP was used to process a random sample of 318,000 notes. We demonstrate the feasibility of adapting an NLP pipeline to recognize templates.
Studies in health technology and informatics | 2014
Adi V. Gundlapalli; Andrew Redd; Marjorie E. Carter; Miland Palmer; Rachel Peterson; Matthew H. Samore
There are limited data on resources utilized by US Veterans prior to their identification as being homeless. We performed visual analytics on longitudinal medical encounter data prior to the official recognition of homelessness in a large cohort of OEF/OIF Veterans. A statistically significant increase in numbers of several categories of visits in the immediate 30 days prior to the recognition of homelessness was noted as compared to an earlier period. This finding has the potential to inform prediction algorithms based on structured data with a view to intervention and mitigation of homelessness among Veterans.
american medical informatics association annual symposium | 2013
Adi V. Gundlapalli; Marjorie E. Carter; Miland Palmer; Thomas Ginter; Andrew Redd; Steve Pickard; Shuying Shen; Brett R. South; Guy Divita; Scott L. DuVall; Thien M. Nguyen; Leonard W. D'Avolio; Matthew H. Samore
AMIA Joint Summits on Translational Science proceedings. AMIA Joint Summits on Translational Science | 2013
Tyler Forbush; Adi V. Gundlapalli; Miland Palmer; Shuying Shen; Brett R. South; Guy Divita; Marjorie E. Carter; Andrew Redd; Jorie Butler; Matthew H. Samore
american medical informatics association annual symposium | 2014
Adi V. Gundlapalli; Marjorie E. Carter; Guy Divita; Shuying Shen; Miland Palmer; Brett R. South; B.S. Begum Durgahee; Andrew Redd; Matthew H. Samore
Online Journal of Public Health Informatics | 2013
Adi V. Gundlapalli; Guy Divita; Marjorie E. Carter; Shuying Shen; Miland Palmer; Tyler Forbush; Brett R. South; Andrew Redd; Brian C. Sauer; Matthew H. Samore
Disability and Health Journal | 2017
Jamison D. Fargo; Emily Brignone; Stephen Metraux; Rachel Peterson; Marjorie E. Carter; Tyson S. Barrett; Miland Palmer; Andrew Redd; Matthew H. Samore; Adi V. Gundlapalli